1428 lines
1.4 MiB
1428 lines
1.4 MiB
==== STARTING EXPERIMENT: qwen3_1.7b_if_fft ====
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Log File: saves/qwen3_1.7b/if/fft/qwen3_1.7b_if_fft_20260524_054817.log
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HF Hub: https://huggingface.co/KKHYA/qwen3-1.7b-fft-if
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Timestamp: 2026-05-24 05:48:17
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=====================================
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[INFO|2026-05-24 05:48:23] llamafactory.launcher:144 >> Initializing 8 distributed tasks at: 127.0.0.1:36913
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W0524 05:48:24.105000 263391 site-packages/torch/distributed/run.py:851]
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W0524 05:48:24.105000 263391 site-packages/torch/distributed/run.py:851] *****************************************
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W0524 05:48:24.105000 263391 site-packages/torch/distributed/run.py:851] Setting OMP_NUM_THREADS environment variable for each process to be 1 in default, to avoid your system being overloaded, please further tune the variable for optimal performance in your application as needed.
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W0524 05:48:24.105000 263391 site-packages/torch/distributed/run.py:851] *****************************************
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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import pkg_resources
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warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
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/home/ubuntu/miniconda3/envs/lmfact/lib/python3.11/site-packages/jieba/_compat.py:18: UserWarning: pkg_resources is deprecated as an API. See https://setuptools.pypa.io/en/latest/pkg_resources.html. The pkg_resources package is slated for removal as early as 2025-11-30. Refrain from using this package or pin to Setuptools<81.
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||
import pkg_resources
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||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
|
||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
|
||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
|
||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
|
||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
|
||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
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||
warmup_ratio is deprecated and will be removed in v5.2. Use `warmup_steps` instead.
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[W524 05:48:32.992213791 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.293666626 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.308084017 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.308938238 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.310524840 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.339552947 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.351637395 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[W524 05:48:33.420535856 ProcessGroupNCCL.cpp:932] Warning: TORCH_NCCL_AVOID_RECORD_STREAMS is the default now, this environment variable is thus deprecated. (function operator())
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 0, world size: 8, device: cuda:0, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 5, world size: 8, device: cuda:5, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 2, world size: 8, device: cuda:2, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 3, world size: 8, device: cuda:3, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 4, world size: 8, device: cuda:4, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 7, world size: 8, device: cuda:7, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 6, world size: 8, device: cuda:6, distributed training: True, compute dtype: torch.bfloat16
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[INFO|2026-05-24 05:48:36] llamafactory.hparams.parser:505 >> Process rank: 1, world size: 8, device: cuda:1, distributed training: True, compute dtype: torch.bfloat16
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[INFO|configuration_utils.py:670] 2026-05-24 05:48:36,333 >> loading configuration file config.json from cache at /home/ubuntu/.cache/huggingface/hub/models--Qwen--Qwen3-1.7B/snapshots/70d244cc86ccca08cf5af4e1e306ecf908b1ad5e/config.json
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[INFO|configuration_utils.py:742] 2026-05-24 05:48:36,335 >> Model config Qwen3Config {
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"architectures": [
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"Qwen3ForCausalLM"
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],
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"attention_bias": false,
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"attention_dropout": 0.0,
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"bos_token_id": 151643,
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"dtype": "bfloat16",
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||
"eos_token_id": 151645,
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"head_dim": 128,
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||
"hidden_act": "silu",
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||
"hidden_size": 2048,
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||
"initializer_range": 0.02,
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||
"intermediate_size": 6144,
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||
"layer_types": [
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"full_attention",
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"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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"full_attention",
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||
"full_attention",
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"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention",
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||
"full_attention"
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||
],
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||
"masked_layers": null,
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||
"max_position_embeddings": 40960,
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||
"max_window_layers": 28,
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||
"model_type": "qwen3",
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||
"num_attention_heads": 16,
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||
"num_hidden_layers": 28,
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||
"num_key_value_heads": 8,
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||
"pad_token_id": null,
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||
"rms_norm_eps": 1e-06,
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||
"rope_parameters": {
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||
"rope_theta": 1000000,
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||
"rope_type": "default"
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||
},
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||
"sliding_window": null,
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||
"sparsity_attn": null,
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||
"sparsity_mlp": null,
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||
"subnet_mode": null,
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||
"subnet_type": null,
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||
"threshold_attn": null,
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||
"threshold_mlp": null,
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||
"tie_word_embeddings": true,
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||
"transformers_version": "5.2.0",
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||
"use_cache": true,
|
||
"use_sliding_window": false,
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||
"vocab_size": 151936
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||
}
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[INFO|configuration_utils.py:670] 2026-05-24 05:48:38,758 >> loading configuration file config.json from cache at /home/ubuntu/.cache/huggingface/hub/models--Qwen--Qwen3-1.7B/snapshots/70d244cc86ccca08cf5af4e1e306ecf908b1ad5e/config.json
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[INFO|configuration_utils.py:742] 2026-05-24 05:48:38,759 >> Model config Qwen3Config {
|
||
"architectures": [
|
||
"Qwen3ForCausalLM"
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||
],
|
||
"attention_bias": false,
|
||
"attention_dropout": 0.0,
|
||
"bos_token_id": 151643,
|
||
"dtype": "bfloat16",
|
||
"eos_token_id": 151645,
|
||
"head_dim": 128,
|
||
"hidden_act": "silu",
|
||
"hidden_size": 2048,
|
||
"initializer_range": 0.02,
|
||
"intermediate_size": 6144,
|
||
"layer_types": [
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention"
|
||
],
|
||
"masked_layers": null,
|
||
"max_position_embeddings": 40960,
|
||
"max_window_layers": 28,
|
||
"model_type": "qwen3",
|
||
"num_attention_heads": 16,
|
||
"num_hidden_layers": 28,
|
||
"num_key_value_heads": 8,
|
||
"pad_token_id": null,
|
||
"rms_norm_eps": 1e-06,
|
||
"rope_parameters": {
|
||
"rope_theta": 1000000,
|
||
"rope_type": "default"
|
||
},
|
||
"sliding_window": null,
|
||
"sparsity_attn": null,
|
||
"sparsity_mlp": null,
|
||
"subnet_mode": null,
|
||
"subnet_type": null,
|
||
"threshold_attn": null,
|
||
"threshold_mlp": null,
|
||
"tie_word_embeddings": true,
|
||
"transformers_version": "5.2.0",
|
||
"use_cache": true,
|
||
"use_sliding_window": false,
|
||
"vocab_size": 151936
|
||
}
|
||
|
||
[INFO|configuration_utils.py:670] 2026-05-24 05:48:38,792 >> loading configuration file config.json from cache at /home/ubuntu/.cache/huggingface/hub/models--Qwen--Qwen3-1.7B/snapshots/70d244cc86ccca08cf5af4e1e306ecf908b1ad5e/config.json
|
||
[INFO|configuration_utils.py:742] 2026-05-24 05:48:38,793 >> Model config Qwen3Config {
|
||
"architectures": [
|
||
"Qwen3ForCausalLM"
|
||
],
|
||
"attention_bias": false,
|
||
"attention_dropout": 0.0,
|
||
"bos_token_id": 151643,
|
||
"dtype": "bfloat16",
|
||
"eos_token_id": 151645,
|
||
"head_dim": 128,
|
||
"hidden_act": "silu",
|
||
"hidden_size": 2048,
|
||
"initializer_range": 0.02,
|
||
"intermediate_size": 6144,
|
||
"layer_types": [
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention"
|
||
],
|
||
"masked_layers": null,
|
||
"max_position_embeddings": 40960,
|
||
"max_window_layers": 28,
|
||
"model_type": "qwen3",
|
||
"num_attention_heads": 16,
|
||
"num_hidden_layers": 28,
|
||
"num_key_value_heads": 8,
|
||
"pad_token_id": null,
|
||
"rms_norm_eps": 1e-06,
|
||
"rope_parameters": {
|
||
"rope_theta": 1000000,
|
||
"rope_type": "default"
|
||
},
|
||
"sliding_window": null,
|
||
"sparsity_attn": null,
|
||
"sparsity_mlp": null,
|
||
"subnet_mode": null,
|
||
"subnet_type": null,
|
||
"threshold_attn": null,
|
||
"threshold_mlp": null,
|
||
"tie_word_embeddings": true,
|
||
"transformers_version": "5.2.0",
|
||
"use_cache": true,
|
||
"use_sliding_window": false,
|
||
"vocab_size": 151936
|
||
}
|
||
|
||
[INFO|2026-05-24 05:48:40] llamafactory.data.loader:144 >> Loading dataset allenai/tulu-3-sft-personas-instruction-following...
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||
Setting num_proc from 16 back to 1 for the train split to disable multiprocessing as it only contains one shard.
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Generating train split: 0%| | 0/29980 [00:00<?, ? examples/s]
Generating train split: 50%|█████ | 15000/29980 [00:00<00:00, 138651.32 examples/s]
Generating train split: 100%|██████████| 29980/29980 [00:00<00:00, 168440.08 examples/s]
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[INFO|2026-05-24 05:48:41] llamafactory.data.loader:144 >> Sampled 10000 examples from dataset allenai/tulu-3-sft-personas-instruction-following.
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Converting format of dataset (num_proc=16): 0%| | 0/10000 [00:00<?, ? examples/s]
Converting format of dataset (num_proc=16): 5%|▍ | 471/10000 [00:00<00:06, 1380.28 examples/s]
Converting format of dataset (num_proc=16): 100%|██████████| 10000/10000 [00:00<00:00, 19785.69 examples/s]
|
||
[INFO|2026-05-24 05:48:42] llamafactory.data.loader:144 >> Loading dataset KKHYA/oasst1_converted...
|
||
Repo card metadata block was not found. Setting CardData to empty.
|
||
Setting num_proc from 16 back to 1 for the train split to disable multiprocessing as it only contains one shard.
|
||
Generating train split: 0%| | 0/7132 [00:00<?, ? examples/s]
Generating train split: 100%|██████████| 7132/7132 [00:00<00:00, 188075.45 examples/s]
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||
[INFO|2026-05-24 05:48:43] llamafactory.data.loader:144 >> Sampled 7000 examples from dataset KKHYA/oasst1_converted.
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||
Converting format of dataset (num_proc=16): 0%| | 0/7000 [00:00<?, ? examples/s]
Converting format of dataset (num_proc=16): 6%|▋ | 438/7000 [00:00<00:04, 1357.58 examples/s]
Converting format of dataset (num_proc=16): 100%|██████████| 7000/7000 [00:00<00:00, 14380.96 examples/s]
|
||
[INFO|2026-05-24 05:48:43] llamafactory.data.loader:144 >> Loading dataset KKHYA/oasst2_converted...
|
||
Repo card metadata block was not found. Setting CardData to empty.
|
||
Setting num_proc from 16 back to 1 for the train split to disable multiprocessing as it only contains one shard.
|
||
Generating train split: 0%| | 0/9091 [00:00<?, ? examples/s]
Generating train split: 100%|██████████| 9091/9091 [00:00<00:00, 181843.59 examples/s]
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||
[INFO|2026-05-24 05:48:45] llamafactory.data.loader:144 >> Sampled 9000 examples from dataset KKHYA/oasst2_converted.
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||
Converting format of dataset (num_proc=16): 0%| | 0/9000 [00:00<?, ? examples/s]
Converting format of dataset (num_proc=16): 6%|▋ | 563/9000 [00:00<00:05, 1678.02 examples/s]
Converting format of dataset (num_proc=16): 100%|██████████| 9000/9000 [00:00<00:00, 17867.24 examples/s]
|
||
[INFO|2026-05-24 05:48:46] llamafactory.data.loader:144 >> Loading dataset KKHYA/coconot_converted...
|
||
Repo card metadata block was not found. Setting CardData to empty.
|
||
Setting num_proc from 16 back to 1 for the train split to disable multiprocessing as it only contains one shard.
|
||
Generating train split: 0%| | 0/10983 [00:00<?, ? examples/s]
Generating train split: 100%|██████████| 10983/10983 [00:00<00:00, 358487.80 examples/s]
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||
Setting num_proc from 16 back to 1 for the test split to disable multiprocessing as it only contains one shard.
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Generating test split: 0%| | 0/1001 [00:00<?, ? examples/s]
Generating test split: 100%|██████████| 1001/1001 [00:00<00:00, 348567.73 examples/s]
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||
[INFO|2026-05-24 05:48:47] llamafactory.data.loader:144 >> Sampled 10000 examples from dataset KKHYA/coconot_converted.
|
||
Converting format of dataset (num_proc=16): 0%| | 0/10000 [00:00<?, ? examples/s]
Converting format of dataset (num_proc=16): 6%|▋ | 625/10000 [00:00<00:04, 1964.02 examples/s]
Converting format of dataset (num_proc=16): 100%|██████████| 10000/10000 [00:00<00:00, 20333.44 examples/s]
|
||
[INFO|2026-05-24 05:48:47] llamafactory.data.loader:144 >> Loading dataset KKHYA/aya_dataset_converted...
|
||
Repo card metadata block was not found. Setting CardData to empty.
|
||
Setting num_proc from 16 back to 1 for the train split to disable multiprocessing as it only contains one shard.
|
||
Generating train split: 0%| | 0/202285 [00:00<?, ? examples/s]
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Generating train split: 19%|█▉ | 38000/202285 [00:00<00:00, 171031.19 examples/s]
Generating train split: 29%|██▊ | 58000/202285 [00:00<00:00, 179354.20 examples/s]
Generating train split: 39%|███▉ | 79000/202285 [00:00<00:00, 183647.89 examples/s]
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[INFO|2026-05-24 05:48:53] llamafactory.data.loader:144 >> Sampled 10000 examples from dataset KKHYA/aya_dataset_converted.
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[INFO|2026-05-24 05:48:53] llamafactory.data.loader:144 >> Loading dataset KKHYA/daring_anteater_converted...
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Repo card metadata block was not found. Setting CardData to empty.
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Setting num_proc from 16 to 4 for the train split as it only contains 4 shards.
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[INFO|2026-05-24 05:49:03] llamafactory.data.loader:144 >> Sampled 10000 examples from dataset KKHYA/daring_anteater_converted.
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Converting format of dataset (num_proc=16): 0%| | 0/10000 [00:00<?, ? examples/s][WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nTacos from el Barrio\n\nA tray of tacos from el Barrio are pictured at their outdoor seating on Tuesday, May 4, 2021 in Athens, Georgia. (Photo/Lora Yordanova, lorayphoto@gmail.com)\n\nLora Yordanova\n\nThe adobo chicken, fried chicken and barbacoa tacos from el Barrio are only three of their various taco offerings. The tacos all come with a sauce best suited to them that can be drizzled on top. All of the tacos are around $2-3 and each varies slightly in price depending on the meat and toppings included.\n\nThe tacos were made with two corn tortillas to make sure that they didn\'t break, and the ingredients were fresh and delicious. The adobo chicken was particularly good, packing the most flavor in the chicken itself and the pickled onions on top. The barbacoa was probably the driest of the tacos and had the simplest toppings.\n\nEl Barrio Tacos & Tequila on S. Milledge Ave. is open from 11:30 a.m.-9 p.m. Tuesday through Saturday and until 8 p.m. on Sunday.\njson schema:\n{\n"title": "TacoDescription",\n"type": "object",\n"properties": {\n"restaurantName": {"title": "Restaurant Name", "type": "string"},\n"tacoName": {"title": "Taco Name", "type": "array", "items": {"type": "string"}},\n"priceRange": {"title": "Price Range", "type": "string"},\n"tortillaType": {"title": "Tortilla Type", "type": "string"},\n"ingredients": {"title": "Ingredients", "type": "array", "items": {"type": "string"}},\n"tacoSauce": {"title": "Taco Sauce", "type": "string"},\n"openingHours": {"title": "Opening Hours", "type": "string"},\n"location": {"title": "Location", "type": "string"}\n},\n"required": ["restaurantName", "tacoName", "priceRange", "tortillaType", "ingredients", "tacoSauce", "openingHours", "location"]\n}', 'role': 'user'}, {'content': '{\n"restaurantName": "El Barrio Tacos & Tequila",\n"tacoName": ["adobo chicken tacos", "fried chicken tacos", "barbacoa tacos"],\n"priceRange": "$2-3",\n"tortillaType": "corn tortillas",\n"ingredients": ["adobo chicken", "fried chicken", "barbacoa", "pickled onions"],\n"tacoSauce": "a sauce best suited to each taco",\n"openingHours": "11:30 a.m.-9 p.m. Tuesday through Saturday, until 8 p.m. on Sunday",\n"location": "S. Milledge Ave., Athens, Georgia"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "OregonStateSenateDistrict",\n"type": "object",\n"properties": {\n"districtNumber": {\n"title": "District Number",\n"type": "string"\n},\n"counties": {\n"title": "Counties",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"cities": {\n"title": "Cities",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"representatives": {\n"title": "Representatives",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"party": {\n"title": "Party",\n"type": "string"\n},\n"tenure": {\n"title": "Tenure",\n"type": "string",\n"format": "date-time"\n}\n},\n"required": ["name", "party", "tenure"]\n}\n},\n"electionResults": {\n"title": "Election Results",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"year": {\n"title": "Year",\n"type": "string",\n"format": "date-time"\n},\n"representative": {\n"title": "Representative",\n"type": "string"\n},\n"party": {\n"title": "Party",\n"type": "string"\n}\n},\n"required": ["year", "representative", "party"]\n}\n},\n"districtHistory": {\n"title": "District History",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"timePeriod": {\n"title": "Time Period",\n"type": "string",\n"format": "date-time"\n},\n"coverage": {\n"title": "Coverage",\n"type": "string"\n}\n},\n"required": ["timePeriod", "coverage"]\n}\n}\n},\n"required": ["districtNumber", "counties", "representatives", "electionResults", "districtHistory"]\n}\nparagraph:\nDistrict 10 of the Oregon State Senate comprises parts of Marion and Polk counties, including much of Salem. The last Senator elected to represent this district was a Democrat Deb Patterson (politician), in 2018 Republican Jackie Winters of Salem was elected, she died of lung cancer on May 29, 2019. Denyc Boles, who had been serving as the Representative for District 19 in the Oregon House of Representatives, was appointed on June 25, 2019 as Winters\' replacement. Senator Patterson ousted Denyc Boles in November, 2020 and will fulfill the remainder of Jackie Winters\' term.\n\nElection results\nDistrict boundaries have changed over time. From 1993 until 2003, the district covered parts of east Portland. Since 2003, the district has covered portions of the Salem metropolitan area.\n\nReferences\n\n10\nMarion County, Oregon\nPolk County, Oregon', 'role': 'user'}, {'content': '{\n"districtNumber": "10",\n"counties": ["Marion County, Oregon", "Polk County, Oregon"],\n"cities": ["Salem"],\n"representatives": [\n{\n"name": "Deb Patterson",\n"party": "Democrat",\n"tenure": "2018-11-01"\n},\n{\n"name": "Denyc Boles",\n"party": "Republican",\n"tenure": "2019-06-25"\n},\n{\n"name": "Jackie Winters",\n"party": "Republican",\n"tenure": "2019-01-01 - 2019-05-29"\n}\n],\n"electionResults": [\n{\n"year": "2018",\n"representative": "Deb Patterson",\n"party": "Democrat"\n},\n{\n"year": "2019",\n"representative": "Denyc Boles",\n"party": "Republican"\n},\n{\n"year": "2020",\n"representative": "Deb Patterson",\n"party": "Democrat"\n}\n],\n"districtHistory": [\n{\n"timePeriod": "1993-2003",\n"coverage": "parts of east Portland"\n},\n{\n"timePeriod": "2003-present",\n"coverage": "portions of the Salem metropolitan area"\n}\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nScotland and Wales remove Greece from quarantine safe list\n\nQuarantine restrictions will be imposed from tomorrow on people travelling from Greece to Scotland, the Scottish government has announced.\n\nTravellers will be expected to isolate for 14-days if they arrive in the country after 04:00 on Thursday.\n\nMinisters said they have taken the move due to a "significant rise" in cases of Covid-19 being brought into Scotland from people who have been to Greece.\n\nSimilar measures have been introduced in Wales, but not in England\n\nThe move has been linked to travellers returning from the Greek islands.\n\nADVERTISEMENT\n\nAs a result, the country has been removed from the quarantine safe list on public health grounds.\n\nThe prevalence of Covid-19 in Greece is currently about 20 per 100,000, but a number of cases of the virus in Scotland have been traced back to travel from Greece.\n\nMike Tibbert, vice president of the Scottish Passenger Agents\' Association said: "Although the Scottish government has warned that the so-called safe list is fluid and flexible and can change at any time, we are extremely concerned about the workload that is being put on our travel agent members with each change.\n\n"Travellers naturally do not want to lose out on a holiday they have paid for and many have made multiple changes to their destinations and dates throughout the safe list/quarantine changes.\n\n"Our members have made these changes for clients often with very little notice, sometimes overnight and always under extreme pressure.\n\n"Our members receive no income for making these changes."\n\nHe added: "The removal of Greece in this ongoing hokey cokey of countries which are \'in or out\' means it is impossible for Scots to plan or reorganise a holiday which they have already paid for.\njson schema:\n{\n"title": "TravelRestrictions",\n"type": "object",\n"properties": {\n"countryName": {\n"title": "Country Name",\n"type": "string"\n},\n"newRestriction": {\n"title": "New Restriction",\n"type": "object",\n"properties": {\n"restrictionType": {\n"title": "Restriction Type",\n"type": "string"\n},\n"startDate": {\n"title": "Start Date",\n"type": "string",\n"format": "date-time"\n}\n},\n"required": ["restrictionType", "startDate"]\n},\n"reason": {\n"title": "Reason",\n"type": "string"\n},\n"affectedCountries": {\n"title": "Affected Countries",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"prevalence": {\n"title": "Prevalence",\n"type": "object",\n"properties": {\n"rate": {\n"title": "Rate",\n"type": "number"\n},\n"unit": {\n"title": "Unit",\n"type": "string",\n"enum": ["per 100,000"]\n}\n},\n"required": ["rate", "unit"]\n},\n"impactOnTravelIndustry": {\n"title": "Impact on Travel Industry",\n"type": "string"\n}\n},\n"required": ["countryName", "newRestriction", "reason", "affectedCountries", "prevalence", "impactOnTravelIndustry"]\n}', 'role': 'user'}, {'content': '{\n"countryName": "Scotland",\n"newRestriction": {\n"restrictionType": "Quarantine",\n"startDate": "2021-08-05T04:00:00"\n},\n"reason": "significant rise in cases of Covid-19 being brought into Scotland from people who have been to Greece",\n"affectedCountries": ["Greece"],\n"prevalence": {\n"rate": 20,\n"unit": "per 100,000"\n},\n"impactOnTravelIndustry": "extremely concerned about the workload that is being put on our travel agent members with each change"\n}', 'role': 'assistant'}].
|
||
[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
|
||
[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "NewsletterSubscription",\n"type": "object",\n"properties": {\n"subscriberName": {\n"title": "Subscriber Name",\n"type": "string"\n},\n"subscriptionDate": {\n"title": "Subscription Date",\n"type": "string",\n"format": "date"\n},\n"subscribedPublications": {\n"title": "Subscribed Publications",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"privacyNotice": {\n"title": "Privacy Notice",\n"type": "string"\n},\n"unsubscribeInformation": {\n"title": "Unsubscribe Information",\n"type": "string"\n},\n"additionalRecommendations": {\n"title": "Additional Recommendations",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["subscriberName", "subscriptionDate", "subscribedPublications", "privacyNotice", "unsubscribeInformation"]\n}\nparagraph:\nWhen you subscribe we will use the information you provide to send you these newsletters. Sometimes they\'ll include recommendations for other related newsletters or services we offer. OurPrivacy Noticeexplains more about how we use your data, and your rights. You can unsubscribe at any time.\n\nRead More\n\nRelated Articles\n\nRead More\n\nRelated Articles\n\nMichael Lennox, chief executive of Community Pharmacy Somerset, said: "It\'s fantastic to see the launch of the next two pharmacy-led vaccination sites in Somerset and great to see community pharmacy taking an even greater role during the pandemic to support people in Somerset.\n\n"We know that people will really value having the additional choice in location and that pharmacies can make a significant contribution to our Somerset vaccination programmes for Covid."\n\nThe retailer has also recently started to offer vaccinations in other pharmacies including Bluewater, Gloucester and Huddersfield, with an option to expand further to more Boots stores in the future.', 'role': 'user'}, {'content': '{\n"subscriberName": "Michael Lennox",\n"subscriptionDate": "2022-02-16",\n"subscribedPublications": ["Community Pharmacy Somerset Newsletter"],\n"privacyNotice": "OurPrivacy Noticeexplains more about how we use your data, and your rights",\n"unsubscribeInformation": "You can unsubscribe at any time",\n"additionalRecommendations": ["Related Articles", "Related Articles", "Boots Vaccination Services"]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nStarting this Monday morning with temperatures in the 30s across most of the Panhandle. Skies area partly cloudy and under quiet conditions. For this afternoon we are going to be seeing those temperatures increasing into the 60s and 70s, setting us above average. Cloud cover will also increase for today, but winds will stay on the light side. A ridge like pattern will give us plenty of warm temperatures through this week with a mix of 70s after today.\n\nRain has been reduced in the region but still tracking the potential for scattered showers on Friday and on Sunday. Models are not in good agreement so plenty of details to iron out. Stay tuned.\n\nHave a great week,\n\nMeteorologist Maria Pasillas\n\nCopyright 2022 Nexstar Media Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.\njson schema:\n{"title": "WeatherForecast", "type": "object", "properties": {"date": {"title": "Date", "type": "string", "format": "date"}, "startingTemperature": {"title": "Starting Temperature", "type": "number", "minimum": 0}, "maxTemperature": {"title": "Max Temperature", "type": "number", "minimum": 0}, "skyCondition": {"title": "Sky Condition", "type": "string"}, "windCondition": {"title": "Wind Condition", "type": "string"}, "precipitationProbability": {"title": "Precipitation Probability", "type": "object", "properties": {"friday": {"title": "Friday", "type": "number", "minimum": 0, "maximum": 100}, "sunday": {"title": "Sunday", "type": "number", "minimum": 0, "maximum": 100}}, "required": ["friday", "sunday"]}, "additionalNotes": {"title": "Additional Notes", "type": "string"}}, "required": ["date", "startingTemperature", "maxTemperature", "skyCondition", "windCondition", "precipitationProbability"]}', 'role': 'user'}, {'content': '{\n "date": "Monday",\n "startingTemperature": 30,\n "maxTemperature": 70,\n "skyCondition": "partly cloudy",\n "windCondition": "light",\n "precipitationProbability": {\n "friday": 50,\n "sunday": 50\n },\n "additionalNotes": "Rain has been reduced in the region but still tracking the potential for scattered showers on Friday and on Sunday. Models are not in good agreement so plenty of details to iron out."\n}', 'role': 'assistant'}, {'content': 'paragraph:\nFaig Agayev to announce voting from Azerbaijan in Eurovision-2019\n\nPublic Television and Radio Broadcasting Company has announced the name of the person who will announce the voting from Azerbaijan in Eurovision-2019 song contest to be held in Tel-Aviv.\n\nReport informs citing the Public Television that People\'s Artist Faig Agayev will announce the votes of our participants in the popular song contest.\n\nAccording to the rules of the contest, Faig Aghayev will announce the points given by Azerbaijan on the live air of Public Television, which will seal the fate of the final participants. The points given will be added to the contest participants\' assets.\n\nNotably, our representative Chingiz Mustafayev will perform with the song Truth in the second semi-final of the song contest to be started on May 14.\n\nSinger-composer Murad Arif will be commentator from Azerbaijan of the contest, which is held under the slogan \'Dare to Dream\'.\n\nIf you find out orphographic mistake in the text, please select mistaken part of the text and press Ctrl + Enter.\njson schema:\n{\n"title": "EurovisionVotingAnnouncement",\n"type": "object",\n"properties": {\n"announcerName": {"title": "Announcer Name", "type": "string"},\n"country": {"title": "Country", "type": "string"},\n"contestYear": {"title": "Contest Year", "type": "number"},\n"announcerRole": {"title": "Announcer Role", "type": "string"},\n"contestantName": {"title": "Contestant Name", "type": "string"},\n"contestSong": {"title": "Contest Song", "type": "string"},\n"semiFinalNumber": {"title": "Semi-Final Number", "type": "number"},\n"contestTheme": {"title": "Contest Theme", "type": "string"},\n"commentatorName": {"title": "Commentator Name", "type": "string"}\n},\n"required": ["announcerName", "country", "contestYear", "announcerRole", "contestantName", "contestSong", "semiFinalNumber", "contestTheme", "commentatorName"]\n}', 'role': 'user'}, {'content': '{\n"announcerName": "Faig Agayev",\n"country": "Azerbaijan",\n"contestYear": 2019,\n"announcerRole": "announce the points given by Azerbaijan",\n"contestantName": "Chingiz Mustafayev",\n"contestSong": "Truth",\n"semiFinalNumber": 2,\n"contestTheme": "Dare to Dream",\n"commentatorName": "Murad Arif"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CourtJudgment",\n"type": "object",\n"properties": {\n"caseID": {\n"title": "Case ID",\n"type": "string"\n},\n"plaintiff": {\n"title": "Plaintiff",\n"type": "string"\n},\n"defendant": {\n"title": "Defendant",\n"type": "string"\n},\n"judgmentAmount": {\n"title": "Judgment Amount",\n"type": "number"\n},\n"propertyDescription": {\n"title": "Property Description",\n"type": "object",\n"properties": {\n"size": {\n"title": "Size",\n"type": "number"\n},\n"address": {\n"title": "Address",\n"type": "string"\n},\n"features": {\n"title": "Features",\n"type": "string"\n}\n},\n"required": ["size", "address", "features"]\n},\n"partiesInvolved": {\n"title": "Parties Involved",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"role": {\n"title": "Role",\n"type": "string"\n}\n},\n"required": ["name", "role"]\n}\n}\n},\n"required": ["caseID", "plaintiff", "defendant", "judgmentAmount", "propertyDescription", "partiesInvolved"]\n}\nparagraph:\nIn September, Kinsley Construction obtained a $13.94 million judgment against 120 York LLC, which owns the building at 210 York St. near PeoplesBank Park, home of the York Revolution. The property is 53,000 square feet and features a sign that reads "Think Loud" in black letters.\n\nCourt documents state that the members of 120 York are Chad Taylor, Chad Gracey and Patrick Dahlheimer, the lead guitarist, drummer and bassist for Live, respectively, and their friend and business partner, Bill Hynes. They\'re also investors in United Fiber & Data.', 'role': 'user'}, {'content': '{\n"caseID": "September Judgment Case",\n"plaintiff": "Kinsley Construction",\n"defendant": "120 York LLC",\n"judgmentAmount": 13940000,\n"propertyDescription": {\n"size": 53000,\n"address": "210 York St.",\n"features": "A building with a sign that reads \'Think Loud\'"\n},\n"partiesInvolved": [\n{\n"name": "Chad Taylor",\n"role": "Member of 120 York LLC"\n},\n{\n"name": "Chad Gracey",\n"role": "Member of 120 York LLC"\n},\n{\n"name": "Patrick Dahlheimer",\n"role": "Member of 120 York LLC"\n},\n{\n"name": "Bill Hynes",\n"role": "Member of 120 York LLC"\n}\n]\n}', 'role': 'assistant'}].
|
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "FootballTeam", "type": "object", "properties": {"teamName": {"title": "Team Name", "type": "string"}, "tournament": {"title": "Tournament", "type": "string"}, "year": {"title": "Year", "type": "number"}, "result": {"title": "Result", "type": "string"}, "starPlayers": {"title": "Star Players", "type": "array", "items": {"type": "object", "properties": {"playerName": {"title": "Player Name", "type": "string"}, "position": {"title": "Position", "type": "string"}, "team": {"title": "Team", "type": "string"}}, "required": ["playerName", "position", "team"]}}, "prediction": {"title": "Prediction", "type": "object", "properties": {"predictorName": {"title": "Predictor Name", "type": "string"}, "predictedPlayer": {"title": "Predicted Player", "type": "string"}, "predictedPerformance": {"title": "Predicted Performance", "type": "string"}}, "required": ["predictorName", "predictedPlayer", "predictedPerformance"]}, "reports": {"title": "Reports", "type": "array", "items": {"type": "object", "properties": {"reportSource": {"title": "Report Source", "type": "string"}, "reportContent": {"title": "Report Content", "type": "string"}}, "required": ["reportSource", "reportContent"]}}, "playerStats": {"title": "Player Stats", "type": "object", "properties": {"playerName": {"title": "Player Name", "type": "string"}, "goals": {"title": "Goals", "type": "number"}, "assists": {"title": "Assists", "type": "number"}, "appearances": {"title": "Appearances", "type": "number"}}, "required": ["playerName", "goals", "assists", "appearances"]}}, "required": ["teamName", "tournament", "year", "result", "starPlayers", "prediction", "reports", "playerStats"]}\nparagraph:\nBrazil are among the tournament favourites to triumph this time round after they were suffered a devastating 7-1 defeat to Germany in the semi-finals in 2014.\n\nThe Selecao boast a host of star players like Philippe Coutinho, Roberto Firmino and superstar Neymar – however, it\'s the Chelsea wideman that Carlos is backing to have a great tournament and even said he\'s up there among the game\'s elite players.\n\n\'Neymar is going to be marvellous in Russia and win the trophy for us,\' Carlos said as per the Metro.\n\n\'But you know who else is going to have a big World Cup? Willian.\n\n\'People talk about [Lionel] Messi, [Cristiano] Ronaldo, Robert Lewandowski and Neymar, but for me, Willian is right up there.\n\n\'He\'s in really good form and always takes responsibility on the pitch.\'\n\nWith Anthony Martial\'s future unclear at Old Trafford there were reports by ESPN that Jose Mourinho has earmarked the Chelsea as a potential replacement for the Frenchman.\n\nMourinho is said to be a keen admirer of the Chelsea star and have previously working together at Stamford Bridge, with the Brazilian impressing last season after bagging 13 goals and 12 assists in 55 appearances in all competitions.', 'role': 'user'}, {'content': '{\n "teamName": "Brazil",\n "tournament": "World Cup",\n "year": 2018,\n "result": "Among the tournament favorites",\n "starPlayers": [\n {\n "playerName": "Philippe Coutinho",\n "position": "Not mentioned",\n "team": "Brazil"\n },\n {\n "playerName": "Roberto Firmino",\n "position": "Not mentioned",\n "team": "Brazil"\n },\n {\n "playerName": "Neymar",\n "position": "Forward",\n "team": "Brazil"\n },\n {\n "playerName": "Willian",\n "position": "Winger",\n "team": "Brazil"\n }\n ],\n "prediction": {\n "predictorName": "Carlos",\n "predictedPlayer": "Neymar",\n "predictedPerformance": "Marvellous and to win the trophy"\n },\n "reports": [\n {\n "reportSource": "Metro",\n "reportContent": "Carlos backing Neymar and Willian to have a great World Cup"\n },\n {\n "reportSource": "ESPN",\n "reportContent": "Jose Mourinho interested in Willian as a potential replacement for Anthony Martial"\n }\n ],\n "playerStats": {\n "playerName": "Willian",\n "goals": 13,\n "assists": 12,\n "appearances": 55\n }\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThe Northern Hispanic Latino Coalition is pleased to announce that on Friday, March 30, there will be a march to honor and celebrate the life and contributions of Cesar Chavez.\n\nThe march will begin at 6 p.m. at the Gateway Shopping Shopping Center in Anderson, across from the Safeway Store, on Balls Ferry Road. The march will conclude a short distance away at the Anderson City Hall Community Center. The entire community is invited to attend and enjoy the celebration with music, presentations, and a fund raiser dinner until 8 p.m.\n\nLocal sponsors include the Shasta County Public Health Department, the Northern Hispanic Latino Coalition and the city of Anderson Parks and Recreation Department.\n\nThe dinner will cost $8 for adults and $5 for children 12 and under. All proceeds will be use for the NHlC Latino Graduation Scholarship Program.\n\nCesar Chavez (1927 to 1993) is well known as a great civil rights leader in our country.\n\nA veteran of the United States Navy, he went on to become an advocate for farm worker rights. He was a highly respected leader in the area of fair labor practices.\n\nUnder the leadership of Chavez, the United Farm Workers made historic achievements in the area of workers" rights, through peaceful demonstrations and boycotts.\njson schema:\n{\n"title": "MarchEvent",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"eventDate": {"title": "Event Date", "type": "string", "format": "date"},\n"startTime": {"title": "Start Time", "type": "string", "format": "time"},\n"location": {\n"title": "Location",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"address": {"title": "Address", "type": "string"},\n"city": {"title": "City", "type": "string"},\n"state": {"title": "State", "type": "string"},\n"zip": {"title": "Zip", "type": "string"}\n},\n"required": ["name", "address", "city", "state", "zip"]\n},\n"endTime": {"title": "End Time", "type": "string", "format": "time"},\n"sponsors": {\n"title": "Sponsors",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"ticketPrice": {\n"title": "Ticket Price",\n"type": "object",\n"properties": {\n"adult": {"title": "Adult", "type": "number"},\n"child": {"title": "Child", "type": "number"}\n},\n"required": ["adult", "child"]\n},\n"purpose": {\n"title": "Purpose",\n"type": "object",\n"properties": {\n"programName": {"title": "Program Name", "type": "string"},\n"description": {"title": "Description", "type": "string"}\n},\n"required": ["programName", "description"]\n},\n"honoree": {\n"title": "Honoree",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"bio": {"title": "Bio", "type": "string"},\n"areaOfContribution": {"title": "Area of Contribution", "type": "string"}\n},\n"required": ["name", "bio", "areaOfContribution"]\n}\n},\n"required": ["eventName", "eventDate", "startTime", "location", "endTime", "sponsors", "ticketPrice", "purpose", "honoree"]\n}', 'role': 'user'}, {'content': '{\n"eventName": "March to honor and celebrate the life and contributions of Cesar Chavez",\n"eventDate": "2023-03-30",\n"startTime": "18:00:00",\n"location": {\n"name": "Gateway Shopping Shopping Center",\n"address": "Balls Ferry Road",\n"city": "Anderson",\n"state": "California",\n"zip": ""\n},\n"endTime": "20:00:00",\n"sponsors": ["Shasta County Public Health Department", "Northern Hispanic Latino Coalition", "Anderson Parks and Recreation Department"],\n"ticketPrice": {\n"adult": 8,\n"child": 5\n},\n"purpose": {\n"programName": "NHlC Latino Graduation Scholarship Program",\n"description": "All proceeds from the dinner will be used for the NHlC Latino Graduation Scholarship Program."\n},\n"honoree": {\n"name": "Cesar Chavez",\n"bio": "Cesar Chavez (1927 to 1993) is well known as a great civil rights leader in our country. A veteran of the United States Navy, he went on to become an advocate for farm worker rights and was a highly respected leader in the area of fair labor practices.",\n"areaOfContribution": "Farm worker rights and fair labor practices"\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nBurleigh County has recorded a fourth coronavirus-related death, while a 77th has been confirmed in Cass County.\n\nThe Cass County woman in her 80s had underlying medical conditions, but the Burleigh County man in his 80s did not, according to the state Department of Health. His death was only the third in the state in that category. The two new deaths raised the state total to 102.\n\nCass has long been North Dakota\'s COVID-19 hot spot, but that distinction has passed to Burleigh and neighboring Morton County this month. Gov. Doug Burgum on Tuesday announced the formation of a task force to address the rising cases in the region, and community health leaders were set to release more information on Wednesday afternoon.\n\nActive cases in North Dakota have more than tripled this month, coinciding with the reopening of the economy and an increase in testing. Burleigh leads the state in active cases, at 285, and Morton is third, with 80. The two counties together have more than one-third of the state\'s 1,038 active cases. Cass County has 120 of them.\n\nHealth officials on Wednesday reported a total of 89 new coronavirus cases in 21 counties, including 27 in Burleigh and nine in Morton, pushing the statewide total since the start of the pandemic to 6,227. There have been 351 hospitalizations and 5,087 recoveries. Thirty-nine people remained hospitalized Wednesday, up four from the previous day. The number of people in North Dakota tested for coronavirus at least once is at 151,083, and total tests number 300,971.\njson schema:\n{\n"title": "Covid19Report",\n"type": "object",\n"properties": {\n"reportDate": {\n"title": "Report Date",\n"type": "string",\n"format": "date"\n},\n"newDeaths": {\n"title": "New Deaths",\n"type": "object",\n"properties": {\n"burleighCounty": {\n"title": "Burleigh County",\n"type": "integer"\n},\n"cassCounty": {\n"title": "Cass County",\n"type": "integer"\n},\n"stateTotal": {\n"title": "State Total",\n"type": "integer"\n}\n},\n"required": ["burleighCounty", "cassCounty", "stateTotal"]\n},\n"cumulativeDeaths": {\n"title": "Cumulative Deaths",\n"type": "integer"\n},\n"newCases": {\n"title": "New Cases",\n"type": "object",\n"properties": {\n"burleighCounty": {\n"title": "Burleigh County",\n"type": "integer"\n},\n"mortonCounty": {\n"title": "Morton County",\n"type": "integer"\n},\n"stateTotal": {\n"title": "State Total",\n"type": "integer"\n}\n},\n"required": ["burleighCounty", "mortonCounty", "stateTotal"]\n},\n"cumulativeCases": {\n"title": "Cumulative Cases",\n"type": "integer"\n},\n"activeCases": {\n"title": "Active Cases",\n"type": "object",\n"properties": {\n"burleighCounty": {\n"title": "Burleigh County",\n"type": "integer"\n},\n"mortonCounty": {\n"title": "Morton County",\n"type": "integer"\n},\n"cassCounty": {\n"title": "Cass County",\n"type": "integer"\n},\n"stateTotal": {\n"title": "State Total",\n"type": "integer"\n}\n},\n"required": ["burleighCounty", "mortonCounty", "cassCounty", "stateTotal"]\n},\n"hospitalizations": {\n"title": "Hospitalizations",\n"type": "object",\n"properties": {\n"total": {\n"title": "Total",\n"type": "integer"\n},\n"current": {\n"title": "Current",\n"type": "integer"\n}\n},\n"required": ["total", "current"]\n},\n"tests": {\n"title": "Tests",\n"type": "object",\n"properties": {\n"peopleTested": {\n"title": "People Tested",\n"type": "integer"\n},\n"totalTests": {\n"title": "Total Tests",\n"type": "integer"\n}\n},\n"required": ["peopleTested", "totalTests"]\n}\n},\n"required": ["reportDate", "newDeaths", "cumulativeDeaths", "newCases", "cumulativeCases", "activeCases", "hospitalizations", "tests"]\n}', 'role': 'user'}, {'content': '{\n"reportDate": "2021-01-27",\n"newDeaths": {\n"burleighCounty": 1,\n"cassCounty": 1,\n"stateTotal": 2\n},\n"cumulativeDeaths": 102,\n"newCases": {\n"burleighCounty": 27,\n"mortonCounty": 9,\n"stateTotal": 89\n},\n"cumulativeCases": 6227,\n"activeCases": {\n"burleighCounty": 285,\n"mortonCounty": 80,\n"cassCounty": 120,\n"stateTotal": 1038\n},\n"hospitalizations": {\n"total": 351,\n"current": 39\n},\n"tests": {\n"peopleTested": 151083,\n"totalTests": 300971\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "CompanyDescription",\n"type": "object",\n"properties": {\n"companyName": {\n"title": "Company Name",\n"type": "string"\n},\n"companyDescription": {\n"title": "Company Description",\n"type": "string"\n},\n"solutions": {\n"title": "Solutions",\n"type": "object",\n"properties": {\n"solutionName": {\n"title": "Solution Name",\n"type": "string"\n},\n"solutionDescription": {\n"title": "Solution Description",\n"type": "string"\n}\n},\n"required": ["solutionName", "solutionDescription"]\n},\n"platform": {\n"title": "Platform",\n"type": "object",\n"properties": {\n"platformName": {\n"title": "Platform Name",\n"type": "string"\n},\n"platformDescription": {\n"title": "Platform Description",\n"type": "string"\n}\n},\n"required": ["platformName", "platformDescription"]\n},\n"cloudProvider": {\n"title": "Cloud Provider",\n"type": "string"\n}\n},\n"required": ["companyName", "companyDescription", "solutions", "platform", "cloudProvider"]\n}\nparagraph:\nWe unite information across the enterprise, converging front-end sales with back-end supply chain execution. Our software, platform technology and unmatched experience help drive both top-line growth and bottom-line profitability for our customers.\nManhattan Associates designs, builds and delivers leading edge cloud and on-premises solutions so that across the store, through your network or from your fulfillment center, you are ready to reap the rewards of the omnichannel marketplace.\nAbout Manhattan Active® Order Management Systems\nThe Manhattan Active Omni suite is the first of its kind, engineered for an omnichannel world, and built to deliver on the customer experience promise. Born in the cloud, Manhattan Active Omni is a comprehensive portfolio of solutions and services that is always current and fully extensible.\nManhattan Active® runs on Google Cloud.\nManhattan Active® is proud to run on Google Cloud.', 'role': 'user'}, {'content': '{\n"companyName": "Manhattan Associates",\n"companyDescription": "Unites information across the enterprise, converging front-end sales with back-end supply chain execution. The software and platform technology help drive both top-line growth and bottom-line profitability for customers.",\n"solutions": {\n"solutionName": "Manhattan Active® Omni suite",\n"solutionDescription": "The first of its kind, engineered for an omnichannel world, and built to deliver on the customer experience promise. Born in the cloud, Manhattan Active Omni is a comprehensive portfolio of solutions and services that is always current and fully extensible."\n},\n"platform": {\n"platformName": "Manhattan Active®",\n"platformDescription": "Leading edge cloud and on-premises solutions that help you be ready to reap the rewards of the omnichannel marketplace across the store, through your network or from your fulfillment center."\n},\n"cloudProvider": "Google Cloud"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "Person",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"occupation": {\n"title": "Occupation",\n"type": "string"\n},\n"spouseName": {\n"title": "Spouse Name",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"yearsActive": {\n"title": "Years Active",\n"type": "string"\n},\n"artFocus": {\n"title": "Art Focus",\n"type": "string"\n},\n"artistsCollected": {\n"title": "Artists Collected",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"auctionValue": {\n"title": "Auction Value",\n"type": "number"\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n}\n}\nparagraph:\nWalther Lauffs was a German industrialist, and together with his wife Helga, a leading collector of post-war art.\n\nLauffs lived in Bad Honnef, Germany.\n\nWalther and Helga Lauffs collected art from the late 1960s onwards, with the help of the curator and art historian Paul Wember, who was director of Krefeld\'s Kaiser Wilhelm Museum from 1947 and 1975. They focused on art created in the 1960s and 1970s, including Pop Art, Arte Povera, Minimalism, Post-Minimalism, and Conceptual Art.\n\nTheir collection included work by Joseph Beuys, Mel Bochner, Lee Bontecou, Christo, Joseph Cornell, Hanne Darboven, Jan Dibbets, Lucio Fontana, Eva Hesse, Donald Judd, On Kawara, Yves Klein, Joseph Kosuth, Sol LeWitt, Piero Manzoni, John McCracken, Mario Merz, Robert Morris, Bruce Nauman, Louise Nevelson, Claes Oldenburg, Giulio Paolini, Michelangelo Pistoletto, Fred Sandback, George Segal, Richard Serra, Richard Tuttle, Cy Twombly, Günther Uecker, Tom Wesselmann, and Douglas Wheeler.\n\nIn 2008, Sotheby\'s auctioned their collection of post-war European art, for $140 million.\n\nReferences\n\nLiving people\nGerman industrialists\nGerman art collectors\nYear of birth missing (living people)', 'role': 'user'}, {'content': '{\n"name": "Walther Lauffs",\n"occupation": "German industrialist",\n"spouseName": "Helga",\n"location": "Bad Honnef, Germany",\n"yearsActive": "late 1960s onwards",\n"artFocus": "Pop Art, Arte Povera, Minimalism, Post-Minimalism, and Conceptual Art",\n"artistsCollected": ["Joseph Beuys", "Mel Bochner", "Lee Bontecou", "Christo", "Joseph Cornell", "Hanne Darboven", "Jan Dibbets", "Lucio Fontana", "Eva Hesse", "Donald Judd", "On Kawara", "Yves Klein", "Joseph Kosuth", "Sol LeWitt", "Piero Manzoni", "John McCracken", "Mario Merz", "Robert Morris", "Bruce Nauman", "Louise Nevelson", "Claes Oldenburg", "Giulio Paolini", "Michelangelo Pistoletto", "Fred Sandback", "George Segal", "Richard Serra", "Richard Tuttle", "Cy Twombly", "Günther Uecker", "Tom Wesselmann", "Douglas Wheeler"],\n"auctionValue": 140000000,\n"references": ["German industrialists", "German art collectors", "Living people"]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "ParalympianAthlete", "type": "object", "properties": {"athleteName": {"title": "Athlete Name", "type": "string"}, "sport": {"title": "Sport", "type": "string", "enum": ["Paralympic Athletics"]}, "category": {"title": "Category", "type": "string", "enum": ["F54/55"]}, "events": {"title": "Events", "type": "array", "items": {"type": "string", "enum": ["javelin", "shot put", "discus"]}}, "medals": {"title": "Medals", "type": "array", "items": {"type": "object", "properties": {"game": {"title": "Game", "type": "string", "enum": ["2004", "2008"]}, "medal": {"title": "Medal", "type": "string", "enum": ["gold", "silver", "bronze"]}, "event": {"title": "Event", "type": "string", "enum": ["javelin", "shot put"]}}, "required": ["game", "medal", "event"]}}, "externalLinks": {"title": "External Links", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "url": {"title": "URL", "type": "string", "format": "uri"}}, "required": ["name", "url"]}}}, "required": ["athleteName", "sport", "category", "events", "medals", "externalLinks"]}\nparagraph:\nTatjana Majcen Ljubič is a Paralympian athlete from Slovenia competing mainly in category F54/55 throwing events.\n\nTatjana has competed in two Paralympics, each time competing in all three throws. She has won two medals both in 2004 a silver in the F54/55 javelin and a bronze in the F54/55 shot put. Her other games in 2008 were ultimately unsuccessful.\n\nExternal links\n Ljubic&fname=Tatjana&gender=all profile on paralympic.org\n Tatjana Majcen Ljubič izbrala Žiher hišo at Žiher.si\n\nParalympic athletes of Slovenia\nAthletes (track and field) at the 2004 Summer Paralympics\nAthletes (track and field) at the 2008 Summer Paralympics\nParalympic silver medalists for Slovenia\nParalympic bronze medalists for Slovenia\nLiving people\nMedalists at the 2004 Summer Paralympics\nYear of birth missing (living people)\nParalympic medalists in athletics (track and field)\nSlovenian female javelin throwers\nSlovenian female shot putters', 'role': 'user'}, {'content': '{\n "athleteName": "Tatjana Majcen Ljubič",\n "sport": "Paralympic Athletics",\n "category": "F54/55",\n "events": ["javelin", "shot put", "discus"],\n "medals": [\n {\n "game": "2004",\n "medal": "silver",\n "event": "javelin"\n },\n {\n "game": "2004",\n "medal": "bronze",\n "event": "shot put"\n }\n ],\n "externalLinks": [\n {\n "name": "Ljubic",\n "url": "https://www.paralympic.org/athletes/tatjana-majcen-ljubic"\n },\n {\n "name": "Tatjana Majcen Ljubič izbrala Žiher hišo",\n "url": "https://www.ziher.si/tatjana-majcen-ljubic-izbrala-ziher-hiso/"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CityOrigin",\n"type": "object",\n"properties": {\n"cityName": {\n"title": "City Name",\n"type": "string"\n},\n"settlementType": {\n"title": "Settlement Type",\n"type": "string"\n},\n"originalName": {\n"title": "Original Name",\n"type": "string"\n},\n"yearFounded": {\n"title": "Year Founded",\n"type": "number"\n},\n"description": {\n"title": "Description",\n"type": "string"\n},\n"languageOrigin": {\n"title": "Language Origin",\n"type": "string"\n}\n},\n"required": ["cityName", "settlementType", "originalName", "yearFounded", "description", "languageOrigin"]\n}\nparagraph:\nWhy is Peterborough called Peterborough?\n\nThis work is based on data provided through www.VisionofBritain.org.uk and uses historical material which is copyright of the Great Britain Historical GIS Project and the University of Portsmouth\n\n10:44Wednesday 28 June 2017\n\nWe say our city\'s name on a daily basis - yet how often do we stop to think about its origins?\n\nPeterborough began as a Saxon settlement. The Saxons built a village called Medehamstede, "place of the spring by the river".\n\nAround 655AD an abbey was built next to it. The abbey was plundered by the Danes in 870 and was then abandoned.\n\nA new abbey was built in 972 and a village grew nearby. In around 1000AD a wall was built around the settlement to protect it from the attacks of the Danes.\n\nIt was called St Peters burgh, burgh being the Saxon word for a fortified settlement.\n\nThe Abbot allowed the people of the nearby village to have a market and Peterborough was born.\n\nThe Abbey was destroyed by fire in 1116 by an army of Saxons and Danes and construction of the present cathedral was commenced, but was not completed till early in the 16th century.\n\nThe Penguin Dictionary of British Place Names, written by historian Adrian Room, reveals that Pode Hole – a village near Spalding – actually means toad\'s swamp, and Eye is Anglo-Saxon for "raised land above the fen".\n\nAll the towns and villages ending in \'by\' or \'thorpe\' have Scandinavian origins, while Castor is derived from the old Saxon name for a Roman castle or fort. Villages with \'end\' in their name usually refer to the end of a drove or road across the dry land near the Fens.\n\nThe name Peakirk comes from St Pega\'s Church, which is in the village, while Thornhaugh means an enclosure defended by a thorn hedge.', 'role': 'user'}, {'content': '{\n"cityName": "Peterborough",\n"settlementType": "fortified settlement",\n"originalName": "Medehamstede, St Peters burgh",\n"yearFounded": 655,\n"description": "A Saxon settlement that began as a village called Medehamstede, \'place of the spring by the river\'. An abbey was built next to it in 655AD and a new one in 972. A wall was built around the settlement in around 1000AD to protect it from the attacks of the Danes. It was called St Peters burgh, burgh being the Saxon word for a fortified settlement.",\n"languageOrigin": "Saxon"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nTwelfth Night is a play by William Shakespeare.\n\nTwelfth Night may also refer to:\n\nFilm and television\n Twelfth Night (1910 film), a short silent film\n Twelfth Night (1933 film), a short Technicolor film\n Twelfth Night (1955 film) or Dvenadtsataya noch, a Russian language film\n Twelfth Night (1966 film), an Australian television film\n Twelfth Night (1970 film), a British television film\n Twelfth Night (1980 film), a film by John Gorrie for BBC Television Shakespeare\n Twelfth Night (1986 film), an Australian film\n Twelfth Night (1988 film), a television adaptation of Kenneth Branagh\'s 1987 stage production\n Twelfth Night (1996 film), a film by Trevor Nunn\n Twelfth Night, or What You Will, a 1998 TV film by Nicholas Hytner\n\nOther uses\n Twelfth Night (holiday) or Epiphany Eve or the Twelfth Day of Christmas, January 5\n Twelfth Night (band), an English neo-progressive rock band\n Twelfth Night Theatre, a theatre in Brisbane, Queensland, Australian \n Twelfth Night, an album by Mark Knopfler and Eric Clapton\njson schema:\n{\n"title": "References",\n"type": "object",\n"properties": {\n"work": {\n"title": "Work",\n"type": "string",\n"enum": ["Twelfth Night"]\n},\n"creator": {\n"title": "Creator",\n"type": "string",\n"enum": ["William Shakespeare"]\n},\n"categories": {\n"title": "Categories",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"type": {\n"title": "Type",\n"type": "string"\n}\n}\n}\n},\n"additionalProperties": false\n}\n}', 'role': 'user'}, {'content': '{\n"title": "References",\n"type": "object",\n"properties": {\n"work": {\n"title": "Work",\n"type": "string",\n"enum": ["Twelfth Night"]\n},\n"creator": {\n"title": "Creator",\n"type": "string",\n"enum": ["William Shakespeare"]\n},\n"categories": {\n"title": "Categories",\n"type": "array",\n"items": [\n{\n"name": {"title": "Name", "type": "string", "enum": ["Film and television", "Twelfth Night (1910 film)", "Twelfth Night (1933 film)", "Twelfth Night (1955 film)", "Twelfth Night (1966 film)", "Twelfth Night (1970 film)", "Twelfth Night (1980 film)", "Twelfth Night (1986 film)", "Twelfth Night (1988 film)", "Twelfth Night (1996 film)", "Twelfth Night, or What You Will (1998 TV film)", "Twelfth Night (holiday)", "Twelfth Night (band)", "Twelfth Night Theatre", "Twelfth Night (album by Mark Knopfler and Eric Clapton)"]},\n"type": {"title": "Type", "type": "string", "enum": ["film", "short silent film", "short Technicolor film", "Russian language film", "Australian television film", "British television film", "television film", "Australian film", "television adaptation of stage production", "English neo-progressive rock band", "theatre in Brisbane, Queensland, Australian", "album by Mark Knopfler and Eric Clapton"]}\n}\n]\n},\n"additionalProperties": false\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "CommitteeMeeting",\n"type": "object",\n"properties": {\n"committeeName": {"title": "Committee Name", "type": "string"},\n"committeeHead": {"title": "Committee Head", "type": "string"},\n"findings": {"title": "Findings", "type": "string"},\n"cases": {"title": "Cases", "type": "string"},\n"investigationType": {"title": "Investigation Type", "type": "string"},\n"witnesses": {"title": "Witnesses", "type": "array", "items": {"type": "string"}},\n"meetingGoal": {"title": "Meeting Goal", "type": "string"}\n},\n"required": ["committeeName", "committeeHead", "findings", "cases", "investigationType", "witnesses", "meetingGoal"]\n}\nparagraph:\nAssembly committee finds Facebook \'complicit\' in Delhi violence\n\nThe committee has also urged the need for an independent investigation leading to the filing of a supplementary chargesheet in the ongoing cases related to Delhi violence.\n\nThis image has been used for representational purpose only\n\nThe Peace and Harmony Committee of Delhi Assembly headed by Raghav Chadha has, prima facie, found Facebook "complicit" in northeast Delhi violence and decided to summon officials of the social media giant in order to examine them on "oath and determine on their culpability".\n\n"The committee through its Chairman Raghav Chadha has prima facie found Facebook complicit in Delhi riots of February 2020 on the premise of incriminatory material produced on record by the witnesses as well as their scathing depositions before the Committee and thus deciding to summon Facebook officials in its next meeting in order to examine them on oath and determine on their culpability," said an official release by the Committee.\n\nThe committee has also urged the need for an independent investigation leading to the filing of a supplementary chargesheet in the ongoing cases related to Delhi violence.\n\nThe committee had earlier called upon other expert witnesses which have deposed before the committee and have contributed some invaluable insights. The committee aims to expeditiously resolve the current issue in hand, it added in the statement.', 'role': 'user'}, {'content': '{\n"committeeName": "Peace and Harmony Committee of Delhi Assembly",\n"committeeHead": "Raghav Chadha",\n"findings": "Facebook \'complicit\' in northeast Delhi violence",\n"cases": "Delhi violence of February 2020",\n"investigationType": "independent investigation leading to the filing of a supplementary chargesheet",\n"witnesses": ["other expert witnesses"],\n"meetingGoal": "expeditiously resolve the current issue in hand"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "TheaterWorkshop",\n"type": "object",\n"properties": {\n"workshopName": {\n"title": "Workshop Name",\n"type": "string"\n},\n"supportingOrganization": {\n"title": "Supporting Organization",\n"type": "string"\n},\n"sponsor": {\n"title": "Sponsor",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"performanceDate": {\n"title": "Performance Date",\n"type": "string",\n"format": "date"\n},\n"performanceTime": {\n"title": "Performance Time",\n"type": "string",\n"format": "time"\n},\n"venue": {\n"title": "Venue",\n"type": "string"\n},\n"ticketPrice": {\n"title": "Ticket Price",\n"type": "number"\n},\n"fundingSource": {\n"title": "Funding Source",\n"type": "string"\n},\n"administeredBy": {\n"title": "Administered By",\n"type": "string"\n}\n},\n"required": [\n"workshopName",\n"supportingOrganization",\n"sponsor",\n"location",\n"performanceDate",\n"performanceTime",\n"venue",\n"ticketPrice",\n"fundingSource",\n"administeredBy"\n]\n}\nparagraph:\nChildren\'s Theatre Workshop performs "Haphazardly Ever After"\n\nMountain to Mountain Theatre, supported by the Jay Music and Entertainment Society JEMS, offers a two-week theater workshop for children in our community. Open to all ages and abilities, the children come together to learn musical theatre skills while developing their own talents, self-confidence, while learning to work cooperatively.\n\nThe 2019 summer production is Haphazardly Ever After, the musical and will be performed August 15 and 16 at 6:30pm at the Amos and Julia Ward Theater in Jay, New York. Admission is $3.00 or donation. Please come and support our youth and enjoy the show.\n\nThis project is made possible with funds from the Decentralization Program, a regrant program of the New York State Council on the Arts with the support of Governor Andrew M. Cuomo and the New York State Legislature and administered by Adirondack Lakes Center for the Arts', 'role': 'user'}, {'content': '{\n"workshopName": "Theater Workshop",\n"supportingOrganization": "Mountain to Mountain Theatre",\n"sponsor": "Jay Music and Entertainment Society (JEMS)",\n"location": "Jay, New York",\n"performanceDate": "2019-08-15",\n"performanceTime": "18:30",\n"venue": "Amos and Julia Ward Theater",\n"ticketPrice": 3,\n"fundingSource": "Decentralization Program, a regrant program of the New York State Council on the Arts with the support of Governor Andrew M. Cuomo and the New York State Legislature",\n"administeredBy": "Adirondack Lakes Center for the Arts"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "Correction",\n"type": "object",\n"properties": {\n"publicationName": {"title": "Publication Name", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"time": {"title": "Time", "type": "string", "format": "time"},\n"incorrectInformation": {"title": "Incorrect Information", "type": "string"},\n"correctInformation": {"title": "Correct Information", "type": "string"},\n"personResponsible": {"title": "Person Responsible", "type": "string"},\n"regretStatement": {"title": "Regret Statement", "type": "string"},\n"codeOfConduct": {"title": "Code of Conduct", "type": "string"},\n"codeOfPrinciples": {"title": "Code of Principles", "type": "string"},\n"fileDownloadLink": {"title": "File Download Link", "type": "string", "format": "uri"}\n},\n"required": ["publicationName", "date", "time", "incorrectInformation", "correctInformation", "personResponsible", "regretStatement", "codeOfConduct", "codeOfPrinciples", "fileDownloadLink"]\n}\nparagraph:\nCorrections and clarifications\n\nChicago Tribune\n\nJun 27, 2022 at 4:44 pm\n\n· An editorial that appeared in the June 24 edition about Tribune endorsements for Cook County Board commissioners incorrectly described candidate Rory McHale\'s status at the Chicago Office of the Inspector General. He had been the office\'s general counsel, but left the post at the end of May. The Tribune regrets the error.\n\nPublishing information quickly and accurately is a central part of the Chicago Tribune\'s news responsibility and a value shared in all our publications. Our editorial code of principles governs professional behavior and journalism standards. Everyone in our newsroom must agree to live up to this code of conduct. Download the file.', 'role': 'user'}, {'content': '{\n"publicationName": "Chicago Tribune",\n"date": "2022-06-27",\n"time": "16:44",\n"incorrectInformation": "incorrectly described candidate Rory McHale\'s status at the Chicago Office of the Inspector General as currently being the general counsel",\n"correctInformation": "Rory McHale had been the office\'s general counsel, but left the post at the end of May",\n"personResponsible": "Not specified in the text",\n"regretStatement": "The Tribune regrets the error",\n"codeOfConduct": "Our editorial code of principles governs professional behavior and journalism standards. Everyone in our newsroom must agree to live up to this code of conduct",\n"codeOfPrinciples": "Not specified in the text",\n"fileDownloadLink": "Download the file"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nVarious campuses of Infosys and Bharat Biotech are also guarded by the CISF\n\nThe Central Industrial Security Force (CISF) is providing security to 64 airports and 11 private establishments, including those of Reliance Industries, Tata Steel and Infosys, Union Minister of State for Home Nityanand Rai said on Wednesday.\n\nThe minister said the deployment of the CISF is considered on the basis of threat perception and the commitment of the management concerned to bear the cost of deployment.\n\n"At present, the CISF is deployed in 11 private sector companies, including in electronics and information technology sector," he said replying to a written question in Rajya Sabha.\n\nRai said the CISF was established under the CISF Act, 1968 for better protection and security of industrial undertakings owned and controlled by central and state governments, joint venture or private industrial undertaking.\n\nAccordingly, the CISF is providing security at 64 airports at present, including those operated under joint ventures and public private partnership (PPP), he said.\njson schema:\n{\n"title": "CISFSecurityDetails",\n"type": "object",\n"properties": {\n"organizationsSecured": {\n"title": "Organizations Secured",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"sectorSecured": {\n"title": "Sector Secured",\n"type": "string"\n},\n"deploymentBasis": {\n"title": "Deployment Basis",\n"type": "object",\n"properties": {\n"criteria": {\n"title": "Criteria",\n"type": "string"\n},\n"managementCommitment": {\n"title": "Management Commitment",\n"type": "string"\n}\n},\n"required": ["criteria", "managementCommitment"]\n},\n"numberOfAirportsSecured": {\n"title": "Number of Airports Secured",\n"type": "number"\n},\n"act": {\n"title": "Act",\n"type": "string"\n}\n},\n"required": ["organizationsSecured", "sectorSecured", "deploymentBasis", "numberOfAirportsSecured", "act"]\n}', 'role': 'user'}, {'content': '{\n"organizationsSecured": ["Reliance Industries", "Tata Steel", "Infosys", "Bharat Biotech"],\n"sectorSecured": "electronics and information technology sector, other private sector companies",\n"deploymentBasis": {\n"criteria": "threat perception",\n"managementCommitment": "commitment of the management concerned to bear the cost of deployment"\n},\n"numberOfAirportsSecured": 64,\n"act": "CISF Act, 1968"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "Obituary",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"dateOfBirth": {"title": "Date of Birth", "type": "string", "format": "date"},\n"dateOfDeath": {"title": "Date of Death", "type": "string", "format": "date"},\n"hometown": {"title": "Hometown", "type": "string"},\n"education": {"title": "Education", "type": "string"},\n"spouse": {"title": "Spouse", "type": "string"},\n"weddingDate": {"title": "Wedding Date", "type": "string", "format": "date"},\n"career": {"title": "Career", "type": "string"},\n"precededBy": {"title": "Preceded By", "type": "array", "items": {"type": "string"}},\n"survivedBy": {"title": "Survived By", "type": "string"},\n"memorialService": {"title": "Memorial Service", "type": "string"},\n"donationInstructions": {"title": "Donation Instructions", "type": "string", "format": "uri"}\n},\n"required": ["name", "dateOfBirth", "dateOfDeath", "hometown", "education", "spouse", "weddingDate", "career", "precededBy", "survivedBy", "memorialService", "donationInstructions"]\n}\nparagraph:\nWilliam Poirier\n\nOur dear Billy went to his heavenly home on November 19th, 2021; our hearts are broken for the sad loss to our family. William Francis Poirier was born July 14th, 1948 in Yakima to Anne and Vincent Poirier. He graduated from Davis in 1968. Billy was a hard worker, always providing for his wife, Cindy. They were married July 9th, 1977. Billy never knew a stranger, he had so many friends and acquaintances. He subcontracted mail delivery for many years from Selah to Easton, seven days a week. He later worked for Hansen Fruit, and his last job was working for Yakima Specialties, Inc. He was always proud of the jobs he held and had a wonderful work ethic. Bill was preceded in death by his mother Anne, father Vincent, brother Vince Jr., sister Sue, father-in-law Bob Krein, and mother-in-law Frances Krein. He is survived by his loving wife Cynthia and her siblings. There will be a private gathering in loving memory of Bill. We humbly request that any gift donations be given to the National Association of the Deaf (nad.org) in Billy\'s name.', 'role': 'user'}, {'content': '{\n"name": "William Francis Poirier",\n"dateOfBirth": "1948-07-14",\n"dateOfDeath": "2021-11-19",\n"hometown": "Yakima",\n"education": "Davis, 1968",\n"spouse": "Cindy",\n"weddingDate": "1977-07-09",\n"career": "Subcontracted mail delivery, Hansen Fruit, Yakima Specialties, Inc.",\n"precededBy": ["Anne", "Vincent Poirier", "Vince Jr.", "Sue", "Bob Krein", "Frances Krein"],\n"survivedBy": "Cynthia and her siblings",\n"memorialService": "There will be a private gathering",\n"donationInstructions": "nad.org"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "SIMDeal",\n"type": "object",\n"properties": {\n"providerName": {\n"title": "Provider Name",\n"type": "string"\n},\n"dealName": {\n"title": "Deal Name",\n"type": "string"\n},\n"dataAllowance": {\n"title": "Data Allowance",\n"type": "number"\n},\n"price": {\n"title": "Price",\n"type": "number"\n},\n"contractType": {\n"title": "Contract Type",\n"type": "string"\n},\n"callAllowance": {\n"title": "Call Allowance",\n"type": "string"\n},\n"textAllowance": {\n"title": "Text Allowance",\n"type": "string"\n},\n"roamingAllowance": {\n"title": "Roaming Allowance",\n"type": "string"\n},\n"addOnData": {\n"title": "Add-On Data",\n"type": "number",\n"format": "data-allowance"\n}\n},\n"required": ["providerName", "dealName", "dataAllowance", "price", "contractType", "callAllowance", "textAllowance", "roamingAllowance"]\n}\nparagraph:\nSmarty have released a new SIM only deal (Image: Getty Images/iStockphoto)\n\nAs the price of monthly phone bills soar shoppers are getting a lot less for their money, especially as things like EU data roaming has become an expensive add-on for many. To help keep costs down, Smarty has introduced a 30GB SIM only dea l for just £10 per month.\n\nA SIM-only deal is a good way to keep costs down, as it allows users to chose the exact data they need, pick minutes and swap at anytime if cheaper deals become available.\n\nAs part of Three Mobile, Smarty is a SIM-only mobile network providers that offers some of the best SIM only deals, including £30GB of data for £10 a month, 100GB of data for just £12 a month and unlimited for £18 a month.\n\nThe deal includes 30GB of 5G data, unlimited calls and texts and EU data roaming, all for £10 a month. The contract is rolling which means shoppers will be billed on the same day every month, but users can cancel at any time if they change their mind.\n\nThe included EU data roaming is a major plus for customers at the moment, as many other UK providers have scrapped this benefit. Before the UK left the EU many providers offered free calls, data and texts whilst on holiday but now shoppers have been known to spend upwards of £10 a day - on usage that used to be included.\n\nThe Smarty plan includes unlimited calls and texts in the EU for no extra fee, and 12GB of data can also be used on holiday as an add-on. It\'s capped £10 price also guarantees shoppers won\'t be charged an extra penny, as you simply cannot use more than what you pay for.', 'role': 'user'}, {'content': '{\n"providerName": "Smarty",\n"dealName": "30GB SIM only deal",\n"dataAllowance": 30,\n"price": 10,\n"contractType": "rolling",\n"callAllowance": "unlimited",\n"textAllowance": "unlimited",\n"roamingAllowance": "EU data roaming",\n"addOnData": 12\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nWant a Mood Boost? Listen To A Sad Song!\n\nScience says that sobbing to sad songs will ultimately help you feel happier overall, so what do you have to lose at this point?\n\nA study, published by Scientific Reports, supports this theory. Researchers explained that by getting out a good cry while listening to sad tunes, you will ultimately trigger feelings of pleasure and feel less stressed afterward.\n\nResearchers tested this hypothesis by asking study participants to fill out short surveys about their reactions while listening to various music.\n\nThey were asked to report how frequently they got goose bumps, felt shivers down their spine, felt like weeping or got a lump in their throat.\n\nResearchers then broke up the participants into two groups based on those who experienced chills and those who experienced tears and asked them to listen to six songs (three of which the subjects picks themselves) that were intended to evoke deep emotions.\n\nAfter monitoring their emotional state, heart rates and physical signs of pleasure, researchers concluded that the participants\' tears resulting from sadness can actually be "psychophysiologically calming," causing sensations of pleasure and even acting as a stress reliever.\njson schema:\n{\n"title": "StudyResults",\n"type": "object",\n"properties": {\n"studyTitle": {\n"title": "Study Title",\n"type": "string"\n},\n"theory": {\n"title": "Theory",\n"type": "string"\n},\n"researchersExplanation": {\n"title": "Researchers\' Explanation",\n"type": "string"\n},\n"testMethod": {\n"title": "Test Method",\n"type": "object",\n"properties": {\n"survey": {\n"title": "Survey",\n"type": "string"\n},\n"groups": {\n"title": "Groups",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["survey", "groups"]\n},\n"songs": {\n"title": "Songs",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"songName": {\n"title": "Song Name",\n"type": "string"\n},\n"emotion": {\n"title": "Intended Emotion",\n"type": "string"\n}\n},\n"required": ["songName", "emotion"]\n}\n},\n"results": {\n"title": "Results",\n"type": "object",\n"properties": {\n"emotionalState": {\n"title": "Emotional State",\n"type": "string"\n},\n"heartRate": {\n"title": "Heart Rate",\n"type": "string"\n},\n"physicalSignsOfPleasure": {\n"title": "Physical Signs of Pleasure",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["emotionalState", "heartRate"]\n}\n}\n}', 'role': 'user'}, {'content': '{\n"title": "StudyResults",\n"type": "object",\n"properties": {\n"studyTitle": {\n"title": "Study Title",\n"type": "string",\n"value": "A study published by Scientific Reports"\n},\n"theory": {\n"title": "Theory",\n"type": "string",\n"value": "Sobbing to sad songs will ultimately help you feel happier overall"\n},\n"researchersExplanation": {\n"title": "Researchers\' Explanation",\n"type": "string",\n"value": "By getting out a good cry while listening to sad tunes, you will ultimately trigger feelings of pleasure and feel less stressed afterward"\n},\n"testMethod": {\n"title": "Test Method",\n"type": "object",\n"properties": {\n"survey": {\n"title": "Survey",\n"type": "string",\n"value": "Participants were asked to fill out short surveys about their reactions while listening to various music"\n},\n"groups": {\n"title": "Groups",\n"type": "array",\n"items": {\n"type": "string"\n},\n"value": ["Participants who experienced chills", "Participants who experienced tears"]\n}\n}\n},\n"songs": {\n"title": "Songs",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"songName": {\n"title": "Song Name",\n"type": "string"\n},\n"emotion": {\n"title": "Intended Emotion",\n"type": "string"\n}\n},\n"required": ["songName", "emotion"]\n},\n"value": [\n{\n"songName": "Not specified",\n"emotion": "Intended to evoke deep emotions"\n}\n]\n},\n"results": {\n"title": "Results",\n"type": "object",\n"properties": {\n"emotionalState": {\n"title": "Emotional State",\n"type": "string",\n"value": "Tears resulting from sadness can actually be \'psychophysiologically calming\'"\n},\n"heartRate": {\n"title": "Heart Rate",\n"type": "string",\n"value": "Not specified"\n},\n"physicalSignsOfPleasure": {\n"title": "Physical Signs of Pleasure",\n"type": "array",\n"items": {\n"type": "string"\n},\n"value": ["Sensations of pleasure"]\n}\n},\n"required": ["emotionalState", "heartRate"]\n}\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "MayorTerm",\n"type": "object",\n"properties": {\n"mayorName": {"title": "Mayor Name", "type": "string"},\n"mayorTitle": {"title": "Mayor Title", "type": "string"},\n"termStartDate": {"title": "Term Start Date", "type": "string", "format": "date"},\n"charities": {\n"title": "Charities",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"charityName": {"title": "Charity Name", "type": "string"},\n"charityReason": {"title": "Reason for Support", "type": "string"}\n},\n"required": ["charityName", "charityReason"]\n}\n},\n"keyIssues": {\n"title": "Key Issues",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"issueName": {"title": "Issue Name", "type": "string"},\n"issueDescription": {"title": "Issue Description", "type": "string"}\n},\n"required": ["issueName", "issueDescription"]\n}\n},\n"futurePlans": {\n"title": "Future Plans",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"planName": {"title": "Plan Name", "type": "string"},\n"planDescription": {"title": "Plan Description", "type": "string"}\n},\n"required": ["planName", "planDescription"]\n}\n}\n},\n"required": ["mayorName", "mayorTitle", "termStartDate", "charities", "keyIssues", "futurePlans"]\n}\nparagraph:\nTown mayor to make community and environment key features of his year in office\n\nNew mayor of Huntingdon, Councillor Steve McAdam is looking forward to do "as much as he can" during his term in office.\n\nCllr McAdam was elected to the top civic post during the annual mayor-making ceremony at the town hall, taking over from outgoing mayor Councillor Sarah Gifford.\n\nIt was also decided at the meeting on Thursday that Audrey McAdam will be joining Cllr McAdam as the mayoress of Huntingdon.\n\nThe new mayor said: "I am really looking forward to doing what I can for the town, and trying to raise as much money as possible for charity. This year I have chosen the Magpas air ambulance service, the Papworth Trust, the Hunts Cancer Care Network and the 73 Squadron Air Cadets. There are many reasons why I have chosen these support networks, and I feel that they do such a good job that they need to be thanked.\n\n"I am also personally keen on environmental issues, and although a lot of the time the town council doesn\'t have the final say, we can try and influence as much change as we can.\n\n"There are certain things that we can do, like taking on our green space and managing it, to make it be the most attractive it can be. We have a brilliant team of groundspeople as we have seen in the past when we have been given a gold award for \'in bloom\' and I would like to see us get a higher award this year."\n\nCllr McAdam, who is also on the board of Trustee\'s for the Commemoration Hall has said he was looking forward to seeing the building re-opened again, and hopes that in the future it can provide a café.\n\nHe said: "I am also looking forward to having the new Coneygear centre open, which will be a massive improvement on what was there before. I am also looking forward to seeing the start of the building work for the new crematorium, as well the re-opening of Commemoration Hall, and hope that we can provide a new facility that isn\'t already in Huntingdon."', 'role': 'user'}, {'content': '{\n"mayorName": "Steve McAdam",\n"mayorTitle": "Mayor of Huntingdon",\n"termStartDate": "N/A",\n"charities": [\n{\n"charityName": "Magpas air ambulance service",\n"charityReason": "Does a good job and needs to be thanked"\n},\n{\n"charityName": "Papworth Trust",\n"charityReason": "Not specified in the paragraph"\n},\n{\n"charityName": "Hunts Cancer Care Network",\n"charityReason": "Does a good job and needs to be thanked"\n},\n{\n"charityName": "73 Squadron Air Cadets",\n"charityReason": "Does a good job and needs to be thanked"\n}\n],\n"keyIssues": [\n{\n"issueName": "Community",\n"issueDescription": "Personally keen on raising money for the town and local charities"\n},\n{\n"issueName": "Environment",\n"issueDescription": "Wants to influence environmental change and manage green spaces"\n}\n],\n"futurePlans": [\n{\n"planName": "Opening of the new Coneygear centre",\n"planDescription": "A massive improvement on what was there before"\n},\n{\n"planName": "Start of building work for the new crematorium",\n"planDescription": "Not specified in the paragraph"\n},\n{\n"planName": "Re-opening of Commemoration Hall",\n"planDescription": "Hopes to provide a new facility that isn\'t already in Huntingdon"\n}\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThe boy dresses as a security guard for "Day of dressing as his favorite person,quot;\n\nAfter an elementary school in Jacksonville, Arkansas, announced "Day of dressing like your favorite person," kindergarten student Easton Blocker He thought of the man who helps keep him and his friends safe.\n\nThe 5-year-old boy dressed as his favorite security guard at Bobby G. Lester Elementary School, an officer Jeffrey Cross. On Wednesday a picture of the two dressed in similar yellow and black suits was posted on the Jacksonville North Pulaski School District\'s Facebook page. Cross\'s shirt says "Security,quot; on the back, while Easton says: "Junior Security."\n\n"Look at this! Today is the & # 39; Day of dressing up as your favorite person & # 39; at Lester Elementary. Easton, a kindergarten student, dressed as an officer Cross, his favorite school safety officer.\n\nEaston\'s mother, Lauryn, he made his son\'s shirt.\n\n"From day one, he always had a fascination with Officer Cross," he told WTHV, a CBS affiliate. "That shirt will probably stay with him forever. It means a lot to him."\n\nThe security guard said seeing Easton dressed like him "makes me appreciate my work more."\n\nThis is the first year that Jacksonville North Pulaski School District employs armed security officers. Cross told WTHV that the children had questions about it and he told them he was "armed to protect them from someone bad who would come and hurt them."\n\nEaston\'s mother told the station that her son tells her every day that Cross "keeps us safe from the bad guys, mommy."\njson schema:\n{\n"title": "DressUpDay",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"participantName": {"title": "Participant Name", "type": "string"},\n"participantAge": {"title": "Participant Age", "type": "number"},\n"favoritePerson": {"title": "Favorite Person", "type": "string"},\n"favoritePersonRole": {"title": "Favorite Person Role", "type": "string"},\n"clothing": {"title": "Clothing", "type": "object", "properties": {\n"top": {"title": "Top", "type": "string"},\n"bottom": {"title": "Bottom", "type": "string"},\n"accessories": {"title": "Accessories", "type": "array", "items": {"type": "string"}}\n}, "required": ["top", "bottom"]\n},\n"reasonForChoice": {"title": "Reason for Choice", "type": "string"},\n"shirtMaker": {"title": "Shirt Maker", "type": "string"},\n"shirtMakerRelationToParticipant": {"title": "Shirt Maker Relation to Participant", "type": "string"},\n"significanceOfShirt": {"title": "Significance of Shirt", "type": "string"},\n"securityPresence": {"title": "Security Presence", "type": "object", "properties": {\n"securityEmployment": {"title": "Security Employment", "type": "string"},\n"childrenQuestions": {"title": "Children Questions", "type": "array", "items": {"type": "string"}},\n"securityExplanation": {"title": "Security Explanation", "type": "string"},\n"childsUnderstanding": {"title": "Child\'s Understanding", "type": "string"}\n}, "required": ["securityEmployment", "childrenQuestions", "securityExplanation", "childsUnderstanding"]\n}\n},\n"required": ["eventName", "location", "participantName", "participantAge", "favoritePerson", "favoritePersonRole", "clothing", "reasonForChoice", "shirtMaker", "shirtMakerRelationToParticipant", "significanceOfShirt", "securityPresence"]\n}', 'role': 'user'}, {'content': '{\n"eventName": "Day of dressing like your favorite person",\n"location": "Bobby G. Lester Elementary School, Jacksonville, Arkansas",\n"participantName": "Easton Blocker",\n"participantAge": 5,\n"favoritePerson": "officer Jeffrey Cross",\n"favoritePersonRole": "school safety officer",\n"clothing": {\n"top": "yellow and black suit",\n"bottom": "yellow and black suit"\n},\n"reasonForChoice": "The man who helps keep him and his friends safe",\n"shirtMaker": "Easton\'s mother, Lauryn",\n"shirtMakerRelationToParticipant": "Easton\'s mother",\n"significanceOfShirt": "A fascination with Officer Cross and a symbol of appreciation for his work",\n"securityPresence": {\n"securityEmployment": "Armed security officers",\n"childrenQuestions": ["Questions about the armed security officers"],\n"securityExplanation": "Armed to protect them from someone bad who would come and hurt them",\n"childsUnderstanding": "Easton tells his mother every day that Cross \'keeps us safe from the bad guys, mommy.\'"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "LockdownReview", "type": "object", "properties": {"newsletterSubscription": {"title": "Newsletter Subscription", "type": "object", "properties": {"subscribed": {"title": "Subscribed", "type": "boolean"}, "personalData": {"title": "Personal Data", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "email": {"title": "Email", "type": "string", "format": "email"}}, "required": ["name", "email"]}, "privacyNotice": {"title": "Privacy Notice", "type": "string", "format": "uri"}}, "required": ["subscribed", "personalData", "privacyNotice"]}, "lockdownReview": {"title": "Lockdown Review", "type": "object", "properties": {"phase": {"title": "Phase", "type": "number"}, "currentPhaseTimestamp": {"title": "Current Phase Timestamp", "type": "string", "format": "date-time"}, "firstMinisterStatement": {"title": "First Minister Statement", "type": "string"}, "changes": {"title": "Changes", "type": "array", "items": {"type": "object", "properties": {"description": {"title": "Description", "type": "string"}, "effectiveDate": {"title": "Effective Date", "type": "string", "format": "date-time"}, "conditional": {"title": "Conditional", "type": "boolean"}}, "required": ["description", "effectiveDate"]}}}, "required": ["phase", "currentPhaseTimestamp", "firstMinisterStatement", "changes"]}}, "required": ["newsletterSubscription", "lockdownReview"]}\nparagraph:\nWhen you subscribe we will use the information you provide to send you these newsletters. Sometimes they\'ll include recommendations for other related newsletters or services we offer. OurPrivacy Noticeexplains more about how we use your data, and your rights. You can unsubscribe at any time.\n\nNicola Sturgeon will reveal any further changes to be made as part of the Scottish Government\'s phase three lockdown review today.\n\nScotland moved into its third phase three weeks ago, with the First Minister stressing at the last review that the virus remains a serious threat to public health and that the phase could continue for some time.\n\nBingo halls can re-open with physical distancing and following guidance\n\nDriving lessons can resume – following guidance\n\nAmusement arcades and casinos can re-open following guidance including enhanced hygiene.\n\nFunfairs - both static and travelling - can re-open subject to relevant guidance.\n\nFurther changes may also take place with effect from Monday September 14, but these are conditional on the next review in three weeks time on Thursday, September 10.\n\nThese include indoor live events (with physical distancing and restricted numbers), the reopening of gyms, swimming pools and stadia and other indoor entertainment venues (e.g. theatres, live music/concert venues) following guidance such as with physical distancing requirements.\n\nFollow our daily live blog from first thing tomorrow for updates as we get them, including a breakdown of First Minister\'s Questions and the lockdown review.', 'role': 'user'}, {'content': '{\n "newsletterSubscription": {\n "subscribed": false,\n "personalData": {\n "name": "",\n "email": ""\n },\n "privacyNotice": "OurPrivacy Notice"\n },\n "lockdownReview": {\n "phase": 3,\n "currentPhaseTimestamp": "2020-08-24T00:00:00Z",\n "firstMinisterStatement": "The virus remains a serious threat to public health and the phase could continue for some time.",\n "changes": [\n {\n "description": "Bingo halls can re-open with physical distancing and following guidance",\n "effectiveDate": "2020-08-24T00:00:00Z"\n },\n {\n "description": "Driving lessons can resume – following guidance",\n "effectiveDate": "2020-08-24T00:00:00Z"\n },\n {\n "description": "Amusement arcades and casinos can re-open following guidance including enhanced hygiene",\n "effectiveDate": "2020-08-24T00:00:00Z"\n },\n {\n "description": "Funfairs - both static and travelling - can re-open subject to relevant guidance",\n "effectiveDate": "2020-08-24T00:00:00Z"\n },\n {\n "description": "Indoor live events (with physical distancing and restricted numbers), the reopening of gyms, swimming pools and stadia and other indoor entertainment venues (e.g. theatres, live music/concert venues) following guidance such as with physical distancing requirements",\n "effectiveDate": "2020-09-14T00:00:00Z",\n "conditional": true\n }\n ]\n }\n}', 'role': 'assistant'}, {'content': 'paragraph:\nYou\'ll get the latest updates on this topic in your browser notifications.\n\nHe\'s experienced "paralysis in his genitals" and legs, and is awaiting scans on his back and groin areas. Fortier added that he will require major back surgery in the coming days.\n\nBrendon suffers from Cauda equina syndrome, which is when the nerve roots in the lumbar spine are compressed, limiting movement and sensation. The condition was reportedly exacerbated by his jail stint in August.\n\n"Right now he is concentrating on his health. He is not doing promotion for the film," Fortier said.\n\nBrendon\'s manager did not respond to PEOPLE\'s request for comment.\n\nHe was arrested on Aug. 18 after he allegedly used false information to obtain prescription drugs. In addition to the felony charge, he was also charged with a misdemeanor for allegedly failing to properly identify himself when pulled over by police, handing them a California ID with the name Kelton Schultz. Brendon told police it was his brother\'s ID (he has an identical twin brother named Kelly Donovan and their family name is Schultz).\n\nNicholas Brendon (TERRE HAUTE CITY POLICE DEPT)\n\nNicholas Brendon\'s 2021 Mugshot\n\n| Credit: TERRE HAUTE CITY POLICE DEPT\n\nThe Criminal Minds actor was held at Vigo County Jail but was released soon after on his own recognizance. Fortier said he was made to sleep on a concrete floor during his stay. "During the arrest they were not quite careful with his condition," she added.\n\n"After realizing that I had a disease that was taking control of my life, I decided that the best way for me to regain my health was to enter a treatment facility," he wrote in a statement at the time.\n\nThe Psycho Beach Party actor returned to rehab in 2010, after he was tasered by police and charged with vandalism, resisting arrest and battery against a police officer, TMZ reported at the time. After pleading no contest, Brendon was sentenced to probation and community service.\n\nHe was arrested again in October 2014 in Boise, Idaho, where he was charged with malicious injury to property and restraining or obstructing officers. Police responded to a disturbance in a hotel lobby, where Brendon "showed signs of intoxication and repeatedly refused officers commands to stay seated while officers tried to speak to witnesses."\njson schema:\n{\n"title": "CriminalRecord",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"healthIssue": {\n"title": "Health Issue",\n"type": "string"\n},\n"medicalProcedure": {\n"title": "Medical Procedure",\n"type": "string"\n},\n"syndrome": {\n"title": "Syndrome",\n"type": "string"\n},\n"jailStay": {\n"title": "Jail Stay",\n"type": "string"\n},\n"arrestDate": {\n"title": "Arrest Date",\n"type": "string",\n"format": "date"\n},\n"charge": {\n"title": "Charge",\n"type": "string"\n},\n"idUsed": {\n"title": "ID Used",\n"type": "string"\n},\n"idOwner": {\n"title": "ID Owner",\n"type": "string"\n},\n"incidentDetails": {\n"title": "Incident Details",\n"type": "string"\n},\n"treatmentFacility": {\n"title": "Treatment Facility",\n"type": "string"\n},\n"previousArrest": {\n"title": "Previous Arrest",\n"type": "string",\n"format": "date"\n},\n"punishment": {\n"title": "Punishment",\n"type": "string"\n}\n},\n"required": [\n"name",\n"healthIssue",\n"medicalProcedure",\n"syndrome",\n"jailStay",\n"arrestDate",\n"charge",\n"idUsed",\n"idOwner",\n"incidentDetails",\n"treatmentFacility",\n"previousArrest",\n"punishment"\n]\n}', 'role': 'user'}, {'content': '{\n"name": "Nicholas Brendon",\n"healthIssue": "paralysis in his genitals and legs, Cauda equina syndrome",\n"medicalProcedure": "scans on his back and groin areas, major back surgery",\n"syndrome": "Cauda equina syndrome",\n"jailStay": "Vigo County Jail",\n"arrestDate": "2021-08-18",\n"charge": "felony charge for using false information to obtain prescription drugs, misdemeanor for failing to properly identify himself",\n"idUsed": "California ID with the name Kelton Schultz",\n"idOwner": "his brother (Kelly Donovan)",\n"incidentDetails": "used false information to obtain prescription drugs, held at Vigo County Jail but released soon after on his own recognizance, made to sleep on a concrete floor during his stay, arrested for allegedly refusing to stay seated while officers tried to speak to witnesses and showing signs of intoxication",\n"treatmentFacility": "rehab in 2010, treatment facility in an unspecified time",\n"previousArrest": "2010-00-00",\n"punishment": "probation and community service"\n}', 'role': 'assistant'}].
|
||
[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "StudySignUp",\n"type": "object",\n"properties": {\n"studyName": {"title": "Study Name", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"startTime": {"title": "Start Time", "type": "string", "format": "time"},\n"targetGroup": {"title": "Target Group", "type": "object", "properties": {\n"minAge": {"title": "Minimum Age", "type": "number"},\n"maxAge": {"title": "Maximum Age", "type": "number"},\n"group": {"title": "Group", "type": "string"}},\n"required": ["minAge", "maxAge", "group"]},\n"incentive": {"title": "Incentive", "type": "object", "properties": {\n"amount": {"title": "Amount", "type": "number"},\n"type": {"title": "Type", "type": "string"}},\n"required": ["amount", "type"]},\n"contact": {"title": "Contact", "type": "object", "properties": {\n"name": {"title": "Name", "type": "string"},\n"phone": {"title": "Phone", "type": "string"},\n"url": {"title": "URL", "type": "string"}},\n"required": ["name", "phone", "url"]}\n},\n"required": ["studyName", "date", "startTime", "targetGroup", "incentive", "contact"]\n}\nparagraph:\nUCSB Parent Teen Study\n\nApril 18, 2015 from 10:00am\n\nLocal teens (14-18 years old) are invited to participate with their mothers in a Parent-Teen Communication Study that is taking place at UCSB. Participating in this study takes about one hour and involves having conversations with your mother or child about different topics, including relationships, dating, sexuality, sexual orientation, marriage, and families.\n\nEach teen and mother who participates will receive a $15 cash or gift card incentive in appreciation of their time (total $30 combined).\n\nAppointments are available daily and on weekends. Call Audrey at (805) 380-6897 to sign up or learn more. Or, visit: http://ucsbstudy.wix.com/ucsbstudy', 'role': 'user'}, {'content': '{\n"studyName": "Parent-Teen Communication Study",\n"date": "2015-04-18",\n"startTime": "10:00:00",\n"targetGroup": {\n"minAge": 14,\n"maxAge": 18,\n"group": "local teens and their mothers"\n},\n"incentive": {\n"amount": 15,\n"type": "cash or gift card"\n},\n"contact": {\n"name": "Audrey",\n"phone": "(805) 380-6897",\n"url": "http://ucsbstudy.wix.com/ucsbstudy"\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThe original proposal of the measure by the Treasury had boosted the merger appeal of Banco BPM, Italy\'s third-largest bank, fuelling investor bets about a potential takeover by rival UniCredit CRDI.MI.\n\nSpeaking at a news conference after the cabinet approved the spending package, Franco said the cap on the tax incentives would remain at 2% of the assets of the smaller bank involved in a merger.\n\nAt the same news conference, Prime Minister Mario Draghi said he hoped that reductions in the rate of COVID-19 infection would mean that no further economic stimulus would be needed after the 40 billion euro ($50 billion) package approved by the cabinet on Thursday.\n\nTrending Topics\n\nTrending Articles\n\nIn This Story\n\nReuters, the news and media division of Thomson Reuters, is the world\'s largest international multimedia news provider reaching more than one billion people every day. Reuters provides trusted business, financial, national, and international news to professionals via Thomson Reuters desktops, the world\'s media organizations, and directly to consumers at Reuters.com and via Reuters TV.\njson schema:\n{\n"title": "NewsConference",\n"type": "object",\n"properties": {\n"measureProposal": {"title": "Measure Proposal", "type": "string"},\n"bankName1": {"title": "First Bank Name", "type": "string"},\n"bankName2": {"title": "Second Bank Name", "type": "string"},\n"taxIncentiveCap": {"title": "Tax Incentive Cap", "type": "number"},\n"rateOfCovid19Infection": {"title": "Rate of COVID-19 Infection", "type": "string"},\n"economicStimulusPackage": {"title": "Economic Stimulus Package", "type": "string"},\n"reutersDescription": {"title": "Reuters Description", "type": "string"}\n},\n"required": ["measureProposal", "bankName1", "bankName2", "taxIncentiveCap", "rateOfCovid19Infection", "economicStimulusPackage", "reutersDescription"]\n}', 'role': 'user'}, {'content': '{\n"measureProposal": "boosted the merger appeal of Banco BPM",\n"bankName1": "Banco BPM",\n"bankName2": "UniCredit CRDI.MI",\n"taxIncentiveCap": 2,\n"rateOfCovid19Infection": "reductions in the rate of COVID-19 infection",\n"economicStimulusPackage": "40 billion euro ($50 billion)",\n"reutersDescription": "Reuters, the news and media division of Thomson Reuters, is the world\'s largest international multimedia news provider"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nWhen you subscribe we will use the information you provide to send you these newsletters. Sometimes they\'ll include recommendations for other related newsletters or services we offer. OurPrivacy Noticeexplains more about how we use your data, and your rights. You can unsubscribe at any time.\n\nA hardworking player who got on with his job with no histrionics, it was rather fitting that Weller Hauraki quietly slipped into retirement in between shifts on a construction site.\n\nHauraki was a fixture in Super League for over a decade, joining Celtic Crusaders from Parramatta Eels before enjoying spells with Leeds Rhinos, Castleford Tigers, Salford Red Devils, Widnes Vikings and most recently Hull KR.\n\nThe 35-year-old captained Rovers in 2020 but was not offered a new contract and left the club at the end of November.\n\nWith the help of Hull FC player welfare manager Feka Paleaaesina, Hauraki quickly found a new job at PBS Construction and was enjoying it so much he decided to call time on his rugby league career last month.\n\nThe prospect of another stop-start season caused by the coronavirus pandemic did not appeal to Hauraki, meaning he bowed out without knowing in the behind-closed-doors Hull derby last October.\njson schema:\n{\n"title": "PlayerProfile",\n"type": "object",\n"properties": {\n"playerName": {\n"title": "Player Name",\n"type": "string"\n},\n"teams": {\n"title": "Teams",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"lastTeam": {\n"title": "Last Team",\n"type": "string"\n},\n"retired": {\n"title": "Retired",\n"type": "boolean"\n},\n"retirementReason": {\n"title": "Retirement Reason",\n"type": "string"\n},\n"currentJob": {\n"title": "Current Job",\n"type": "string"\n}\n},\n"required": ["playerName", "teams", "position", "lastTeam", "retired", "retirementReason", "currentJob"]\n}', 'role': 'user'}, {'content': '{\n"playerName": "Weller Hauraki",\n"teams": ["Celtic Crusaders", "Leeds Rhinos", "Castleford Tigers", "Salford Red Devils", "Widnes Vikings", "Hull KR"],\n"position": "Not specified in the paragraph",\n"lastTeam": "Hull KR",\n"retired": true,\n"retirementReason": "The prospect of another stop-start season caused by the coronavirus pandemic",\n"currentJob": "A job at PBS Construction"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nCNN\'s Jim Acosta gave Donald Trump the equivalent of a six-minute eye-roll Saturday as he discussed the one-term president\'s impending speech at the Conservative Political Action Conference, saying, "comparing Trump to a clown is most definitely an insult to clowns." He added, "Please take your fake White House seal, and go play president somewhere else."\n\n"Former president Donald Trump is returning to the CPAC stage tomorrow," Acosta said during an afternoon "Newsroom" broadcast Saturday. "Hide the flags," he added, cuing footage to roll of Trump\'s 2019 and 2020 CPAC speeches that showed him embracing Old Glory.\n\nAfter calling the clips "so disturbing," the CNN host ripped into the Republican: "Now the same man who gripped the Stars and Stripes won\'t let go of something else: The idea that he\'s still president."\n\nHe pointed to Trump\'s recent press conference announcing his lawsuit against Google, Twitter and Facebook, which included flags and a seal on the podium, as "some kind of POTUS Potemkin village with Trump as the pretender-in-chief."\n\n"Yes, he seems to be spending his post-presidency playing president and, as always, he is playing the victim, too, this time claiming disinformation is being directed at him," Acosta added. "What\'s next? Another \'Stop the Steal\' rally on the National Mall? You may find some of the Proud Boys and Oath Keepers are busy — in jail," he spat, referring to the Jan. 6 Capitol riot carried out by Trump supporters who sought to stop the certification of President Joe Biden\'s 2020 election win.\n\nAcosta wrapped up the segment, saying that Trump\'s Sunday CPAC speech will just be another part of his "act."\njson schema:\n{\n"title": "NewsSegment",\n"type": "object",\n"properties": {\n"speakerName": {\n"title": "Speaker Name",\n"type": "string"\n},\n"event": {\n"title": "Event",\n"type": "string"\n},\n"organization": {\n"title": "Organization",\n"type": "string"\n},\n"audience": {\n"title": "Audience",\n"type": "string"\n},\n"topic": {\n"title": "Topic",\n"type": "string"\n},\n"subtopics": {\n"title": "Subtopics",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"opinions": {\n"title": "Opinions",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"reactions": {\n"title": "Reactions",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["speakerName", "event", "organization", "audience", "topic"]\n}', 'role': 'user'}, {'content': '{\n"speakerName": "Jim Acosta",\n"event": "CPAC (Conservative Political Action Conference)",\n"organization": "CNN",\n"audience": "Television and online viewers",\n"topic": "Donald Trump\'s impending speech at CPAC",\n"subtopics": ["Trump\'s impending speech", "Trump\'s press conference", "Capitol riot", "Stop the Steal rally"],\n"opinions": ["comparing Trump to a clown is an insult to clowns", "Trump is still gripping the idea that he\'s still president", "Trump is playing president and playing the victim", "disinformation is being directed at Trump"],\n"reactions": ["Please take your fake White House seal, and go play president somewhere else", "Hide the flags", "so disturbing", "another \'Stop the Steal\' rally on the National Mall", "You may find some of the Proud Boys and Oath Keepers are busy — in jail"]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nMigori leaders urged to encourage education among youth\n\nMigori county women Representative Pamela Odhiambo has challenged leaders to encourage education among the youth in order to promote development among the Kuria community.\n\nCiting FGM as a major hindrance, she urged the community to shun the outdated practice that was robbing girls of their future.\n\nGoing by the 2019 KNEC statistics, Migori County has greatly improved in performance both in KCPE and KCSE.\n\nEarly marriages as a result of FGM has decreased although the practice is still done in secret among the Kuria community.\n\nGet breaking news on your Mobile as-it-happens. SMS \'NEWS\' to 20153\n\nAddressing hundreds of students drawn from primary, secondary and University institutions within the Kuria community at Nyamaharaga mixed secondary school in Kuria west, Migori county women Rep Pamela Odhiambo called on the community to shun away some cultural practices that have been overtaken with time.\n\nTana North Deputy County Commissioner Philip Soi and local leader Mohamed Abdi, 60 have vowed to support her efforts, urging other chiefs and their assistants as well as residents to ensure that all school-aged children are enrolled in January.\n\nAbshiro Mansa, an activist with Girl Child Network, hailed Mumina\'s promotion saying it was an honor to women in Tana North who have endured discrimination by men.\njson schema:\n{\n"title": "CommunityMeeting",\n"type": "object",\n"properties": {\n"topic": {"title": "Topic", "type": "string"},\n"speaker": {"title": "Speaker", "type": "string"},\n"audience": {"title": "Audience", "type": "array", "items": {"type": "string"}},\n"location": {"title": "Location", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"agendaItems": {"title": "Agenda Items", "type": "array", "items": {"type": "string"}},\n"supporters": {\n"title": "Supporters",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"position": {"title": "Position", "type": "string"}\n},\n"required": ["name", "position"]\n}\n},\n"issuesDiscussed": {"title": "Issues Discussed", "type": "array", "items": {"type": "string"}}\n},\n"required": ["topic", "speaker", "audience", "location", "date", "agendaItems", "supporters", "issuesDiscussed"]\n}', 'role': 'user'}, {'content': '{\n"topic": "Encouraging education among the youth and shunning harmful cultural practices",\n"speaker": "Migori county women Representative Pamela Odhiambo",\n"audience": ["Primary students", "Secondary students", "University students", "Residents"],\n"location": "Nyamaharaga mixed secondary school in Kuria west, Migori county",\n"date": "",\n"agendaItems": ["Promote development through education", "Shun outdated practices such as FGM", "Ensure all school-aged children are enrolled in school"],\n"supporters": [\n{\n"name": "Tana North Deputy County Commissioner Philip Soi",\n"position": "Tana North Deputy County Commissioner"\n},\n{\n"name": "Mohamed Abdi",\n"position": "Local Leader"\n}\n],\n"issuesDiscussed": ["FGM as a major hindrance to education and development", "Decrease in early marriages due to FGM", "Secret practice of FGM in the Kuria community"]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "ComplaintAboutViolence",\n"type": "object",\n"properties": {\n"organizationName": {\n"title": "Organization Name",\n"type": "string"\n},\n"representativeName": {\n"title": "Representative Name",\n"type": "string"\n},\n"eventDate": {\n"title": "Event Date",\n"type": "string",\n"format": "date"\n},\n"eventLocation": {\n"title": "Event Location",\n"type": "string"\n},\n"eventDescription": {\n"title": "Event Description",\n"type": "string"\n},\n"victimName": {\n"title": "Victim Name",\n"type": "string"\n},\n"victimTreatment": {\n"title": "Victim Treatment",\n"type": "string"\n},\n"witnessName": {\n"title": "Witness Name",\n"type": "string"\n},\n"callToAction": {\n"title": "Call to Action",\n"type": "string"\n},\n"perpetrator": {\n"title": "Perpetrator",\n"type": "string"\n}\n},\n"required": [\n"organizationName",\n"representativeName",\n"eventDate",\n"eventLocation",\n"eventDescription",\n"victimName",\n"victimTreatment",\n"witnessName",\n"callToAction",\n"perpetrator"\n]\n}\nparagraph:\nUnited Party for National Development (UPND) Lusaka Province Women\'s Chairperson, Rosa Zulu has called for an immediate end to the widespread barbaric and brutal attacks on women in the country.\n\nReacting to the humiliating treatment of the incarcerated National Democratic Congress (NDC) leader, Dr. Chishimba Kambwili\'s wife, Carol on Tuesday, Mrs. Zulu said the dehumanizing manner in which Mrs. Kambwili and her daughter were treated was an afront on the well-being of women in the country.\n\nAccording to video footage that has caused a stir on social media and received widespread condemnation from the larger Zambian society, Mrs Kambwili is seen being visibly brutalized and stripped necked by overzealous Police officers at Lusaka\'s Magistrates Complex on Tuesday.\n\nMrs. Zulu charged that the trend had the potential to reverse the tremendous strides that the country had made towards the emancipation of women.\n\nThe visibly shaken and seemingly traumatized Zulu, who witnessed both the attacks on Ms Kambwili on Tuesday and the subsequent brutal attack on Kanyama Constituency Chairperson for Gender, Ronica Musomela, today, said that she was at pains to understand where the country was headed.\n\nShe has since called on the Police to stop being used as tools of violence and oppression not only on women but also on those opposed to the ruling Patriotic Front (PF) rule.', 'role': 'user'}, {'content': '{\n"organizationName": "United Party for National Development (UPND) Lusaka Province",\n"representativeName": "Rosa Zulu",\n"eventDate": "Tuesday",\n"eventLocation": "Lusaka\'s Magistrates Complex",\n"eventDescription": "Humiliating treatment of the incarcerated National Democratic Congress (NDC) leader, Dr. Chishimba Kambwili\'s wife, Carol including being visibly brutalized and stripped necked by overzealous Police officers",\n"victimName": "Carol Kambwili",\n"victimTreatment": "Brutalized and stripped necked",\n"witnessName": "Rosa Zulu",\n"callToAction": "An immediate end to the widespread barbaric and brutal attacks on women in the country, and for the Police to stop being used as tools of violence and oppression not only on women but also on those opposed to the ruling Patriotic Front (PF) rule",\n"perpetrator": "Police officers"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "ProjectDetails",\n"type": "object",\n"properties": {\n"projectName": {\n"title": "Project Name",\n"type": "string"\n},\n"alternativeNames": {\n"title": "Alternative Names",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"components": {\n"title": "Components",\n"type": "object",\n"properties": {\n"length": {\n"title": "Length",\n"type": "number"\n},\n"lanes": {\n"title": "Lanes",\n"type": "number"\n},\n"interchanges": {\n"title": "Interchanges",\n"type": "number"\n},\n"entrancesAndExits": {\n"title": "Entrances and Exits",\n"type": "number"\n}\n},\n"required": ["length", "lanes", "interchanges", "entrancesAndExits"]\n},\n"cost": {\n"title": "Cost",\n"type": "number"\n},\n"constructionPeriod": {\n"title": "Construction Period",\n"type": "number"\n},\n"yearConsidered": {\n"title": "Year Considered",\n"type": "string",\n"format": "date"\n},\n"reasonForScrapping": {\n"title": "Reason for Scrapping",\n"type": "string"\n},\n"fateOfSafeguardedLand": {\n"title": "Fate of Safeguarded Land",\n"type": "string"\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["projectName", "alternativeNames", "location", "components", "cost", "constructionPeriod", "yearConsidered", "reasonForScrapping", "fateOfSafeguardedLand", "references"]\n}\nparagraph:\nThe Singapore Underground Road System, SURS (Chinese: 地下道路系统; Malay: Sistem Jalan Bawah Tanah Singapura) was a proposed road underground system in Singapore. The project comprised two 15\xa0km-long, 2-4 lane concentric ring tunnels around the central business district, with 8 interchanges and 33 entrances and exits. The capital cost was estimated to be at $2.4 billion with a construction period of 15 years. The project was first considered in the 1980s and was seen as a way to cater for increasing traffic growth in and out of the city centre.\n\nOn 29 August 2017, the Land Transport Authority (LTA) scrapped this project as part of a shift to a car-lite society. This comes after enhancements to the Mass Rapid Transit (MRT) network and changes to land use policies over the years since the project\'s conceptualisation. As a result, land safeguarded for the project since 1993 was freed up for other developmental purposes, allowing for greater flexibility by developers.\n\nReferences \n\n2017 disestablishments in Singapore\nTransport in Singapore\nDowntown Core (Singapore)\nKallang\nNovena, Singapore', 'role': 'user'}, {'content': '{\n"projectName": "Singapore Underground Road System",\n"alternativeNames": [],\n"location": "Singapore",\n"components": {\n"length": 30,\n"lanes": 2,\n"interchanges": 8,\n"entrancesAndExits": 33\n},\n"cost": 2.4,\n"constructionPeriod": 15,\n"yearConsidered": "1980",\n"reasonForScrapping": "shift to a car-lite society, enhancements to the Mass Rapid Transit (MRT) network and changes to land use policies",\n"fateOfSafeguardedLand": "freed up for other developmental purposes",\n"references": [\n"2017 disestablishments in Singapore",\n"Transport in Singapore",\n"Downtown Core (Singapore)",\n"Kallang",\n"Novena, Singapore"\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nThe Lord & Taylor flagship store has debuted on Walmart.com, featuring fashion items from more than 125 of the most well-known brands and we are HERE for it! Now, Walmart will sell items from Vince Camuto, Karl Lagerfeld, Miss Selfridge, La La Anthony, Lucky Brand and more.\n\nThe companies teamed up to start selling women\'s, men\'s and kids\' items, featuring everything from clothing to shoes to accessories.\n\nDenise Incandela, the head of fashion of Walmart U.S. eCommerce, says this is giving the company the change to introduce "new premium brands to our customers."\n\nFor Lord & Taylor, this partnership is helping them to advance their digital presence, RJ Cilley, SVP of Digital at Lord & Taylor says.\n\nAnd the best part? Orders over $35 will be eligible for free two-day shipping.\n\nSo for all the best summer finds, shop till you drop all -- from the comfort of your desk!\n\nThese products were curated by our "Good Morning America" editorial team. "GMA" has affiliate partnerships, so we will get a small share of revenue from your purchases through these links. All product prices are determined by the retailer and subject to change. By visiting these websites, you will leave GoodMorningAmerica.com and any information you share with the retailer will be governed by its website\'s terms and conditions and privacy policies.\njson schema:\n{\n"title": "RetailCollaboration",\n"type": "object",\n"properties": {\n"stores": {\n"title": "Stores Involved",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"storeName": {\n"title": "Store Name",\n"type": "string"\n},\n"flagshipStore": {\n"title": "Flagship Store",\n"type": "boolean"\n}\n},\n"required": ["storeName", "flagshipStore"]\n}\n},\n"productCategories": {\n"title": "Product Categories",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"products": {\n"title": "Products",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"productName": {\n"title": "Product Name",\n"type": "string"\n},\n"brand": {\n"title": "Brand",\n"type": "string"\n}\n},\n"required": ["productName", "brand"]\n}\n},\n"benefits": {\n"title": "Benefits",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"benefitType": {\n"title": "Benefit Type",\n"type": "string"\n},\n"benefitDetails": {\n"title": "Benefit Details",\n"type": "string"\n}\n},\n"required": ["benefitType", "benefitDetails"]\n}\n},\n"partnershipDetails": {\n"title": "Partnership Details",\n"type": "object",\n"properties": {\n"responsibleParty": {\n"title": "Responsible Party",\n"type": "string"\n},\n"role": {\n"title": "Role",\n"type": "string"\n}\n},\n"required": ["responsibleParty", "role"]\n}\n}\n}', 'role': 'user'}, {'content': '{\n"stores": [\n{\n"storeName": "Lord & Taylor",\n"flagshipStore": true\n},\n{\n"storeName": "Walmart",\n"flagshipStore": false\n}\n],\n"productCategories": [\n"women\'s items",\n"men\'s items",\n"kids\' items",\n"clothing",\n"shoes",\n"accessories"\n],\n"products": [\n{\n"productName": "Vince Camuto products",\n"brand": "Vince Camuto"\n},\n{\n"productName": "Karl Lagerfeld products",\n"brand": "Karl Lagerfeld"\n},\n{\n"productName": "Miss Selfridge products",\n"brand": "Miss Selfridge"\n},\n{\n"productName": "La La Anthony products",\n"brand": "La La Anthony"\n},\n{\n"productName": "Lucky Brand products",\n"brand": "Lucky Brand"\n}\n],\n"benefits": [\n{\n"benefitType": "free shipping",\n"benefitDetails": "Orders over $35 will be eligible for free two-day shipping"\n}\n],\n"partnershipDetails": {\n"responsibleParty": "Lord & Taylor",\n"role": "advancing their digital presence"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "ManagerChange",\n"type": "object",\n"properties": {\n"managerName": {\n"title": "Manager Name",\n"type": "string"\n},\n"teamName": {\n"title": "Team Name",\n"type": "string"\n},\n"predecessorName": {\n"title": "Predecessor Name",\n"type": "string"\n},\n"reasonForChange": {\n"title": "Reason for Change",\n"type": "string"\n},\n"interimManagerName": {\n"title": "Interim Manager Name",\n"type": "string"\n},\n"permanentManagerName": {\n"title": "Permanent Manager Name",\n"type": "string"\n},\n"problemAreas": {\n"title": "Problem Areas",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"boardExpectations": {\n"title": "Board Expectations",\n"type": "string"\n}\n},\n"required": [\n"managerName",\n"teamName",\n"predecessorName",\n"reasonForChange"\n]\n}\nparagraph:\nShareAll sharing options for:Report: Ole Gunnar Solskjaer to be sacked by Manchester United\n\nPer multiple reports, the Manchester United board of directors have decided to sack Ole Gunnar Solskjaer. An official announcement is expected in the coming hours, and the search will begin once again for a new manager on a permanent basis.\n\nManchester United have decided to part company with manager Ole Gunnar Solskjaer, The Athletic understands... #MUFC\n\nIt is rumored that Darren Fletcher or Michael Carrick could take over as interim manager, with the other acting as assistant, while the search for a permanent manager continues. Zinedine Zidane was rumored over the last couple weeks to be an option, but the club may be waiting until the end of the season to decide on a permanent replacement. Any manager that comes in now would likely only be a short term option.\n\nSolskjaer took over from Jose Mourinho after a disastrous start to the 2018/19 season, and impressed enough to earn the permanent job. In his two full seasons in charge he led the team to 3rd and 2nd place respectively in the Premier League, reached the semi-final stage of cup competitions on 5 occasions, and reached the 2021 UEFA Europa League final. Unfortunately he never led the team to silverware, and the collapse of the team to start the 2021/22 campaign is indicative of the holes that remain in the squad despite meaningful work and recruitment in his rebuilding project.\n\nWhoever takes over as manager will indeed find a stronger team on paper than the one Solskjaer took over in 2018, but that doesn\'t mean there isn\'t a lot of work to do. Midfield will remain a problem, as will establishing order in defending, and the attacking problems since adding Cristiano Ronaldo to the mix will need to be sorted. The board clearly believe that the current team should be good enough to challenge for silverware, but a commitment to building a team the new manager wants must be made or they run the risk of doing all of this over again in a couple years time.', 'role': 'user'}, {'content': '{\n"managerName": "To be determined",\n"teamName": "Manchester United",\n"predecessorName": "Ole Gunnar Solskjaer",\n"reasonForChange": "Manchester United\'s board of directors have decided to part company with Solskjaer due to the collapse of the team to start the 2021/22 campaign and his failure to lead the team to silverware in his tenure.",\n"interimManagerName": "Possibly Darren Fletcher or Michael Carrick",\n"permanentManagerName": "Zinedine Zidane (rumored, decision may be made at the end of the season)",\n"problemAreas": [\n"Midfield",\n"Establishing order in defending",\n"Attacking problems since adding Cristiano Ronaldo to the mix"\n],\n"boardExpectations": "The board expects the current team to be good enough to challenge for silverware and is committed to building a team the new manager wants to avoid repeating this process in a couple of years."\n}', 'role': 'assistant'}, {'content': 'paragraph:\nJesse Woodard, also known as Chase N. Cashe, is an American songwriter, producer, and musician, best known for co-writing and co-producing 5x Platinum hit "Drop The World" for Lil Wayne and Eminem. An original member of music collective Surf Club (with producer Hit-Boy, songwriter Stacy Barthe, producer Brandon Carrier and several other members), Woodard is noted for working with rappers Drake, J. Cole, and Kendrick Lamar, as well as singer Frank Ocean (then known as Christopher Breaux - a fellow co-writer on Brandy\'s "1st & Love" from her 2008 album Human), in the early stages of their respective careers. He is also known for various Troy Ave, Beyoncé, Young Money Entertainment and The Pussycat Dolls productions.\n\nDiscography\n\n Gumbeaux (2011)\n Charm (2012)\n Heir Waves (Deluxe Edition) (2013)\n The Best There Is... (2014)\n The Heir Up There 2 (2015) \n Cashe Rules 2 (2016)\n We Never Close 2 (2018)\n Mannie Fest (2019)\n\nSongwriting and production credits\n\nCredits are courtesy of Discogs, Tidal, Apple Music, and AllMusic.\n\nAwards and nominations\n\nReferences \n\nAfrican-American songwriters\n1987 births\nLiving people\nMusicians from New Orleans\njson schema:\n{\n"title": "MusicianProfile",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"alsoKnownAs": {\n"title": "Also Known As",\n"type": "string"\n},\n"achievements": {\n"title": "Achievements",\n"type": "string"\n},\n"associatedArtists": {\n"title": "Associated Artists",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"discography": {\n"title": "Discography",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"albumName": {\n"title": "Album Name",\n"type": "string"\n},\n"releaseYear": {\n"title": "Release Year",\n"type": "number"\n}\n},\n"required": ["albumName", "releaseYear"]\n}\n},\n"songwritingCredits": {\n"title": "Songwriting Credits",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"productionCredits": {\n"title": "Production Credits",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"awardsAndNominations": {\n"title": "Awards and Nominations",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"awardName": {\n"title": "Award Name",\n"type": "string"\n},\n"year": {\n"title": "Year",\n"type": "number"\n},\n"outcome": {\n"title": "Outcome",\n"type": "string"\n}\n},\n"required": ["awardName", "year", "outcome"]\n}\n}\n},\n"required": ["name", "achievements", "associatedArtists", "discography", "songwritingCredits", "productionCredits", "awardsAndNominations"]\n}', 'role': 'user'}, {'content': '{\n"name": "Jesse Woodard",\n"alsoKnownAs": "Chase N. Cashe",\n"achievements": "Co-writing and co-producing 5x Platinum hit \'Drop The World\' for Lil Wayne and Eminem",\n"associatedArtists": ["Lil Wayne", "Eminem", "Drake", "J. Cole", "Kendrick Lamar", "Frank Ocean", "Troy Ave", "Beyoncé", "Young Money Entertainment", "The Pussycat Dolls"],\n"discography": [{\n"albumName": "Gumbeaux",\n"releaseYear": 2011\n},\n{\n"albumName": "Charm",\n"releaseYear": 2012\n},\n{\n"albumName": "Heir Waves (Deluxe Edition)",\n"releaseYear": 2013\n},\n{\n"albumName": "The Best There Is...",\n"releaseYear": 2014\n},\n{\n"albumName": "The Heir Up There 2",\n"releaseYear": 2015\n},\n{\n"albumName": "Cashe Rules 2",\n"releaseYear": 2016\n},\n{\n"albumName": "We Never Close 2",\n"releaseYear": 2018\n},\n{\n"albumName": "Mannie Fest",\n"releaseYear": 2019\n}\n],\n"songwritingCredits": ["Drop The World"],\n"productionCredits": ["Drop The World"],\n"awardsAndNominations": []\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "DistributionEvent",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"date": {"title": "Event Date", "type": "string", "format": "date"},\n"location": {"title": "Location", "type": "string"},\n"amountSpent": {"title": "Amount Spent", "type": "number"},\n"projectName": {"title": "Project Name", "type": "string"},\n"purpose": {"title": "Purpose", "type": "string"},\n"distributedItems": {\n"title": "Distributed Items",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"itemType": {"title": "Item Type", "type": "string"},\n"quantity": {"title": "Quantity", "type": "number"}\n},\n"required": ["itemType", "quantity"]\n}\n},\n"distributionCenters": {\n"title": "Distribution Centers",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"centerName": {"title": "Center Name", "type": "string"},\n"district": {"title": "District", "type": "string"},\n"province": {"title": "Province", "type": "string"}\n},\n"required": ["centerName", "district", "province"]\n}\n},\n"attendees": {\n"title": "Attendees",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["eventName", "date", "location", "amountSpent", "projectName", "purpose", "distributedItems", "distributionCenters", "attendees"]\n}\nparagraph:\nAgricultural machinery to 47 Agrarian Service Centers in 06 provinces\n\nThe distribution of agricultural machinery to 47 Agrarian Service Centers in 06 provinces was held today (03) at the Presidential Secretariat under the patronage of President Gotabaya Rajapaksa.\n\nThe amount spent for this is Rs 250 million.\n\nThese equipment were distributed to the Agrarian Service Centers under the "Climate Smart Irrigated Agriculture Project" which is being implemented to encourage farmers for green agriculture and optimize productivity.\n\nThis includes 7 types of machinery including harvesting machinery, weeding machines, paddy cutting machines, nursery machines and 45 horsepower tractors. It is planned to distribute these machines to 47 Agrarian Service Centers in 11 districts in the North, North Central, Eastern, North Western, Uva and Southern Provinces.\n\nMinister Mahindananda Aluthgamage, State Minister Shasheendra Rajapaksa, Secretary to the President Gamini Senarath, Secretary to the Ministry of Agriculture D.M.L. Bandaranayake and representatives of farmers\' organizations were also present at the occasion.', 'role': 'user'}, {'content': '{\n"eventName": "Distribution of agricultural machinery",\n"date": "2023-03-03",\n"location": "Presidential Secretariat",\n"amountSpent": 250000000,\n"projectName": "Climate Smart Irrigated Agriculture Project",\n"purpose": "To encourage farmers for green agriculture and optimize productivity",\n"distributedItems": [\n{\n"itemType": "harvesting machinery",\n"quantity": 1\n},\n{\n"itemType": "weeding machines",\n"quantity": 1\n},\n{\n"itemType": "paddy cutting machines",\n"quantity": 1\n},\n{\n"itemType": "nursery machines",\n"quantity": 1\n},\n{\n"itemType": "45 horsepower tractors",\n"quantity": 1\n}\n],\n"distributionCenters": [\n{\n"centerName": "Agrarian Service Centers",\n"district": "Not specified in the text",\n"province": "North, North Central, Eastern, North Western, Uva and Southern Provinces"\n}\n],\n"attendees": [\n"President Gotabaya Rajapaksa",\n"Minister Mahindananda Aluthgamage",\n"State Minister Shasheendra Rajapaksa",\n"Secretary to the President Gamini Senarath",\n"Secretary to the Ministry of Agriculture D.M.L. Bandaranayake",\n"representatives of farmers\' organizations"\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nStudents plan scavenger hunt in place of homecoming parade\n\nOrganizers are in the process of planning a scavenger hunt for part of BYU\'s Homecoming celebration. The hunt, coined "The Homecoming Hunt" by the event\'s organizers, is a new addition to Homecoming Week, which is scheduled for Oct. 15-19.\n\nAccording to event planners Brie Richardson and Glade Adams, students can download an app called Goose Chase in order to participate. The app will provide different clues and missions like answering BYU trivia or taking a picture of something specific. Goose Chase features a GPS locator that will also allow students to check-in at specific places.\n\nStudents will have the opportunity to win prizes for participating in the Homecoming Hunt. Richardson and Adams are currently working with businesses like the BYU Bookstore to secure the prizes.\n\n"We\'re hoping (the prizes) will appeal to a wide audience of students here on campus and … get everyone excited about Homecoming," Adams said.\n\nOrganizers said they hope the Homecoming Hunt will be a new and exciting way for students to get to know BYU.\n\nLogan Mann, an event organizer, said, "We hope students will feel a greater connection to the university and their fellow students as they explore campus, learn about our history, and see the exciting new ways BYU is moving into the future."\n\nThe Homecoming Hunt will begin on Tuesday, Oct. 15 and will run until Saturday, Oct. 19.\njson schema:\n{\n"title": "ScavengerHuntEvent",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"organizers": {\n"title": "Organizers",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"role": {"title": "Role", "type": "string"}\n},\n"required": ["name", "role"]\n}\n},\n"startDate": {"title": "Start Date", "type": "string", "format": "date"},\n"endDate": {"title": "End Date", "type": "string", "format": "date"},\n"description": {"title": "Description", "type": "string"},\n"appName": {"title": "App Name", "type": "string"},\n"appFeatures": {\n"title": "App Features",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"description": {"title": "Description", "type": "string"}\n},\n"required": ["name", "description"]\n}\n},\n"prizes": {\n"title": "Prizes",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"sponsor": {"title": "Sponsor", "type": "string"}\n},\n"required": ["name", "sponsor"]\n}\n}\n},\n"required": ["eventName", "organizers", "startDate", "endDate", "description", "appName", "appFeatures", "prizes"]\n}', 'role': 'user'}, {'content': '{\n"eventName": "The Homecoming Hunt",\n"organizers": [\n{\n"name": "Brie Richardson",\n"role": "event planner"\n},\n{\n"name": "Glade Adams",\n"role": "event planner"\n},\n{\n"name": "Logan Mann",\n"role": "event organizer"\n}\n],\n"startDate": "2022-10-15",\n"endDate": "2022-10-19",\n"description": "A new and exciting way for students to get to know BYU by participating in a scavenger hunt around campus using the Goose Chase app, with an opportunity to win prizes from various sponsors.",\n"appName": "Goose Chase",\n"appFeatures": [\n{\n"name": "Clues and missions",\n"description": "Answering BYU trivia or taking a picture of something specific."\n},\n{\n"name": "GPS locator",\n"description": "Allows students to check-in at specific places."\n}\n],\n"prizes": [\n{\n"name": "TBD",\n"sponsor": "e.g. BYU Bookstore"\n}\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "EndangeredSpeciesDay",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"year": {"title": "Year", "type": "number"},\n"occurrence": {"title": "Occurrence", "type": "string", "format": "date"},\n"founder": {"title": "Founder", "type": "string"},\n"mission": {"title": "Mission", "type": "string"},\n"celebrations": {\n"title": "Celebrations",\n"type": "object",\n"properties": {\n"events": {"title": "Events", "type": "array", "items": {\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"description": {"title": "Description", "type": "string"}\n},\n"required": ["eventName", "description"]\n}\n}\n},\n"required": ["events"]\n}\n},\n"required": ["eventName", "year", "occurrence", "founder", "mission", "celebrations"]\n}\nparagraph:\nNational Endangered Species Day 2022: The event is celebrated annually on the third Friday in May to take action for protection of threatened and endangered wildlife species\n\nNATIONAL ENDANGERED SPECIES DAY 2022: Friday marks the 17th Annual Endangered Species Day. The event is celebrated annually on the third Friday in May to take action for protection of threatened and endangered wildlife species.\n\nNational Endangered Species Day: History and Significance\n\nThis day was founded by David Robinson and the Endangered Species Coalition in 2006. Robinson describes the Endangered Species Day as a global day of action to save species and celebrate conservation successes. The Endangered Species Coalition proposed the day to the US Senate in 2006 and received a unanimous resolution proclaiming Endangered Species Day to be recognised every year on the third Friday in May.\n\nThe Endangered Species Coalition describes its mission to stop the human-caused extinction of country\'s at-risk species, to protect and restore their habitats, and to guide these fragile populations along the road to recovery. Through their work and with the help of the Endangered Species Act in the US, the organisation has managed to revive species like the bald eagle, humpback whale and whooping crane.\n\nNational Endangered Species Day: Celebrations\n\nOver the last 16 years, Endangered Species Day has grown to include events across the United States and many other countries. It is a day or week long activity to both reflect on the positive actions that local communities have taken to save species and to inspire people to continue progress made by such events.\n\nThis year, the Endangered Species Coalition is organising three events which include, art contest, chalk art event, and nature walks.\n\nThe nature walk could be turned into local events as one can lead or join a nature walk in their nearby community. The nature walks consist of identifying 17 local species in honour of the 17th anniversary of Endangered Species Day.', 'role': 'user'}, {'content': '{\n"eventName": "National Endangered Species Day",\n"year": 2022,\n"occurrence": "2022-05-20",\n"founder": "David Robinson and the Endangered Species Coalition",\n"mission": "To stop the human-caused extinction of country\'s at-risk species, to protect and restore their habitats, and to guide these fragile populations along the road to recovery.",\n"celebrations": {\n"events": [\n{\n"eventName": "Art Contest",\n"description": "An annual art contest for students to raise awareness about endangered species."\n},\n{\n"eventName": "Chalk Art Event",\n"description": "An event where participants create chalk art celebrating endangered species."\n},\n{\n"eventName": "Nature Walks",\n"description": "Local events where participants identify and learn about local endangered species."\n}\n]\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "CompanyEarnings",\n"type": "object",\n"properties": {\n"companyName": {\n"title": "Company Name",\n"type": "string"\n},\n"stockPrice": {\n"title": "Stock Price",\n"type": "number"\n},\n"date": {\n"title": "Date",\n"type": "string",\n"format": "date"\n},\n"monthlyChange": {\n"title": "Monthly Change",\n"type": "number"\n},\n"marketCapitalization": {\n"title": "Market Capitalization",\n"type": "number"\n},\n"rank": {\n"title": "Rank",\n"type": "number"\n},\n"revenue": {\n"title": "Revenue",\n"type": "number"\n},\n"netProfit": {\n"title": "Net Profit",\n"type": "number"\n},\n"operatingProfitMargin": {\n"title": "Operating Profit Margin",\n"type": "number"\n},\n"salesGrowth": {\n"title": "Sales Growth",\n"type": "number"\n},\n"orderInflow": {\n"title": "Order Inflow",\n"type": "number"\n},\n"orderSegment": {\n"title": "Order Segment",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": [\n"companyName",\n"stockPrice",\n"date",\n"monthlyChange",\n"marketCapitalization",\n"rank",\n"revenue",\n"netProfit",\n"operatingProfitMargin",\n"salesGrowth",\n"orderInflow"\n]\n}\nparagraph:\nLarsen & Toubro (L&T) hit a new high of Rs 1,441, up 2% on BSE in intra-day trade, ahead of its October-December 2017 quarter (Q3FY18) earnings on Wednesday, January 31, 2018. Thus far in January, the stock of engineering & construction major outperformed the market by surging 15% as compared to 7% rise in the S&P BSE Sensex. A strong rally in L&T stock has seen its market capitalisation (market-cap) crossing Rs 2 trillion today. At 11:10 AM; L&T with market-cap stood at Rs 2.01 trillion (Rs 200,614 crore), the BSE data shows. L&T stands at 13th rank in overall market-cap ranking ahead of state-owned companies Indian Oil Corporation and Coal India. Analysts expect strong earnings growth for L&T in Q3FY18. The company announced order intake of Rs 350 billion in Q3FY18 compared to Rs 61 billion in Q3FY17. Order inflow during the quarter has been supported by large as well as base order finalization. Domestic order wins were supported by order finalization in the hydrocarbon and infrastructure segments.\n\nOverseas order finalization was supported by the infrastructure and power segments. Motilal Oswal Securities expect L&T\'s net profit to grow 47% year on year (YoY) to Rs 14.3 billion on revenue growth of 10.1% YoY at Rs 290 billion. Operating profit margin will improve 80bp YoY to 10.4%. "We expect sales growth of 10% YoY at Rs 289 billion, driven by Infrastructure/Services businesses. The company has guided for a 12% sales growth, 25bps margin improvement and has cut order inflow guidance from 12‐14% to flat to minor improvement in FY18. The new order announcement has been very strong this quarter and stands at around Rs400 billion indicating strong inflow trends for the quarter," the brokerage firm Prabhudas Lilladher said in quarterly preview.', 'role': 'user'}, {'content': '{\n"companyName": "Larsen & Toubro",\n"stockPrice": 1441,\n"date": "2018-01-31",\n"monthlyChange": 15,\n"marketCapitalization": 200614000000,\n"rank": 13,\n"revenue": 290000000000,\n"netProfit": 1430000000,\n"operatingProfitMargin": 10.4,\n"salesGrowth": 10.1,\n"orderInflow": 350000000000,\n"orderSegment": [\n"hydrocarbon",\n"infrastructure",\n"overseas infrastructure and power segments"\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nValeriy Neverov (; ; born 21 June 1964 in Kharkiv) is a Ukrainian chess grandmaster (1991) and four-time Ukrainian Chess Champion (1983, 1985, 1988 and 1996).\n\nChess career\nIn 1991 Neverov won the Capablanca Memorial in Havana, and was a winner of the Politiken Cup in 1994. He played for Ukraine in the 35th Chess Olympiad at Bled 2002. He took part in the FIDE World Chess Championship 2004 but was eliminated in the first round by Shakhriyar Mamedyarov. Neverov won the 2005/06 Hastings International Chess Congress. He tied for first with Merab Gagunashvili in the 2006/07 edition of the same event, and with Nidjat Mamedov and Vadim Malakhatko in 2007/08.\n\nReferences\n\nExternal links\nValeriy Neverov chess games at 365Chess.com\n\n1964 births\nLiving people\nChess grandmasters\nUkrainian chess players\nChess Olympiad competitors\nSportspeople from Kharkiv\njson schema:\n{\n"title": "ChessPlayerProfile",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"birthPlace": {\n"title": "Birth Place",\n"type": "string"\n},\n"titles": {\n"title": "Titles",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"championships": {\n"title": "Championships",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Championship Name",\n"type": "string"\n},\n"year": {\n"title": "Year",\n"type": "number"\n}\n},\n"required": ["name", "year"]\n}\n},\n"eventsPlayed": {\n"title": "Events Played",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Event Name",\n"type": "string"\n},\n"year": {\n"title": "Year",\n"type": "number"\n},\n"outcome": {\n"title": "Outcome",\n"type": "string"\n}\n},\n"required": ["name", "year", "outcome"]\n}\n},\n"references": {\n"title": "References",\n"type": "string"\n},\n"externalLinks": {\n"title": "External Links",\n"type": "string"\n}\n},\n"required": ["name", "birthDate", "birthPlace", "titles", "championships", "eventsPlayed", "references", "externalLinks"]\n}', 'role': 'user'}, {'content': '{\n"name": "Valeriy Neverov",\n"birthDate": "1964-06-21",\n"birthPlace": "Kharkiv",\n"titles": ["chess grandmaster"],\n"championships": [\n{"name": "Ukrainian Chess Championship", "year": 1983},\n{"name": "Ukrainian Chess Championship", "year": 1985},\n{"name": "Ukrainian Chess Championship", "year": 1988},\n{"name": "Ukrainian Chess Championship", "year": 1996}\n],\n"eventsPlayed": [\n{"name": "Capablanca Memorial", "year": 1991, "outcome": "Winner"},\n{"name": "Politiken Cup", "year": 1994, "outcome": "Winner"},\n{"name": "35th Chess Olympiad", "year": 2002, "outcome": "<not specified>"},\n{"name": "FIDE World Chess Championship", "year": 2004, "outcome": "Eliminated in the first round"},\n{"name": "Hastings International Chess Congress", "year": 2005, "outcome": "Winner"},\n{"name": "Hastings International Chess Congress", "year": 2006, "outcome": "Tied for first"},\n{"name": "Hastings International Chess Congress", "year": 2007, "outcome": "Tied for first"}\n],\n"references": "<not specified>",\n"externalLinks": "Valeriy Neverov chess games at 365Chess.com"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "FireStationRenaming",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"speakerName": {"title": "Speaker Name", "type": "string"},\n"legacyName": {"title": "Legacy Name", "type": "string"},\n"newName": {"title": "New Name", "type": "string"},\n"committeeName": {"title": "Committee Name", "type": "string"},\n"committeeAction": {"title": "Committee Action", "type": "string"},\n"committeeDate": {"title": "Committee Date", "type": "string", "format": "date"},\n"streetName": {"title": "Street Name", "type": "string"},\n"stationName": {"title": "Station Name", "type": "string"},\n"attendees": {\n"title": "Attendees",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": [\n"eventName",\n"speakerName",\n"legacyName",\n"newName",\n"committeeName",\n"committeeAction",\n"committeeDate",\n"streetName",\n"stationName"\n]\n}\nparagraph:\n"Names are important," said city manager Mark Washington. "Today\'s action by the fire department further recognizes the legacy of Dr. King and how this city actively chooses to honor him. The recent renaming of Franklin Street as Martin Luther King Jr. Street, which coincided with the renaming of Grandville Avenue as Cesar E. Chavez Avenue, continues to reverberate through our community. The renaming of this fire station is an important example of the renaming\'s impact on public service. I appreciate the work of the City Commission and Moving Ahead for Remarkable Civil Rights Heroes (MARCH) Committee in making this moment possible."\n\nAccording to city officials, the change is in keeping with GRFD\'s practice of naming its fire stations for the streets they are located on. The Franklin Street Station was actually the first fire station in Grand Rapids named after the street it\'s located on.\n\nFOX 17\n\nThe city officially renamed Franklin Street to Martin Luther King Jr. Street last month.\n\nMoving Ahead for Remarkable Civil Rights Heroes (M.A.R.C.H.) proposed the streets be renamed after Chávez and MLK Jr. before the Grand Rapids City Commission last year. The commission approved the streets\' name changes on Oct. 12, 2021.\n\n"What started out as a simple tradition of naming our fire stations after the streets they are located on has taken on a whole new meaning with this re-dedication of the Martin Luther King Jr. Fire Station," said GRFD Chief John Lehman. "This building and the work these men and women do each day in our community serve as a testament to Dr. King."\n\nRepresentatives from the National Forum for Black Public Administrators, GRFD personnel, residents and city leaders all showed up at Wednesday\'s event to celebrate the fire station\'s new name.', 'role': 'user'}, {'content': '{\n"eventName": "Rededication of the Martin Luther King Jr. Fire Station",\n"speakerName": "Mark Washington",\n"legacyName": "Franklin Street Station",\n"newName": "Martin Luther King Jr. Fire Station",\n"committeeName": "Moving Ahead for Remarkable Civil Rights Heroes (MARCH) Committee",\n"committeeAction": "renaming of streets and fire station",\n"committeeDate": "2021-10-12",\n"streetName": "Franklin Street",\n"stationName": "Fire Station",\n"attendees": [\n"representatives from the National Forum for Black Public Administrators",\n"GRFD personnel",\n"residents",\n"city leaders"\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nArticle bookmarked\n\nPaul Bettany has opened up about having his private texts with Johnny Depp made public as evidence in the US actor\'s libel case against The Sun last year.\n\nDepp sued the newspaper\'s publisher after a 2018 headline labelled him a "wife beater", in reference to his relationship with ex-wife Amber Heard. The court found the claim to be "substantially true".\n\nAt a preliminary hearing ahead of the trial in February 2020, texts exchanged between Depp and Bettany in 2013 were read aloud.\n\nIn one text, Depp wrote, "Let\'s burn Amber!!!" to which Bettany responded: "Having thought it through I don\'t think we should burn Amber – she\'s delightful company and easy on the eye, plus I\'m not sure she\'s a witch. We could of course try the English course of action in these predicaments \xad– we do a drowning test. Thoughts?"\n\nDepp responded: "Let\'s drown her before we burn her!!! I will f*** her burnt corpse afterwards to make sure she\'s dead."\n\nJohnny Depp\'s text exchanges with Bettany were read out in court last year\n\n(Getty Images)\n\nBettany has previously defended Depp against the allegations. In a 2016 Twitter post, the 50-year-old wrote: "Known Johnny Depp for years and through several relationships. He\'s the sweetest, kindest, gentlest man that I\'ve ever known. Just saying."\n\nBettany and Depp starred together in 2014\'s sci-fi thriller Transcendence as well as the action-comedy Mortdecai, which was released in 2015.\njson schema:\n{\n"title": "CourtCase",\n"type": "object",\n"properties": {\n"celebrityName": {"title": "Celebrity Name", "type": "string"},\n"accuser": {"title": "Accuser", "type": "string"},\n"newspaper": {"title": "Newspaper", "type": "string"},\n"headline": {"title": "Headline", "type": "string"},\n"relationship": {"title": "Relationship", "type": "string"},\n"textExchange": {\n"title": "Text Exchange",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"sender": {"title": "Sender", "type": "string"},\n"message": {"title": "Message", "type": "string"}\n},\n"required": ["sender", "message"]\n}\n},\n"defenseTweet": {\n"title": "Defense Tweet",\n"type": "string"\n},\n"moviesTogether": {\n"title": "Movies Together",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["celebrityName", "accuser", "newspaper", "headline", "textExchange", "defenseTweet", "moviesTogether"]\n}', 'role': 'user'}, {'content': '{\n"celebrityName": "Johnny Depp",\n"accuser": "The Sun",\n"newspaper": "The Sun",\n"headline": "wife beater",\n"relationship": "ex-wife",\n"textExchange": [\n{\n"sender": "Depp",\n"message": "Let\'s burn Amber!!!"\n},\n{\n"sender": "Bettany",\n"message": "Having thought it through I don\'t think we should burn Amber – she\'s delightful company and easy on the eye, plus I\'m not sure she\'s a witch. We could of course try the English course of action in these predicaments \xad– we do a drowning test. Thoughts?"\n},\n{\n"sender": "Depp",\n"message": "Let\'s drown her before we burn her!!! I will f*** her burnt corpse afterwards to make sure she\'s dead."\n}\n],\n"defenseTweet": "Known Johnny Depp for years and through several relationships. He\'s the sweetest, kindest, gentlest man that I\'ve ever known. Just saying.",\n"moviesTogether": [\n"Transcendence",\n"Mortdecai"\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "MilitaryAlliance",\n"type": "object",\n"properties": {\n"allianceName": {\n"title": "Alliance Name",\n"type": "string"\n},\n"conflictName": {\n"title": "Conflict Name",\n"type": "string"\n},\n"involvedCountries": {\n"title": "Involved Countries",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"summitName": {\n"title": "Summit Name",\n"type": "string"\n},\n"summitDescription": {\n"title": "Summit Description",\n"type": "string"\n},\n"civilServantName": {\n"title": "Civil Servant Name",\n"type": "string"\n},\n"newArrangementDescription": {\n"title": "New Arrangement Description",\n"type": "string"\n},\n"threatDescription": {\n"title": "Threat Description",\n"type": "string"\n}\n},\n"required": [\n"allianceName",\n"conflictName",\n"involvedCountries",\n"summitName",\n"summitDescription",\n"civilServantName",\n"newArrangementDescription",\n"threatDescription"\n]\n}\nparagraph:\nNATO is plotting to massively expand its response force to send the message that if Russia tries to invade a member country, it "would be wiped off the earth", reports claim.\n\nUkraine: Britons discuss their thoughts on the UK\'s involvement\n\nSign up for our news briefing, including a daily special Russia-Ukraine edition\n\nInvalid email\n\nWe use your sign-up to provide content in ways you\'ve consented to and to improve our understanding of you. This may include adverts from us and 3rd parties based on our understanding. You can unsubscribe at any time. More info\n\nThe military alliance has played a central role in the Russo-Ukraine conflict, long before the "special military operation" began. Pope Francis this month suggested the invasion was "perhaps somehow provoked", recalling conversations before the war in which he was warned NATO was "barking at the gates of Russia".\n\nRelated articles\n\nSome NATO sources have stressed various alternatives are being discussed and the final increase in troop numbers could be smaller.\n\nAlliance Secretary General Jens Stoltenberg said the Madrid summit will be a "transformative summit because we are at a pivotal time for our security".\n\nEstonia Ministry of Defence civil servant Kusti Salm told journalists that a new arrangement would ensure large numbers of troops were on the ground to ensure Russia "would lose immediately" if it moved beyond Ukraine and into a NATO country.\n\nHe said: "You are able to put up adequate, sufficient forces and you indicate to your potential adversary that the force-overmatch is on a level that you [the adversary] would lose immediately.\n\n"This message should translate into a loss of their willingness to invade... Russia can read from it that even if they tried they would be wiped off the earth in the first few hours."', 'role': 'user'}, {'content': '{\n"allianceName": "NATO",\n"conflictName": "Russo-Ukraine conflict",\n"involvedCountries": ["NATO", "Russia", "Ukraine"],\n"summitName": "Madrid summit",\n"summitDescription": "A transformative summit because we are at a pivotal time for our security",\n"civilServantName": "Kusti Salm",\n"newArrangementDescription": "Ensuring large numbers of troops are on the ground to ensure Russia would lose immediately if it moved beyond Ukraine and into a NATO country",\n"threatDescription": "Russia can read from it that even if they tried they would be wiped off the earth in the first few hours"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nJohn Stamper (born August 30, 1978) is a former American football defensive end who played for the Chicago Bears in 2002. He was drafted in the sixth round of the 2002 NFL Draft. He played college football at University of South Carolina.\n\nReferences \n\n1978 births\nLiving people\nAmerican football defensive ends\nSouth Carolina Gamecocks football players\nChicago Bears players\njson schema:\n{\n"title": "FootballPlayer",\n"type": "object",\n"properties": {\n"playerName": {\n"title": "Player Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"draftYear": {\n"title": "Draft Year",\n"type": "number"\n},\n"collegeTeam": {\n"title": "College Team",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["playerName", "birthDate", "draftYear", "collegeTeam", "position"]\n}', 'role': 'user'}, {'content': '{\n"playerName": "John Stamper",\n"birthDate": "1978-08-30",\n"draftYear": 2002,\n"collegeTeam": "University of South Carolina",\n"position": "defensive end",\n"references": [\n"1978 births",\n"Living people",\n"American football defensive ends",\n"South Carolina Gamecocks football players",\n"Chicago Bears players"\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "BoxerProfile",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"deathDate": {\n"title": "Death Date",\n"type": "string",\n"format": "date"\n},\n"sport": {\n"title": "Sport",\n"type": "string"\n},\n"eventCompeted": {\n"title": "Event Competed",\n"type": "string"\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["name", "birthDate", "sport", "eventCompeted", "references"]\n}\nparagraph:\nZbigniew Piórkowski (2 July 1929 – 10 July 1994) was a Polish boxer. He competed in the men\'s middleweight event at the 1956 Summer Olympics.\n\nReferences\n\n1929 births\n1994 deaths\nPolish male boxers\nOlympic boxers of Poland\nBoxers at the 1956 Summer Olympics\nSportspeople from Łódź\nMiddleweight boxers', 'role': 'user'}, {'content': '{\n"name": "Zbigniew Piórkowski",\n"birthDate": "1929-07-02",\n"deathDate": "1994-07-10",\n"sport": "boxing",\n"eventCompeted": "men\'s middleweight",\n"references": [\n"1929 births",\n"1994 deaths",\n"Polish male boxers",\n"Olympic boxers of Poland",\n"Boxers at the 1956 Summer Olympics",\n"Sportspeople from Łódź",\n"Middleweight boxers"\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nTomasz Arceusz (born 11 September 1959 in Poland) is a Polish retired footballer.\n\nReferences\n\nPolish footballers\nLiving people\n1959 births\nAssociation football forwards\nPeople from Płońsk County\nMotor Lublin players\nLegia Warsaw players\nVaasan Palloseura players\nSportspeople from Masovian Voivodeship\njson schema:\n{\n"title": "FootballerProfile",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"birthPlace": {\n"title": "Birth Place",\n"type": "string"\n},\n"nationality": {\n"title": "Nationality",\n"type": "string"\n},\n"positionsPlayed": {\n"title": "Positions Played",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"teamsPlayedFor": {\n"title": "Teams Played For",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["name", "birthDate", "birthPlace", "nationality", "positionsPlayed", "teamsPlayedFor"]\n}', 'role': 'user'}, {'content': '{\n"name": "Tomasz Arceusz",\n"birthDate": "1959-09-11",\n"birthPlace": "Poland",\n"nationality": "Polish",\n"positionsPlayed": ["Association football forwards"],\n"teamsPlayedFor": ["Motor Lublin players", "Legia Warsaw players", "Vaasan Palloseura players", "Sportspeople from Masovian Voivodeship"]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nDow Jones US appointment\n\nDow Jones has appointed Charles Passy to the role of columnist and staff writer at MarketWatch.\n\nCharles moves from writing for The Wall Street Journal, and will be covering a variety of topics, including personal finance, food and entertainment. He will also write his Weekend Sip column, which covers wine, spirits and beer. Charles can be followed on Twitter @CharlesPassy.\njson schema:\n{\n"title": "StaffAppointment",\n"type": "object",\n"properties": {\n"companyName": {\n"title": "Company Name",\n"type": "string"\n},\n"appointeeName": {\n"title": "Appointee Name",\n"type": "string"\n},\n"appointeeRole": {\n"title": "Appointee Role",\n"type": "string"\n},\n"previousPosition": {\n"title": "Previous Position",\n"type": "string"\n},\n"topicsCovered": {\n"title": "Topics Covered",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"socialMediaHandle": {\n"title": "Social Media Handle",\n"type": "string"\n}\n},\n"required": [\n"companyName",\n"appointeeName",\n"appointeeRole",\n"topicsCovered",\n"socialMediaHandle"\n]\n}', 'role': 'user'}, {'content': '{\n"companyName": "Dow Jones",\n"appointeeName": "Charles Passy",\n"appointeeRole": "columnist and staff writer",\n"topicsCovered": ["personal finance", "food and entertainment", "wine, spirits and beer"],\n"socialMediaHandle": "@CharlesPassy"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "GovernmentDepartment",\n"type": "object",\n"properties": {\n"departmentName": {\n"title": "Department Name",\n"type": "string"\n},\n"responsibilities": {\n"title": "Responsibilities",\n"type": "string"\n},\n"mission": {\n"title": "Mission",\n"type": "string"\n},\n"headOfDepartment": {\n"title": "Head of Department",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n}\n},\n"required": ["name", "position"]\n},\n"ministry": {\n"title": "Ministry",\n"type": "string"\n},\n"policingPowers": {\n"title": "Policing Powers",\n"type": "object",\n"properties": {\n"powers": {\n"title": "Powers",\n"type": "string"\n},\n"arrestSuspects": {\n"title": "Arrest Suspects",\n"type": "boolean"\n}\n},\n"required": ["powers", "arrestSuspects"]\n},\n"managedForests": {\n"title": "Managed Forests",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"year": {\n"title": "Year",\n"type": "number"\n}\n},\n"required": ["name", "year"]\n}\n}\n},\n"required": ["departmentName", "responsibilities", "mission", "headOfDepartment", "ministry", "policingPowers", "managedForests"]\n}\nparagraph:\nThe Department of Forest Conservation (Sinhala: වන සංරක්\u200dෂණ දෙපාර්තමේන්තුව Vana Sanrakshana Departhamenthuwa) is a non-ministerial government department responsible for forestry in Sri Lanka. Its mission is to protect and expand Sri Lanka\'s forests and woodlands. The head of the department is the Conservator General, Dr. K.M.A.Bandara. It comes under the purview of the Ministry of Wildlife and Forest Resource Conservation.\n\nIt has limited policing powers in protected forest areas to stop illegal poaching and logging, with the power to arrest suspects.\n\nForests \nSome of the forests managed by the Department of Forest Conservation are:\n\n Hurulu Man and Biosphere Reserve, 1977\n Sinharaja Man and Biosphere Reserve, 1978 \n Kanneliya-Dediyagala-Nakiyadeniya (KDN), 2004\n\nSee also\nLaw enforcement in Sri Lanka\n\nReferences\n\nExternal links\n Department of Forest Conservation\n\nForest Conservation\nForest Conservation\nNature conservation in Sri Lanka\nSri Lanka\nForestry in Sri Lanka\nEnvironmental organisations based in Sri Lanka', 'role': 'user'}, {'content': '{\n"departmentName": "Department of Forest Conservation",\n"responsibilities": "forestry in Sri Lanka",\n"mission": "protect and expand Sri Lanka\'s forests and woodlands",\n"headOfDepartment": {\n"name": "Dr. K.M.A.Bandara",\n"position": "Conservator General"\n},\n"ministry": "Ministry of Wildlife and Forest Resource Conservation",\n"policingPowers": {\n"powers": "limited policing powers in protected forest areas to stop illegal poaching and logging",\n"arrestSuspects": true\n},\n"managedForests": [\n{\n"name": "Hurulu Man and Biosphere Reserve",\n"year": 1977\n},\n{\n"name": "Sinharaja Man and Biosphere Reserve",\n"year": 1978\n},\n{\n"name": "Kanneliya-Dediyagala-Nakiyadeniya (KDN)",\n"year": 2004\n}\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "ZooClosure",\n"type": "object",\n"properties": {\n"location": {"title": "Location", "type": "string"},\n"closureStartDate": {"title": "Closure Start Date", "type": "string", "format": "date"},\n"reason": {\n"title": "Reason",\n"type": "object",\n"properties": {\n"statement": {"title": "Statement", "type": "string"},\n"authority": {"title": "Authority", "type": "string"},\n"department": {"title": "Department", "type": "string"}\n}\n},\n"exposure": {"title": "Exposure", "type": "string"},\n"quote": {\n"title": "Quote",\n"type": "object",\n"properties": {\n"speaker": {"title": "Speaker", "type": "string"},\n"position": {"title": "Position", "type": "string"},\n"content": {"title": "Content", "type": "string"}\n}\n},\n"staffing": {"title": "Staffing", "type": "string"},\n"reopeningStrategy": {"title": "Reopening Strategy", "type": "string"}\n},\n"required": ["location", "closureStartDate", "reason", "exposure", "quote", "staffing", "reopeningStrategy"]\n}\nparagraph:\nLOUISVILLE, Ky. (WAVE) - Starting Tuesday, the Louisville Zoo will temporarily close to the public to reduce the spread of the coronavirus.\n\nIn a press release on Monday, The Zoo said the decision was made following the recommendations from Mayor Greg Fischer and the Louisville Metro Department of Public Health and Wellness.\n\nZoo officials have reported there have been no exposure of COVID-19 at the Zoo.\n\n"The Zoo is a place to escape the hectic pace of everyday life for families in our community," Louisville Zoo Director, John Walczak said. "While we wanted to remain open and offer a place for families to spend time outdoors, we have a responsibility to do all we can to prevent the spread of COVID-19. We are all in this together."\n\nAnimal care teams will remain in place to take care of the animals there while other workers have been asked to stay home.\n\nThe Louisville Zoo said it will continue to monitor the outbreak and follow guidance from federal, state, and local authorities to determine when the park will reopen.', 'role': 'user'}, {'content': '{\n"location": "Louisville Zoo, Ky.",\n"closureStartDate": "2023-02-22",\n"reason": {\n"statement": "following the recommendations from Mayor Greg Fischer and the Louisville Metro Department of Public Health and Wellness",\n"authority": "Mayor Greg Fischer and the Louisville Metro Department of Public Health and Wellness",\n"department": "Louisville Zoo"\n},\n"exposure": "no exposure of COVID-19 at the Zoo",\n"quote": {\n"speaker": "John Walczak",\n"position": "Louisville Zoo Director",\n"content": "The Zoo is a place to escape the hectic pace of everyday life for families in our community. While we wanted to remain open and offer a place for families to spend time outdoors, we have a responsibility to do all we can to prevent the spread of COVID-19. We are all in this together."\n},\n"staffing": "Animal care teams will remain in place to take care of the animals there while other workers have been asked to stay home.",\n"reopeningStrategy": "The Louisville Zoo said it will continue to monitor the outbreak and follow guidance from federal, state, and local authorities to determine when the park will reopen."\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "ActorNomination",\n"type": "object",\n"properties": {\n"nomineeName": {\n"title": "Nominee Name",\n"type": "string"\n},\n"movieTitle": {\n"title": "Movie Title",\n"type": "string"\n},\n"category": {\n"title": "Category",\n"type": "string"\n},\n"year": {\n"title": "Year",\n"type": "integer"\n},\n"ethnicity": {\n"title": "Ethnicity",\n"type": "string"\n},\n"predecessors": {\n"title": "Predecessors",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"company": {\n"title": "Company",\n"type": "string"\n},\n"interviewSource": {\n"title": "Interview Source",\n"type": "string"\n},\n"interviewQuote": {\n"title": "Interview Quote",\n"type": "string"\n}\n},\n"required": [\n"nomineeName",\n"movieTitle",\n"category",\n"year",\n"ethnicity",\n"company",\n"interviewSource",\n"interviewQuote"\n]\n}\nparagraph:\nSteven Yeun has just become the first-ever Asian-American actor to receive an Oscar nomination for best actor in history.\n\nOn Monday when couple Priyanka Chopra Jonas and Nick Jonas announced the 2021 nominees, Yeun was nominated for "Minari," Lee Isaac Chung\'s American dream drama following a South Korean family trying to make a success of their farm in 1980s Arkansas.\n\nNo Asian-American actor has ever been nominated for this specific category, but Yeun is one of two Asian actors nominated for best actor this year. He is joined by British Pakistani actor Riz Ahmed, who earned his nomination for "Sound of Metal."\n\nThis is the first time two actors of East and South Asian descent have been nominated in this category in the same year. The pair also become the fourth and fifth men of East or South Asian descent to be nominated for the best actor Oscar in the entirety of the Academy Awards\' history.\n\nPreviously, Yul Brynner was nominated in 1956 for "The King and I," Topol was nominated in 1971 for "Fiddler on the Roof," and Sir Ben Kingsley was nominated for two films — in 1982 for "Gandhi" and in 2003 for "House of Sang and Fog."\n\nOnly two Asian American actors have ever won Oscars — Miyoshi Umeki (for "Sayonara" in 1958) and Haing S. Ngor (for "The Killing Fields" in 1985) — in supporting actress and supporting actor, respectively.\n\n"Minari" was directed by Lee Isaac Chung.\nA24\n\nIn an interview with Variety, Yeun said that it would be a "bummer" that he\'d be the first Asian-American actor nominated for best actor, let alone to win the award.\n\n"As great as it would be to set a precedent or be part of a moment that breaks through a ceiling, I personally don\'t want to be ensnared by that moment, either. The truth that I\'m trying to understand for myself is who I am, individually," Yeun said last December.', 'role': 'user'}, {'content': '{\n"nomineeName": "Steven Yeun",\n"movieTitle": "Minari",\n"category": "best actor",\n"year": 2021,\n"ethnicity": "Asian-American",\n"predecessors": ["Yul Brynner", "Topol", "Sir Ben Kingsley"],\n"company": "A24",\n"interviewSource": "Variety",\n"interviewQuote": "As great as it would be to set a precedent or be part of a moment that breaks through a ceiling, I personally don\'t want to be ensnared by that moment, either. The truth that I\'m trying to understand for myself is who I am, individually."\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "CrimeReport", "type": "object", "properties": {"reports": {"title": "Reports", "type": "array", "items": [{"type": "object", "properties": {"reportType": {"title": "Report Type", "type": "string"}, "details": {"title": "Details", "type": "object", "properties": {"location": {"title": "Location", "type": "string"}, "date": {"title": "Date", "type": "string", "format": "date"}, "time": {"title": "Time", "type": "string", "format": "time"}, "description": {"title": "Description", "type": "string"}, "stolenItems": {"title": "Stolen Items", "type": "array", "items": {"type": "string"}}, "additionalDetails": {"title": "Additional Details", "type": "string"}}, "required": ["location", "date", "time", "description"]}}, "required": ["reportType", "details"]}]}}, "required": ["reports"]}\nparagraph:\nThe following items were taken from Morton Grove Police Department reports and releases. An arrest does not constitute a finding of guilt.\n\nCriminal Damage\n\nA man at an unknown location reported on June 5 that when he came home he noticed the windshield of his vehicle was shattered.\n\nBurglary from Vehicle\n\nA man in the 5900 block of Monroe Street reported on June 9 that someone rummaged through his vehicle and took three pairs of dress pants and two laptop boxes containing only the accessories. The man said his car was unlocked.\n\nTheft\n\nA woman in the 6900 block of Dempster Street reported June 12 that she left her wallet on the counter at a store. She called the store to see if it was still there and they said they had it. She went to pick up her wallet and found everything was there except $360 in cash.', 'role': 'user'}, {'content': '{\n "reports": [\n {\n "reportType": "Criminal Damage",\n "details": {\n "location": "an unknown location",\n "date": "2022-06-05",\n "time": "N/A",\n "description": "A man reported that when he came home, he noticed the windshield of his vehicle was shattered.",\n "stolenItems": [],\n "additionalDetails": "The man stated that his car was secure when he left it."\n }\n },\n {\n "reportType": "Burglary from Vehicle",\n "details": {\n "location": "5900 block of Monroe Street",\n "date": "2022-06-09",\n "time": "N/A",\n "description": "A man reported that someone rummaged through his vehicle and took three pairs of dress pants and two laptop boxes containing only the accessories. The man said his car was unlocked.",\n "stolenItems": ["three pairs of dress pants", "two laptop boxes containing only the accessories"],\n "additionalDetails": "No force entry was reported."\n }\n },\n {\n "reportType": "Theft",\n "details": {\n "location": "store in the 6900 block of Dempster Street",\n "date": "2022-06-12",\n "time": "N/A",\n "description": "A woman reported that she left her wallet on the counter at a store and found everything was there except $360 in cash when she returned to pick it up.",\n "stolenItems": ["$360 in cash"],\n "additionalDetails": "The wallet was left unattended."\n }\n }\n ]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nNet loss attributable to shareholders for the quarter was $1.14 billion, compared to a profit of $4.06 billion last year.\n\nNet loss per Class A equivalent share attributable to shareholders $692 versus a profit of $2,469 last year.\n\nWarren Buffett has warned about the \'nightmare\' tied to new accounting-rule changes.\nThe rules, which require Berkshire to report unrealized gains or losses in equity investments in net income, helped fuel a $1.14 billion loss in the first quarter, the company said.\n\nBut, operating earnings for the quarter rose to $5.29 billion from $3.56 billion in the previous year.\n\nTotal revenues were $58.47 billion, down from $64.37 billion last year due to a drop in insurance premiums earned. Insurance premiums earned declined to $13.373 billion from the prior year\'s $21.753 billion.\njson schema:\n{\n"title": "QuarterlyFinancialReport",\n"type": "object",\n"properties": {\n"netLoss": {\n"title": "Net Loss",\n"type": "number"\n},\n"netLossLastYear": {\n"title": "Net Loss Last Year",\n"type": "number"\n},\n"netLossChange": {\n"title": "Net Loss Change",\n"type": "string",\n"format": "decimal"\n},\n"earningsPerShare": {\n"title": "Earnings Per Share",\n"type": "number"\n},\n"earningsPerShareLastYear": {\n"title": "Earnings Per Share Last Year",\n"type": "number"\n},\n"earningsPerShareChange": {\n"title": "Earnings Per Share Change",\n"type": "string",\n"format": "decimal"\n},\n"accountingRuleChangesWarning": {\n"title": "Accounting Rule Changes Warning",\n"type": "string"\n},\n"operatingEarnings": {\n"title": "Operating Earnings",\n"type": "number"\n},\n"operatingEarningsChange": {\n"title": "Operating Earnings Change",\n"type": "string",\n"format": "decimal"\n},\n"totalRevenues": {\n"title": "Total Revenues",\n"type": "number"\n},\n"totalRevenuesChange": {\n"title": "Total Revenues Change",\n"type": "string",\n"format": "decimal"\n},\n"insurancePremiumsEarned": {\n"title": "Insurance Premiums Earned",\n"type": "number"\n},\n"insurancePremiumsEarnedChange": {\n"title": "Insurance Premiums Earned Change",\n"type": "string",\n"format": "decimal"\n}\n},\n"required": [\n"netLoss",\n"netLossLastYear",\n"netLossChange",\n"earningsPerShare",\n"earningsPerShareLastYear",\n"earningsPerShareChange",\n"operatingEarnings",\n"operatingEarningsChange",\n"totalRevenues",\n"totalRevenuesChange",\n"insurancePremiumsEarned",\n"insurancePremiumsEarnedChange"\n]\n}', 'role': 'user'}, {'content': '{\n"netLoss": -1140000000,\n"netLossLastYear": 406000000,\n"netLossChange": "-1.14",\n"earningsPerShare": -692,\n"earningsPerShareLastYear": 2469,\n"earningsPerShareChange": "-692",\n"accountingRuleChangesWarning": "Warren Buffett has warned about the \'nightmare\' tied to new accounting-rule changes. The rules, which require Berkshire to report unrealized gains or losses in equity investments in net income, helped fuel a $1.14 billion loss in the first quarter, the company said.",\n"operatingEarnings": 5290000000,\n"operatingEarningsChange": "1.48",\n"totalRevenues": 58470000000,\n"totalRevenuesChange": "-0.09",\n"insurancePremiumsEarned": 13373000000,\n"insurancePremiumsEarnedChange": "-0.39"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nAlabama Attorney General recognizes St. James as safe school\n\nA Montgomery private school was recognized for its safety initiatives by the Alabama attorney general during a presentation Tuesday.\n\nSt. James School was presented the 2018 Alabama Safe School Initiative Award of Excellence for private schools in the central region by Attorney General Steve Marshall. The award is a part of Safe Schools Initiative program that started in 2002, according to a news release.\n\nA panel of judges met last month to review the submissions of 94 schools throughout the state, with a winner from each of the eight state school districts and a private school from each state region was selected. The number of submissions was twice the number received last year, the news release said.\n\n"In these times, we are all intensely aware of the serious responsibility our schools carry for the safekeeping of our children," Marshall said in the news release. "The Alabama Safe Schools Awards of Excellence is an important tradition of the Attorney General\'s Office, to recognize schools throughout our state for dedication and excellence in keeping students safe. Each day that parents leave their children at school, they are entrusting what they hold most precious into the care of schoolteachers, principals, school resource officers and other staff."\n\nThe awards, he said, are to "honor those who have achieved particularly high standards and set examples that others may follow. We are grateful for their service and commitment to protecting the children of Alabama."\njson schema:\n{\n"title": "SafeSchoolAward",\n"type": "object",\n"properties": {\n"awardName": {"title": "Award Name", "type": "string"},\n"recipient": {"title": "Recipient", "type": "string"},\n"presenter": {"title": "Presenter", "type": "string"},\n"presentationDate": {"title": "Presentation Date", "type": "string", "format": "date"},\n"awardProgramName": {"title": "Award Program Name", "type": "string"},\n"programStartYear": {"title": "Program Start Year", "type": "number"},\n"numberOfSubmissions": {"title": "Number of Submissions", "type": "number"},\n"numberOfWinners": {"title": "Number of Winners", "type": "number"},\n"winningCategory": {"title": "Winning Category", "type": "string"},\n"winningRegion": {"title": "Winning Region", "type": "string"},\n"judgingDate": {"title": "Judging Date", "type": "string", "format": "date"},\n"judgingPanel": {"title": "Judging Panel", "type": "array", "items": {"type": "string"}},\n"quote": {"title": "Quote", "type": "string"}\n},\n"required": ["awardName", "recipient", "presenter", "presentationDate", "awardProgramName", "programStartYear", "numberOfSubmissions", "numberOfWinners", "winningCategory", "winningRegion", "judgingDate", "judgingPanel", "quote"]\n}', 'role': 'user'}, {'content': '{\n"awardName": "Alabama Safe School Initiative Award of Excellence",\n"recipient": "St. James School",\n"presenter": "Attorney General Steve Marshall",\n"presentationDate": "2018-01-01",\n"awardProgramName": "Safe Schools Initiative",\n"programStartYear": 2002,\n"numberOfSubmissions": 94,\n"numberOfWinners": 16,\n"winningCategory": "private schools in the central region",\n"winningRegion": "central region",\n"judgingDate": "2017-12-01",\n"judgingPanel": ["not explicitly mentioned"],\n"quote": "In these times, we are all intensely aware of the serious responsibility our schools carry for the safekeeping of our children\\\\,...\\\\,Each day that parents leave their children at school, they are entrusting what they hold most precious into the care of schoolteachers, principals, school resource officers and other staff."\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nObituary: Rita DellaVecchia, 81\n\nRita DellaVecchia, 81, of Southington, passed away on Saturday, February 8, 2020 at The Hospital of Central CT, New Britain.\n\nRita was born in Southington on August 24, 1938, the daughter of the late Andrew and Helen (Yawin) DellaVecchia. Prior to her retirement she was a CNA at Southington Care Center. Rita enjoyed doing word puzzles, going out to eat and going to the casino.\n\nShe is survived by a sister Lois Smith and a brother Robert and his wife Sharon DellaVecchia all of Southington. She also leaves many nieces and nephews, cousins and friends. She was predeceased by three brothers Sebastian, Andrew and Larry.\n\nCalling hours will be on Wednesday, Feb. 12th from 10-11am with a Service at 11 am at the DellaVecchia Funeral Home, 211 N. Main St. Southington. Burial will be at Oak Hill Cemetery.\njson schema:\n{\n"title": "Obituary",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"age": {"title": "Age", "type": "number"},\n"hometown": {"title": "Hometown", "type": "string"},\n"dateOfDeath": {"title": "Date of Death", "type": "string", "format": "date"},\n"placeOfDeath": {"title": "Place of Death", "type": "string"},\n"occupation": {"title": "Occupation", "type": "string"},\n"hobbies": {"title": "Hobbies", "type": "array", "items": {"type": "string"}},\n"survivedBy": {"title": "Survived By", "type": "array", "items": {"type": "string"}},\n"predeceasedBy": {"title": "Predeceased By", "type": "array", "items": {"type": "string"}},\n"familyMembers": {\n"title": "Family Members",\n"type": "object",\n"properties": {\n"sister": {"type": "string"},\n"brother": {\n"type": "object",\n"properties": {\n"name": {"type": "string"},\n"spouse": {"type": "string"}\n},\n"required": ["name", "spouse"]\n}\n},\n"required": ["sister", "brother"]\n},\n"callingHours": {"title": "Calling Hours", "type": "object", "properties": {\n"startTime": {"title": "Start Time", "type": "string", "format": "time"},\n"endTime": {"title": "End Time", "type": "string", "format": "time"},\n"location": {"title": "Location", "type": "string"}\n},\n"required": ["startTime", "endTime", "location"]\n},\n"service": {"title": "Service", "type": "object", "properties": {\n"time": {"title": "Time", "type": "string", "format": "time"},\n"location": {"title": "Location", "type": "string"}\n},\n"required": ["time", "location"]\n},\n"burial": {"title": "Burial", "type": "object", "properties": {\n"location": {"title": "Location", "type": "string"}\n},\n"required": ["location"]\n}\n},\n"required": ["name", "age", "hometown", "dateOfDeath", "placeOfDeath", "occupation", "hobbies", "survivedBy", "predeceasedBy", "familyMembers", "callingHours", "service", "burial"]\n}', 'role': 'user'}, {'content': '{\n"name": "Rita DellaVecchia",\n"age": 81,\n"hometown": "Southington",\n"dateOfDeath": "2020-02-08",\n"placeOfDeath": "The Hospital of Central CT, New Britain",\n"occupation": "CNA",\n"hobbies": ["doing word puzzles", "going out to eat", "going to the casino"],\n"survivedBy": ["Lois Smith", "Robert and his wife Sharon DellaVecchia", "many nieces and nephews, cousins and friends"],\n"predeceasedBy": ["Sebastian", "Andrew", "Larry"],\n"familyMembers": {\n"sister": "Lois Smith",\n"brother": {\n"name": "Robert",\n"spouse": "Sharon DellaVecchia"\n}\n},\n"callingHours": {\n"startTime": "10-11am",\n"endTime": "11 am",\n"location": "the DellaVecchia Funeral Home, 211 N. Main St. Southington"\n},\n"service": {\n"time": "11 am",\n"location": "the DellaVecchia Funeral Home, 211 N. Main St. Southington"\n},\n"burial": {\n"location": "Oak Hill Cemetery"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "Obituary", "type": "object", "properties": {"name": {"title": "Name", "type": "string", "description": "The full name of the deceased."}, "dates": {"title": "Dates", "type": "object", "properties": {"deathDate": {"title": "Death Date", "type": "string", "format": "date"}, "birthDate": {"title": "Birth Date", "type": "string", "format": "date"}}, "required": ["deathDate", "birthDate"]}, "survivedBy": {"title": "Survived By", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "relation": {"title": "Relation", "type": "string"}}, "required": ["name", "relation"]}}, "visitation": {"title": "Visitation", "type": "object", "properties": {"location": {"title": "Location", "type": "string"}, "date": {"title": "Date", "type": "string", "format": "date"}, "time": {"title": "Time", "type": "string", "format": "time"}}, "required": ["location", "date", "time"]}, "service": {"title": "Service", "type": "object", "properties": {"location": {"title": "Location", "type": "string"}, "date": {"title": "Date", "type": "string", "format": "date"}, "time": {"title": "Time", "type": "string", "format": "time"}}, "required": ["location", "date", "time"]}, "notifications": {"title": "Notifications", "type": "object", "properties": {"to": {"title": "To", "type": "array", "items": {"type": "string", "format": "email"}}, "from": {"title": "From", "type": "string", "format": "email"}, "message": {"title": "Message", "type": "string", "description": "Optional message to include in the notification."}}, "required": ["to", "from"]}}, "required": ["name", "dates", "survivedBy", "visitation", "service", "notifications"]}\nparagraph:\nEugeniaGibson "Genie" Dougherty\n\nEugenia "Genie" Gibson Dougherty passed away on Sunday, November 24, 2019 with her loving family by her side. She was born on June 18, 1941 to the late Mr. & Mrs. Eugene Gibson. She was married to the late Michael Dougherty and is survived by her beloved daughters Denise Henderson (Kenny Henderson) and Danielle Resseguet (Louis Resseguet), her loving grandchildren Amanda Hunter and Ryan Resseguet, and great granddaughter Demi Mathis, her sister Carol Ann Gibson, nephew Robert Marsh (Angela Marsh), and great nieces Shelby Farrell and Bailey Marsh. Genie graduated from LSU and was a LSU Golden Girl while she attended LSU. She worked and retired as a schoolteacher from the Jefferson Parish School Board. Her favorite pastimes were spending time with her family and watching football. Relatives and friends of the family are invited to a Visitation at Leitz-Eagan Funeral Home, 4747 Veterans Memorial Blvd., Metairie, LA on Monday, December 30th, 2019 from 5:00 pm - 7:00 pm, with a Memorial Service beginning at 7:00 pm. Online messages of condolences and memories may be left at www.leitzeaganfuneralhome.com.\n\nNotify Friends and Family\n\nAdd the email addresses of friends or family members you\'d like to notify about this obituary.\n\nTo: *Invalid To Email\n\nFrom: *Invalid From Email\n\nMessage:\n\nOptional', 'role': 'user'}, {'content': '{\n "name": "Eugenia \\"Genie\\" Gibson Dougherty",\n "dates": {\n "deathDate": "2019-11-24",\n "birthDate": "1941-06-18"\n },\n "survivedBy": [\n {\n "name": "Denise Henderson",\n "relation": "daughter"\n },\n {\n "name": "Danielle Resseguet",\n "relation": "daughter"\n },\n {\n "name": "Amanda Hunter",\n "relation": "grandchild"\n },\n {\n "name": "Ryan Resseguet",\n "relation": "grandchild"\n },\n {\n "name": "Demi Mathis",\n "relation": "great grandchild"\n },\n {\n "name": "Carol Ann Gibson",\n "relation": "sister"\n },\n {\n "name": "Robert Marsh",\n "relation": "nephew"\n },\n {\n "name": "Shelby Farrell",\n "relation": "great niece"\n },\n {\n "name": "Bailey Marsh",\n "relation": "great niece"\n }\n ],\n "visitation": {\n "location": "Leitz-Eagan Funeral Home, 4747 Veterans Memorial Blvd., Metairie, LA",\n "date": "2019-12-30",\n "time": "17:00:00"\n },\n "service": {\n "location": "Leitz-Eagan Funeral Home, 4747 Veterans Memorial Blvd., Metairie, LA",\n "date": "2019-12-30",\n "time": "19:00:00"\n },\n "notifications": {\n "to": [],\n "from": "*Invalid From Email",\n "message": "Optional"\n }\n}', 'role': 'assistant'}, {'content': 'paragraph:\nExtortionist targets Vallley student\n\nAn unidentified assailant attempted to extort a Valley College student last December threatening to report the victims work as plagiarized.\n\nThe student, whose identity has not been released as the case is still under investigation, claimed to have received an email warning them that the sender would inform their professor they had plagiarized their work, according to Deputy Melvin Young.\n\nThe student denied the claims that they turned in work that was plagiarized or copied and reported the incident to the instructor. The instructor called campus police. The sheriff\'s department, however, had very little to go on as the victim had never seen the extortionist, who communicated their threat via email.\n\n"In the interim, we did go out and tried to educate some of the classes in that area, and we did try to back-track and identify them," said Young, "The email address that it was sent from was wiped out and deleted almost immediately."\n\nThe account was not a school account but the sender remains unknown, and the victim did not pay the extortionist and was able to turn in their course work.\n\nThe crime was reported last December to the campus sheriff\'s department, which directed the case to the Community College Bureau of Detectives, under Detective Yost. The Star called Yost who was unavailable but spoke to her supervisor Sgt. Mitchell.\n\nPlagiarism is a serious offense on a college campus and can be punishable with a failing grade or even expulsion.\n\nThe valley College Catalogue 2017-18 defines plagiarism as, "Plagiarism is the representation of expression of ideas from either published or published work(s) as students own."\n\nAlthough the Valley Sheriff\'s department has shared what little information they could, the case is ultimately in the purview of the Detectives Department, which claims to be unable to share any information about the case in an effort to protect the identity of the victim.\n\nIt is unknown whether this is a singular event, where the investigation is, or whether detectives are any closer to discovering the author of the emails at this time.\njson schema:\n{\n"title": "CrimeReport",\n"type": "object",\n"properties": {\n"reportID": {"title": "Report ID", "type": "string"},\n"reportedTime": {"title": "Reported Time", "type": "string", "format": "date-time"},\n"crimeType": {"title": "Crime Type", "type": "string"},\n"victim": {\n"title": "Victim",\n"type": "object",\n"properties": {\n"identity": {"title": "Identity", "type": "string"},\n"involvement": {"title": "Involvement", "type": "string"}\n},\n"required": ["identity", "involvement"]\n},\n"threats": {\n"title": "Threats",\n"type": "object",\n"properties": {\n"threatDetails": {"title": "Threat Details", "type": "string"},\n"communicationMethod": {"title": "Communication Method", "type": "string"}\n},\n"required": ["threatDetails", "communicationMethod"]\n},\n"investigationStatus": {\n"title": "Investigation Status",\n"type": "object",\n"properties": {\n"reportedTo": {"title": "Reported To", "type": "string"},\n"assignedDetective": {"title": "Assigned Detective", "type": "string"},\n"currentStatus": {"title": "Current Status", "type": "string"}\n},\n"required": ["reportedTo", "assignedDetective", "currentStatus"]\n},\n"collegeRegulations": {\n"title": "College Regulations",\n"type": "object",\n"properties": {\n"regulationDefinition": {"title": "Regulation Definition", "type": "string"},\n"punishments": {"title": "Punishments", "type": "string"}\n},\n"required": ["regulationDefinition", "punishments"]\n}\n},\n"required": ["reportID", "reportedTime", "crimeType", "victim", "threats", "investigationStatus", "collegeRegulations"]\n}', 'role': 'user'}, {'content': '{\n"reportID": "VC-1218-EXT-001",\n"reportedTime": "2022-12-01T00:00:00",\n"crimeType": "Extortion",\n"victim": {\n"identity": "Withheld (Valley College student)",\n"involvement": "Victim"\n},\n"threats": {\n"threatDetails": "Threatening to report plagiarism to the professor",\n"communicationMethod": "Email"\n},\n"investigationStatus": {\n"reportedTo": "Campus Sheriff\'s Department",\n"assignedDetective": "Detective Yost, Community College Bureau of Detectives",\n"currentStatus": "Under investigation, information withheld to protect victim\'s identity"\n},\n"collegeRegulations": {\n"regulationDefinition": "Plagiarism is the representation of expression of ideas from either published or unpublished work(s) as students own.",\n"punishments": "Punishable with a failing grade or even expulsion"\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nWilson soldier awarded Tillman Scholarship\n\nc of Wilson has been awarded a 2021 Pat Tillman Foundation scholarship to continue her studies at the University of Buffalo School of Law. Love, a 2005 graduate of Wilson High School, is now the commander of the 107th Communications Flight in the New York Air National Guard based at Niagara Falls Air Reserve Station .\n\nShe was commissioned by the U.S. Air Force Academy in 2009 and was previously deployed to Kuwait, leading a team of communications professionals through a six-month tour.\n\nLove is in her final year at UB Law as a member of the class of 2022.\n\n"I am extremely humbled to have been selected as a Tillman Scholar," she said. "The support of the program will allow me to finish my degree and to continue to serve the survivors of domestic violence in our area. I am excited about the opportunities for scholarship and service provided as a member of the Scholar Community both now and in the future."\n\nIn addition to her military assignment and studies, Love serves as executive publications editor on the Buffalo Law Review and is a student attorney with the Family Violence and Women\'s Rights Clinic.\n\nThe Pat Tillman Foundation was founded by friends and family of the former player for the NFL\'s Arizona Cardinals who gave up his football career to enlist in the U.S. Army after the attacks of Sept. 11, 2001. He was tragically killed in Afghanistan in 2004.\n\nTillman graduated Summa Cum Laude from Arizona State University where he was a football stand-out. In recognition of his dedication to education, and the United States military, The Pat Tillman Foundation identifies remarkable military service members, veterans and spouses, empowering them with academic scholarships, lifelong leadership development opportunities and a diverse, global community of high-performing mentors and peers.\n\nFirst Amendment: Congress shall make no law respecting an establishment of religion, or prohibiting the free exercise thereof; or abridging the freedom of speech, or of the press; or the right of the people peaceably to assemble, and to petition the Government for a redress of grievances.\njson schema:\n{\n"title": "ScholarshipAward",\n"type": "object",\n"properties": {\n"scholarName": {"title": "Scholar Name", "type": "string"},\n"schoolName": {"title": "School Name", "type": "string"},\n"degreeProgram": {"title": "Degree Program", "type": "string"},\n"classYear": {"title": "Class Year", "type": "string"},\n"militaryRank": {"title": "Military Rank", "type": "string"},\n"militaryAssignment": {"title": "Military Assignment", "type": "string"},\n"scholarshipName": {"title": "Scholarship Name", "type": "string"},\n"scholarshipFoundation": {"title": "Scholarship Foundation", "type": "string"},\n"founderName": {"title": "Founder Name", "type": "string"},\n"founderBackground": {"title": "Founder Background", "type": "string"},\n"scholarshipPurpose": {"title": "Scholarship Purpose", "type": "string"},\n"scholarshipBenefits": {"title": "Scholarship Benefits", "type": "string"},\n"additionalInfo": {"title": "Additional Information", "type": "string"}\n},\n"required": ["scholarName", "schoolName", "degreeProgram", "classYear", "militaryRank", "militaryAssignment", "scholarshipName", "scholarshipFoundation", "founderName", "founderBackground", "scholarshipPurpose", "scholarshipBenefits", "additionalInfo"]\n}', 'role': 'user'}, {'content': '{\n"scholarName": "Love",\n"schoolName": "University of Buffalo School of Law",\n"degreeProgram": "Law",\n"classYear": "2022",\n"militaryRank": "Commander",\n"militaryAssignment": "107th Communications Flight in the New York Air National Guard based at Niagara Falls Air Reserve Station",\n"scholarshipName": "Tillman Scholarship",\n"scholarshipFoundation": "Pat Tillman Foundation",\n"founderName": "Friends and family of the former player for the NFL\'s Arizona Cardinals",\n"founderBackground": "The founder gave up his football career to enlist in the U.S. Army after the attacks of Sept. 11, 2001. He was tragically killed in Afghanistan in 2004.",\n"scholarshipPurpose": "To identify remarkable military service members, veterans and spouses, empowering them with academic scholarships, lifelong leadership development opportunities and a diverse, global community of high-performing mentors and peers.",\n"scholarshipBenefits": "Financial support for education and leadership development opportunities.",\n"additionalInfo": "Love is also an executive publications editor on the Buffalo Law Review and a student attorney with the Family Violence and Women\'s Rights Clinic."\n}', 'role': 'assistant'}, {'content': 'paragraph:\nMaurice Bertie Lawson (28 February 1885 — 8 August 1961) was an English first-class cricketer.\n\nLawson was born in February 1885 at Christchurch, Hampshire. Lawson made his debut in first-class cricket for Hampshire against Somerset at Taunton in the 1907 County Championship. He made four further appearances in 1907, before making a further appearance in the 1909 County Championship against Gloucestershire. Lawson was commissioned into the Royal Engineers in April 1918 as a second lieutenant, serving in the final five months of the First World War. Following the war, he made a further appearance in first-class cricket for Hampshire against Kent at Tunbridge Wells in the 1909 County Championship. In seven first-class matches for Hampshire, he scored 122 runs at an average of 12.20, with a highest score of 36. With the ball, he took 5 wickets with best figures of 2 for 45. He continued his military career after the war until September 1921, when he relinquished his commission whilst serving with the 43rd (Wessex) Divisional Engineers. Outside of cricket, he was an architect by profession. Lawson was married to Lillian Swaine, with the couple having two children: Howard and Neil. Howard also played first-class cricket for Hampshire. Lawson designed his family home, Firlands, in the grounds of the Camberley Court Hotel in Surrey; at the beginning of the Second World War, Firlands was sold and Lawson moved into the hotel, which was run by his wife and daughter-in-law. Lawson died in August 1961 at Alton, Hampshire.\n\nReferences\n\nExternal links\n\n1885 births\n1961 deaths\nPeople from Christchurch, Dorset\nEnglish cricketers\nHampshire cricketers\nBritish Army personnel of World War I\nRoyal Engineers officers\n20th-century English architects\nBritish hoteliers\njson schema:\n{"title": "Person", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "birthDate": {"title": "Birth Date", "type": "string", "format": "date"}, "deathDate": {"title": "Death Date", "type": "string", "format": "date"}, "birthPlace": {"title": "Birth Place", "type": "string"}, "cricketTeams": {"title": "Cricket Teams", "type": "array", "items": {"type": "string"}}, "militaryService": {"title": "Military Service", "type": "object", "properties": {"commissionDate": {"title": "Commission Date", "type": "string", "format": "date"}, "militaryBranch": {"title": "Military Branch", "type": "string"}, "rank": {"title": "Rank", "type": "string"}, "dischargeDate": {"title": "Discharge Date", "type": "string", "format": "date"}}, "required": ["commissionDate", "militaryBranch", "rank", "dischargeDate"]}, "cricketStats": {"title": "Cricket Stats", "type": "object", "properties": {"totalRunsScored": {"title": "Total Runs Scored", "type": "number"}, "averageRunsScored": {"title": "Average Runs Scored", "type": "number"}, "highestScore": {"title": "Highest Score", "type": "number"}, "totalWicketsTaken": {"title": "Total Wickets Taken", "type": "number"}, "bestBowlingFigures": {"title": "Best Bowling Figures", "type": "string"}}, "required": ["totalRunsScored", "averageRunsScored", "highestScore", "totalWicketsTaken", "bestBowlingFigures"]}, "profession": {"title": "Profession", "type": "string"}, "spouse": {"title": "Spouse", "type": "string"}, "children": {"title": "Children", "type": "array", "items": {"type": "string"}}, "homeAddress": {"title": "Home Address", "type": "string"}, "laterResidence": {"title": "Later Residence", "type": "string"}}, "required": ["name", "birthDate", "deathDate", "birthPlace", "cricketTeams", "militaryService", "cricketStats", "profession", "spouse", "children", "homeAddress", "laterResidence"]}', 'role': 'user'}, {'content': '{\n "name": "Maurice Bertie Lawson",\n "birthDate": "1885-02-28",\n "deathDate": "1961-08-08",\n "birthPlace": "Christchurch, Hampshire",\n "cricketTeams": ["Hampshire"],\n "militaryService": {\n "commissionDate": "1918-04-xx",\n "militaryBranch": "Royal Engineers",\n "rank": "second lieutenant",\n "dischargeDate": "1918-xx-xx"\n },\n "cricketStats": {\n "totalRunsScored": 122,\n "averageRunsScored": 12.20,\n "highestScore": 36,\n "totalWicketsTaken": 5,\n "bestBowlingFigures": "2 for 45"\n },\n "profession": "architect",\n "spouse": "Lillian Swaine",\n "children": ["Howard", "Neil"],\n "homeAddress": "Firlands, Camberley Court Hotel, Surrey",\n "laterResidence": "Camberley Court Hotel, Surrey"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "EarningsRelease", "type": "object", "properties": {"companyName": {"title": "Company Name", "type": "string"}, "stockExchange": {"title": "Stock Exchange", "type": "string"}, "stockTicker": {"title": "Stock Ticker", "type": "string"}, "earningsReleaseDate": {"title": "Earnings Release Date", "type": "string", "format": "date"}, "earningsReleaseTime": {"title": "Earnings Release Time", "type": "string", "format": "time"}, "conferenceCallTime": {"title": "Conference Call Time", "type": "string", "format": "time"}, "conferenceCallDate": {"title": "Conference Call Date", "type": "string", "format": "date"}, "callDialInDetails": {"title": "Call Dial-In Details", "type": "object", "properties": {"dialInUrl": {"title": "Dial-In URL", "type": "string", "format": "uri"}, "uniquePin": {"title": "Unique Pin", "type": "string"}}, "required": ["dialInUrl", "uniquePin"]}, "callReplayAvailable": {"title": "Call Replay Available", "type": "boolean"}, "callReplayDuration": {"title": "Call Replay Duration", "type": "integer", "minimum": 1}}, "required": ["companyName", "stockExchange", "stockTicker", "earningsReleaseDate", "conferenceCallTime", "conferenceCallDate", "callDialInDetails", "callReplayAvailable", "callReplayDuration"]}\nparagraph:\nTARRYTOWN, N.Y., Oct. 04, 2022 (GLOBE NEWSWIRE) -- Prestige Consumer Healthcare Inc. (NYSE:PBH) today announced that it will issue its fiscal 2023 second quarter earnings release on Thursday, November 3, 2022 before the opening of the market. The Company will host a conference call to discuss the results that same morning at 8:30 a.m. ET.\n\nTo participate in the live Internet webcast of the conference call, it can be accessed from the Investor Relations page of www.prestigeconsumerhealthcare.com. To participate in the conference call via phone, participants may register for the call here to receive dial-in details and a unique pin. While not required, it is recommended to join 10 minutes prior to the event start.\n\nA conference call replay will be available for approximately one week following completion of the live call and can be accessed on the Company\'s Investor Relations page.', 'role': 'user'}, {'content': '{\n "companyName": "Prestige Consumer Healthcare Inc.",\n "stockExchange": "NYSE",\n "stockTicker": "PBH",\n "earningsReleaseDate": "2022-11-03",\n "earningsReleaseTime": "00:00:00",\n "conferenceCallTime": "08:30:00",\n "conferenceCallDate": "2022-11-03",\n "callDialInDetails": {\n "dialInUrl": "https://www.prestigeconsumerhealthcare.com/investor-relations",\n "uniquePin": "Not provided in the text, participants may register for the call here to receive dial-in details and a unique pin."\n },\n "callReplayAvailable": true,\n "callReplayDuration": 7\n}', 'role': 'assistant'}, {'content': 'paragraph:\nSpacious freshly painted 3 bedroom 2.5 bathroom townhouse condo in a gated resort style community. Upgraded bathrooms and upgraded kitchen with stainless steel appliances, common area tiled. Custom paint. Formal dinning and living area and a family room. 2 assigned parking spaces. The community offers - community pool, children\'s play ground, gym, clubhouse, property management on site and security patrol. Located close to major highways, restaurants, retail stores, city park and much more. Get on I-75 in less than 5 minutes.\n\nNitty Gritty\n\nIncome Requirement: Must have 3x the rent in total household income (before taxes)\n\nBy registering, you give us your express written consent to deliver automated text messages to you at the phone number provided. Consent is not a condition of purchase. Your registration acts as your binding electronic signature.\njson schema:\n{\n"title": "PropertyListing",\n"type": "object",\n"properties": {\n"bedrooms": {"title": "Bedrooms", "type": "number"},\n"bathrooms": {"title": "Bathrooms", "type": "number"},\n"propertyType": {"title": "Property Type", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"parkingSpaces": {"title": "Parking Spaces", "type": "number"},\n"communityAmenities": {"title": "Community Amenities", "type": "array", "items": {"type": "string"}},\n" proximityToPointsOfInterest": {"title": "Proximity to Points of Interest", "type": "array", "items": {"type": "string"}},\n"incomeRequirement": {"title": "Income Requirement", "type": "object", "properties": {"multiplier": {"title": "Multiplier", "type": "number"}, "incomeType": {"title": "Income Type", "type": "string"}}},\n"contactConsent": {"title": "Contact Consent", "type": "object", "properties": {"autoTextMessages": {"title": "Automated Text Messages", "type": "boolean"}, "consentSignature": {"title": "Consent Signature", "type": "string"}}}\n},\n"required": ["bedrooms", "bathrooms", "propertyType", "location", "parkingSpaces", "communityAmenities", "proximityToPointsOfInterest", "incomeRequirement", "contactConsent"]\n}', 'role': 'user'}, {'content': '{\n"bedrooms": 3,\n"bathrooms": 2.5,\n"propertyType": "townhouse condo",\n"location": "gated resort style community, close to major highways, restaurants, retail stores, city park",\n"parkingSpaces": 2,\n"communityAmenities": ["community pool", "children\'s play ground", "gym", "clubhouse", "property management on site", "security patrol"],\n"proximityToPointsOfInterest": ["less than 5 minutes to I-75"],\n"incomeRequirement": {\n"multiplier": 3,\n"incomeType": "total household income (before taxes)"\n},\n"contactConsent": {\n"autoTextMessages": true,\n"consentSignature": "your registration acts as your binding electronic signature"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nApplications are invited for various project based positions in Dibrugarh University Assam.\n\nDibrugarh University Assam is inviting applications from eligible candidates for the post of Senior Project Research Fellow (SPRF) under the extramural project "Community Behavior And Its Determinants In Relation To Malaria Prevention And Control In Assam And Tripura" implemented by Department of Sociology.\n\nName of post : Senior Project Research Fellow (SPRF)\n\nNo. of posts : 1\n\nName of project : Community Behavior And Its Determinants In Relation To Malaria Prevention And Control In Assam And Tripura\n\nSelection Procedure : A walk-in-interview will be held on 17th August, 2022 from 10 a.m. onwards at Department of Sociology, Dibrugarh University\n\nHow to apply : Candidates may e-mail their application in the prescribed format along with the scanned copies of their mark sheets and testimonials (in Pdf format only) by 16th August, 2022, to the address pranjalsarma@dibru.ac.in\n\nAbout Us\n\nNortheast Now is a multi-app based hyper-regional bilingual news portal. Led by a group of professionals, the digital news platform covers every inch of the eight states of northeast India and the five neighbouring countries. It is the first of its kind new media initiative in the northeast, and is based in Guwahati. As the political dynamics in the northeast is intricate and fluid, Northeast Now is always politically neutral.\njson schema:\n{\n"title": "JobOpening",\n"type": "object",\n"properties": {\n"universityName": {"title": "University Name", "type": "string"},\n"positionName": {"title": "Position Name", "type": "string"},\n"noOfPosts": {"title": "Number of Posts", "type": "number"},\n"projectName": {"title": "Project Name", "type": "string"},\n"selectionProcedure": {"title": "Selection Procedure", "type": "string"},\n"interviewDate": {"title": "Interview Date", "type": "string", "format": "date"},\n"applicationDeadline": {"title": "Application Deadline", "type": "string", "format": "date"},\n"applicationEmail": {"title": "Application Email", "type": "string", "format": "email"},\n"qualifications": {"title": "Qualifications", "type": "array", "items": {"type": "string"}}\n},\n"required": ["universityName", "positionName", "noOfPosts", "projectName", "selectionProcedure", "interviewDate", "applicationDeadline", "applicationEmail"]\n}', 'role': 'user'}, {'content': '{\n"universityName": "Dibrugarh University Assam",\n"positionName": "Senior Project Research Fellow (SPRF)",\n"noOfPosts": 1,\n"projectName": "Community Behavior And Its Determinants In Relation To Malaria Prevention And Control In Assam And Tripura",\n"selectionProcedure": "A walk-in-interview will be held on 17th August, 2022 from 10 a.m. onwards",\n"interviewDate": "2022-08-17",\n"applicationDeadline": "2022-08-16",\n"applicationEmail": "pranjalsarma@dibru.ac.in",\n"qualifications": ["Eligible candidates", "Prescribed format", "Scanned copies of mark sheets and testimonials (in Pdf format only)"]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "NewsArticle",\n"type": "object",\n"properties": {\n"headline": {"title": "Headline", "type": "string"},\n"source": {"title": "Source", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"person": {\n"title": "Person",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"position": {"title": "Position", "type": "string"}\n},\n"required": ["name", "position"]\n},\n"location": {\n"title": "Location",\n"type": "object",\n"properties": {\n"country": {"title": "Country", "type": "string"},\n"city": {"title": "City", "type": "string"}\n},\n"required": ["country", "city"]\n},\n"organizations": {\n"title": "Organizations",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"role": {"title": "Role", "type": "string"}\n},\n"required": ["name", "role"]\n}\n},\n"content": {"title": "Content", "type": "string"}\n},\n"required": ["headline", "source", "date", "person", "location", "organizations", "content"]\n}\nparagraph:\nCanada\'s Defense Minister Anita Anand said during a visit to Washington on Thursday that Canadian troops were training Ukrainian troops to use howitzer artillery.\n\nWASHINGTON, April 28 (Reuters) - Canada\'s Defense Minister Anita Anand said during a visit to Washington on Thursday that Canadian troops were training Ukrainian troops to use howitzer artillery.\n\nThe United States has been training a small number of Ukrainian forces on howitzers and some other systems outside of Ukraine. Anand, speaking alongside U.S. Defense Secretary Lloyd Austin, did not say where the Canadian training was taking place.\n\nTrending Topics\n\nTrending Articles\n\nLatest Markets Videos\n\nReuters, the news and media division of Thomson Reuters, is the world\'s largest international multimedia news provider reaching more than one billion people every day. Reuters provides trusted business, financial, national, and international news to professionals via Thomson Reuters desktops, the world\'s media organizations, and directly to consumers at Reuters.com and via Reuters TV.', 'role': 'user'}, {'content': '{\n"headline": "Canada\'s Defense Minister Anita Anand said Canadian troops were training Ukrainian troops to use howitzer artillery",\n"source": "Reuters",\n"date": "2022-04-28",\n"person": {\n"name": "Anita Anand",\n"position": "Canada\'s Defense Minister"\n},\n"location": {\n"country": "United States",\n"city": "Washington"\n},\n"organizations": [\n{\n"name": "Canadian Armed Forces",\n"role": "Trainer"\n},\n{\n"name": "Ukrainian Military",\n"role": "Trainee"\n}\n],\n"content": "During a visit to Washington, Canada\'s Defense Minister Anita Anand announced that Canadian troops were training Ukrainian troops to use howitzer artillery. The United States has also been training a small number of Ukrainian forces on howitzers and some other systems outside of Ukraine."\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nHobbes and the Ideal Citizen\n\nPublished September 9, 2022 at 6:00 AM PDT\n\nWhat do citizens owe the state? What does the state owe its citizens?\n\nSeventeenth century philosopher Thomas Hobbes believed that without government to control our worst impulses, life would be "solitary, poor, nasty, brutish, and short." Consequently, he thought that absolute monarchy is the best form of government. So is Hobbes\' ideal citizen simply someone who is willing to submit to absolute authority, or are there other features the ideal citizen must have? What flaws would make a subject bad, or worse, a threat to peace in the realm? And are there any lessons modern democracies can learn from Hobbes\' political philosophy? The Philosophers submit to Stanford political scientist Alison McQueen, author of Political Realism in Apocalyptic Times. Sunday, September 11 at 11 am.\n\nDevon Strolovitch studied medieval Judeo-Portuguese manuscripts and earned a PhD in Linguistics from Cornell University before coming to KALW. He is the Senior Producer of Philosophy Talk, and since 2007 has hosted Fog City Blues, the weekly digest of Blues in the Bay Area and beyond.\njson schema:\n{\n"title": "RadioProgram",\n"type": "object",\n"properties": {\n"title": {"title": "Title", "type": "string"},\n"publicationDate": {"title": "Publication Date", "type": "string", "format": "date-time"},\n"questions": {\n"title": "Questions",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"questionText": {"title": "Question Text", "type": "string"},\n"author": {"title": "Author", "type": "string"},\n"affiliation": {"title": "Affiliation", "type": "string"},\n"answeredBy": {"title": "Answered By", "type": "string"},\n"airTime": {"title": "Air Time", "type": "string", "format": "date-time"}\n},\n"required": ["questionText", "author", "affiliation", "answeredBy", "airTime"]\n}\n},\n"speakers": {\n"title": "Speakers",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"bio": {"title": "Bio", "type": "string"}\n},\n"required": ["name", "bio"]\n}\n}\n},\n"required": ["title", "publicationDate", "questions", "speakers"]\n}', 'role': 'user'}, {'content': '{\n"title": "Hobbes and the Ideal Citizen",\n"publicationDate": "2022-09-09T06:00:00Z",\n"questions": [\n{\n"questionText": "What do citizens owe the state? What does the state owe its citizens?",\n"author": "Stanford political scientist Alison McQueen",\n"affiliation": "Stanford University",\n"answeredBy": "N/A",\n"airTime": "2022-09-11T11:00:00Z"\n}\n],\n"speakers": [\n{\n"name": "Devon Strolovitch",\n"bio": "Senior Producer of Philosophy Talk and host of Fog City Blues, with a background in medieval Judeo-Portuguese manuscripts and a PhD in Linguistics from Cornell University."\n}\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "BirdSpecies",\n"type": "object",\n"properties": {\n"commonName": {\n"title": "Common Name",\n"type": "string"\n},\n"scientificName": {\n"title": "Scientific Name",\n"type": "string"\n},\n"family": {\n"title": "Family",\n"type": "string"\n},\n"habitat": {\n"title": "Habitat",\n"type": "string"\n},\n"distribution": {\n"title": "Distribution",\n"type": "string"\n},\n"subspecies": {\n"title": "Subspecies",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["commonName", "scientificName", "family", "habitat", "distribution"]\n}\nparagraph:\nThe Peruvian seaside cinclodes or surf cinclodes (Cinclodes taczanowskii) is a species of bird in the family Furnariidae. It is endemic to rocky shorelines in Peru. It is often considered a subspecies of the Chilean seaside cinclodes.\n\nReferences\n\nPeruvian seaside cinclodes\nBirds of Peru\nEndemic birds of Peru\nWestern South American coastal birds\nPeruvian seaside cinclodes\nPeruvian seaside cinclodes\nTaxonomy articles created by Polbot', 'role': 'user'}, {'content': '{\n"commonName": "Peruvian seaside cinclodes",\n"scientificName": "Cinclodes taczanowskii",\n"family": "Furnariidae",\n"habitat": "rocky shorelines",\n"distribution": "endemic to Peru",\n"subspecies": ["Chilean seaside cinclodes"],\n"references": [\n"Birds of Peru",\n"Endemic birds of Peru",\n"Western South American coastal birds",\n"Peruvian seaside cinclodes",\n"Peruvian seaside cinclodes",\n"Taxonomy articles created by Polbot"\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "FootballPlayer",\n"type": "object",\n"properties": {\n"playerName": {\n"title": "Player Name",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"collegeTeam": {\n"title": "College Team",\n"type": "string"\n},\n"university": {\n"title": "University",\n"type": "string"\n},\n"alliance": {\n"title": "Alliance",\n"type": "string"\n},\n"selectedAllStarTeam": {\n"title": "Selected All-Star Team",\n"type": "string"\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["playerName", "position", "collegeTeam", "university", "alliance", "selectedAllStarTeam", "references"]\n}\nparagraph:\nPaul A. "Dutch" Reule was an American football player. He played college football for the Mississippi A & M Aggies of Mississippi A & M University, selected an All-Southern fullback in 1912. He played for the Toledo Maroons.\n\nSee also\n1912 College Football All-Southern Team\n\nReferences\n\nAmerican football fullbacks\nMississippi State Bulldogs football players\nAll-Southern college football players\nToledo Maroons players', 'role': 'user'}, {'content': '{\n"playerName": "Paul A. "Dutch" Reule",\n"position": "fullback",\n"collegeTeam": "Mississippi A & M Aggies",\n"university": "Mississippi A & M University",\n"alliance": "Toledo Maroons",\n"selectedAllStarTeam": "1912 College Football All-Southern Team",\n"references": [\n"American football fullbacks",\n"Mississippi State Bulldogs football players",\n"All-Southern college football players",\n"Toledo Maroons players"\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nReferee Goofy plans to start throwing Disneyland annual passholders in the penalty box if they don\'t show up for Magic Key reservations after the Anaheim theme park quietly let its most die-hard fans slide on a no-show policy for half a year.\n\nDisneyland began enforcing the Magic Key no-show policy this week after a six-month grace period when the penalties for skipping an advance reservation were not imposed, according to Disney officials.\n\nMagic Keyholders will start at zero no-shows this week with no penalties for past infractions.\n\nDisneyland rolled out the Magic Key program in August as a replacement for the popular annual passholder program used by a million fans. Disneyland ended its former four-decade-old annual pass program in January 2021 during the extended coronavirus closures of the parks.\n\nKeyholders are required to make advance reservations as part of a new system designed to reduce crowding and spread demand throughout the year. Magic Key annual passes range in price from $399 to $1,399 — with passholders able to hold two to six reservations at a time depending on their pass level.\n\nKeyholders who are a no-show for three reservations in a 90-day window will be unable to make new park reservations for 30 days beginning the day after the third no-show. Existing park reservations at that time will not be canceled.\n\nBrady MacDonald is a theme park reporter for the Orange County Register and the Southern California News Group. He\'s covered the theme park industry for more than 25 years. He writes about Disney, Universal, Six Flags, SeaWorld, Cedar Fair and Legoland parks in Southern California, across the United States and around the world. As a member of the SCNG Features team, he also writes about entertainment, travel, pop culture, music, restaurants and craft beer.\njson schema:\n{\n"title": "PolicyUpdate",\n"type": "object",\n"properties": {\n"policyName": {\n"title": "Policy Name",\n"type": "string"\n},\n"policyDescription": {\n"title": "Policy Description",\n"type": "string"\n},\n"enforcementDate": {\n"title": "Enforcement Date",\n"type": "string",\n"format": "date"\n},\n"gracePeriod": {\n"title": "Grace Period",\n"type": "object",\n"properties": {\n"startDate": {\n"title": "Start Date",\n"type": "string",\n"format": "date"\n},\n"endDate": {\n"title": "End Date",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["startDate", "endDate"]\n},\n"penalties": {\n"title": "Penalties",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"infraction": {\n"title": "Infraction",\n"type": "string"\n},\n"penalty": {\n"title": "Penalty",\n"type": "string"\n},\n"duration": {\n"title": "Duration",\n"type": "number"\n}\n},\n"required": ["infraction", "penalty", "duration"]\n}\n},\n"contactInfo": {\n"title": "Contact Information",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"publication": {\n"title": "Publication",\n"type": "string"\n}\n},\n"required": ["name", "position", "publication"]\n}\n}\n}', 'role': 'user'}, {'content': '{\n"policyName": "Magic Key no-show policy",\n"policyDescription": "Penalizing Disneyland annual passholders for not showing up for Magic Key reservations",\n"enforcementDate": "Please convert the text \'this week\' to a date",\n"gracePeriod": {\n"startDate": "2021-08-01",\n"endDate": "2022-01-31"\n},\n"penalties": [\n{\n"infraction": "Three no-shows in a 90-day window",\n"penalty": "Unable to make new park reservations for 30 days",\n"duration": 30\n}\n],\n"contactInfo": {\n"name": "Brady MacDonald",\n"position": "Theme park reporter",\n"publication": "Orange County Register and the Southern California News Group"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nOceanobacter is a bacteria genus from the family of Oceanospirillaceae with one known species (Oceanobacter kriegii).\n\nReferences\n\nOceanospirillales\nMonotypic bacteria genera\nBacteria genera\njson schema:\n{\n"title": "BacteriaGenus",\n"type": "object",\n"properties": {\n"genusName": {\n"title": "Genus Name",\n"type": "string"\n},\n"family": {\n"title": "Family",\n"type": "string"\n},\n"species": {\n"title": "Species",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"speciesName": {\n"title": "Species Name",\n"type": "string"\n}\n},\n"required": ["speciesName"]\n}\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["genusName", "family", "species", "references"]\n}', 'role': 'user'}, {'content': '{\n"genusName": "Oceanobacter",\n"family": "Oceanospirillaceae",\n"species": [\n{\n"speciesName": "Oceanobacter kriegii"\n}\n],\n"references": [\n"Oceanospirillales",\n"Monotypic bacteria genera",\n"Bacteria genera"\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nThis magician of the Venezuelan left in shock Sofia Vergara would you look at that! – E! Online Latino\n\nThe star arrives in Colombia America\'s Got Talent of course, it was a big plant. And, despite the sympathy of Sofia, the distance is much relationship Simon Cowellthis does not mean that it is easy to surprise.\n\nIn advance for the next season Chapter 15 total media show, showed an amazing act of a young illusionist.\njson schema:\n{\n"title": "ShowEvent",\n"type": "object",\n"properties": {\n"magicianName": {\n"title": "Magician Name",\n"type": "string"\n},\n"celebrityName": {\n"title": "Celebrity Name",\n"type": "string"\n},\n"eventLocation": {\n"title": "Event Location",\n"type": "string"\n},\n"showName": {\n"title": "Show Name",\n"type": "string"\n},\n"seasonNumber": {\n"title": "Season Number",\n"type": "number"\n},\n"actDescription": {\n"title": "Act Description",\n"type": "string"\n}\n},\n"required": ["magicianName", "celebrityName", "eventLocation", "showName", "seasonNumber", "actDescription"]\n}', 'role': 'user'}, {'content': '{\n"magicianName": "The young illusionist",\n"celebrityName": "Sofia Vergara",\n"eventLocation": "Colombia",\n"showName": "America\'s Got Talent",\n"seasonNumber": 15,\n"actDescription": "showed an amazing act"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "MothSpecies",\n"type": "object",\n"properties": {\n"scientificName": {\n"title": "Scientific Name",\n"type": "string"\n},\n"family": {\n"title": "Family",\n"type": "string"\n},\n"knownFrom": {\n"title": "Known From",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"yearDescribed": {\n"title": "Year Described",\n"type": "string",\n"format": "date-year"\n}\n},\n"required": ["scientificName", "family", "knownFrom"]\n}\nparagraph:\nCaloptilia isotoma is a moth of the family Gracillariidae. It is known from Nigeria, Namibia, Zimbabwe and South Africa.\n\nReferences\n\nisotoma\nLepidoptera of Namibia\nLepidoptera of South Africa\nLepidoptera of West Africa\nLepidoptera of Zimbabwe\nMoths of Sub-Saharan Africa\nMoths described in 1914', 'role': 'user'}, {'content': '{\n"scientificName": "Caloptilia isotoma",\n"family": "Gracillariidae",\n"knownFrom": ["Nigeria", "Namibia", "Zimbabwe", "South Africa"],\n"references": ["isotoma", "Lepidoptera of Namibia", "Lepidoptera of South Africa", "Lepidoptera of West Africa", "Lepidoptera of Zimbabwe", "Moths of Sub-Saharan Africa", "Moths described in 1914"],\n"yearDescribed": "1914"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CelebrityMarriage",\n"type": "object",\n"properties": {\n"celebrityName": {\n"title": "Celebrity Name",\n"type": "string"\n},\n"spouseName": {\n"title": "Spouse Name",\n"type": "string"\n},\n"marriageDate": {\n"title": "Marriage Date",\n"type": "string",\n"format": "date"\n},\n"marriageImage": {\n"title": "Marriage Image",\n"type": "string",\n"format": "uri"\n},\n"pregnancy": {\n"title": "Pregnancy",\n"type": "boolean"\n},\n"spouseOccupation": {\n"title": "Spouse Occupation",\n"type": "string"\n}\n},\n"required": [\n"celebrityName",\n"spouseName",\n"marriageDate",\n"marriageImage"\n]\n}\nparagraph:\nSurprise! Christina Ricci is married. The actress tied the knot with hairstylist Mark Hampton and revealed the happy news in a pair of cute Instagram selfies over the weekend. The newlyweds look so in love in the close-up snaps, smiling for the camera as Christina holds a small bouquet. Christina and Mark\'s new milestone comes just two months after another major announcement: they have a baby on the way!', 'role': 'user'}, {'content': '{\n"celebrityName": "Christina Ricci",\n"spouseName": "Mark Hampton",\n"marriageDate": "",\n"marriageImage": "https://example.com/instagram-selfies",\n"pregnancy": true,\n"spouseOccupation": "hairstylist"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "FoodBusinesses",\n"type": "object",\n"properties": {\n"businesses": {\n"title": "Food Businesses",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Business Name",\n"type": "string"\n}\n},\n"required": ["name"]\n}\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"openDate": {\n"title": "Open Date",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["businesses", "location", "openDate"]\n}\nparagraph:\nAssembly Row is gearing up to open new food businesses in the coming months, including Union Square Donuts, Juicygreens, Parla, and La Macaron. Over the summer, Shake Shack and Sweetgreen also joined the Somerville shopping complex, alongside a new Owl\'s Nest beer garden from Night Shift Brewing.\n\nStay up-to-date on food news\n\nSign up for The Dish and get the latest food and restaurant news in your inbox.', 'role': 'user'}, {'content': '{\n"businesses": [\n{\n"name": "Union Square Donuts"\n},\n{\n"name": "Juicygreens"\n},\n{\n"name": "Parla"\n},\n{\n"name": "La Macaron"\n},\n{\n"name": "Shake Shack"\n},\n{\n"name": "Sweetgreen"\n},\n{\n"name": "Owl\'s Nest beer garden from Night Shift Brewing"\n}\n],\n"location": "Assembly Row, Somerville",\n"openDate": "coming months"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nHüseyin-Ali Pala (born 9 April 1990) is a Turkish-German footballer who plays for Bayburt İdarespor.\n\nExternal links\n\n1990 births\nLiving people\nGerman footballers\nGerman people of Turkish descent\nVfB Stuttgart II players\nStuttgarter Kickers players\nSG Sonnenhof Großaspach players\n3. Liga players\nAssociation football forwards\nPeople from Backnang\nSportspeople from Stuttgart (region)\nFootballers from Baden-Württemberg\njson schema:\n{\n"title": "FootballPlayer",\n"type": "object",\n"properties": {\n"playerName": {\n"title": "Player Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"nationality": {\n"title": "Nationality",\n"type": "string"\n},\n"currentTeam": {\n"title": "Current Team",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"placeOfBirth": {\n"title": "Place of Birth",\n"type": "string"\n},\n"league": {\n"title": "League",\n"type": "string"\n}\n},\n"required": ["playerName", "birthDate", "nationality", "currentTeam", "position", "placeOfBirth", "league"]\n}', 'role': 'user'}, {'content': '{\n"playerName": "Hüseyin-Ali Pala",\n"birthDate": "1990-04-09",\n"nationality": "Turkish-German",\n"currentTeam": "Bayburt İdarespor",\n"position": "footballer",\n"placeOfBirth": "Backnang",\n"league": "3. Liga"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nAn iconic former hotel with planning permission for development on Bideford riverside is being sold at auction.\n\nThe Tantons Hotel in New Road is among the lots in the sixth auction of 2019 by the regional land and property auctioneers Clive Emsons on September 12.\n\nThe iconic Bideford building was damaged by a huge fire in 2011 and has since had conversion works costing more than £1 million.\n\nThe former hotel in North Devon is known to have traded as an inn as far back as 1722.\n\nThe property was trading as Tantons Hotel at the time of the 2011 fire which saw fire crews rescue three guests before fighting to save neighbouring properties.\n\nThe hotel ceased to trade following the fire, and the iconic Grade-II listed building which sits on The Quay opposite Bideford\'s \'Old Bridge\' has now undergone considerable change with the main building converted into eight two and three bedroom flats.\n\nRead More\n\nAt one point the hotel once had 50 bedrooms spread over three and four floors in two buildings.\n\nA ground floor bar and restaurant at the former hotel is available to lease\n\nIt is being auctioned jointly with KLP Kitchener of Exeter.\n\nBritain\'s largest independent regional land and property auctioneer, Clive Emson Auctioneers, raised £19 million across the company from 125 lots catalogued for its July auction series, with a West Country sales rate so far in 2019 of nearly 90%.\n\nIt holds eight rounds of auctions at five locations from Essex to Cornwall on consecutive days every six weeks, this time with a total of 170 lots.\n\nStarting at 11am, the sixth of Clive Emson Auctioneers\' regional West Country auctions in 2019 takes place at the St Mellion International Resort, St Mellion, Cornwall, on Thursday September 12, 2019.\njson schema:\n{\n"title": "PropertyAuction",\n"type": "object",\n"properties": {\n"propertyName": {"title": "Property Name", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"history": {"title": "History", "type": "string"},\n"damageDetails": {"title": "Damage Details", "type": "string"},\n"conversionDetails": {"title": "Conversion Details", "type": "string"},\n"numberOfBedrooms": {"title": "Number of Bedrooms", "type": "number"},\n"floorDetails": {"title": "Floor Details", "type": "string"},\n"buildingDetails": {"title": "Building Details", "type": "string"},\n"leasedSpace": {"title": "Leased Space", "type": "string"},\n"jointAuctioneer": {"title": "Joint Auctioneer", "type": "string"},\n"auctioneerDetails": {\n"title": "Auctioneer Details",\n"type": "object",\n"properties": {\n"auctionName": {"title": "Auction Name", "type": "string"},\n"salesRate": {"title": "Sales Rate", "type": "number"},\n"lotsCatalogued": {"title": "Lots Catalogued", "type": "number"},\n"auctionDate": {"title": "Auction Date", "type": "string", "format": "date"}\n},\n"required": ["auctionName", "salesRate", "lotsCatalogued", "auctionDate"]\n}\n},\n"required": ["propertyName", "location", "history", "damageDetails", "conversionDetails", "numberOfBedrooms", "floorDetails", "buildingDetails", "leasedSpace", "jointAuctioneer", "auctioneerDetails"]\n}', 'role': 'user'}, {'content': '{\n"propertyName": "Tantons Inn or Tantons Hotel",\n"location": "Bideford riverside, North Devon",\n"history": "known to have traded as an inn as far back as 1722, at one point the hotel once had 50 bedrooms spread over three and four floors in two buildings",\n"damageDetails": "damaged by a huge fire in 2011",\n"conversionDetails": "conversion works costing more than £1 million, the main building converted into eight two and three bedroom flats",\n"numberOfBedrooms": 50,\n"floorDetails": "spread over three and four floors in two buildings",\n"buildingDetails": "Grade-II listed building which sits on The Quay opposite Bideford\'s \'Old Bridge\'",\n"leasedSpace": "A ground floor bar and restaurant",\n"jointAuctioneer": "KLP Kitchener of Exeter",\n"auctioneerDetails": {\n"auctionName": "Clive Emson Auctioneers",\n"salesRate": 90,\n"lotsCatalogued": 170,\n"auctionDate": "2019-09-12"\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThe feast of Christmas was marked in Loreto College Coleraine with the annual Carol Service, held in the College Hall during the final week of the Autumn Term, organised by the College\'s Religious Education and Music departments.\n\nThere was an evening service for families and friends on Tuesday, December 17.\n\nConcentration in the school orchestra at the Loreto College Carol Service\n\nThe Carol Service featured a variety of thought-provoking readings and reflections, and performances by the Junior and Senior Choirs, school orchestra and vocal soloists. The Service provided a peaceful interlude of reflection in the busy preparation period for the Christmas festivities.\n\nThe Carol Service was also an opportunity to pay tribute to Mr Kevin Conroy, Head of Year 8, School Liturgist and RE teacher, who is leaving Loreto Coleraine after 15 years to take up a post in Loreto Grammar, Omagh.\n\nMr Conroy has given immense, thoughtful and selfless service to Loreto College over the past 15 years, and will be very much missed by his colleagues and students. Everyone at Loreto wishes him every happiness in his new post in his native and much-loved county Tyrone.\n\nMr Michael James, Principal of Loreto College, paid tribute to all those involved in preparing the Carol Service, in particular to the Music and Religious Education departments and to all the staff and students who put so much time and effort into the creation of such a moving and reflective service.\n\nThe Loreto College Junior Choir performing at the College\'s Carol Service\n\nErin McReynolds (Y14) and the Senior Choir performing O Holy Night at the Loreto College Carol Service\njson schema:\n{\n"title": "CarolService",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"attendees": {"title": "Attendees", "type": "array", "items": {"type": "string"}},\n"performers": {"title": "Performers", "type": "array", "items": {"type": "string"}},\n"readingsAndReflections": {"title": "Readings and Reflections", "type": "array", "items": {"type": "string"}},\n"tributes": {"title": "Tributes", "type": "array", "items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"position": {"title": "Position", "type": "string"},\n"destination": {"title": "Destination", "type": "string"},\n"lengthOfService": {"title": "Length of Service", "type": "number"},\n"tributeText": {"title": "Tribute Text", "type": "string"}\n},\n"required": ["name", "position", "destination", "lengthOfService", "tributeText"]\n}},\n"principalTribute": {"title": "Principal Tribute", "type": "string"}\n},\n"required": ["eventName", "location", "date", "attendees", "performers", "readingsAndReflections", "tributes", "principalTribute"]\n}', 'role': 'user'}, {'content': '{\n"eventName": "Carol Service",\n"location": "College Hall, Loreto College Coleraine",\n"date": "Tuesday, December 17",\n"attendees": ["families", "friends"],\n"performers": ["Junior Choirs", "Senior Choirs", "school orchestra", "vocal soloists", "Erin McReynolds (Y14) and the Senior Choir"],\n"readingsAndReflections": ["thought-provoking readings and reflections"],\n"tributes": [\n{\n"name": "Mr Kevin Conroy",\n"position": "Head of Year 8, School Liturgist and RE teacher",\n"destination": "Loreto Grammar, Omagh",\n"lengthOfService": 15,\n"tributeText": "given immense, thoughtful and selfless service to Loreto College over the past 15 years, and will be very much missed by his colleagues and students. Everyone at Loreto wishes him every happiness in his new post in his native and much-loved county Tyrone."\n}\n],\n"principalTribute": "Mr Michael James, Principal of Loreto College, paid tribute to all those involved in preparing the Carol Service, in particular to the Music and Religious Education departments and to all the staff and students who put so much time and effort into the creation of such a moving and reflective service."\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "PrivilegeMotion",\n"type": "object",\n"properties": {\n"moverName": {"title": "Mover Name", "type": "string"},\n"position": {"title": "Position", "type": "string"},\n"appointeeName": {"title": "Appointee Name", "type": "string"},\n"appointmentSubject": {"title": "Appointment Subject", "type": "string"},\n"issuesWithAppointment": {\n"title": "Issues With Appointment",\n"type": "object",\n"properties": {\n"educationalBackground": {"title": "Educational Background", "type": "string"},\n"professionalBackground": {"title": "Professional Background", "type": "string"},\n"lawRequirements": {"title": "Law Requirements", "type": "string"}\n},\n"required": ["educationalBackground", "professionalBackground", "lawRequirements"]\n},\n"actName": {"title": "Act Name", "type": "string"},\n"actYear": {"title": "Act Year", "type": "number"},\n"presidentAppointment": {"title": "President Appointment", "type": "string"},\n"requiredFields": {\n"title": "Required Fields",\n"type": "array",\n"items": {"type": "string"}\n}\n},\n"required": ["moverName", "position", "appointeeName", "appointmentSubject", "issuesWithAppointment", "actName", "actYear", "presidentAppointment", "requiredFields"]\n}\nparagraph:\nCongress MP Jairam Ramesh has moved a privilege motion over the appointment of BJP leader Tarun Vijay as chairman of National Monuments Authority (NMA), saying the appointee does not meet the criteria required for the post as per the law by Parliament.\n\nCongress MP Jairam Ramesh said ex-BJP MP Tarun Vijay\'s "educational and professional background does not, in any way whatsoever, meet the requirements of law as stipulated mandatorily by Parliament" for the post of NMF chief. (File photo)\n\nCongress MP Jairam Ramesh has moved a privilege motion against Union Minister of Culture G Kishan Reddy over the appointment of BJP leader Tarun Vijay as chairman of National Monuments Authority (NMA).\n\nWhile rejecting to the appointment, Congress MP Ramesh said Tarun Vijay does not meet the criteria required as per the law by Parliament for the post.\n\nIn his letter to Rajya Sabha Chairman Venkaiah Naidu, Congress MP Ramesh cited the Ancient Monuments and Archacological Sites and Remains (Amendment and Validation) Act, 2010 and claimed that the rule mandates only an expert having proven experience and expertise in the field to be appointed as a Chairman of the NMA.\n\nWhile objecting to the appointment, the Congress MP said that the "educational and professional background does not, in any way whatsoever, meet the requirements of law as stipulated mandatorily by Parliament".\n\n"I would like to move a privilege motion against the Union Minister of Culture in this regard for willfully disregarding the provisions of law passed by Parliament. He has, in fact, made a mockery of this law," Jairam Ramesh said in his letter.\n\n"Chairperson, on a whole-time basis, to be appointed by the President, having proven experience and expertise in the field of archaeology, country and town planning architecture, heritage, conservation architecture or law," Jairam Ramesh said.', 'role': 'user'}, {'content': '{\n"moverName": "Congress MP Jairam Ramesh",\n"position": "MP",\n"appointeeName": "Tarun Vijay",\n"appointmentSubject": "Chairman of National Monuments Authority (NMA)",\n"issuesWithAppointment": {\n"educationalBackground": "Not specified in the paragraph",\n"professionalBackground": "Ex-BJP MP",\n"lawRequirements": "Does not meet the criteria required as per the Ancient Monuments and Archaeological Sites and Remains (Amendment and Validation) Act, 2010"\n},\n"actName": "Ancient Monuments and Archaeological Sites and Remains (Amendment and Validation) Act",\n"actYear": 2010,\n"presidentAppointment": "Chairperson, on a whole-time basis, to be appointed by the President, having proven experience and expertise in the field of archaeology, country and town planning architecture, heritage, conservation architecture or law",\n"requiredFields": ["educationalBackground", "professionalBackground", "lawRequirements", "actName", "actYear", "presidentAppointment"]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "WeatherForecast", "type": "object", "properties": {"source": {"title": "Source", "type": "string", "const": "Copyright 2019 Nexstar Broadcasting, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed."}, "weatherSystem": {"title": "Weather System", "type": "object", "properties": {"systemType": {"title": "System Type", "type": "string", "const": "Complex of showers and thunderstorms"}, "movement": {"title": "Movement", "type": "string", "const": "Form this evening and move into the Northern Edwards Plateau overnight."}}, "required": ["systemType", "movement"]}, "precipitation": {"title": "Precipitation", "type": "object", "properties": {"affectedAreas": {"title": "Affected Areas", "type": "array", "items": {"type": "string", "enum": ["Crockett and Sutton counties", "Concho Valley"]}}, "rainfallAmount": {"title": "Rainfall Amount", "type": "array", "items": {"type": "object", "properties": {"area": {"type": "string", "enum": ["Crockett and Sutton counties"]}, "amount": {"type": "string", "enum": ["1 to 3 inches"]}}, "required": ["area", "amount"]}}, "timing": {"title": "Timing", "type": "string", "const": "Rain chances are expected through early Thursday morning."}}, "required": ["affectedAreas", "rainfallAmount", "timing"]}, "floodWarning": {"title": "Flood Warning", "type": "object", "properties": {"watch": {"title": "Watch", "type": "object", "properties": {"counties": {"title": "Counties", "type": "array", "items": {"type": "string", "enum": ["Crockett", "Sutton"]}}, "duration": {"title": "Duration", "type": "string", "const": "through June 5th, 7:00 AM"}}, "required": ["counties", "duration"]}, "additionalCounties": {"title": "Additional Counties", "type": "string", "const": "If any other Concho Valley counties are added to the Flash Flood Watch it will be updated on this story throughout the evening."}}, "required": ["watch", "additionalCounties"]}}, "required": ["source", "weatherSystem", "precipitation", "floodWarning"]}\nparagraph:\nCopyright 2019 Nexstar Broadcasting, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.\n\nAnother complex of showers and thunderstorms will form this evening and move into the Northern Edwards Plateau overnight. Some areas of Crockett and Sutton counties saw 1 to 3 inches of rain last night, with soils already saturated, heavy rain will quickly run off into creeks and streams.\n\nFlooding of city streets and other poor drainage areas will be possible.\n\nAdditional localized flooding across the Concho Valley can\'t be ruled out\n\nRain chances are expected through early Thursday morning\n\nFlash Flood Watch for Crockett and Sutton counties through June 5th, 7:00 AM\n\nIf any other Concho Valley counties are added to the Flash Flood Watch it will be updated on this story throughout the evening.\n\nCopyright 2019 Nexstar Broadcasting, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.', 'role': 'user'}, {'content': '{\n "source": "Copyright 2019 Nexstar Broadcasting, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.",\n "weatherSystem": {\n "systemType": "Complex of showers and thunderstorms",\n "movement": "Form this evening and move into the Northern Edwards Plateau overnight."\n },\n "precipitation": {\n "affectedAreas": ["Crockett and Sutton counties", "Concho Valley"],\n "rainfallAmount": [\n {\n "area": "Crockett and Sutton counties",\n "amount": "1 to 3 inches"\n }\n ],\n "timing": "Rain chances are expected through early Thursday morning."\n },\n "floodWarning": {\n "watch": {\n "counties": ["Crockett", "Sutton"],\n "duration": "through June 5th, 7:00 AM"\n },\n "additionalCounties": "If any other Concho Valley counties are added to the Flash Flood Watch it will be updated on this story throughout the evening."\n }\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "Manhunt",\n"type": "object",\n"properties": {\n"victimName": {"title": "Victim Name", "type": "string"},\n"victimAge": {"title": "Victim Age", "type": "number"},\n"victimHometown": {"title": "Victim Hometown", "type": "string"},\n"suspectName": {"title": "Suspect Name", "type": "string"},\n"suspectAge": {"title": "Suspect Age", "type": "number"},\n"suspectLastKnownLocation": {"title": "Suspect Last Known Location", "type": "string"},\n"crimeLocation": {"title": "Crime Location", "type": "string"},\n"crimeDate": {"title": "Crime Date", "type": "string", "format": "date"},\n"additionalSuspects": {\n"title": "Additional Suspects",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"suspectAge": {"title": "Suspect Age", "type": "number"},\n"suspectArrestStatus": {"title": "Suspect Arrest Status", "type": "string"},\n"suspectCustodyReason": {"title": "Suspect Custody Reason", "type": "string"}\n},\n"required": ["suspectAge", "suspectArrestStatus", "suspectCustodyReason"]\n}\n},\n"vehicleDescription": {\n"title": "Vehicle Description",\n"type": "object",\n"properties": {\n"vehicleMake": {"title": "Vehicle Make", "type": "string"},\n"vehicleModel": {"title": "Vehicle Model", "type": "string"},\n"vehicleColor": {"title": "Vehicle Color", "type": "string"},\n"vehicleRegistration": {"title": "Vehicle Registration", "type": "string"}\n},\n"required": ["vehicleMake", "vehicleModel", "vehicleColor", "vehicleRegistration"]\n}\n},\n"required": ["victimName", "victimAge", "victimHometown", "suspectName", "suspectAge", "suspectLastKnownLocation", "crimeLocation", "crimeDate", "additionalSuspects", "vehicleDescription"]\n}\nparagraph:\nPolice have launched a manhunt for a 28-year-old wanted on suspicion of the murder of a pensioner in Essex.\n\nEssex police are trying to find Leighton Snook after 83-year-old Donald Ralph was found dead at his home in the village of Aldham, near Colchester, just after 1pm on Tuesday.\n\nRalph\'s car was stolen and officers said they believe the killing was a targeted attack. Police said Snook should not be approached, but if any members of the public see him, they should notify the police immediately.\n\nSnook is from Colchester, but investigators said he has links to Hastings, Suffolk, Hartlepool and County Durham.\n\nA 16-year-old was arrested in Colchester on Wednesday evening and is being held in custody on suspicion of murder.\n\nDetectives are trying to track down Ralph\'s car, a blue Volvo V50 with the registration HD08 YFV, which was last recorded being driven to Hastings on the morning of the murder.\n\nRalph has been described as "very young at heart" and a man who enjoyed being in the countryside. His niece Tina Ralph said: "Don was a very young-at-heart, fit 83-year-old, with boundless energy, enthusiasm and enjoyment of life.\n\n"He was a man who loved all things countryside, particularly fishing and the Norfolk Broads, as well as being an avid bird lover. He loved horse racing and spent many a happy Saturday having a little flutter.\n\n"Don was a unique character, who will be much missed by his wide circle of friends, and all his family."\n\nDCI Scott Egerton of Kent and Essex serious crime directorate said: "We urgently need to speak to Leighton Snook in connection with the murder of Donald Ralph. I would strongly urge him, or anyone who knows of his whereabouts, to contact police.\n\n"I ask members of the public not to approach him but to call police immediately. Anybody who is found to be assisting those involved in Mr Ralph\'s murder in any way will be subject of a thorough investigation and could find themselves prosecuted for assisting an offender."', 'role': 'user'}, {'content': '{\n"victimName": "Donald Ralph",\n"victimAge": 83,\n"victimHometown": "Aldham, near Colchester, Essex",\n"suspectName": "Leighton Snook",\n"suspectAge": 28,\n"suspectLastKnownLocation": "Colchester with links to Hastings, Suffolk, Hartlepool and County Durham",\n"crimeLocation": "Aldham, near Colchester, Essex",\n"crimeDate": "2022-02-22",\n"additionalSuspects": [\n{\n"suspectAge": 16,\n"suspectArrestStatus": "arrested",\n"suspectCustodyReason": "murder"\n}\n],\n"vehicleDescription": {\n"vehicleMake": "Volvo",\n"vehicleModel": "V50",\n"vehicleColor": "blue",\n"vehicleRegistration": "HD08 YFV"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "MetalworkingCrimping", "type": "object", "properties": {"definition": {"title": "Definition", "type": "string"}, "methods": {"title": "Methods", "type": "object", "properties": {"wireConnectors": {"title": "Wire Connectors", "type": "object", "properties": {"metals": {"title": "Metals", "type": "array", "items": {"type": "string"}}, "connector": {"title": "Connector", "type": "object", "properties": {"strippedWire": {"title": "Stripped Wire", "type": "string"}, "crimper": {"title": "Crimper", "type": "string"}, "attachment": {"title": "Attachment", "type": "string"}}, "required": ["strippedWire", "crimper", "attachment"]}}, "required": ["metals", "connector"]}}, "required": ["wireConnectors"]}, "uses": {"title": "Uses", "type": "array", "items": {"type": "string"}}, "examples": {"title": "Examples", "type": "array", "items": {"type": "string"}}, "related": {"title": "Related", "type": "array", "items": {"type": "string"}}}, "required": ["definition", "methods", "uses", "examples", "related"]}\nparagraph:\nIn metalworking, crimping is a method of joining two or more pieces of metal or other ductile material by deforming one or both of them to hold the other. The bend or deformity is called the crimp.\n\nWire connectors \n\nThe metals are joined via a special connector. Stripped wire (often stranded) is inserted through the correctly sized opening of the connector, and a crimper is used to tightly squeeze the opening against the wire. Depending on the type of connector used, it may be attached to a metal plate by a separate screw or bolt or it could be simply screwed on using the connector itself to make the attachment like an F connector.\n\nUses \n\nCrimping is most extensively used in metalworking. Crimping is commonly used to fix bullets in their cartridge cases, for rapid but lasting electrical connections, securing lids on metal food cans, and many other applications. Because it can be a cold-working technique, crimping can also be used to form a strong bond between the workpiece and a non-metallic component.\n\nWhen joining segments of tubular sheet metal pipe, such as for smoke pipes for wood stoves, downspouts for rain gutters, or for installation of ventilation ducting, one end of a tube is treated with a crimping tool to make a slip joint into the next section of duct. The joint will not be liquid-tight but will be adequate for conveying low pressure fluids. Crimp joints may be arranged to prevent accumulation of dirt.\n\nIn jewelry manufacture, crimp beads, or crimp tubes, are used to make secure joints in fine wire, such as used in clasps or tie loops. A crimped lead (or other soft metal) seal is attached to secure wires used to secure fasteners in aircraft, or to provide visual evidence of tampering when securing a utility meter or as a seal on cargo containers.\n\nIn plumbing, there is a trend in some jurisdictions towards the use of crimped fittings to join metallic pipes, replacing the traditional soldering or "sweating" of joints. This trend is driven in part by increased restrictions or bans of processes involving open flames, which may now require costly special permits.\n\nSee also \n Pliers\n\nReferences \n\nFabrication (metal)\nJewellery components\nJoining', 'role': 'user'}, {'content': '{\n "definition": "Crimping is a method of joining two or more pieces of metal or other ductile material by deforming one or both of them to hold the other. The bend or deformity is called the crimp.",\n "methods": {\n "wireConnectors": {\n "metals": ["metal"],\n "connector": {\n "strippedWire": "stripped wire (often stranded)",\n "crimper": "crimper",\n "attachment": "attachment via a separate screw or bolt or simply screwed on using the connector itself"\n }\n }\n },\n "uses": ["metalworking", "fixing bullets in cartridge cases", "rapid but lasting electrical connections", "securing lids on metal food cans", "forming a strong bond between the workpiece and a non-metallic component", "joining segments of tubular sheet metal pipe", "jewelry manufacture", "plumbing"],\n "examples": ["tubular sheet metal pipe joints for smoke pipes, downspouts, or ventilation ducting", "crimp beads or crimp tubes in jewelry", "crimped fittings in plumbing"],\n "related": ["Pliers", "Fabrication (metal)", "Jewellery components", "Joining"]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "MilitaryRaid",\n"type": "object",\n"properties": {\n"groupName": {\n"title": "Group Name",\n"type": "string"\n},\n"allies": {\n"title": "Allies",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"target": {\n"title": "Target",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"outcome": {\n"title": "Outcome",\n"type": "string"\n},\n"equipmentSeized": {\n"title": "Equipment Seized",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["groupName", "allies", "target", "location", "outcome"]\n}\nparagraph:\nAccording to reports, the Jerusalem Brigade, backed by the Syrian Arab Army (SAA) and National Defense Forces (NDF), raided several ISIS hideouts in an effort to eliminate the remnants of the terrorist group in the Homs countryside.\n\nFollowing one successful raid, the Jerusalem Brigade was able to seize the equipment and supplies left behind by the Islamic State in the Badiya Al-Sham region.\n\nImprove the Discussion\n\nHelp us make this a great place for discussion by always working to improve the discussion in some way, however small. If you are not sure your post adds to the conversation, think over what you want to say and try again later.\n\nThe topics discussed here matter to us, and we want you to act as if they matter to you, too. Be respectful of the topics and the people discussing them, even if you disagree with some of what is being said.', 'role': 'user'}, {'content': '{\n"groupName": "Jerusalem Brigade",\n"allies": ["Syrian Arab Army (SAA)", "National Defense Forces (NDF)"],\n"target": "ISIS hideouts",\n"location": "Homs countryside, Badiya Al-Sham region",\n"outcome": "Successful raid with equipment and supplies seized"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CompanyAnnouncement",\n"type": "object",\n"properties": {\n"rightsValue": {\n"title": "Rights Value",\n"type": "number"\n},\n"companyName": {\n"title": "Company Name",\n"type": "string"\n},\n"plannedAction": {\n"title": "Planned Action",\n"type": "string"\n},\n"sourceOfInformation": {\n"title": "Source of Information",\n"type": "object",\n"properties": {\n"peopleIdentified": {\n"title": "People Identified",\n"type": "boolean"\n},\n"internalDeliberations": {\n"title": "Internal Deliberations",\n"type": "string"\n}\n},\n"required": ["peopleIdentified", "internalDeliberations"]\n},\n"investmentInCountry": {\n"title": "Investment in Country",\n"type": "number"\n},\n"businessRationale": {\n"title": "Business Rationale",\n"type": "string"\n}\n},\n"required": ["rightsValue", "companyName", "plannedAction", "sourceOfInformation", "investmentInCountry", "businessRationale"]\n}\nparagraph:\nThe rights had been estimated to fetch an unprecedented $7.7 billion. The US giant is planning to throw in the towel rather than get into a bidding war, the people said, asking not to be identified discussing internal deliberations. While Amazon has already invested more than $6 billion in the country, more spending merely for the online streaming rights to the league didn\'t make business sense, they said.', 'role': 'user'}, {'content': '{\n"rightsValue": 7.7e+09,\n"companyName": "The US giant",\n"plannedAction": "throw in the towel",\n"sourceOfInformation": {\n"peopleIdentified": true,\n"internalDeliberations": "discussing internal deliberations"\n},\n"investmentInCountry": 6e+09,\n"businessRationale": "more spending merely for the online streaming rights to the league didn\'t make business sense"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "Hotel",\n"type": "object",\n"properties": {\n"hotelName": {\n"title": "Hotel Name",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"purpose": {\n"title": "Purpose",\n"type": "string"\n},\n"notableGuests": {\n"title": "Notable Guests",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"yearEstablished": {\n"title": "Year Established",\n"type": "string",\n"format": "date-year"\n},\n"yearCompleted": {\n"title": "Year Completed",\n"type": "string",\n"format": "date-year"\n}\n},\n"required": ["hotelName", "location", "purpose", "yearEstablished", "yearCompleted"]\n}\nparagraph:\nGateway Hotel is a hotel in Port Moresby, Papua New Guinea. It is an important conference centre and has hosted some notable political figures and other distinguished guests over the years and has been cited as "one of the best places to meet the Papua New Guinean Members of Parliament". It formerly housed the offices of the World Bank in Papua New Guinea.\n\nReferences\n\nHotels in Papua New Guinea\nBuildings and structures in Port Moresby\nHotels established in 1980\nHotel buildings completed in 1980', 'role': 'user'}, {'content': '{\n"hotelName": "Gateway Hotel",\n"location": "Port Moresby, Papua New Guinea",\n"purpose": "important conference center",\n"notableGuests": ["notable political figures", "Papua New Guinean Members of Parliament"],\n"references": ["Hotels in Papua New Guinea", "Buildings and structures in Port Moresby", "Hotels established in 1980", "Hotel buildings completed in 1980"],\n"yearEstablished": "1980",\n"yearCompleted": "1980"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nPrime Minister Narendra Modi on Friday announced a financial assistance of $50 million to Sri Lanka to deal with the challenge of terrorism after holding "fruitful" talks with Gotabaya Rajapaksa, the newly-elected president of the island nation.\n\nThe prime minister also said he was confident that the new government in Sri Lanka will fulfil aspirations of the Tamil community in that country.\n\nIn a media statement, Modi said India\'s line of credit of $400 million will further boost Sri Lanka\'s development.\njson schema:\n{\n"title": "InternationalAidAndCooperation",\n"type": "object",\n"properties": {\n"event": {\n"title": "Event",\n"type": "string"\n},\n"leaderName": {\n"title": "Leader Name",\n"type": "string"\n},\n"assistanceType": {\n"title": "Assistance Type",\n"type": "string"\n},\n"assistanceAmount": {\n"title": "Assistance Amount",\n"type": "number"\n},\n"purpose": {\n"title": "Purpose",\n"type": "string"\n},\n"countryName": {\n"title": "Country Name",\n"type": "string"\n},\n"additionalComments": {\n"title": "Additional Comments",\n"type": "string"\n}\n},\n"required": ["event", "leaderName", "assistanceType", "assistanceAmount", "countryName"]\n}', 'role': 'user'}, {'content': '{\n"event": "Announcement of financial assistance",\n"leaderName": "Prime Minister Narendra Modi",\n"assistanceType": "Financial assistance",\n"assistanceAmount": 50000000,\n"purpose": "To deal with the challenge of terrorism in Sri Lanka",\n"countryName": "Sri Lanka",\n"additionalComments": "India\'s line of credit of $400 million will further boost Sri Lanka\'s development. The prime minister also expressed confidence that the new government in Sri Lanka will fulfill aspirations of the Tamil community in that country."\n}', 'role': 'assistant'}, {'content': 'paragraph:\n"The procession through Central Park will give thousands of New Yorkers an opportunity to come face to face with Pope Francis," Mayor Bill de Blasio said in a press release Tuesday.\n\n"We\'re proud to welcome one of the world\'s most powerful voices to our great city next month, and we are grateful to the archdiocese for their cooperation in giving even more New Yorkers a chance to join in this historic visit."\njson schema:\n{\n"title": "PressRelease",\n"type": "object",\n"properties": {\n"event": {\n"title": "Event",\n"type": "string"\n},\n"person": {\n"title": "Person",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n}\n},\n"required": ["name", "position"]\n},\n"eventDetails": {\n"title": "Event Details",\n"type": "object",\n"properties": {\n"location": {\n"title": "Location",\n"type": "string"\n},\n"date": {\n"title": "Date",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["location", "date"]\n},\n"additionalDetails": {\n"title": "Additional Details",\n"type": "string"\n}\n},\n"required": ["event", "person", "eventDetails"]\n}', 'role': 'user'}, {'content': '{\n"event": "procession through Central Park",\n"person": {\n"name": "Mayor Bill de Blasio",\n"position": "Mayor of New York City"\n},\n"eventDetails": {\n"location": "Central Park, New York City",\n"date": "next month"\n},\n"additionalDetails": "will give thousands of New Yorkers an opportunity to come face to face with Pope Francis; proud to welcome one of the world\'s most powerful voices; grateful to the archdiocese for their cooperation in giving even more New Yorkers a chance to join in this historic visit."\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "EmailContent",\n"type": "object",\n"properties": {\n"sender": {\n"title": "Sender",\n"type": "string"\n},\n"recipients": {\n"title": "Recipients",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"topic": {\n"title": "Topic",\n"type": "string"\n},\n"content": {\n"title": "Content",\n"type": "string"\n},\n"gifts": {\n"title": "Gifts",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"amount": {\n"title": "Amount",\n"type": "number"\n},\n"year": {\n"title": "Year",\n"type": "integer"\n},\n"purpose": {\n"title": "Purpose",\n"type": "string"\n}\n},\n"required": ["amount", "year", "purpose"]\n}\n},\n"foundation": {\n"title": "Foundation",\n"type": "string"\n},\n"program": {\n"title": "Program",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n}\n},\n"required": ["name", "description"]\n}\n},\n"required": ["sender", "recipients", "topic", "content", "gifts", "foundation", "program"]\n}\nparagraph:\n"We are seeking to learn more about the nature of that appointment from Dr. Kosslyn, who no longer works at the University," Lawrence S. Bacow, who is president of the Ivy League school, said in an email to students, alumni and faculty.\n\nThe cash, accepted between 1998 and 2007, supported "various faculty and institutional research activities across the University," Bacow said.\n\nThe largest single gift was $6.5 million Epstein gave in 2003 to support Harvard\'s "Program for Evolutionary Dynamics.\'\n\nThe program, which was founded that year, "is the study of the fundamental mathematical principles that guide evolution," the university\'s website says.\n\n"To date, we have uncovered no gifts received from Epstein or his foundation following his guilty plea," Bacow said.\n\nEpstein\'s gifts funded research and education "and nearly all were spent years ago," the email said, without elaborating.\n\nThe email ends,\n\n"Jeffrey Epstein\'s crimes were repulsive and reprehensible. I profoundly regret Harvard\'s past association with him. Conduct such as his has no place in our society. We act today in recognition of that fact. And we do so knowing that the scourge of sexual assault continues to demand our close attention and concerted action.\n\n"Harvard is not perfect, but you have my commitment as president that we will always strive to be better.', 'role': 'user'}, {'content': '{\n"sender": "Lawrence S. Bacow",\n"recipients": ["students", "alumni", "faculty"],\n"topic": "Nature of appointment with Dr. Kosslyn",\n"content": "Harvard\'s past association with Jeffrey Epstein and the gifts he gave",\n"gifts": [\n{\n"amount": 6500000,\n"year": 2003,\n"purpose": "Support Harvard\'s \'Program for Evolutionary Dynamics\'"\n}\n],\n"foundation": "Not mentioned",\n"program": {\n"name": "Program for Evolutionary Dynamics",\n"description": "Study of the fundamental mathematical principles that guide evolution"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nNational Voter Registration Day is Tuesday\n\nNational Voter Registration Day is Tuesday, but the last day to register to vote is Oct. 7.\n\nTo register, individuals need to be a United States citizen; a resident of the county where the voter registration application will be made; have no felony convictions; must have not been declared by a court exercising probate jurisdiction to be either totally or partially mentally incapacitated without the right to vote. If you are 17, you can register to vote if you will turn 18 before election day on Nov. 5.\n\nThose interested in learning more information can visit votetexas.gov/register-to-vote/index.html.\njson schema:\n{"title": "VoterRegistrationInfo", "type": "object", "properties": {"eventName": {"title": "Event Name", "type": "string"}, "eventDate": {"title": "Event Date", "type": "string", "format": "date"}, "registrationDeadline": {"title": "Registration Deadline", "type": "string", "format": "date"}, "eligibility": {"title": "Eligibility", "type": "object", "properties": {"citizenship": {"title": "Citizenship", "type": "boolean"}, "countyResidency": {"title": "County Residency", "type": "boolean"}, "felonyConvictions": {"title": "Felony Convictions", "type": "boolean"}, "courtDeclaredIncompetence": {"title": "Court Declared Incompetence", "type": "boolean"}, "age": {"title": "Age", "type": "number", "minimum": 17}}, "required": ["citizenship", "countyResidency", "felonyConvictions", "courtDeclaredIncompetence", "age"]}, "registrationUrl": {"title": "Registration URL", "type": "string", "format": "uri"}}, "required": ["eventName", "eventDate", "registrationDeadline", "eligibility", "registrationUrl"]}', 'role': 'user'}, {'content': '{\n "eventName": "National Voter Registration Day",\n "eventDate": "2023-09-19",\n "registrationDeadline": "2023-10-07",\n "eligibility": {\n "citizenship": true,\n "countyResidency": true,\n "felonyConvictions": false,\n "courtDeclaredIncompetence": false,\n "age": 17\n },\n "registrationUrl": "http://votetexas.gov/register-to-vote/index.html"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "ArrestInformation",\n"type": "object",\n"properties": {\n"arrestedPersonName": {\n"title": "Arrested Person Name",\n"type": "string"\n},\n"accusedCrime": {\n"title": "Accused Crime",\n"type": "string"\n},\n"crimeSections": {\n"title": "Crime Sections",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"complainantName": {\n"title": "Complainant Name",\n"type": "string"\n},\n"complainantOccupation": {\n"title": "Complainant Occupation",\n"type": "string"\n},\n"relationshipDuration": {\n"title": "Relationship Duration",\n"type": "string"\n},\n"numberOfPregnancies": {\n"title": "Number of Pregnancies",\n"type": "number"\n},\n"threatsDuringRelationship": {\n"title": "Threats During Relationship",\n"type": "string"\n},\n"promiseOfMarriage": {\n"title": "Promise of Marriage",\n"type": "boolean"\n}\n},\n"required": [\n"arrestedPersonName",\n"accusedCrime",\n"crimeSections",\n"complainantName",\n"complainantOccupation",\n"relationshipDuration"\n]\n}\nparagraph:\nFormer AIADMK minister M Manikandan has been arrested in Bengaluru after a Malaysian woman levelled rape charges against him. Manikandan has been booked under various sections of the Indian Penal Code (IPC), including charges of rape, causing miscarriage and cheating.\n\nThe complaint was lodged two weeks ago at the women\'s police station in Adyar, in which the woman stated she is an actor by profession and had been in a relationship with Manikandan for years.\n\nThe Malaysian women said that Manikandan had allegedly impregnated her multiple times and then forced her to abort while also threatening her. The victim has claimed that he had lured her into the relationship with the promise of marriage.', 'role': 'user'}, {'content': '{\n"arrestedPersonName": "M Manikandan",\n"accusedCrime": "Rape",\n"crimeSections": ["rape", "causing miscarriage", "cheating"],\n"complainantName": "Malaysian woman",\n"complainantOccupation": "Actor",\n"relationshipDuration": "years",\n"numberOfPregnancies": 3,\n"threatsDuringRelationship": "allegedly forced her to abort and threatened her",\n"promiseOfMarriage": true\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "StockInfo", "type": "object", "properties": {"stockSymbol": {"title": "Stock Symbol", "type": "string"}, "openPrice": {"title": "Open Price", "type": "number"}, "oneYearLow": {"title": "1-Year Low", "type": "number"}, "oneYearHigh": {"title": "1-Year High", "type": "number"}, "marketCap": {"title": "Market Cap", "type": "number"}, "peRatio": {"title": "PE Ratio", "type": "number"}, "beta": {"title": "Beta", "type": "number"}, "currentRatio": {"title": "Current Ratio", "type": "number"}, "quickRatio": {"title": "Quick Ratio", "type": "number"}, "debtToEquityRatio": {"title": "Debt-to-Equity Ratio", "type": "number"}, "fiftyDayMovingAverage": {"title": "50-Day Moving Average", "type": "number"}, "twoHundredDayMovingAverage": {"title": "200-Day Moving Average", "type": "number"}}, "required": ["stockSymbol", "openPrice", "oneYearLow", "oneYearHigh", "marketCap", "peRatio", "beta", "currentRatio", "quickRatio", "debtToEquityRatio", "fiftyDayMovingAverage", "twoHundredDayMovingAverage"]}\nparagraph:\nOTCMKTS ZTCOY opened at $5.44 on Tuesday. ZTE has a 1-year low of $4.61 and a 1-year high of $8.16. The firm has a market cap of $12.55 billion, a PE ratio of 12.95 and a beta of 0.91. The company has a current ratio of 1.47, a quick ratio of 1.06 and a debt-to-equity ratio of 0.48. The stock has a 50-day moving average of $5.59 and a 200-day moving average of $6.25.\n\nAbout ZTE\n\nZTE Corp. engages in the design, development, manufacture, and sale of information and telecommunication technology products. The company has the most complete telecommunications product line, covering every vertical sector of wireless networks, core networks, access & bearer networks, services and terminals markets.', 'role': 'user'}, {'content': '{\n "stockSymbol": "ZTCOY",\n "openPrice": 5.44,\n "oneYearLow": 4.61,\n "oneYearHigh": 8.16,\n "marketCap": 12550000000,\n "peRatio": 12.95,\n "beta": 0.91,\n "currentRatio": 1.47,\n "quickRatio": 1.06,\n "debtToEquityRatio": 0.48,\n "fiftyDayMovingAverage": 5.59,\n "twoHundredDayMovingAverage": 6.25\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThis refers to the increasing cases of child labour and the abuses these children suffer. Child labour is a complex problem. There are no easy and quick solutions to overcome this problem of the country.\n\nChildren are voiceless and powerless. There shouldn\'t be any \'excuse\' or \'justification\' for the use of child labour. It is our responsibility to love and protect these children. The state is children\'s guardian. It should protect children\'s basic rights to life.\n\nTahira Abdullah\n\nIslamabad\n\n0\n\n0\n\nVoiceless employees was posted in Newspost of TheNews International - https://www.thenews.com.pk on January 29, 2017 and was last updated on January 29, 2017. This news story is related to Print/182487-Voiceless-employees/ - breaking news, latest news, pakistan ne. Permanent link to the news story "Voiceless employees" is https://www.thenews.com.pk/print/182487-Voiceless-employees.\njson schema:\n{\n"title": "NewsStory",\n"type": "object",\n"properties": {\n"title": {"title": "Title", "type": "string"},\n"author": {"title": "Author", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"datePosted": {"title": "Date Posted", "type": "string", "format": "date"},\n"relatedLink": {"title": "Related Link", "type": "string", "format": "uri"},\n"content": {"title": "Content", "type": "string"}\n},\n"required": ["title", "author", "location", "datePosted", "relatedLink", "content"]\n}', 'role': 'user'}, {'content': '{\n"title": "Voiceless employees",\n"author": "Tahira Abdullah",\n"location": "Islamabad",\n"datePosted": "2017-01-29",\n"relatedLink": "https://www.thenews.com.pk/print/182487-Voiceless-employees",\n"content": "This refers to the increasing cases of child labour and the abuses these children suffer. Child labour is a complex problem. There are no easy and quick solutions to overcome this problem of the country. Children are voiceless and powerless. There shouldn\'t be any \'excuse\' or \'justification\' for the use of child labour. It is our responsibility to love and protect these children. The state is children\'s guardian. It should protect children\'s basic rights to life."\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "RallyTeam", "type": "object", "properties": {"teamName": {"title": "Team Name", "type": "string"}, "racerName": {"title": "Racer Name", "type": "string"}, "carManufacturer": {"title": "Car Manufacturer", "type": "string"}, "carModel": {"title": "Car Model", "type": "string"}, "championshipName": {"title": "Championship Name", "type": "string"}, "collaborationPartners": {"title": "Collaboration Partners", "type": "array", "items": {"type": "string"}}, "previousExperience": {"title": "Previous Experience", "type": "object", "properties": {"previouslyDroveForTeam": {"title": "Previously Drove For Team", "type": "string"}, "previuosChampionship": {"title": "Previous Championship", "type": "string"}, "previousCarModel": {"title": "Previous Car Model", "type": "string"}}, "required": ["previouslyDroveForTeam", "previuosChampionship", "previousCarModel"]}}, "required": ["teamName", "racerName", "carManufacturer", "carModel", "championshipName", "collaborationPartners", "previousExperience"]}\nparagraph:\nSebastien Loeb\'s team will enter the 2018 World Rallycross Championship with a Peugeot 208 for Gregoire Demoustier.\n\nLoeb himself already competes in World RX with Peugeot\'s factory operation.\n\nThe Sebastien Loeb Racing Peugeot has been independently developed in collaboration with Onroak and ORECA, with team co-founder Dominique Heintz calling SLR\'s version "a concept that has been pushed right to the limit".\n\nDemoustier previously drove for SLR in the World Touring Car Championship in 2016, before moving into RX last year for a partial campaign in a DA Racing Peugeot.', 'role': 'user'}, {'content': '{\n "teamName": "Sebastien Loeb Racing",\n "racerName": "Gregoire Demoustier",\n "carManufacturer": "Peugeot",\n "carModel": "208",\n "championshipName": "2018 World Rallycross Championship",\n "collaborationPartners": ["Onroak", "ORECA"],\n "previousExperience": {\n "previouslyDroveForTeam": "Sebastien Loeb Racing",\n "previuosChampionship": "World Touring Car Championship",\n "previousCarModel": "Peugeot"\n }\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "YouTubeChannel",\n"type": "object",\n"properties": {\n"channelName": {\n"title": "Channel Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n},\n"category": {\n"title": "Category",\n"type": "string"\n},\n"influences": {\n"title": "Influences",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"targetAudience": {\n"title": "Target Audience",\n"type": "string"\n},\n"recentVideos": {\n"title": "Recent Videos",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["channelName", "description", "category", "influences", "targetAudience", "recentVideos"]\n}\nparagraph:\nThe Bro Dynasty\n\nHe is a new YouTuber I found him through instagram he is probobly one of my favorites. He is kinda similar to ricegum. He roasts people that are cringey on social media but his main message is to show that anyone in this day can be internet famous. He recently roasted woahhvicky\'s and shelby diggs cringey instagram videos.', 'role': 'user'}, {'content': '{\n"channelName": "The Bro Dynasty",\n"description": "A YouTuber who roasts cringey people on social media to show that anyone can be internet famous.",\n"category": "Entertainment",\n"influences": ["Ricegum"],\n"targetAudience": "People interested in humor and social media trends",\n"recentVideos": ["roasted woahhvicky\'s cringey Instagram video", "roasted shelby diggs cringey Instagram video"]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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Converting format of dataset (num_proc=16): 4%|▍ | 450/10000 [00:00<00:07, 1322.47 examples/s][WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nLieutenant General Sir Thomas Herbert John Chapman Goodwin (24 May 1871 – 29 September 1960), known as Sir John Goodwin, was a British soldier and medical practitioner, who served as the Governor of Queensland from 1927 to 1932.\n\nEarly life and military career\nGoodwin was born on 24 May 1871 in Kandy, Ceylon (now Sri Lanka) to a British Army surgeon father and an Australian mother. He was educated in England at Newton College, Devon, and undertook medical training at St Mary\'s Hospital, London where he graduated with a Membership of the Royal College of Surgeons and Royal College of Physicians in 1891.\n\nCommissioned a lieutenant in the British Army Medical Department, Goodwin was stationed in India where he saw active service on the North-West Frontier from 1897 to 1898 and was awarded to the Distinguished Service Order.\n\nGovernor of Queensland\nGoodwin served as Governor of Queensland from 13 July 1927 to 7 April 1932.\n\nWilson was a freemason. During his term as governor, he was also Grand Master of the Grand Lodge of Queensland.\n\nReferences\n\n1871 births\n1960 deaths\nCompanions of the Distinguished Service Order\nForeign recipients of the Distinguished Service Medal (United States)\nGovernors of Queensland\nKnights Commander of the Order of St Michael and St George\nKnights Commander of the Order of the Bath\nPeople from Kandy\nRecipients of the Croix de guerre (Belgium)\nRoyal Army Medical Corps officers\nBritish Army lieutenant generals\nBritish people in British Ceylon\nRecipients of the Distinguished Service Medal (US Army)\njson schema:\n{"title": "Person", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "birthDate": {"title": "Birth Date", "type": "string", "format": "date"}, "birthPlace": {"title": "Birth Place", "type": "string"}, "education": {"title": "Education", "type": "array", "items": {"type": "object", "properties": {"schoolName": {"title": "School Name", "type": "string"}, "location": {"title": "Location", "type": "string"}}, "required": ["schoolName", "location"]}}, "occupation": {"title": "Occupation", "type": "array", "items": {"type": "object", "properties": {"jobTitle": {"title": "Job Title", "type": "string"}, "organization": {"title": "Organization", "type": "string"}, "achievements": {"title": "Achievements", "type": "array", "items": {"type": "string"}}}, "required": ["jobTitle", "organization", "achievements"]}}, "honors": {"title": "Honors", "type": "array", "items": {"type": "object", "properties": {"honorName": {"title": "Honor Name", "type": "string"}, "year": {"title": "Year", "type": "string", "format": "date"}}, "required": ["honorName", "year"]}}}, "required": ["name", "birthDate", "birthPlace", "education", "occupation", "honors"]}', 'role': 'user'}, {'content': '{\n "name": "Thomas Herbert John Chapman Goodwin",\n "birthDate": "1871-05-24",\n "birthPlace": "Kandy, Ceylon (now Sri Lanka)",\n "education": [\n {\n "schoolName": "Newton College, Devon",\n "location": "England"\n },\n {\n "schoolName": "St Mary\'s Hospital, London",\n "location": "England"\n }\n ],\n "occupation": [\n {\n "jobTitle": "British soldier and medical practitioner",\n "organization": "British Army",\n "achievements": [\n "Awarded the Distinguished Service Order",\n "Served as Governor of Queensland from 1927 to 1932",\n "Grand Master of the Grand Lodge of Queensland"\n ]\n }\n ],\n "honors": [\n {\n "honorName": "Companions of the Distinguished Service Order",\n "year": "1897/1898"\n },\n {\n "honorName": "Knights Commander of the Order of St Michael and St George",\n "year": "1927"\n },\n {\n "honorName": "Knights Commander of the Order of the Bath",\n "year": "1932"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "BallparkProject", "type": "object", "properties": {"projectTeam": {"title": "Project Team", "type": "object", "properties": {"teamMemberName": {"title": "Team Member Name", "type": "string"}, "teamMemberQuote": {"title": "Team Member Quote", "type": "string"}}, "required": ["teamMemberName", "teamMemberQuote"]}, "location": {"title": "Location", "type": "object", "properties": {"area": {"title": "Area", "type": "string"}, "county": {"title": "County", "type": "string"}, "city": {"title": "City", "type": "string"}}, "required": ["area", "county", "city"]}, "ballparkFeatures": {"title": "Ballpark Features", "type": "object", "properties": {"cashlessTransactions": {"title": "Cashless Transactions", "type": "boolean"}, "sanitizingStations": {"title": "Sanitizing Stations", "type": "boolean"}, "foretopTabletopSeating": {"title": "Foretop Tabletop Seating", "type": "boolean"}}, "required": ["cashlessTransactions", "sanitizingStations", "foretopTabletopSeating"]}, "completionDate": {"title": "Completion Date", "type": "string", "format": "date"}, "teamNameSubmission": {"title": "Team Name Submission", "type": "object", "properties": {"website": {"title": "Website", "type": "string", "format": "uri"}, "contest": {"title": "Contest", "type": "object", "properties": {"prize": {"title": "Prize", "type": "string"}, "conditions": {"title": "Conditions", "type": "string"}}, "required": ["prize", "conditions"]}}, "required": ["website", "contest"]}}, "required": ["projectTeam", "location", "ballparkFeatures", "completionDate", "teamNameSubmission"]}\nparagraph:\nTom Gallitz with Gallitz Grading told FOX 6 that they are the masterminds behind getting the field ready. "We have to dig retention ponds, create the building sites, create the field site and then create the parking lot."\n\nWhen asked about the location, the team\'s co-owner, Sonny Bando, said, "We just think that this area, in particular, Lake Country, is such an awesome place to be in the summer. Twenty years they\'ve been trying to get a baseball team in Waukesha County, and we\'re thrilled that we\'re able to do it here in Oconomowoc."\n\nThe brand new field will have upgrades and qualities that others don\'t. "Whether it\'s cashless transactions, sanitizing stations all over the place, one of the unique features of this ballpark is you got a lot of foretop tabletops seating behind home, and up on the second level, so you\'re not elbow-to-elbow everywhere," said Bando to FOX 6.\n\nThey are hoping to have the ballpark ready for use in about a year. "We\'ll be up and running, opening day will be in May, June of 2022, and we\'ll be ready," said Bando.\n\nWith all of this excitement of a new minor league team, the big question is, what will they be named? That is still undetermined, but the owners want help from future fans.\n\nOn their website, you can enter a team name you think represents Lake Country, and you could win a VIP opening day package.\n\nThe package includes the chance to throw out the first pitch, preferred seats for the game, and limited-edition team merchandise.', 'role': 'user'}, {'content': '{\n "projectTeam": {\n "teamMemberName": "Tom Gallitz",\n "teamMemberQuote": "We have to dig retention ponds, create the building sites, create the field site and then create the parking lot."\n },\n "location": {\n "area": "Lake Country",\n "county": "Waukesha County",\n "city": "Oconomowoc"\n },\n "ballparkFeatures": {\n "cashlessTransactions": true,\n "sanitizingStations": true,\n "foretopTabletopSeating": true\n },\n "completionDate": "2022-05-01",\n "teamNameSubmission": {\n "website": "http://their-website.com",\n "contest": {\n "prize": "VIP opening day package",\n "conditions": "enter a team name you think represents Lake Country"\n }\n }\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "BoxingTeam",\n"type": "object",\n"properties": {\n"teamName": {\n"title": "Team Name",\n"type": "string"\n},\n"eventName": {\n"title": "Event Name",\n"type": "string"\n},\n"eventLocation": {\n"title": "Event Location",\n"type": "string"\n},\n"eventDate": {\n"title": "Event Date",\n"type": "string",\n"format": "date"\n},\n"teamMembers": {\n"title": "Team Members",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"age": {\n"title": "Age",\n"type": "number"\n},\n"weightCategory": {\n"title": "Weight Category",\n"type": "string"\n},\n"confidenceLevel": {\n"title": "Confidence Level",\n"type": "string"\n},\n"preparationStatus": {\n"title": "Preparation Status",\n"type": "string"\n},\n"competitions": {\n"title": "Competitions",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n}\n}\n},\n"sponsorshipAmount": {\n"title": "Sponsorship Amount",\n"type": "number"\n},\n"trainingFacility": {\n"title": "Training Facility",\n"type": "string"\n},\n"athleteBenefits": {\n"title": "Athlete Benefits",\n"type": "string"\n}\n},\n"required": [\n"teamName",\n"eventName",\n"eventLocation",\n"eventDate",\n"teamMembers",\n"sponsorshipAmount",\n"trainingFacility",\n"athleteBenefits"\n]\n}\nparagraph:\nThe Indian women\'s boxing team left on Thursday for the Elite Women World Boxing Championship to be held in Turkey from May 6 to 21, 2022.\n\nA 12-member contingent, including Nikhat Zareen and Tokyo Olympics bronze medallist Lovlina Borgohain, is set to compete in the tournament, a crucial event before the Commonwealth Games and the Asian Games later this year. For the record, the Government of India has sanctioned a total amount of ₹92.12 lakh to facilitate the training camp and competition for the team.\n\n"I\'m really excited and confident [about competing at the World Championship]," 25-year-old Nikhat said as per a communique by the Sports Authority of India.\n\n"Lately I\'ve been on a good run and I hope that it will continue. I\'ve prepared well for it. I had analysed my performance and worked on the things in which I was lacking. I\'ll give my best at the world championship," she said.\n\nNikhat is set to compete at the Asian Games later this year in the women\'s 51kg category. She has been training along with the rest of the women\'s boxing team at the SAI national centre of excellence IG Stadium, Delhi. Apart from Nikhat, Manisha Moun (57kg), Jasmine (60kg), Lovlina (69kg) and Saweety Boora (75kg) have sealed berths from the women\'s team for the Asian Games 2022.\n\n\'Technical boxer\'\n\nCommenting on her training at SAI centres over the years, Nikhat said she had improved her game, both physically and mentally.\n\n"I\'m more of a technical boxer now. There have been good benefits from training at the SAI centres, like we get good coaches, good training facilities, proper diet, etc. All the necessities that an athlete needs have been taken care of. We can train at any SAI centres during the off season which really helps an athlete financially and to remain at the top fitness. I\'m really grateful towards SAI for all the help they provide to us," Nikhat, who is based on Hyderabad, said.', 'role': 'user'}, {'content': '{\n"teamName": "Indian women\'s boxing team",\n"eventName": "Elite Women World Boxing Championship",\n"eventLocation": "Turkey",\n"eventDate": "2022-05-06",\n"teamMembers": [\n{\n"name": "Nikhat Zareen",\n"age": 25,\n"weightCategory": "51kg",\n"confidenceLevel": "excited and confident",\n"preparationStatus": "prepared well, analyzed performance and worked on lacking areas",\n"competitions": [\n"Elite Women World Boxing Championship",\n"Asian Games"\n]\n}\n],\n"sponsorshipAmount": 9212000,\n"trainingFacility": "SAI national centre of excellence IG Stadium, Delhi",\n"athleteBenefits": "good coaches, good training facilities, proper diet"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "Obituary",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"age": {\n"title": "Age",\n"type": "number"\n},\n"hometown": {\n"title": "Hometown",\n"type": "string"\n},\n"dateOfBirth": {\n"title": "Date of Birth",\n"type": "string",\n"format": "date"\n},\n"spouseName": {\n"title": "Spouse Name",\n"type": "string"\n},\n"survivedBy": {\n"title": "Survived By",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"precededInDeathBy": {\n"title": "Preceded in Death By",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"visitationDetails": {\n"title": "Visitation/Funeral Services Details",\n"type": "object",\n"properties": {\n"location": {\n"title": "Location",\n"type": "string"\n},\n"date": {\n"title": "Date",\n"type": "string",\n"format": "date"\n},\n"time": {\n"title": "Time",\n"type": "string"\n},\n"officiant": {\n"title": "Officiant",\n"type": "string"\n}\n},\n"required": ["location", "date", "time", "officiant"]\n},\n"burialDetails": {\n"title": "Burial Details",\n"type": "object",\n"properties": {\n"location": {\n"title": "Location",\n"type": "string"\n}\n},\n"required": ["location"]\n}\n},\n"required": ["name", "dateOfBirth", "spouseName", "survivedBy", "precededInDeathBy", "visitationDetails", "burialDetails"]\n}\nparagraph:\nBishop, Patricia Diann Cornelius\n\nPatricia Diann Cornelius Bishop, 69, of Myrtle, MS, passed away October 11, 2021 at North MS Medical Center, Tupelo, MS. She was born November 6, 1951 to Elmer Ray Cornelius and Jeanette Boykin Cornelius in Sheffield, AL. She was the wife of Thomas D. Bishop. Patricia was an avid Alabama Crimson Tide football fan and she loved spending time at all family gatherings and enjoying good times of laughter and fun with her family members. She is survived by her husband Thomas D. Bishop, one step-daughter, Amanda Bishop, brother, Tim Cornelius (Jan), sisters: Pam Newton (Doug) and Roxane Grimes (Phil), nieces, nephews, other relatives and friends. She was preceded in death by her parents. Visitation/Funeral Services will be Thursday, October 14, at Serenity-Simmons Funeral Home beginning at 12:30 p.m. with Funeral services at 2:00 p.m. Burial at Wells Chapel Cemetery, 1216 CR 143, New Albany, MS. Reverend\'s Don and Nancy Bishop, Officiating. For further information and online condolences please visit serenityfuneralhomeinc.com\n\nSubmit An Obituary\n\nFuneral homes often submit obituaries as a service to the families they are assisting. However, we will be happy to accept obituaries from family members pending proper verification of the death.\n\nSign A Guestbook\n\nOffer a personal message of sympathy...\n\nYou\'ll find individual Guest Books on the page with each obituary notice. By sharing a fond memory or writing a kind tribute, you will be providing a comforting keepsake to those in mourning. .\nFrom a Guest Book, you may log in with your user account to leave a message. If you have an existing account with this site, you may log in with that. Otherwise, it\'s simple to create a new one by clicking on the Create "Sign up" button and following the simple steps on the Sign Up page.', 'role': 'user'}, {'content': '{\n"name": "Patricia Diann Cornelius Bishop",\n"age": 69,\n"hometown": "Myrtle, MS",\n"dateOfBirth": "1951-11-06",\n"spouseName": "Thomas D. Bishop",\n"survivedBy": ["Thomas D. Bishop", "Amanda Bishop", "Tim Cornelius", "Jan", "Pam Newton", "Doug", "Roxane Grimes", "Phil", "nieces", "nephews", "other relatives", "friends"],\n"precededInDeathBy": ["Elmer Ray Cornelius", "Jeanette Boykin Cornelius"],\n"visitationDetails": {\n"location": "Serenity-Simmons Funeral Home",\n"date": "2021-10-14",\n"time": "12:30 p.m.",\n"officiant": "Reverend\'s Don and Nancy Bishop"\n},\n"burialDetails": {\n"location": "Wells Chapel Cemetery, 1216 CR 143, New Albany, MS"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "FuturePantherNight",\n"type": "object",\n"properties": {\n"eventName": {"title": "Event Name", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"location": {"title": "Location", "type": "string"},\n"organizer": {"title": "Organizer", "type": "string"},\n"attendees": {\n"title": "Attendees",\n"type": "object",\n"properties": {\n"totalAttendees": {"title": "Total Attendees", "type": "number"},\n"parentAttendees": {"title": "Parent Attendees", "type": "number"},\n"studentAttendees": {"title": "Student Attendees", "type": "number"}\n},\n"required": ["totalAttendees", "parentAttendees", "studentAttendees"]\n},\n"studentExperiences": {\n"title": "Student Experiences",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"studentName": {"title": "Student Name", "type": "string"},\n"activity": {"title": "Activity", "type": "string"},\n"description": {"title": "Description", "type": "string"}\n},\n"required": ["studentName", "activity", "description"]\n}\n},\n"principalStatement": {"title": "Principal Statement", "type": "string"}\n},\n"required": ["eventName", "date", "location", "organizer", "attendees", "studentExperiences", "principalStatement"]\n}\nparagraph:\nFuture Panthers gather at Pioneer Valley High School\n\nIncoming Pioneer Valley High School freshmen and their parents received a glimpse of student life during "Future Panther Night" on May 4.\n\nThe Santa Maria event, organized by the PV Student Council, is designed to highlight academic, club, athletic and other student opportunities. The crowd also enjoyed student performances by the band, members of the play "Grease,and the color guard and cheer team.\n\nMore than 500 future Panthers and their parents showed up, according to Lisa Walters, PV activity director.\n\n"My experience in Panther Night was great!" said Howard Sardina, one of the students. "I was helping with the AVID booth, guiding future Panthers with the opportunity to join AVID and the process they are in with interviews and applications. I enjoyed this event because it enabled me to interact and introduce myself to new Panthers and help them with their wants and desires for their future at Pioneer Valley! Overall, it was a fun night for both the volunteers and our bright and upcoming future Panthers!"\n\n"My experience with \'Future Panther Night\' was amazing. It was so good to see so many future Panthers so interested in all the clubs and sports we offer," said another student, Melizabeth Peinado "I was helping the girls wrestling. Girls wrestling is one of the best growing sports out there, especially at PVHS. This season, we had a banner hung up at the school gym for winning CCAA Wrestling League. I felt overall it was a great turn out."\n\n" \'Future Panther Night\' is an excellent opportunity to showcase the many clubs, activities, sports teams and organizations that Pioneer Valley has to offer," said Shanda Herrera, Pioneer Valley principal.', 'role': 'user'}, {'content': '{\n"eventName": "Future Panther Night",\n"date": "May 4",\n"location": "Pioneer Valley High School, Santa Maria",\n"organizer": "PV Student Council",\n"attendees": {\n"totalAttendees": 500,\n"parentAttendees": 500,\n"studentAttendees": 0\n},\n"studentExperiences": [\n{\n"studentName": "Howard Sardina",\n"activity": "AVID booth",\n"description": "Guiding future Panthers with the opportunity to join AVID and the process they are in with interviews and applications."\n},\n{\n"studentName": "Melizabeth Peinado",\n"activity": "Girls wrestling",\n"description": "Helping the girls wrestling. Girls wrestling is one of the best growing sports out there, especially at PVHS."\n}\n],\n"principalStatement": "Future Panther Night\' is an excellent opportunity to showcase the many clubs, activities, sports teams and organizations that Pioneer Valley has to offer"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nAbout this item\nThis Cocktail shaker not only looks attractive and elegant but has also been designed to last. Made from high quality stainless steel with a mirror finish, it is guaranteed not to rust or leak and remain on your bar for many years to come!\nCocktail set is made of the high quality thick stainless steel alloy. Our cocktail mixer set maintains the original flavor of any alcohol beverage and you can mix and enjoy the purest tastes. Cocktail making set has great ability in anti-dents and durable.\nMeasure Cup:With solid 18-8 Stainless steel construction, Rolled top edges for strength and maintaining shape and being dishwasher safe this 15 ml x 30 ml Stainless Steel measure is the only choice for cocktail enthusiasts, home bars and restaurants.\nEasy to clean: Cocktail shaker, inside drawing processing with fine sanding, wear, easy to clean. Cocktail shaker for the aspiring or amateur bartender in all of us.\nIf you are an at-home drink enthusiast or even a professional bartender, this Cocktail Set is perfect for creating great-tasting drinks. It is also a must-have on any outdoor & home bar for you to create a wide variety of drinks including Whiskey, Scotch, Vodka, Tequila, Gin, Rum, Brandy, Sake, milk tea and ice coffee more.\njson schema:\n{"title": "ProductDescription", "type": "object", "properties": {"productName": {"title": "Product Name", "type": "string"}, "material": {"title": "Material", "type": "string"}, "guarantee": {"title": "Guarantee", "type": "string"}, "capacity": {"title": "Capacity", "type": "object", "properties": {"unit": {"title": "Unit", "type": "string"}, "value": {"title": "Value", "type": "number"}}, "required": ["unit", "value"]}, "easyToClean": {"title": "Easy to Clean", "type": "boolean"}, "useCases": {"title": "Use Cases", "type": "array", "items": {"type": "string"}}}, "required": ["productName", "material", "guarantee", "capacity", "easyToClean", "useCases"]}', 'role': 'user'}, {'content': '{\n "productName": "Cocktail Shaker",\n "material": "stainless steel",\n "guarantee": "not to rust or leak, remain on your bar for many years to come",\n "capacity": {\n "unit": "ml",\n "value": 30\n },\n "easyToClean": true,\n "useCases": [\n "Whiskey",\n "Scotch",\n "Vodka",\n "Tequila",\n "Gin",\n "Rum",\n "Brandy",\n "Sake",\n "milk tea",\n "ice coffee"\n ]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "NewsBroadcast",\n"type": "object",\n"properties": {\n"actions": {\n"title": "Actions",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n},\n"time": {\n"title": "Time",\n"type": "string",\n"format": "date-time"\n}\n},\n"required": ["name", "description", "time"]\n}\n},\n"source": {\n"title": "Source",\n"type": "string"\n},\n"lastUpdated": {\n"title": "Last Updated",\n"type": "string",\n"format": "date-time"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"copyright": {\n"title": "Copyright",\n"type": "string"\n},\n"newsletterSignup": {\n"title": "Newsletter Signup",\n"type": "object",\n"properties": {\n"text": {\n"title": "Text",\n"type": "string"\n},\n"url": {\n"title": "URL",\n"type": "string",\n"format": "uri"\n}\n},\n"required": ["text", "url"]\n}\n},\n"required": ["actions", "source", "lastUpdated", "location", "copyright", "newsletterSignup"]\n}\nparagraph:\nActions\n\nEverywhere you are: time on the soccer field\n\nVirginia This Morning viewers share photos & videos of what they\'ve been up to.\n\nBy:\nVirginia This Morning\n\nPosted at 12:34 PM, Mar 23, 2021\n\nand last updated2021-03-23 12:34:57-04\n\nRICHMOND, Va. -- Virginia This Morning watchers have been enjoying some time outdoors! Gwen spotted a possum and Scott and his neighbors enjoyed finishing this past weekend. Also, Jennifer\'s sons have been getting active out on the soccer field. Now it\'s your turn to share! Visit our Instagram or Facebook page to submit your photos to us. You just might see your photos featured on our show.\n\nCopyright 2021 Scripps Media, Inc. All rights reserved. This material may not be published, broadcast, rewritten, or redistributed.\n\nSign up for the Headlines Newsletter and receive up to date information.', 'role': 'user'}, {'content': '{\n"actions": [\n{\n"name": "Share photos & videos",\n"description": "of what you\'ve been up to",\n"time": "2021-03-23 12:34:57-04"\n}\n],\n"source": "Virginia This Morning",\n"lastUpdated": "2021-03-23 12:34:57-04",\n"location": "RICHMOND, Va.",\n"copyright": "Copyright 2021 Scripps Media, Inc. All rights reserved.",\n"newsletterSignup": {\n"text": "Sign up for the Headlines Newsletter",\n"url": ""\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "SalesData",\n"type": "object",\n"properties": {\n"month": {\n"title": "Month",\n"type": "string"\n},\n"unitsSold": {\n"title": "Units Sold",\n"type": "number"\n},\n"changeFromPreviousYear": {\n"title": "Change from Previous Year",\n"type": "string",\n"format": "percent"\n},\n"cumulativeYearlyUnitsSold": {\n"title": "Cumulative Yearly Units Sold",\n"type": "number"\n},\n"cumulativeYearlyChange": {\n"title": "Cumulative Yearly Change",\n"type": "string",\n"format": "percent"\n},\n"averageCO2Emissions": {\n"title": "Average CO2 Emissions",\n"type": "number",\n"unit": "grams/km"\n}\n},\n"required": ["month", "unitsSold", "changeFromPreviousYear", "cumulativeYearlyUnitsSold", "cumulativeYearlyChange", "averageCO2Emissions"]\n}\nparagraph:\nMay car sales down 24 percent\n\nDuring the month of May, 95,403 units of tourism-type vehicles and SUV / off-road vehicles were registered in Spain, which represents a 24 percent drop compared to the same month in 2019.\n\nJune 1, 2021 (1:15 PM CET)\n\nThe best-selling cars and SUVs in Spain from January to May 2021\n\nThe new vehicle market in Spain continues to record negative data regarding the pre-pandemic levels of Covid-19, that is, against months of the year 2019. In the case of fifth month of this year 2021 and according to the official registration data registered in our country and registered by the manufacturers\' associations Anfac, of dealers Faconauto and vendors Ganvam, there were 95,403 registrations of tourism-type vehicles and SUV / off-road vehicles, which translates into a decrease of 24 percent compared to May 2019.\n\nThe data recorded in May of this year represent a positive improvement of 177.8 percent compared to May 2020, a month in which most of the major restrictions on mobility and in many of the non-essential economic sectors that had been imposed in our country as a consequence of the current Covid-19 pandemic.\n\nSo far from In 2021, new car and SUV sales accumulate 360,057 units, which is 40% more than 2020, but 36% below the same period in 2019.\n\nThe Average CO2 emissions from passenger cars sold in May remain at 125.7 grams of CO2 per kilometer, 7% lower than that registered last year this month.', 'role': 'user'}, {'content': '{\n"month": "May",\n"unitsSold": 95403,\n"changeFromPreviousYear": "-24%",\n"cumulativeYearlyUnitsSold": 360057,\n"cumulativeYearlyChange": "40%",\n"averageCO2Emissions": 125.7\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "TattooContest",\n"type": "object",\n"properties": {\n"contestName": {"title": "Contest Name", "type": "string"},\n"currentLeaders": {\n"title": "Current Leaders",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"votesPercentage": {"title": "Votes Percentage", "type": "number"}\n},\n"required": ["name", "votesPercentage"]\n}\n},\n"votingRules": {"title": "Voting Rules", "type": "string"},\n"votingDeadline": {"title": "Voting Deadline", "type": "string", "format": "date-time"},\n"maxVotesPerHour": {"title": "Max Votes Per Hour", "type": "number"},\n"maxVotees": {"title": "Max Votees", "type": "number"},\n"finalRoundDates": {"title": "Final Round Dates", "type": "string", "format": "date-time"}\n},\n"required": ["contestName", "currentLeaders", "votingRules", "votingDeadline", "maxVotesPerHour", "maxVotees", "finalRoundDates"]\n}\nparagraph:\nVoting is underway in Best Tattoo contest; Vote for your 5 favorites\n\nWith their bodies as their canvases, more than 100 individuals sent in photos of their tattoos for a chance to win cleveland.com\'s Best Tattoo contest. Votes are currently coming in for this first round, which will take the Top 50 to the Top 5.\n\nAs of 9 a.m. Friday, Steve Walker holds the lead with 9.4 percent of the total votes. Lizy Conti is in second with 7 percent, followed by Ian Gaul (5.2 percent) and Will Turnechalk and Sean Yonkers (tied at 4.8 percent).\n\nVoting runs until Sept. 7 at 10 a.m. You can vote once per hour for up to five tattoos at a time. Then, the top five vote-getters will advance to the final round Sept. 13-20.\n\nCheck out the gallery above for a picture of each of the Top 50 tattoos and vote in the poll below.', 'role': 'user'}, {'content': '{\n"contestName": "Best Tattoo",\n"currentLeaders": [\n{\n"name": "Steve Walker",\n"votesPercentage": 9.4\n},\n{\n"name": "Lizy Conti",\n"votesPercentage": 7\n},\n{\n"name": "Ian Gaul",\n"votesPercentage": 5.2\n},\n{\n"name": "Will Turnechalk",\n"votesPercentage": 4.8\n},\n{\n"name": "Sean Yonkers",\n"votesPercentage": 4.8\n}\n],\n"votingRules": "Vote once per hour for up to five tattoos at a time.",\n"votingDeadline": "2022-09-07T10:00:00.000Z",\n"maxVotesPerHour": 1,\n"maxVotees": 5,\n"finalRoundDates": "2022-09-13T00:00:00.000Z-2022-09-20T23:59:00.000Z"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nNew statistics reveal a 50 per cent increase in the number of times the public has acted to prevent a suicide on the railway in the south east.\n\nFollowing the launch of Small Talk Saves Lives by Samaritans in partnership with British Transport Police (BTP), Network Rail and the wider rail industry late last year, new figures show there were 16 interventions by members of the public so far this year in the South-East – a 50 per cent increase compared with 2017.\n\nFive of these interventions were in West Sussex and one was in East Sussex.\n\nThe figures coincide with the launch of a new phase of Small Talk Saves Lives, which emphasises how each of us has the experience we need to help save a life.\n\nSmall talk saves lives\n\nMembers of the public are being encouraged to keep an eye out for someone who may be at risk, using the same small talk we use every day to interrupt someone\'s suicidal thoughts and encourage them to get help.\n\nThat\'s exactly what Network Rail incident controller Ben West, 30, did when he helped save a man\'s life in south London.\n\nBen, who is based at the Three Bridges rail operating centre near Crawley, said: "I was on duty as a mobile operations manager on station patrol and I happened to be in the right place at the right time.\n\n"The Samaritans training teaches you to look for people who are in isolation, people under the influence of drink and drugs, and those with vacant expressions who are not fitting in with the wider scene around them.\n\n"This person ticked all of those boxes, so I went up to them and put myself in a position where I could physically intervene if they tried to jump and then started asking some normal, ice-breaking questions.\n\n"\'How are you today? What train are you trying to get?\' After a few questions I felt confident enough that I had built up a rapport with this person to say \'I know what you\'re going to do, I know you\'re thinking of committing suicide\'.\n\n"He nodded and tears started to go down his face. I said kindly \'why don\'t you come have a chat with me, we\'ll go somewhere private and we can just talk\'."\n\nTV and radio presenter, Gaby Roslin, has got involved with the new Small Talk Saves Lives campaign video and a special station announcement for rail commuters.\n\nGaby said: "The little conversations we have every day can be all that\'s needed to interrupt suicidal thoughts. Once you know that you have the power to make a difference, you\'re more likely to step in and do something.\n\n"I wanted to get involved in the Small Talk Saves Lives campaign after noticing someone in a park and trusting my instincts. Just a few words can have a huge impact."\n\nPassengers can have a key role to play in suicide prevention\n\nSamaritans CEO Ruth Sutherland said: "It\'s really heartening to see more members of the public feeling they have the confidence and knowledge to act if they\'re worried about someone, and we\'re grateful for their support.\n\n"Suicide is preventable and any one of us could have an opportunity to save a life. And a study shows some of us make small talk more than ten times a day.\n\n"A phrase as simple as, \'I can\'t believe this weather\', could be enough to interrupt a person\'s suicidal thoughts. Even if small talk doesn\'t come naturally to you, if something doesn\'t feel right, please try to start a conversation. There\'s no evidence you\'ll make things worse."\n\nJackie Doyle-Price, Minister for Mental Health, Inequalities and Suicide Prevention, added: "It\'s easy to understand why people might feel uncomfortable or shy about approaching a stranger when they notice something is not quite right. But, when you realise speaking up could have the power to save someone\'s life, our own personal discomfort quickly seems insignificant.\n\n"It\'s promising to see the success of the Small Talk Saves Lives campaign so far and I look forward to seeing it continue to make a real difference."\n\nIf you do not feel comfortable or safe to intervene alert a member of rail staff or a police officer – many of whom have been trained by Samaritans – or call 999.\n\nWarning signs to look out for\n\nA person standing alone and isolated\n\nLooking distant or withdrawn\n\nStaying on the platform a long time without boarding a train or displaying something out of the ordinary in their behaviour or appearance.\njson schema:\n{"title": "SuicidePreventionCampaign", "type": "object", "properties": {"campaignName": {"title": "Campaign Name", "type": "string"}, "partners": {"title": "Partners", "type": "array", "items": {"type": "string"}}, "interventions": {"title": "Interventions", "type": "object", "properties": {"total": {"title": "Total Interventions", "type": "number"}, "byLocation": {"title": "Interventions by Location", "type": "array", "items": {"type": "object", "properties": {"region": {"title": "Region", "type": "string"}, "count": {"title": "Count", "type": "number"}}, "required": ["region", "count"]}}}, "required": ["total", "byLocation"]}, "launchDate": {"title": "Launch Date", "type": "string", "format": "date"}, "smallTalk": {"title": "Small Talk", "type": "object", "properties": {"emphasis": {"title": "Emphasis", "type": "string"}, "questions": {"title": "Questions", "type": "array", "items": {"type": "string"}}}, "required": ["emphasis", "questions"]}, "testimonials": {"title": "Testimonials", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "role": {"title": "Role", "type": "string"}, "statement": {"title": "Statement", "type": "string"}}, "required": ["name", "role", "statement"]}}, "warningSigns": {"title": "Warning Signs", "type": "array", "items": {"type": "string"}}}, "required": ["campaignName", "partners", "interventions", "launchDate", "smallTalk", "testimonials", "warningSigns"]}', 'role': 'user'}, {'content': '{\n "campaignName": "Small Talk Saves Lives",\n "partners": ["Samaritans", "British Transport Police (BTP)", "Network Rail", "rail industry"],\n "interventions": {\n "total": 16,\n "byLocation": [\n {\n "region": "West Sussex",\n "count": 5\n },\n {\n "region": "East Sussex",\n "count": 1\n }\n ]\n },\n "launchDate": "2017",\n "smallTalk": {\n "emphasis": "how each of us has the experience we need to help save a life",\n "questions": [\n "How are you today?",\n "What train are you trying to get?"\n ]\n },\n "testimonials": [\n {\n "name": "Ben West",\n "role": "Network Rail incident controller",\n "statement": "I happened to be in the right place at the right time... I went up to them and put myself in a position where I could physically intervene if they tried to jump and then started asking some normal, ice-breaking questions."\n },\n {\n "name": "Gaby Roslin",\n "role": "TV and radio presenter",\n "statement": "The little conversations we have every day can be all that\'s needed to interrupt suicidal thoughts."\n },\n {\n "name": "Ruth Sutherland",\n "role": "Samaritans CEO",\n "statement": "Suicide is preventable and any one of us could have an opportunity to save a life."\n },\n {\n "name": "Jackie Doyle-Price",\n "role": "Minister for Mental Health, Inequalities and Suicide Prevention",\n "statement": "Speaking up could have the power to save someone\'s life."\n }\n ],\n "warningSigns": [\n "A person standing alone and isolated",\n "Looking distant or withdrawn",\n "Staying on the platform a long time without boarding a train or displaying something out of the ordinary in their behaviour or appearance."\n ]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nBest of Threads – WIWT, Mankels, Black Shoes and Podcasts\n\nJune 5, 2017 By Dave I.| Heads up: Buying via our links may result in us getting a commission. Here\'s why.\n\nWhat\'s Dappered Threads? It\'s our forum. Launched in 2011, Threads is a not too big, not too small, just-right-sized forum that doesn\'t put up with snobbery. All thanks to the users and hardworking mods. Once a month, one of the users/mods from Threads provides us with a highlight package of the last few weeks.\n\nStuck for something to wear? The What I Wore Today (WIWT) thread provides an excellent source of inspiration across a variety of styles, not to mention information on sizing and fit. Regular poster Leanderthal has been keeping readers entertained with his manydifferentlooks. Not to be outdone, CJMichaelRay displayed the way to mix and match a Lazio jacket with a Charles Tyrwhitt shirt, Spier & Mackay trousers, and Allen Edmonds McAllisters. The mixing and matching prompted much discussion from jfo2010 and armedferret (of horse-head fame) about the fit of Suitsupply jackets.\n\nWhiskeyburrito259 started off a discussion asking when it became de rigueur for men to show off their ankles. User Deke pointed out that catalogs need to share some of the blame for the popularity of male ankle exposure, while Nandyn rightly indicated pant length for gentlemen of shorter stature might require some people to roll up their pants, but it has to be kept in reason so as to not show off the ankle. Hierophant brought up the point that style/fashion is a personal choice while Shade warned everyone that soon there\'d be a capri trend starting up. So far though, no one has volunteer any photos of their mankels or capris to the group.\n\nAs mentioned on the main site, Massdrop has been killing lately. The recent Allen Edmonds group buy-in has lead to some discussion on the threads. armedferret revived the thread from October, 2016 to show off photos of his Chukkas from the last run. This prompted zorro to comment that he felt the finish on his pair of chukkas could have been a bit better, although Token reassured him that the fit and finish didn\'t look all that bad. Vicious49 garnered envy from those who missed out on the initial purchase by extolling the virtues of his purchase, while Rpd362 posed some questions to the group about sizing. No word yet on how many threads users who missed out on the previous purchase are jumping in on this round.\n\nIf you have a big roadtrip coming up and settling on the right music is going to be an issue, why not give podcasts a go? The what podcasts are you listening to thread has many different listings, suggestions, and mini reviews. DocDave seems to be quite prolific, suggesting different shows to try out. Fencedwall and C.Dubs gave some good feedback on S-Town while JBarwick came to the posting looking for new comedy podcasts. Have a suggestion for him? Go on over to the thread and help him out.\n\nJust to show you that good posts never die, they only recede in to the archives, gochrisgo revived a thread originally posted in May, 2013 on the topic of deciding between Allen Edmonds Fifth Avenue or Park Avenue shoes in black. Readers ryn, srlclark, and ajs116 all chimed in with their go-to shoes for black tie events. Gochrisgo settled on the Fifth Avenues after finding them on sale at the ShoeBank, which differs from the final comments posted in the thread back in June 2013 where the recommendations from ajk170 and Teej were for J&M shoes.\n\nHead on over to Threads and take a spin around. Many thanks to contributor Dave I. for assembling this month\'s Best of Threads.\njson schema:\n{"title": "ForumSummary", "type": "object", "properties": {"title": {"title": "Title", "type": "string"}, "date": {"title": "Date", "type": "string", "format": "date"}, "author": {"title": "Author", "type": "string"}, "content": {"title": "Content", "type": "object", "properties": {"forumIntroduction": {"title": "Forum Introduction", "type": "object", "properties": {"forumName": {"title": "Forum Name", "type": "string"}, "forumDescription": {"title": "Forum Description", "type": "string"}, "forumLaunchDate": {"title": "Forum Launch Date", "type": "string", "format": "date"}}, "required": ["forumName", "forumDescription", "forumLaunchDate"]}, "forumActivity": {"title": "Forum Activity", "type": "array", "items": {"type": "object", "properties": {"topicTitle": {"title": "Topic Title", "type": "string"}, "topicDiscussion": {"title": "Topic Discussion", "type": "string"}, "userContributions": {"title": "User Contributions", "type": "array", "items": {"type": "object", "properties": {"userName": {"title": "User Name", "type": "string"}, "userPost": {"title": "User Post", "type": "string"}, "userReactions": {"title": "User Reactions", "type": "array", "items": {"type": "string"}}}, "required": ["userName", "userPost"]}}}, "required": ["topicTitle", "topicDiscussion", "userContributions"]}}}, "required": ["forumIntroduction", "forumActivity"]}}, "required": ["title", "date", "author", "content"]}', 'role': 'user'}, {'content': '{\n "title": "Best of Threads – WIWT, Mankels, Black Shoes and Podcasts",\n "date": "2017-06-05",\n "author": "Dave I.",\n "content": {\n "forumIntroduction": {\n "forumName": "Dappered Threads",\n "forumDescription": "A not too big, not too small, just-right-sized forum that doesn\'t put up with snobbery. All thanks to the users and hardworking mods.",\n "forumLaunchDate": "2011"\n },\n "forumActivity": [\n {\n "topicTitle": "What I Wore Today (WIWT)",\n "topicDiscussion": "An excellent source of inspiration across a variety of styles, not to mention information on sizing and fit.",\n "userContributions": [\n {\n "userName": "Leanderthal",\n "userPost": "Entertaining many different looks.",\n "userReactions": []\n },\n {\n "userName": "CJMichaelRay",\n "userPost": "Mixing and matching a Lazio jacket with a Charles Tyrwhitt shirt, Spier & Mackay trousers, and Allen Edmonds McAllisters.",\n "userReactions": ["jfo2010", "armedferret"]\n }\n ]\n },\n {\n "topicTitle": "Male ankle exposure",\n "topicDiscussion": "Discussion on when it became de rigueur for men to show off their ankles.",\n "userContributions": [\n {\n "userName": "Whiskeyburrito259",\n "userPost": "Started the discussion.",\n "userReactions": []\n },\n {\n "userName": "Deke",\n "userPost": "Catalogs share some of the blame for the popularity of male ankle exposure.",\n "userReactions": []\n }\n ]\n },\n {\n "topicTitle": "Allen Edmonds group buy-in on Massdrop",\n "topicDiscussion": "Discussion on the recent Allen Edmonds group buy-in on Massdrop.",\n "userContributions": [\n {\n "userName": "armedferret",\n "userPost": "Showed off photos of his Chukkas from the last run.",\n "userReactions": ["zorro", "Token", "Vicious49", "Rpd362"]\n }\n ]\n },\n {\n "topicTitle": "What podcasts are you listening to",\n "topicDiscussion": "Thread with many different listings, suggestions, and mini reviews of podcasts.",\n "userContributions": [\n {\n "userName": "DocDave",\n "userPost": "Suggesting different shows to try out.",\n "userReactions": ["Fencedwall", "C.Dubs", "JBarwick"]\n },\n {\n "userName": "JBarwick",\n "userPost": "Looking for new comedy podcasts.",\n "userReactions": []\n }\n ]\n },\n {\n "topicTitle": "Deciding between Allen Edmonds Fifth Avenue or Park Avenue shoes in black",\n "topicDiscussion": "Revived thread on deciding between Allen Edmonds Fifth Avenue or Park Avenue shoes in black.",\n "userContributions": [\n {\n "userName": "gochrisgo",\n "userPost": "Settled on the Fifth Avenues after finding them on sale at the ShoeBank.",\n "userReactions": ["ryn", "srlclark", "ajs116"]\n }\n ]\n }\n ]\n }\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nPolice Arrest Glendale Man After Pursuit Through Streets\n\nA 34-year-old man from Glendale was apprehended Thursday afternoon after leading Burbank Police on a short pursuit.\n\nOn January 30, 2020, at about 1:30 P.M., a Burbank Police Officer contacted the driver of a vehicle for a parking violation in the 200 block of West Elm Avenue. As the officer spoke with the driver, she felt he was possibly under the influence of narcotics, based on initial observations. During the contact, the driver suddenly rolled-up the vehicle\'s windows, locked the car doors, and fled.\n\nThe police officer quickly broadcast information to other patrol units, which allowed our Joint Air Support Unit to locate and track the suspect vehicle from overhead. Police Officers initially pursued the vehicle on the ground but discontinued the chase once speeds became excessive, allowing the police helicopter to follow the suspect from the air.\n\nThe suspect committed numerous traffic violations and drove at unsafe speeds, but remained within Burbank city limits the entire time. At about 1:45 P.M., the suspect pulled into a parking lot in the 400 block of Moss Street and came to a stop. Police Officers approached the vehicle and took the suspect into custody.\n\nThe suspect has since been identified as Yegia Zakaryan, a 34-year-old resident of Glendale. Zakaryan was in possession of several bindles of heroin at the time of his arrest. He was booked on suspicion of evading police and possession of narcotics for sale, as well as an outstanding arrest warrant for drug possession out of Los Angeles.\n\nZakaryan has since been released from custody after posting a $110,000 bond.\njson schema:\n{\n"title": "PoliceReport",\n"type": "object",\n"properties": {\n"eventTitle": {"title": "Event Title", "type": "string"},\n"arrestedName": {"title": "Arrested Name", "type": "string"},\n"age": {"title": "Age", "type": "number"},\n"hometown": {"title": "Hometown", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"time": {"title": "Time", "type": "string", "format": "time"},\n"location1": {"title": "Location 1", "type": "string"},\n"location2": {"title": "Location 2", "type": "string"},\n"violation": {"title": "Violation", "type": "string"},\n"unit": {"title": "Unit", "type": "string"},\n"officerName": {"title": "Officer Name", "type": "string"},\n"suspicion": {"title": "Suspicion", "type": "string"},\n"action": {"title": "Action", "type": "string"},\n"charge1": {"title": "Charge 1", "type": "string"},\n"charge2": {"title": "Charge 2", "type": "string"},\n"charge3": {"title": "Charge 3", "type": "string"},\n"bail": {"title": "Bail", "type": "number"},\n"status": {"title": "Status", "type": "string"}\n},\n"required": ["eventTitle", "arrestedName", "age", "hometown", "date", "time", "location1", "location2", "violation", "unit", "officerName", "suspicion", "action", "charge1", "charge2", "charge3", "bail", "status"]\n}', 'role': 'user'}, {'content': '{\n"eventTitle": "Police Arrest Glendale Man After Pursuit Through Streets",\n"arrestedName": "Yegia Zakaryan",\n"age": 34,\n"hometown": "Glendale",\n"date": "2020-01-30",\n"time": "13:30",\n"location1": "200 block of West Elm Avenue, Burbank",\n"location2": "400 block of Moss Street, Burbank",\n"violation": "Parking violation, evading police, possession of narcotics for sale",\n"unit": "Burbank Police",\n"officerName": "Not specified in the text",\n"suspicion": "Possibly under the influence of narcotics",\n"action": "Pursuit through streets, arrest",\n"charge1": "Evading police",\n"charge2": "Possession of narcotics for sale",\n"charge3": "Outstanding arrest warrant for drug possession",\n"bail": 110000,\n"status": "Released from custody after posting a $110,000 bond"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nGiants of Science is an Australian geek rock band formed in Brisbane, Queensland in 1999. They refer to their music as "nerd-core" and have been influenced by Split Enz Swervedriver, Sparklehorse, Superchunk, Brisbane underground rockers the KT26ers, and Sonic\'s Rendezvous Band. They have supported MC5, Rollins Band, A Perfect Circle, and Mudhoney and have toured in Canada. Their album Here Is The Punishment debuted at #4 on the national AIR independent albums chart.\n\nDiscography\n\nAlbums\n Here Is The Punishment (Reverberation/+1 Records)\n The History of Warfare (Rhythm Ace)\n Live At The Troubador (+1 Records)\n\nSingles and EPs\n I\'ve Tried CD Single\n Blueprint For Courageous Action EP\n Sisters EP\n What’s Wrong With You And Why? EP\n\nReferences\n\nExternal links\nMyspace page\nThe Metal Forge Giants of Science - Here Is The Punishment review\nI-94 Bar reviews\nThe Electric Newspaper Giants of Science - Here is the Punishment review\n\nAustralian alternative rock groups\nMusical groups from Brisbane\nGeek rock groups\nMusical groups established in 1999\n1999 establishments in Australia\njson schema:\n{"title": "BandProfile", "type": "object", "properties": {"bandName": {"title": "Band Name", "type": "string"}, "genre": {"title": "Genre", "type": "string"}, "influences": {"title": "Influences", "type": "array", "items": {"type": "string"}}, "albums": {"title": "Albums", "type": "array", "items": {"type": "object", "properties": {"albumName": {"title": "Album Name", "type": "string"}, "recordLabel": {"title": "Record Label", "type": "string"}}, "required": ["albumName", "recordLabel"]}}, "singlesAndEps": {"title": "Singles and EPs", "type": "array", "items": {"type": "string"}}, "references": {"title": "References", "type": "array", "items": {"type": "object", "properties": {"referenceName": {"title": "Reference Name", "type": "string"}, "referenceLink": {"title": "Reference Link", "type": "string", "format": "uri"}}, "required": ["referenceName", "referenceLink"]}}, "categories": {"title": "Categories", "type": "array", "items": {"type": "string"}}}, "required": ["bandName", "genre", "influences", "albums", "categories"]}', 'role': 'user'}, {'content': '{\n "bandName": "Giants of Science",\n "genre": "geek rock",\n "influences": [\n "Split Enz",\n "Swervedriver",\n "Sparklehorse",\n "Superchunk",\n "Brisbane underground rockers the KT26ers",\n "Sonic\'s Rendezvous Band"\n ],\n "albums": [\n {\n "albumName": "Here Is The Punishment",\n "recordLabel": "Reverberation/+1 Records"\n },\n {\n "albumName": "The History of Warfare",\n "recordLabel": "Rhythm Ace"\n },\n {\n "albumName": "Live At The Troubador",\n "recordLabel": "+1 Records"\n }\n ],\n "singlesAndEps": [\n "I\'ve Tried CD Single",\n "Blueprint For Courageous Action EP",\n "Sisters EP",\n "What’s Wrong With You And Why? EP"\n ],\n "references": [\n {\n "referenceName": "Myspace page",\n "referenceLink": "http://www.myspace.com/giantsofscience"\n },\n {\n "referenceName": "The Metal Forge Giants of Science - Here Is The Punishment review",\n "referenceLink": "http://www.themetalforge.com/reviews/3368"\n },\n {\n "referenceName": "I-94 Bar reviews",\n "referenceLink": "http://www.i94bar.com/article/3521"\n },\n {\n "referenceName": "The Electric Newspaper Giants of Science - Here is the Punishment review",\n "referenceLink": "http://www.theelectricnewspaper.com.au/goftrev.htm"\n }\n ],\n "categories": [\n "Australian alternative rock groups",\n "Musical groups from Brisbane",\n "Geek rock groups",\n "Musical groups established in 1999",\n "1999 establishments in Australia"\n ]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "DawsonDefinition", "type": "object", "properties": {"Dawson\'s": {"type": "array", "items": {"type": "object", "properties": {"name": {"type": "string"}, "description": {"type": "string"}}, "required": ["name", "description"]}}}}\nparagraph:\nDawson\'s may refer to:\n\n Dawson\'s Cove, a settlement on Connaigre Bay, Newfoundland, Canada\n Dawson\'s integral or function, a mathematical function used in computer calculation to avoid arithmetic overflow\n\nSee also\n Dawson\'s 19th Arkansas Infantry Regiment, a Confederate military unit during the American Civil War\n Dawson\'s Burrowing Bee (Amegilla dawsoni), an insect species native to Western Australia \n Dawson\'s caribou (Rangifer tarandus dawsoni), an extinct island subspecies that lived in British Columbia, Canada\n Dawson\'s cat shark (Bythaelurus dawsoni), a shark species found in waters around New Zealand\n Dawson\'s Chess, a derivative of Hexapawn, a deterministic two-player game invented by Martin Gardner\n Dawson\'s Creek, an American teen television drama, originally broadcast 1998–2003\n Dawson\'s dawn-man or Piltdown Man, a 1912 paleoanthropological hoax\n Dawson\'s encephalitis, a rare form of brain inflammation\n Dawson\'s Field hijackings, a 1970 terrorist incident\n Dawson\'s fingers, lesions around the ventricle-based brain veins of patients with multiple sclerosis\n "Dawson\'s Geek", a song on the 2002 Busted album Busted\n Dawson\'s magnolia (Magnolia dawsoniana), a species of tree native to China\n Dawson\'s wattle (Acacia dawsonii), a species of shrub native to Australia \n Dawson\'s Weekly, a British series of comedy plays\n Dawson (disambiguation)', 'role': 'user'}, {'content': '{\n "Dawson\'s": [\n {\n "name": "Dawson\'s Cove",\n "description": "a settlement on Connaigre Bay, Newfoundland, Canada"\n },\n {\n "name": "Dawson\'s integral or function",\n "description": "a mathematical function used in computer calculation to avoid arithmetic overflow"\n },\n {\n "name": "Dawson\'s 19th Arkansas Infantry Regiment",\n "description": "a Confederate military unit during the American Civil War"\n },\n {\n "name": "Dawson\'s Burrowing Bee (Amegilla dawsoni)",\n "description": "an insect species native to Western Australia"\n },\n {\n "name": "Dawson\'s caribou (Rangifer tarandus dawsoni)",\n "description": "an extinct island subspecies that lived in British Columbia, Canada"\n },\n {\n "name": "Dawson\'s cat shark (Bythaelurus dawsoni)",\n "description": "a shark species found in waters around New Zealand"\n },\n {\n "name": "Dawson\'s Chess",\n "description": "a derivative of Hexapawn, a deterministic two-player game invented by Martin Gardner"\n },\n {\n "name": "Dawson\'s Creek",\n "description": "an American teen television drama, originally broadcast 1998–2003"\n },\n {\n "name": "Dawson\'s dawn-man or Piltdown Man",\n "description": "a 1912 paleoanthropological hoax"\n },\n {\n "name": "Dawson\'s encephalitis",\n "description": "a rare form of brain inflammation"\n },\n {\n "name": "Dawson\'s Field hijackings",\n "description": "a 1970 terrorist incident"\n },\n {\n "name": "Dawson\'s fingers",\n "description": "lesions around the ventricle-based brain veins of patients with multiple sclerosis"\n },\n {\n "name": "Dawson\'s Geek",\n "description": "a song on the 2002 Busted album Busted"\n },\n {\n "name": "Dawson\'s magnolia (Magnolia dawsoniana)",\n "description": "a species of tree native to China"\n },\n {\n "name": "Dawson\'s wattle (Acacia dawsonii)",\n "description": "a species of shrub native to Australia"\n },\n {\n "name": "Dawson\'s Weekly",\n "description": "a British series of comedy plays"\n }\n ]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "Person",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"lifespan": {\n"title": "Lifespan",\n"type": "object",\n"properties": {\n"birth": {\n"title": "Birth",\n"type": "string",\n"format": "date"\n},\n"death": {\n"title": "Death",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["birth", "death"]\n},\n"occupation": {\n"title": "Occupation",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"aliases": {\n"title": "Aliases",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["name", "lifespan", "occupation"]\n}\nparagraph:\nClaire Adams (1898–1978) was a Canadian actress.\n\nClaire Adams may also refer to:\n\nClaire Adams (British actress), see List of EastEnders characters (2007)\nClaire Adams, musician in Gravenhurst (band)\nClaire Adams, character in Women in the Night', 'role': 'user'}, {'content': '{\n"name": "Claire Adams",\n"lifespan": {\n"birth": "1898",\n"death": "1978"\n},\n"occupation": ["Canadian actress"],\n"aliases": [\n"Claire Adams (British actress)",\n"Claire Adams, musician in Gravenhurst (band)",\n"Claire Adams, character in Women in the Night"\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CompostingInstructions",\n"type": "object",\n"properties": {\n"compostingMethod": {\n"title": "Composting Method",\n"type": "string"\n},\n"instructions": {\n"title": "Instructions",\n"type": "string"\n},\n"cutPieces": {\n"title": "Cut Pieces",\n"type": "boolean"\n},\n"addLeaves": {\n"title": "Add Leaves",\n"type": "boolean"\n},\n"collectionDeadline": {\n"title": "Collection Deadline",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["compostingMethod", "instructions", "cutPieces", "addLeaves", "collectionDeadline"]\n}\nparagraph:\n"If you cut them into small pieces and add some fall leaves, they will break down much faster than leaving them whole. By next spring, you\'ll have a great, nutrient-rich soil amendment to add to your garden or lawn."\n\nIf you don\'t compost, the pumpkins can be placed into curbside yard-waste carts. The RDCO says yard-waste collection runs until the end of December.', 'role': 'user'}, {'content': '{\n"compostingMethod": "Manual",\n"instructions": "Cut pumpkins into small pieces, add fall leaves and let it break down to create a nutrient-rich soil amendment by next spring.",\n"cutPieces": true,\n"addLeaves": true,\n"collectionDeadline": "December 31"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "GeographicalRegion",\n"type": "object",\n"properties": {\n"regionName": {\n"title": "Region Name",\n"type": "string"\n},\n"includesCommunes": {\n"title": "Included Communes",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"partOf": {\n"title": "Part of",\n"type": "string"\n},\n"seaName": {\n"title": "Sea Name",\n"type": "string"\n},\n"provinceName": {\n"title": "Province Name",\n"type": "string"\n}\n},\n"required": ["regionName", "includesCommunes", "partOf", "seaName", "provinceName"]\n}\nparagraph:\nTigullio is a traditional region and a gulf in the Metropolitan City of Genoa, Liguria, northern Italy. Part of the Riviera di Levante, it includes the communes of (from West to East) Portofino, Santa Margherita Ligure, Rapallo, Zoagli, Chiavari, Lavagna and Sestri Levante. The name derives from the ancient Ligurian tribe, Tigullii.\n\nItalian Riviera\nLigurian Sea\nProvince of Genoa', 'role': 'user'}, {'content': '{\n"regionName": "Tigullio",\n"includesCommunes": ["Portofino", "Santa Margherita Ligure", "Rapallo", "Zoagli", "Chiavari", "Lavagna", "Sestri Levante"],\n"partOf": "Italian Riviera",\n"seaName": "Ligurian Sea",\n"provinceName": "Province of Genoa"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CommercialResume",\n"type": "object",\n"properties": {\n"athleteName": {\n"title": "Athlete Name",\n"type": "string"\n},\n"companyList": {\n"title": "Company List",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"latestCommercial": {\n"title": "Latest Commercial",\n"type": "object",\n"properties": {\n"commercialName": {\n"title": "Commercial Name",\n"type": "string"\n},\n"company": {\n"title": "Company",\n"type": "string"\n}\n},\n"required": ["commercialName", "company"]\n}\n},\n"required": ["athleteName", "companyList", "latestCommercial"]\n}\nparagraph:\nAnd that has made Wilson the new go-to athlete when companies are looking for somebody funny to endorse their product. His resume of commercials includes his recent stints for Taco Bell, Nike, and ESPN.\n\nAnd now he is back with his latest, and maybe best commercial yet. In this commercial for EA Sports NBA2K franchise, Wilson gets in touch with his inner-Larry Legend.', 'role': 'user'}, {'content': '{\n"athleteName": "Wilson",\n"companyList": ["Taco Bell", "Nike", "ESPN"],\n"latestCommercial": {\n"commercialName": "back with his latest, and maybe best commercial yet",\n"company": "EA Sports NBA2K franchise"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "IceHockeyPlayer",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"deathDate": {\n"title": "Death Date",\n"type": "string",\n"format": "date"\n},\n"sports": {\n"title": "Sports",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"olympicGames": {\n"title": "Olympic Games",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"city": {\n"title": "City",\n"type": "string"\n}\n},\n"required": ["name", "birthDate", "deathDate", "sports", "olympicGames", "city"]\n}\nparagraph:\nFritz Wechselberger (9 September 1938 – 30 December 2015) was an Austrian ice hockey player. He competed in the men\'s tournament at the 1964 Winter Olympics.\n\nReferences\n\nExternal links\n \n\n1938 births\n2015 deaths\nIce hockey players at the 1964 Winter Olympics\nOlympic ice hockey players of Austria\nSportspeople from Innsbruck', 'role': 'user'}, {'content': '{\n"name": "Fritz Wechselberger",\n"birthDate": "1938-09-09",\n"deathDate": "2015-12-30",\n"sports": ["Ice hockey"],\n"olympicGames": ["1964 Winter Olympics"],\n"city": "Innsbruck"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "MeetingExpenses",\n"type": "object",\n"properties": {\n"meeting": {\n"title": "Meeting Details",\n"type": "object",\n"properties": {\n"attendees": {\n"title": "Number of Attendees",\n"type": "integer"\n},\n"totalFoodCost": {\n"title": "Total Food Cost",\n"type": "number",\n"format": "currency"\n}\n},\n"required": ["attendees", "totalFoodCost"]\n},\n"expensesPerPerson": {\n"title": "Expenses Per Person",\n"type": "object",\n"properties": {\n"foodCost": {\n"title": "Food Cost Per Person",\n"type": "number",\n"format": "currency"\n}\n},\n"required": ["foodCost"]\n},\n"comparison": {\n"title": "Comparison Details",\n"type": "object",\n"properties": {\n"previousCost": {\n"title": "Previous Cost",\n"type": "number",\n"format": "currency"\n},\n"currentCost": {\n"title": "Current Cost",\n"type": "number",\n"format": "currency"\n}\n},\n"required": ["previousCost", "currentCost"]\n},\n"reactions": {\n"title": "Reactions",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"speaker": {\n"title": "Speaker",\n"type": "string"\n},\n"message": {\n"title": "Message",\n"type": "string"\n}\n},\n"required": ["speaker", "message"]\n}\n}\n},\n"required": ["meeting", "expensesPerPerson", "comparison", "reactions"]\n}\nparagraph:\n"Charley me I still don\'t understand how 8 people spent 10,652,00 on food during a meeting. Ah how? It means each person\'s food (just one meal) cost 1,335.00 Ghana cedis. Really? If you own Ghana as your private company will you spend this amount on a meal for just one meeting?", he queried.\n\n"If we complained during the campaign that NDC spent 20 dollars on Kenkey in Brazil, how then can we support this? 20 dollars is just 100 Ghana. This is 1.335.00 per person per meal. Did they chew golden sausages or the elephant itself came to the meeting?"\n\nReports indicate that Mr. Kwame Owusu is still the Group Chairman of the Luxe Suites Hotel.\n\n"Apart from conflict of interest which is a serious offence let me ask this. How many people ate 135,125.00 Ghana cedis worth of food? Herrrrh they can eat oooo hahahahahaha. And wait, wait, wait. The second invoice…, how many people ate over 10,000.00 Ghana cedis food at one meeting? Come for your medals. You people can eat for Africa. Waaaawolo. Pick pockets have taken the public purse from Nana Addo\'s pocket", A Plus chided.\n\nDo you ever witness news or have a story that should be featured on Pulse Ghana? Submit your stories, pictures and videos to us now via WhatsApp: +233507713497, Social Media @pulseghana: #PulseEyewitness & DM or Email: eyewitness@pulse.com.gh.', 'role': 'user'}, {'content': '{\n"meeting": {\n"attendees": 8,\n"totalFoodCost": 1065200\n},\n"expensesPerPerson": {\n"foodCost": 133500\n},\n"comparison": {\n"previousCost": 20,\n"currentCost": 1335\n},\n"reactions": [\n{\n"speaker": "he",\n"message": "If you own Ghana as your private company will you spend this amount on a meal for just one meeting?"\n},\n{\n"speaker": "A Plus",\n"message": "How many people ate 135,125.00 Ghana cedis worth of food?... You people can eat for Africa. Waaaawolo."\n}\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nEdward Badalian and Daniel Rodriguez are facing charges that include conspiracy, obstruction, entering a restricted building and theft and destruction of government property.\n\nIn a group chat they created on Telegram, Badalian and Rodriguez encouraged others to attend the Jan. 6 "Stop the Steal" rally that preceded the Capitol riot. In one message, Badalian allegedly wrote "we need to violently remove traitors and if they are in key position rapidly replace them with able-bodied patriots."\n\nProsecutors say the Telegram chat group was used to "advocate violence against certain groups and individuals" who "supported" the results of the 2020 presidential election.\n\nDuring the riot, prosecutors allege that Rodriguez threw a flagpole at police, set off a fire extinguisher toward them, and then used a "small, black electroshock weapon" on the back of an officer\'s neck.\n\nIn the days after the riot, Badalian appeared on the right-wing InfoWars program using the pseudonym "Turbo" to discuss video footage that allegedly showed him fighting someone he claimed to be "Antifa" who was disguised as a Trump supporter.\n\nLater in during the call-in program, another person discussing the same video footage referred to him as "Ed" instead of "Turbo." Prosecutors say Badalian and Rodgriguez later went to the home of the person who blurted out Badalian\'s first name and warned them against using his actual name when discussing the riot. They also told the person to delete photos that showed them participating in the riot.\n\nAs it turns out, the person who mistakenly said Badalian\'s first name was salon owner Gina Bisignano, 52, who went viral for spewing homophobic slurs and other hateful rhetoric during an anti-lockdown protest back in December of last year. She was also arrested for participating in the Capitol riot.\njson schema:\n{\n"title": "CriminalCase",\n"type": "object",\n"properties": {\n"defendants": {\n"title": "Defendants",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"charges": {\n"title": "Charges",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["name", "charges"]\n}\n},\n"groupChat": {\n"title": "Group Chat",\n"type": "object",\n"properties": {\n"platform": {\n"title": "Platform",\n"type": "string"\n},\n"messages": {\n"title": "Messages",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"sender": {\n"title": "Sender",\n"type": "string"\n},\n"content": {\n"title": "Content",\n"type": "string"\n}\n},\n"required": ["sender", "content"]\n}\n}\n},\n"required": ["platform", "messages"]\n},\n"incident": {\n"title": "Incident",\n"type": "object",\n"properties": {\n"location": {\n"title": "Location",\n"type": "string"\n},\n"date": {\n"title": "Date",\n"type": "string",\n"format": "date"\n},\n"actions": {\n"title": "Actions",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["location", "date", "actions"]\n},\n"mediaAppearances": {\n"title": "Media Appearances",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"program": {\n"title": "Program",\n"type": "string"\n},\n"alias": {\n"title": "Alias",\n"type": "string"\n},\n"topics": {\n"title": "Topics",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["program", "alias", "topics"]\n}\n},\n"warnings": {\n"title": "Warnings",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"personWarned": {\n"title": "Person Warned",\n"type": "string"\n},\n"reason": {\n"title": "Reason",\n"type": "string"\n}\n},\n"required": ["personWarned", "reason"]\n}\n},\n"additionalArrests": {\n"title": "Additional Arrests",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"charges": {\n"title": "Charges",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"incidentDetails": {\n"title": "Incident Details",\n"type": "string"\n}\n},\n"required": ["name", "charges", "incidentDetails"]\n}\n}\n},\n"required": ["defendants", "groupChat", "incident", "mediaAppearances", "warnings", "additionalArrests"]\n}', 'role': 'user'}, {'content': '{\n"defendants": [\n{\n"name": "Edward Badalian",\n"charges": [\n"conspiracy",\n"obstruction",\n"entering a restricted building",\n"theft and destruction of government property"\n]\n},\n{\n"name": "Daniel Rodriguez",\n"charges": [\n"conspiracy",\n"obstruction",\n"entering a restricted building",\n"theft and destruction of government property"\n]\n}\n],\n"groupChat": {\n"platform": "Telegram",\n"messages": [\n{\n"sender": "Edward Badalian",\n"content": "we need to violently remove traitors and if they are in key position rapidly replace them with able-bodied patriots."\n},\n{\n"sender": "prosecutors",\n"content": "the Telegram chat group was used to \'advocate violence against certain groups and individuals\' who \'supported\' the results of the 2020 presidential election."\n}\n]\n},\n"incident": {\n"location": "Capitol riot",\n"date": "Jan. 6",\n"actions": [\n"throwing a flagpole at police",\n"setting off a fire extinguisher toward them",\n"using a \'small, black electroshock weapon\' on the back of an officer\'s neck"\n]\n},\n"mediaAppearances": [\n{\n"program": "InfoWars",\n"alias": "Turbo",\n"topics": [\n"video footage",\n"fighting someone he claimed to be \'Antifa\'",\n"disguised as a Trump supporter"\n]\n}\n],\n"warnings": [\n{\n"personWarned": "the person who blurted out Badalian\'s first name",\n"reason": "against using his actual name when discussing the riot"\n}\n],\n"additionalArrests": [\n{\n"name": "Gina Bisignano",\n"charges": [\n"participating in the Capitol riot"\n],\n"incidentDetails": "went viral for spewing homophobic slurs and other hateful rhetoric during an anti-lockdown protest back in December of last year"\n}\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nPollo Tropical just added beef to its menu because Miami needs more carne\n\nWe heard a rumor that people like ordering the churrasco with balsamic tomatoes and pretending they made the dishes themselves. We endorse this behavior.\n\nIt\'s not just about chicken and pork anymore at Pollo Tropical.\n\nThe Miami-based fast-concept chicken chain has added churrasco with chimichurri to its menu. You can order it as part of a TropiChop bowl or a meal platter with two sides. We recommend getting it with the fried yuca, but then, we always recommend the fried yuca.\n\nAlso added to the menu are citrus marinated chicken wings. They\'re marinated for 24 hours and are worth getting sticky.\njson schema:\n{\n"title": "NewMenuItems",\n"type": "object",\n"properties": {\n"restaurantName": {\n"title": "Restaurant Name",\n"type": "string"\n},\n"newItem1": {\n"title": "New Item 1",\n"type": "object",\n"properties": {\n"itemName": {\n"title": "Item Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n},\n"preparation": {\n"title": "Preparation",\n"type": "string"\n},\n"availableOptions": {\n"title": "Available Options",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": [\n"itemName",\n"description",\n"preparation"\n]\n},\n"newItem2": {\n"title": "New Item 2",\n"type": "object",\n"properties": {\n"itemName": {\n"title": "Item Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n},\n"preparation": {\n"title": "Preparation",\n"type": "string"\n}\n},\n"required": [\n"itemName",\n"description",\n"preparation"\n]\n}\n}\n}', 'role': 'user'}, {'content': '{\n"restaurantName": "Pollo Tropical",\n"newItem1": {\n"itemName": "churrasco with chimichurri",\n"description": "can be ordered as part of a TropiChop bowl or a meal platter with two sides",\n"preparation": "served with chimichurri",\n"availableOptions": ["TropiChop bowl", "meal platter with two sides"]\n},\n"newItem2": {\n"itemName": "citrus marinated chicken wings",\n"description": "marinated for 24 hours",\n"preparation": "can be ordered worth getting sticky"\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nBrian Fenimore completes journey from New Hampton to federal court\n\nRepublican-Clipper photo, Phil Conger\nNew federal judge takes oath: Cynthia Norton, chief judge of the U.S. Bankruptcy Court administers the oath of office to new federal bankruptcy judge Brian Fenimore during the investiture ceremony at the federal courthouse in Kansas City. Judge Fenimore\'s son, Will, was holding the Bible. More photos are on page 3.\n\nWith his former New Hampton grade schoolmates and other family and friends proudly looking on, Brian Fenimore took the oath of office as a new federal bankruptcy judge in a ceremony Friday afternoon at the Charles E. Whittaker federal courthouse in Kansas City.\n\nTwo former CIA employees are accusing the Trump administration\'s choice for CIA chief watchdog of being less than candid when he told Congress he didn\'t know about any active whistleblower complaints against him.\njson schema:\n{\n"title": "Ceremony",\n"type": "object",\n"properties": {\n"participant": {\n"title": "Participant",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"role": {\n"title": "Role",\n"type": "string"\n}\n},\n"required": ["name", "role"]\n},\n"witnesses": {\n"title": "Witnesses",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"relation": {\n"title": "Relation",\n"type": "string"\n}\n},\n"required": ["name", "relation"]\n},\n"additionalItems": false\n},\n"date": {\n"title": "Date",\n"type": "string",\n"format": "date"\n},\n"location": {\n"title": "Location",\n"type": "string"\n}\n},\n"required": ["participant", "date", "location"]\n}', 'role': 'user'}, {'content': '{\n"participant": {\n"name": "Brian Fenimore",\n"role": "new federal bankruptcy judge"\n},\n"witnesses": [\n{\n"name": "Cynthia Norton",\n"relation": "chief judge of the U.S. Bankruptcy Court"\n},\n{\n"name": "Will",\n"relation": "son"\n},\n{\n"name": "New Hampton grade schoolmates",\n"relation": "former classmates"\n}\n],\n"date": "Friday afternoon",\n"location": "Charles E. Whittaker federal courthouse in Kansas City"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nChurch of the Nativity is a historic Roman Catholic church on the National Register of Historic Places in Menlo Park, California. It was built in 1887 and added to the National Register in 1980.\n\nHistory\nThe church was constructed in 1872 and was moved on log rollers twice before arriving at its current location in 1877. This earned it the nickname of the "Roaming Catholic Church."\n\nIn 1996 the church adopted the tradition of Perpetual Adoration, with members of the church volunteering to pray continuously in an uninterrupted chain, and has continued for over 20 years.\n\nThe current pastor at the Church of the Nativity is the Rev. Msgr. Steven D. Otellini, brother to past Intel CEO Paul Otellini, and, because of the church\'s proximity to Saint Patrick\'s Seminary and University in Menlo Park, weekend assistants often include young or international priests. Nearby are the Vallombrosa Center retreat house and the Corpus Christi Monastery of Dominican sisters. The parish serves a predominantly Anglo Catholic community and has an associated parochial school, Nativity School. With a relatively strong academic reputation locally, students from Nativity School have gone on to such local high schools as Sacred Heart Preparatory (Atherton, California), Saint Francis High School (Mountain View), Mercy High School (Burlingame, California), Bellarmine College Preparatory, and Notre Dame High School (Belmont, California) as well as colleges including Stanford University, Loyola Marymount University, California Polytechnic State University, New York University, University of California, Berkeley, University of California, Davis, and Saint Mary\'s College of California among others.\n\nReferences\n\nExternal links\n\nNativity Catholic School\n\nRoman Catholic churches in California\nNational Register of Historic Places in San Mateo County, California\nCarpenter Gothic church buildings in California\nRoman Catholic churches completed in 1887\nBuildings and structures in San Mateo County, California\nChurches on the National Register of Historic Places in California\n19th-century Roman Catholic church buildings in the United States\njson schema:\n{"title": "HistoricChurch", "type": "object", "properties": {"churchName": {"title": "Church Name", "type": "string"}, "location": {"title": "Location", "type": "object", "properties": {"city": {"title": "City", "type": "string"}, "state": {"title": "State", "type": "string"}, "country": {"title": "Country", "type": "string"}}, "required": ["city", "state", "country"]}, "constructionYear": {"title": "Construction Year", "type": "integer"}, "registerYear": {"title": "Register Year", "type": "integer"}, "nickname": {"title": "Nickname", "type": "string"}, "traditions": {"title": "Traditions", "type": "array", "items": {"type": "object", "properties": {"traditionName": {"title": "Tradition Name", "type": "string"}, "yearAdopted": {"title": "Year Adopted", "type": "integer"}}, "required": ["traditionName", "yearAdopted"]}}, "pastor": {"title": "Pastor", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "relatives": {"title": "Relatives", "type": "array", "items": {"type": "string"}}}, "required": ["name"]}, "nearby": {"title": "Nearby", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "type": {"title": "Type", "type": "string"}}, "required": ["name", "type"]}}, "community": {"title": "Community", "type": "string"}, "school": {"title": "School", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "reputation": {"title": "Reputation", "type": "string"}, "alumni": {"title": "Alumni", "type": "array", "items": {"type": "string"}}}, "required": ["name"]}}, "required": ["churchName", "location", "constructionYear", "registerYear", "pastor", "school"]}', 'role': 'user'}, {'content': '{\n "churchName": "Church of the Nativity",\n "location": {\n "city": "Menlo Park",\n "state": "California",\n "country": "USA"\n },\n "constructionYear": 1872,\n "registerYear": 1980,\n "nickname": "Roaming Catholic Church",\n "traditions": [\n {\n "traditionName": "Perpetual Adoration",\n "yearAdopted": 1996\n }\n ],\n "pastor": {\n "name": "The Rev. Msgr. Steven D. Otellini",\n "relatives": ["Paul Otellini"]\n },\n "nearby": [\n {\n "name": "Saint Patrick\'s Seminary and University",\n "type": "educational"\n },\n {\n "name": "Vallombrosa Center retreat house",\n "type": "retreat"\n },\n {\n "name": "Corpus Christi Monastery of Dominican sisters",\n "type": "monastery"\n }\n ],\n "community": "Anglo Catholic",\n "school": {\n "name": "Nativity School",\n "reputation": "relatively strong academic reputation locally",\n "alumni": [\n "Sacred Heart Preparatory (Atherton, California)",\n "Saint Francis High School (Mountain View)",\n "Mercy High School (Burlingame, California)",\n "Bellarmine College Preparatory",\n "Notre Dame High School (Belmont, California)",\n "Stanford University",\n "Loyola Marymount University",\n "California Polytechnic State University",\n "New York University",\n "University of California, Berkeley",\n "University of California, Davis",\n "Saint Mary\'s College of California"\n ]\n }\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nTheMinister of Women Affairs, Pauline Tallen, has assured that her ministry would partner the Nigeria Association of Women Journalists (NAWOJ) on key areas to create a healthier and better society for women and children.\n\nShe gave the assurance when the National President of NAWOJ, Ladi Bala, led a delegation on a courtesy visit to her office on Abuja.\n\nWhile identifying the key areas of collaboration as the girl-child education, gender-based violence, and women participation in politics, the minister noted that her Ministry\'s mandates and that of NAWOJ are similar.\n\nShe called on women groups in the country to speak out against the rising cases of gender-based violence and other ills perpetrated against women and girls in the country.She added that effective representation of women in politics is another major assignment of her ministry, noting that without such representation, there will be no meaningful advancement for them.\n\nThe minister also stressed the need to raise the bar by ensuring that women who are into small-scale businesses are supported in every way necessary to enable them cater for their families.\n\nEarlier in her remarks, Bala, National President of NAWOJ, called on the Federal Government to ensure that the school environment is safe for Nigerian children, in the face of increasing insecurity in the country. She expressed deep concern over cases of abduction of schoolchildren by insurgents in parts of the country.\njson schema:\n{\n"title": "PartnershipAndCollaboration",\n"type": "object",\n"properties": {\n"partnerName": {\n"title": "Partner Name",\n"type": "string"\n},\n"partnerPosition": {\n"title": "Partner Position",\n"type": "string"\n},\n"receivingParty": {\n"title": "Receiving Party",\n"type": "string"\n},\n"purpose": {\n"title": "Purpose",\n"type": "string"\n},\n"keyAreas": {\n"title": "Key Areas",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"area": {\n"title": "Area",\n"type": "string"\n},\n"details": {\n"title": "Details",\n"type": "string"\n}\n}\n},\n"additionalProperties": false\n},\n"callToAction": {\n"title": "Call to Action",\n"type": "string"\n},\n"additionalNeeds": {\n"title": "Additional Needs",\n"type": "string"\n},\n"concerns": {\n"title": "Concerns",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"issue": {\n"title": "Issue",\n"type": "string"\n},\n"details": {\n"title": "Details",\n"type": "string"\n}\n}\n},\n"additionalProperties": false\n}\n},\n"required": [\n"partnerName",\n"partnerPosition",\n"receivingParty",\n"purpose",\n"keyAreas",\n"callToAction"\n]\n}', 'role': 'user'}, {'content': '{\n"partnerName": "Ladi Bala",\n"partnerPosition": "National President of NAWOJ",\n"receivingParty": "Pauline Tallen",\n"purpose": "Minister of Women Affairs",\n"keyAreas": [\n{\n"area": "girl-child education",\n"details": "Creation of a healthier and better society for women and children"\n},\n{\n"area": "gender-based violence",\n"details": "Speaking out against the rising cases and other ills perpetrated against women and girls in the country"\n},\n{\n"area": "women participation in politics",\n"details": "Effective representation of women in politics"\n},\n{\n"area": "support for small-scale businesses",\n"details": "Enabling women to cater for their families"\n}\n],\n"callToAction": "Women groups in the country to speak out against gender-based violence and other ills",\n"additionalNeeds": "Support for women who are into small-scale businesses",\n"concerns": [\n{\n"issue": "Increasing insecurity",\n"details": "Concern over cases of abduction of schoolchildren by insurgents in parts of the country"\n}\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "SocialMediaSuspension",\n"type": "object",\n"properties": {\n"accountName": {\n"title": "Account Name",\n"type": "string"\n},\n"accountOwner": {\n"title": "Account Owner",\n"type": "string"\n},\n"violationType": {\n"title": "Violation Type",\n"type": "string"\n},\n"duration": {\n"title": "Duration",\n"type": "string",\n"format": "time"\n},\n"relatedStudy": {\n"title": "Related Study",\n"type": "object",\n"properties": {\n"publication": {\n"title": "Publication",\n"type": "string"\n},\n"findings": {\n"title": "Findings",\n"type": "string"\n},\n"numberOfPatients": {\n"title": "Number of Patients",\n"type": "number"\n}\n},\n"required": ["publication", "findings", "numberOfPatients"]\n},\n"relatedRetraction": {\n"title": "Related Retraction",\n"type": "string"\n},\n"relatedTrial": {\n"title": "Related Trial",\n"type": "object",\n"properties": {\n"organization": {\n"title": "Organization",\n"type": "string"\n},\n"status": {\n"title": "Status",\n"type": "string"\n}\n},\n"required": ["organization", "status"]\n},\n"drugName": {\n"title": "Drug Name",\n"type": "string"\n},\n"drugAdvocate": {\n"title": "Drug Advocate",\n"type": "string"\n},\n"drugAdvocatePosition": {\n"title": "Drug Advocate Position",\n"type": "string"\n}\n},\n"required": ["accountName", "accountOwner", "violationType", "duration", "relatedStudy", "drugName", "drugAdvocate", "drugAdvocatePosition"]\n}\nparagraph:\nTwitter has suspended the account of Donald Trump Jr., the son of US President Donald Trump, after he shared a video showing a doctor discussing anti-malarial drug hydroxychloroquine.\n\nThe social media company claimed that Trump Jr.\'s tweet violated its policies on coronavirus misinformation.\n\nTrump Jr. shared a video showing Dr. Stella Immanuel, an outspoken proponent of hydroxychloroquine as a "cure" for the coronavirus,\n\nThe suspension will last for 12 hours.\n\nA study published last week published in the New England Journal of Medicine, found that hydroxychloroquine did not improve outcomes for the 667 COVID-19 patients participating in a randomized trial at 55 Brazilian hospitals.\n\nIn the study, patients with mild to moderate COVID-19 illness were split into three groups, in which one group received hydroxychloroquine, another group received the drug along with azithromycin — an antibiotic — and the last group received neither.\n\nA May 22 study in the Lancet raised safety concerns about malaria drugs for coronavirus patients but several authors of that study subsequently retracted it.\n\nFollowing the publication of the Lancet report, the World Health Organization announced that it would be temporarily halting the use of hydroxychloroquine part of its global Solidarity trial amid a safety review.\n\nEarlier this month, the WHO discontinued its trials of hydroxychloroquine in hospitalized patients with COVID-19 after they failed to reduce mortality.\n\nUS President Donald Trump aggressively pushed the drug beginning in the first weeks of the outbreak and revealed in mid-May that he was on a regimen of hydroxychloroquine as a preventive measure.', 'role': 'user'}, {'content': '{\n"accountName": "Twitter",\n"accountOwner": "Donald Trump Jr.",\n"violationType": "Coronavirus misinformation",\n"duration": "12 hours",\n"relatedStudy": {\n"publication": "New England Journal of Medicine",\n"findings": "Hydroxychloroquine did not improve outcomes for the 667 COVID-19 patients",\n"numberOfPatients": 667\n},\n"drugName": "Hydroxychloroquine",\n"drugAdvocate": "Dr. Stella Immanuel",\n"drugAdvocatePosition": "Outspoken proponent of hydroxychloroquine as a \'cure\' for the coronavirus"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "EconomicForecast", "type": "object", "properties": {"omicronImpact": {"title": "Omicron Impact", "type": "object", "properties": {"economicImpact": {"title": "Economic Impact", "type": "string"}, "vaccinationRates": {"title": "Vaccination Rates", "type": "string"}, "governmentResponse": {"title": "Government Response", "type": "string"}}, "required": ["economicImpact", "vaccinationRates", "governmentResponse"]}, "labourMarkets": {"title": "Labour Markets", "type": "object", "properties": {"labourShortages": {"title": "Labour Shortages", "type": "string"}, "comparisonPeriod": {"title": "Comparison Period", "type": "string"}}, "required": ["labourShortages", "comparisonPeriod"]}, "inflation": {"title": "Inflation", "type": "object", "properties": {"currentImpact": {"title": "Current Impact", "type": "string"}, "peakInflation": {"title": "Peak Inflation", "type": "number"}, "inflationOutlook": {"title": "Inflation Outlook", "type": "string"}}, "required": ["currentImpact", "peakInflation", "inflationOutlook"]}, "housingMarket": {"title": "Housing Market", "type": "object", "properties": {"priceForecast": {"title": "Price Forecast", "type": "number"}, "declineComparison": {"title": "Decline Comparison", "type": "string"}}, "required": ["priceForecast", "declineComparison"]}, "gdpGrowth": {"title": "GDP Growth", "type": "object", "properties": {"growthForecast": {"title": "Growth Forecast", "type": "number"}, "timePeriod": {"title": "Time Period", "type": "string"}}, "required": ["growthForecast", "timePeriod"]}, "wageGrowth": {"title": "Wage Growth", "type": "object", "properties": {"wageForecast": {"title": "Wage Forecast", "type": "string"}, "drivingFactors": {"title": "Driving Factors", "type": "string"}}, "required": ["wageForecast", "drivingFactors"]}, "asbMission": {"title": "ASB Mission", "type": "string"}}, "required": ["omicronImpact", "labourMarkets", "inflation", "housingMarket", "gdpGrowth", "wageGrowth", "asbMission"]}\nparagraph:\nOmicron\'s economic impact\nhas been far milder than the 2020 and 2021 COVID\noutbreaks\n\nLabour markets are\nexceptionally tight, with labour shortages the most elevated\nsince the 1970s\n\nBorrowers are\ncurrently bearing the brunt of combatting inflation, but\nrate cuts to a more neutral level will happen –\npotentially from 2024\n\nFurther lifts\nin businesses\' capital spending are likely, but this and\nother productivity-boosting measures will take time to have\nan impact\n\nOmicron\'s mild bite\noffset by sluggish global growth Omicron\'s\neconomic impact has been far milder than that of previous\nCOVID outbreaks. High national vaccination rates and a\nfundamental shift in response from the Government means the\neconomy is being far less disrupted by the current outbreak\ncompared with the lockdowns of 2020 and 2021.\n\n"We\nbelieve the experience of recent months is a better\nreflection of the future for where we\'re heading with\nCOVID. Mobility\'s increased, but we anticipate sluggish\nGDP growth over the first half of 2022 as high inflation,\nlabour shortages and weakening global growth start to\nbite," says ASB Chief Economist Nick Tuffley.\n\nThe\nlatest ASB Economic Forecast anticipates growth around 1.5%\nper annum across 2022 and 2023.\n\nJobseekers, rather than employers, are\nin the driver\'s seat as labour shortages continue to bite,\nwith the ASB Economic Forecast indicating wage growth is\nexpected to strengthen across 2022 as businesses seek to\nattract and retain talent.\n\n"The employment\nuncertainties of the first wave of the pandemic are behind\nus," says Mr Tuffley.\n\n"For organisations with an\neye to the future, now is the time to build back stronger by\ninvesting in people, be it through career development\nopportunities or remuneration. While our borders are now\nreopening, net immigration is unlikely to stage a modest\nrecovery until 2023, meaning labour availability will\ncontinue to constrain business\ngrowth."\n\nInflation headaches\nabound Households are feeling the impact of high\ninflation, with spending growth being constrained by reduced\nreal incomes, weaker balance sheets and the squeeze on the\nmortgage belt and rising cost of essentials crowding out\ndiscretionary spending.\n\nHigh inflation\noutcomes are expected to persist, with annual consumer price\ninflation forecast to peak at around 7% in the first half of\n2022, remain above 5% over 2022 and stay above 3% until\n2024.\n\nASB\'s Quarterly Economic Outlook notes house\nprices are to fall around 12% in total, with around five\npercent of this drop already priced in. This forecast fall\nis slightly ahead of declines seen during the Global\nFinancial Crisis, though in inflation-adjusted terms is\nlarger (20% vs. 15%).\n\nBumpy ride through to\n2024 As New Zealand emerges from the COVID\nfrying pan, new economic fires in the form of inflation,\nsupply chain and labour challenges have intensified and will\npersist.\n\n"The construction sector\'s been a poster\nchild for the supply chain, goods inflation and labour\nissues impacting Kiwi businesses. While we believe supply\nchain snags will start untangling from next year, the\nUkraine conflict and China\'s ongoing COVID lockdowns are\nprolonging current pain," says Mr Tuffley.\n\nBorrowers\nwill continue bearing the brunt of inflation, but rate cuts\nto a more neutral level will come, potentially as soon as\n2024.\n\n"Looking ahead, we\'re expecting capital\nspending to lift. Businesses need to start thinking\nstrategically about both their people needs and access to\nfuture export markets and sources of imports. Investing in\ncost and labour-saving tech is an avenue forward-thinking\ncompanies may choose to explore at this time."\n\nIn 1847, ASB opened as the Auckland Savings Bank with the pledge: \'to serve the community; to grow and to help Kiwis grow\'. And that is very much what ASB is about today.\n\nASB is a leading provider of integrated financial services in New Zealand including retail, business and rural banking, funds management and insurance.\n\nASB strives to consistently provide its customers with outstanding service and innovative financial solutions. They\'re dedicated to providing simple financial products that allow their customers to bank with them how and when they want.\n\nWe all have our own ways to measure progress, and our own stories about the things that matter to us. Whatever way you choose to measure progress, and whatever your goals, ASB is there to help you get one step ahead.', 'role': 'user'}, {'content': '{\n "omicronImpact": {\n "economicImpact": "far milder than that of previous COVID outbreaks",\n "vaccinationRates": "high national vaccination rates",\n "governmentResponse": "a fundamental shift in response from the Government"\n },\n "labourMarkets": {\n "labourShortages": "the most elevated since the 1970s",\n "comparisonPeriod": "with the lockdowns of 2020 and 2021"\n },\n "inflation": {\n "currentImpact": "Households are feeling the impact of high inflation",\n "peakInflation": 7,\n "inflationOutlook": "high inflation outcomes are expected to persist"\n },\n "housingMarket": {\n "priceForecast": -12,\n "declineComparison": "slightly ahead of declines seen during the Global Financial Crisis"\n },\n "gdpGrowth": {\n "growthForecast": 1.5,\n "timePeriod": "per annum across 2022 and 2023"\n },\n "wageGrowth": {\n "wageForecast": "expected to strengthen across 2022",\n "drivingFactors": "businesses seek to attract and retain talent"\n },\n "asbMission": "to serve the community; to grow and to help Kiwis grow"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nElton John Shows Support for Yola Cover of "Goodbye Yellow Brick Road"\n\nIn the latter part of this week, Yola released a deluxe version of her Grammy-nominated, critically acclaimed album Walk Through Fire featuring two new bonus tracks, including a Dan Auerbach-produced studio recording of Elton John\'s classic "Goodbye Yellow Brick Road," which was personally premiered by Elton John on his social media.\n\nElton John has previously praised Yola in a special edition of his Rocket Hour radio show on Beats, featuring fellow Highwoman, Brandi Carlile. Elton exclaimed, "If you haven\'t heard of Yola… go and see her… you\'ll be delighted at what you hear."\n\nThe deluxe album also includes the song "I Don\'t Wanna Lie," which was co-written by Yola, Auerbach, and legendary keys player Bobby Wood. Musicians who performed on the track included bassist Dave Roe (Johnny Cash) as well as Wood and drummer Gene Chrisman, who played on hits by Dusty Springfield and Elvis Presley.\n\n"Can\'t believe it has only been a year since we announced Walk Through Fire, working with Dan Auerbach and the team has been an absolute dream and so proud of everything we have achieved. So many great songs from that session didn\'t make the final cut, including "I Don\'t Wanna Lie." I\'m a HUGE Elton fan and we\'ve been playing "Goodbye Yellow Brick Road" on the tour and wanted to cut a version for this release which Dan also produced! And then for Elton to personally premiere it, well that is the icing on the cake!\n\nQueen of country-soul Yola recently received four nominations at the 62nd Grammy Awards including Best New Artist and three nominations in the Roots category including Best American Roots Song, Best American Roots Performance (for "Faraway Look") and Best Americana Album for her debut Dan Auerbach-produced album, Walk Through Fire. Auerbach also received a nomination for for Producer of the Year for his work on albums including Walk Through Fire. The 62nd Annual GRAMMY Awards will take place in Los Angeles on Sunday, January 26, 2020, at the STAPLES Center in Los Angeles.\n\nThe album, which was released in February 2019 to tremendous critical acclaim, received support from tastemakers from the New York Times to NPR, which stated the record was "the work of an artist sure to stun audiences for years to come." KCRW made "Faraway Look" their number 1 song of the year. Variety called the album "one of 2019\'s best musical breakouts," while Rolling Stone, included Walk Through Fire in their top 50 albums of 2019 and called Yola "an artist you need to know" and "the voice of 2019."\n\nYola toured the US extensively in 2019, from the Hollywood Bowl to Newport Folk Festival, SXSW, and Farm Aid. She recently performed at Nashville\'s Bridgestone arena, opening for Kacey Musgraves alongside Maggie Rogers, with a special appearance from Harry Styles. Additionally, Yola has performed with The Highwomen and Dolly Parton. She will close the year with a handful of performances, including a sold-out show in London, Holiday Cheer for FUV with Mavis Staples, Nathaniel Rateliff and Mumford And Sons in NYC on December 10, and two New Year\'s performances with Old Crow Medicine Show at the Ryman in Nashville.\n\nYola\'s Walk Through Fire continuing world tour includes shows across the US, Canada, and Europe. Next year\'s dates include Brooklyn\'s Music Hall of Williamsburg, Indianapolis\'s Hi-Fi, Austin\'s Scoot Inn, San Francisco\'s Great American Music Hall, and two nights at the Troubadour in LA; additional shows will be announced shortly. All dates are on sale now. Amythyst Kiah is confirmed to support on various dates of the US run. (Full details available at iamyola.com and below.)\n\nIn addition to her Walk Through Fire tour, Yola will perform at Brandi Carlile\'s Girls Just Wanna Weekend and will open for Chris Stapleton on his An Outlaw State of Kind Benefit alongside Willy Nelson and Sheryl Crow. Yola will also perform with Chris Stapleton and Willie Nelson on March 14 at Globe Life Field.\njson schema:\n{"title": "ArtistProfile", "type": "object", "properties": {"artistName": {"title": "Artist Name", "type": "string"}, "songName": {"title": "Song Name", "type": "string"}, "albumName": {"title": "Album Name", "type": "string"}, "producerName": {"title": "Producer Name", "type": "string"}, "additionalMusicians": {"title": "Additional Musicians", "type": "array", "items": {"type": "string"}}, "releaseDate": {"title": "Release Date", "type": "string", "format": "date"}, "personalPremiere": {"title": "Personal Premiere", "type": "boolean"}, "nominations": {"title": "Nominations", "type": "array", "items": {"type": "object", "properties": {"awardName": {"title": "Award Name", "type": "string"}, "category": {"title": "Category", "type": "string"}, "songOrAlbum": {"title": "Song or Album", "type": "string"}}, "required": ["awardName", "category", "songOrAlbum"]}}, "achievements": {"title": "Achievements", "type": "array", "items": {"type": "object", "properties": {"achievementName": {"title": "Achievement Name", "type": "string"}, "details": {"title": "Details", "type": "string"}}, "required": ["achievementName", "details"]}}, "tourDates": {"title": "Tour Dates", "type": "array", "items": {"type": "object", "properties": {"venueName": {"title": "Venue Name", "type": "string"}, "venueLocation": {"title": "Venue Location", "type": "string"}, "supportingAct": {"title": "Supporting Act", "type": "string"}}, "required": ["venueName", "venueLocation", "supportingAct"]}}}, "required": ["artistName", "songName", "albumName", "producerName", "additionalMusicians", "releaseDate", "personalPremiere", "nominations", "achievements", "tourDates"]}', 'role': 'user'}, {'content': '{\n "artistName": "Yola",\n "songName": "Goodbye Yellow Brick Road",\n "albumName": "Walk Through Fire (Deluxe Version)",\n "producerName": "Dan Auerbach",\n "additionalMusicians": [\n "Dave Roe",\n "Bobby Wood",\n "Gene Chrisman"\n ],\n "releaseDate": "2019-02-22",\n "personalPremiere": true,\n "nominations": [\n {\n "awardName": "Grammy Awards",\n "category": "Best New Artist",\n "songOrAlbum": "N/A"\n },\n {\n "awardName": "Grammy Awards",\n "category": "Best American Roots Song",\n "songOrAlbum": "Faraway Look"\n },\n {\n "awardName": "Grammy Awards",\n "category": "Best American Roots Performance",\n "songOrAlbum": "Faraway Look"\n },\n {\n "awardName": "Grammy Awards",\n "category": "Best Americana Album",\n "songOrAlbum": "Walk Through Fire"\n }\n ],\n "achievements": [\n {\n "achievementName": "Grammy Nominations",\n "details": "4 nominations, including Best New Artist and 3 nominations in the Roots category"\n },\n {\n "achievementName": "Praise from Elton John",\n "details": "Personally premiered \'Goodbye Yellow Brick Road\' cover on social media and previously praised Yola on his radio show"\n }\n ],\n "tourDates": [\n {\n "venueName": "Troubadour",\n "venueLocation": "Los Angeles, CA",\n "supportingAct": "N/A"\n }\n ]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "CricketInnings",\n"type": "object",\n"properties": {\n"playerName": {"title": "Player Name", "type": "string"},\n"runsScored": {"title": "Runs Scored", "type": "number"},\n"deliveriesFaced": {"title": "Deliveries Faced", "type": "number"},\n"injuriesReceived": {\n"title": "Injuries Received",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"bodyPart": {"title": "Body Part", "type": "string"},\n"details": {"title": "Details", "type": "string"}\n}\n}\n},\n"praiseReceived": {\n"title": "Praise Received",\n"type": "object",\n"properties": {\n"source": {"title": "Source", "type": "string"},\n"comments": {"title": "Comments", "type": "string"}\n}\n}\n},\n"required": ["playerName", "runsScored", "deliveriesFaced"]\n}\nparagraph:\nHyderabad: Cheteshwar Pujara took more than 200 deliveries to score his half-century on the final day of the fourth and deciding Test at the Gabba in Brisbane. However, he took over 10 blows to his body and dodged the Australian bowling attack, tiring them to allow other Indian batters to score runs and pave way for the memorable victory.\n\nFormer Indian skipper Sunil Gavaskar was all praise for the gritty knock by Pujara. "Whatever you say about him, it will be very less. He had put his life for the Indian cricket team. He took so many blows, on the gloves, body and was hit on the helmet as well but he stayed there. Cheteshwar Pujara\'s presence at the other end gives confidence to the stroke-players," he said.\n\n"Because of his presence at the other end, the young players, who are the stroke-players feel the confidence that there is someone who is holding one end and because of that his innings was extremely important," Gavaskar added.', 'role': 'user'}, {'content': '{\n"playerName": "Cheteshwar Pujara",\n"runsScored": 50,\n"deliveriesFaced": 200,\n"injuriesReceived": [\n{\n"bodyPart": "body",\n"details": "Took over 10 blows"\n},\n{\n"bodyPart": "gloves",\n"details": "Hit on the gloves"\n},\n{\n"bodyPart": "helmet",\n"details": "Hit on the helmet"\n}\n],\n"praiseReceived": {\n"source": "Sunil Gavaskar",\n"comments": "Whatever you say about him, it will be very less. He had put his life for the Indian cricket team... Because of his presence at the other end, the young players... feel the confidence that there is someone who is holding one end and because of that his innings was extremely important."\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "NewsArticle",\n"type": "object",\n"properties": {\n"articleTitle": {"title": "Article Title", "type": "string"},\n"artistName": {"title": "Artist Name", "type": "string"},\n"songName": {"title": "Song Name", "type": "string"},\n"albumName": {"title": "Album Name", "type": "string"},\n"releaseDate": {"title": "Release Date", "type": "string", "format": "date"},\n"artistAge": {"title": "Artist Age", "type": "number"},\n"articleBody": {"title": "Article Body", "type": "string"},\n"videoURL": {"title": "Video URL", "type": "string", "format": "uri"},\n"newsSource": {"title": "News Source", "type": "string"},\n"copyrightText": {"title": "Copyright Text", "type": "string"}\n},\n"required": ["articleTitle", "artistName", "songName", "albumName", "releaseDate", "artistAge", "articleBody", "videoURL", "newsSource", "copyrightText"]\n}\nparagraph:\nWillie Nelson Releases \'Me and You\' Video\n\n(Radio.com) Willie Nelson might be pushing 85, but the Texas music legend still has plenty of pep in his step. The \'Red Headed Stranger\' has shared a new song, "Me and You".\n\nThe upbeat song is new advance track from his forthcoming full-length, Last Man Standing, which is due to hit stores on April 29, two days after Nelson\'s 85th birthday.\n\nThe clip captures Nelson in the recording studio laying down the track, which finds him lamenting the state of the nation and losing friends when it becomes clear that "He ain\'t got a lick of sense." Watch the video here.\n\nRadio.com is an official news provider for antiMusic.com. Copyright Radio.com/CBS Local - Excerpted here with permission.', 'role': 'user'}, {'content': '{\n"articleTitle": "Willie Nelson Releases \'Me and You\' Video",\n"artistName": "Willie Nelson",\n"songName": "Me and You",\n"albumName": "Last Man Standing",\n"releaseDate": "2018-04-29",\n"artistAge": 85,\n"articleBody": "The upbeat song is new advance track from his forthcoming full-length, Last Man Standing, which is due to hit stores on April 29, two days after Nelson\'s 85th birthday. The clip captures Nelson in the recording studio laying down the track, which finds him lamenting the state of the nation and losing friends when it becomes clear that \'He ain\'t got a lick of sense.\'",\n"videoURL": "Watch the video here",\n"newsSource": "Radio.com",\n"copyrightText": "Copyright Radio.com/CBS Local - Excerpted here with permission."\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "CelebrityBabyNews",\n"type": "object",\n"properties": {\n"celebrityName": {"title": "Celebrity Name", "type": "string"},\n"partnerName": {"title": "Partner Name", "type": "string"},\n"newBabyName": {"title": "Baby Name", "type": "string"},\n"babyBirthDate": {"title": "Baby Birth Date", "type": "string", "format": "date"},\n"previousSpouse": {"title": "Previous Spouse", "type": "string"},\n"childWithPreviousSpouse": {"title": "Child with Previous Spouse", "type": "string", "format": "date-time"},\n"engagementDate": {"title": "Engagement Date", "type": "string", "format": "date"},\n"numberOfChildren": {"title": "Number of Children", "type": "number"}\n},\n"required": ["celebrityName", "partnerName", "newBabyName", "babyBirthDate", "previousSpouse", "childWithPreviousSpouse", "engagementDate", "numberOfChildren"]\n}\nparagraph:\nJenna Dewan welcomes son with fiance Steve Kazee nearly two years after she split from Channing Tatum\n\nThis is her first child with fiance Steve Kazee. She also has a 6-year-old daughter, named Everly, with her ex-husband Channing Tatum, who she split from in April 2018.\n\nThe 39-year-old actress/dancer, who is engaged to actor Steve Kazee, shared the news on Tuesday, March 10, with her Instagram followers as she posted a first look at her bundle of joy from her hospital bed.\n\nShe wrote: "And just like that, our hearts exploded into all of eternity and beyond. Welcome to the world you little angel! Callum Michael Rebel Kazee 3/6/20."\n\nSteve, 44, also took to social media to share a photo of the baby\'s hand and added in the caption: "In an instant our universe burst wide open and nothing would ever be the same. Welcome to earth star child. Callum Michael Rebel Kazee 3/6/20."\n\nJenna announced in September that she was expecting a child with her 44-year-old fiance. In February, Kazee proposed to Dewan…\n\nLatest Nigeria News Headlines brings to you the aggregation of top news headlines in politics, business, sports and entertainment from top News website across the board. We serve you the latest breaking news headlines', 'role': 'user'}, {'content': '{\n"celebrityName": "Jenna Dewan",\n"partnerName": "Steve Kazee",\n"newBabyName": "Callum Michael Rebel Kazee",\n"babyBirthDate": "2020-03-06",\n"previousSpouse": "Channing Tatum",\n"childWithPreviousSpouse": "Everly",\n"engagementDate": "2020-02",\n"numberOfChildren": 2\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nThe U.S. Basketball Writers\' Association will posthumously induct former Denver Post sports reporter Tom Kensler into its Hall of Fame.\n\nKensler died in 2016 from a brain aneurysm. He covered colleges along the Front Range for decades, as well as golf and other sports. Kensler led the Post\'s March Madness coverage for several years and was a mainstay at the Final Four.\n\nKensler won numerous USBWA writing awards throughout his distinguished career.\njson schema:\n{\n"title": "HallOfFameInduction",\n"type": "object",\n"properties": {\n"organization": {\n"title": "Organization",\n"type": "string"\n},\n"inducteeName": {\n"title": "Inductee Name",\n"type": "string"\n},\n"inducteeDeceased": {\n"title": "Inductee Deceased",\n"type": "boolean"\n},\n"deceasedReason": {\n"title": "Deceased Reason",\n"type": "string"\n},\n"coverageDuration": {\n"title": "Coverage Duration",\n"type": "string",\n"format": "date-time"\n},\n"fieldsOfCoverage": {\n"title": "Fields Of Coverage",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"awardsWon": {\n"title": "Awards Won",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": [\n"organization",\n"inducteeName",\n"inducteeDeceased",\n"deceasedReason",\n"coverageDuration",\n"fieldsOfCoverage",\n"awardsWon"\n]\n}', 'role': 'user'}, {'content': '{\n"organization": "U.S. Basketball Writers\' Association",\n"inducteeName": "Tom Kensler",\n"inducteeDeceased": true,\n"deceasedReason": "brain aneurysm",\n"coverageDuration": "decades",\n"fieldsOfCoverage": ["colleges along the Front Range", "golf", "other sports"],\n"awardsWon": ["numerous USBWA writing awards"]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nGamenauts is an independent game development studio based in Silicon Valley and founded in September 2005 by Stanley Adrianus, formerly of Yahoo! Games.\n\nIn 2012, the company announced a publishing initiative for indie Asian developers, signing up studios from South East Asia such as Kurechii Studio, Menara Games, Artlogic Games and Nerdook Productions to publish their mobile titles for the worldwide market.\n\nGames \n King\'s League: Odyssey (Publisher) - iOS, 2013\n Nuclear Outrun (Publisher) - iOS, 2013 \n Castle Champions (Publisher) - iOS, 2013 \n Ninja Fishing - iOS & Android, 2011\n Stickbound - iOS, 2010\n Wonder Island - PC, 2010\n Cate West: The Velvet Keys - PC, 2009\n Restaurant Rush - PC & Mobile, 2008\n Cate West: The Vanishing Files - PC, DS & Wii, 2008\n Burger Rush PC & Mobile, 2007\n Spacebound - PC, 2006\n\nReferences\n\nExternal links\n Gamenauts Official Website\n\nVideo game companies of the United States\nVideo game development companies\nCasual games\nCompanies based in Silicon Valley\njson schema:\n{\n"title": "GameDevelopmentStudio",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"foundationYear": {"title": "Foundation Year", "type": "number"},\n"founder": {"title": "Founder", "type": "string"},\n"previousCompany": {"title": "Previous Company", "type": "string"},\n"publishingInitiative": {"title": "Publishing Initiative", "type": "object", "properties": {\n"yearAnnounced": {"title": "Year Announced", "type": "number"},\n"studiosSignedUp": {"title": "Studios Signed Up", "type": "array", "items": {"type": "string"}}\n}},\n"gamesPublished": {"title": "Games Published", "type": "array", "items": {\n"type": "object",\n"properties": {\n"gameName": {"title": "Game Name", "type": "string"},\n"platform": {"title": "Platform", "type": "string"},\n"releaseYear": {"title": "Release Year", "type": "number"}\n},\n"required": ["gameName", "platform", "releaseYear"]\n}},\n"gamesDeveloped": {"title": "Games Developed", "type": "array", "items": {\n"type": "object",\n"properties": {\n"gameName": {"title": "Game Name", "type": "string"},\n"platform": {"title": "Platform", "type": "string"},\n"releaseYear": {"title": "Release Year", "type": "number"}\n},\n"required": ["gameName", "platform", "releaseYear"]\n}}\n},\n"required": ["name", "foundationYear", "founder", "gamesPublished", "gamesDeveloped"]\n}', 'role': 'user'}, {'content': '{\n"name": "Gamenauts",\n"foundationYear": 2005,\n"founder": "Stanley Adrianus",\n"previousCompany": "Yahoo! Games",\n"publishingInitiative": {\n"yearAnnounced": 2012,\n"studiosSignedUp": [\n"Kurechii Studio",\n"Menara Games",\n"Artlogic Games",\n"Nerdook Productions"\n]\n},\n"gamesPublished": [\n{\n"gameName": "King\'s League: Odyssey",\n"platform": "iOS",\n"releaseYear": 2013\n},\n{\n"gameName": "Nuclear Outrun",\n"platform": "iOS",\n"releaseYear": 2013\n},\n{\n"gameName": "Castle Champions",\n"platform": "iOS",\n"releaseYear": 2013\n},\n{\n"gameName": "Ninja Fishing",\n"platform": "iOS & Android",\n"releaseYear": 2011\n},\n{\n"gameName": "Stickbound",\n"platform": "iOS",\n"releaseYear": 2010\n},\n{\n"gameName": "Wonder Island",\n"platform": "PC",\n"releaseYear": 2010\n},\n{\n"gameName": "Cate West: The Velvet Keys",\n"platform": "PC",\n"releaseYear": 2009\n},\n{\n"gameName": "Restaurant Rush",\n"platform": "PC & Mobile",\n"releaseYear": 2008\n},\n{\n"gameName": "Cate West: The Vanishing Files",\n"platform": "PC, DS & Wii",\n"releaseYear": 2008\n},\n{\n"gameName": "Burger Rush",\n"platform": "PC & Mobile",\n"releaseYear": 2007\n},\n{\n"gameName": "Spacebound",\n"platform": "PC",\n"releaseYear": 2006\n}\n],\n"gamesDeveloped": []\n}', 'role': 'assistant'}, {'content': 'paragraph:\nis a 1982 Japanese drama film directed by Eiichi Kudo. It was entered into the 33rd Berlin International Film Festival.\n\nCast\n Ken Ogata as Seiji Ōtaki\n Ayumi Ishida as Keiko Yamane\n Shigeru Izumiya as Toshiaki Sakagami\n Gannosuke Ashiya as Seiji Shimamura\n Kai Atō as Kita\n Tatsuo Endō as Kitou\n Moeko Ezawa as Noriko\'s mother\n Makoto Fujita as Kawabata\n Masataka Iwao as Shoji\n Keizō Kanie as Yakuza\n Kaoru Kobayashi as Miura\n Akaji Maro as Painter\n Tōru Masuoka as Teruichi Tanaka\n Mikio Narita as Kuroki\n Tadashi Naruse as Sunakawa\n\nReferences\n\nExternal links\n\n1982 films\n1980s Japanese-language films\n1982 drama films\nFilms directed by Eiichi Kudo\nJapanese drama films\n1980s Japanese films\njson schema:\n{"title": "MovieDetails", "type": "object", "properties": {"title": {"title": "Title", "type": "string"}, "year": {"title": "Year", "type": "integer"}, "genre": {"title": "Genre", "type": "string"}, "director": {"title": "Director", "type": "string"}, "festival": {"title": "Festival", "type": "string"}, "cast": {"title": "Cast", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "role": {"title": "Role", "type": "string"}}, "required": ["name", "role"]}}, "references": {"title": "References", "type": "array", "items": {"type": "object", "properties": {"title": {"title": "Title", "type": "string"}, "url": {"title": "URL", "type": "string", "format": "uri"}}, "required": ["title", "url"]}}}, "required": ["title", "year", "cast"]}', 'role': 'user'}, {'content': '{\n "title": "The Catch",\n "year": 1982,\n "genre": "drama",\n "director": "Eiichi Kudo",\n "festival": "Berlin International Film Festival",\n "cast": [\n {\n "name": "Ken Ogata",\n "role": "Seiji Ōtaki"\n },\n {\n "name": "Ayumi Ishida",\n "role": "Keiko Yamane"\n },\n {\n "name": "Shigeru Izumiya",\n "role": "Toshiaki Sakagami"\n },\n {\n "name": "Gannosuke Ashiya",\n "role": "Seiji Shimamura"\n },\n {\n "name": "Kai Atō",\n "role": "Kita"\n },\n {\n "name": "Tatsuo Endō",\n "role": "Kitou"\n },\n {\n "name": "Moeko Ezawa",\n "role": "Noriko\'s mother"\n },\n {\n "name": "Makoto Fujita",\n "role": "Kawabata"\n },\n {\n "name": "Masataka Iwao",\n "role": "Shoji"\n },\n {\n "name": "Keizō Kanie",\n "role": "Yakuza"\n },\n {\n "name": "Kaoru Kobayashi",\n "role": "Miura"\n },\n {\n "name": "Akaji Maro",\n "role": "Painter"\n },\n {\n "name": "Tōru Masuoka",\n "role": "Teruichi Tanaka"\n },\n {\n "name": "Mikio Narita",\n "role": "Kuroki"\n },\n {\n "name": "Tadashi Naruse",\n "role": "Sunakawa"\n }\n ],\n "references": [\n {\n "title": "1982 films",\n "url": "https://en.wikipedia.org/wiki/1982_in_film"\n },\n {\n "title": "1980s Japanese-language films",\n "url": "https://en.wikipedia.org/wiki/Category:1980s_Japanese-language_films"\n },\n {\n "title": "1982 drama films",\n "url": "https://en.wikipedia.org/wiki/Category:1982_drama_films"\n },\n {\n "title": "Films directed by Eiichi Kudo",\n "url": "https://en.wikipedia.org/wiki/Eiichi_Kudo_filmography"\n },\n {\n "title": "Japanese drama films",\n "url": "https://en.wikipedia.org/wiki/Category:Japanese_drama_films"\n },\n {\n "title": "1980s Japanese films",\n "url": "https://en.wikipedia.org/wiki/Category:1980s_Japanese_films"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nSeverson, Beverly\n\nShe was born near Shelby, Iowa, on February 18, 1940, to the late Clarence and Bonnie (Kern) Paul. Beverly graduated from Shelby High School with the class of 1958 and was the class valedictorian. She attended X-RAY technician school at the University of Nebraska. Beverly and her husband owned and operated White Bakery for several years.\n\nVisitation is 5 to 7 p.m., on Tuesday, February 11, 2020, at the Hoy-Kilnoski Funeral Home. Funeral service is 2 p.m., on Wednesday, at the funeral home. Interment is in Fisher Cemetery, in Underwood. The family will direct memorials.\n\nTo send flowers to the family of Beverly Severson, please visit Tribute Store.\n\nWatch the guestbook.Stop watching this guestbook.\n\n(0) entries\n\nSign the guestbook.\n\nTHANK YOU for helping us ensure that all guest book entries are\npositive and considerate. If you see a negative or inappropriate\ncomment, please click on the link in the comment to report it, and\na staff member will follow up immediately.\n\nSign A Guestbook\n\nOffer a personal message of sympathy...\n\nYou\'ll find individual Guest Books on the page with each obituary notice. By sharing a fond memory or writing a kind tribute, you will be providing a comforting keepsake to those in mourning.\nFrom a Guest Book, you may log in with your user account to leave a message. If you have an existing account with this site, you may log in with that. Otherwise, it\'s simple to create a new one by clicking on the Create "Sign up" button and following the simple steps on the Sign Up page.\njson schema:\n{\n"title": "Obituary",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthInfo": {\n"title": "Birth Information",\n"type": "object",\n"properties": {\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"birthPlace": {\n"title": "Birth Place",\n"type": "string"\n},\n"parents": {\n"title": "Parents",\n"type": "string"\n}\n},\n"required": ["birthDate", "birthPlace"]\n},\n"education": {\n"title": "Education",\n"type": "string"\n},\n"career": {\n"title": "Career",\n"type": "string"\n},\n"visitationInfo": {\n"title": "Visitation Information",\n"type": "object",\n"properties": {\n"time": {\n"title": "Time",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n}\n},\n"required": ["time", "location"]\n},\n"serviceInfo": {\n"title": "Service Information",\n"type": "object",\n"properties": {\n"time": {\n"title": "Time",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n}\n},\n"required": ["time", "location"]\n},\n"intermentInfo": {\n"title": "Interment Information",\n"type": "object",\n"properties": {\n"location": {\n"title": "Location",\n"type": "string"\n}\n}\n},\n"memorialsInfo": {\n"title": "Memorials Information",\n"type": "string"\n}\n},\n"required": ["name", "birthInfo", "education", "career", "visitationInfo", "serviceInfo", "intermentInfo", "memorialsInfo"]\n}', 'role': 'user'}, {'content': '{\n"name": "Beverly Severson",\n"birthInfo": {\n"birthDate": "1940-02-18",\n"birthPlace": "near Shelby, Iowa",\n"parents": "to the late Clarence and Bonnie (Kern) Paul"\n},\n"education": "graduated from Shelby High School with the class of 1958 and was the class valedictorian. She attended X-RAY technician school at the University of Nebraska.",\n"career": "Beverly and her husband owned and operated White Bakery for several years.",\n"visitationInfo": {\n"time": "5 to 7 p.m.",\n"location": "Hoy-Kilnoski Funeral Home"\n},\n"serviceInfo": {\n"time": "2 p.m.",\n"location": "Hoy-Kilnoski Funeral Home"\n},\n"intermentInfo": {\n"location": "Fisher Cemetery, in Underwood"\n},\n"memorialsInfo": "The family will direct memorials."\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "InjuryReport", "type": "object", "properties": {"game": {"title": "Game", "type": "object", "properties": {"opponent": {"title": "Opponent", "type": "string"}, "venue": {"title": "Venue", "type": "string"}, "kickoffTime": {"title": "Kickoff Time", "type": "string", "format": "date-time"}}, "required": ["opponent", "venue", "kickoffTime"]}, "injuredPlayers": {"title": "Injured Players", "type": "array", "items": {"type": "object", "properties": {"playerName": {"title": "Player Name", "type": "string"}, "injuryType": {"title": "Injury Type", "type": "string"}, "injuryLocation": {"title": "Injury Location", "type": "string"}, "status": {"title": "Status", "type": "string"}}, "required": ["playerName", "injuryType", "injuryLocation", "status"]}}}, "required": ["game", "injuredPlayers"]}\nparagraph:\nAlthough Munster\'s bonus point win against the Bulls was a timely fillip in advance of their clash with Leinster at the Aviva Stadium on Saturday (kick-off 7.35pm), the province are anxiously awaiting scans on a number of players who sustained injuries in that game at Thomond Park last Saturday night.\n\nStephen Archer (ankle), Edwin Edogbo (calf), Craig Casey (groin) and Tadhg Beirne (groin) will all undergo scans and their availability for the match against Leinster will be determined later in the week.\n\nWinger Calvin Nash is also a doubt after he was removed at half-time against the Bulls with a thigh injury.\n\nThis could add to Munster\'s list of outside backs who are currently side lined, and despite Graham Rowntree not ruling out hope of those problems being eased this week, the experienced international trio of Keith Earls (thigh), Andrew Conway (knee) and Simon Zebo (calf) have all again been ruled out.\n\nFurthermore, prop Roman Salanoa suffered a head injury in the final play of the match and will undergo the return to play protocols, while the newly acquired centre Antoine Frisch is rehabbing a calf injury suffered on the Emerging Ireland tour.', 'role': 'user'}, {'content': '{\n "game": {\n "opponent": "Leinster",\n "venue": "Aviva Stadium",\n "kickoffTime": "2023-05-20T19:35:00"\n },\n "injuredPlayers": [\n {\n "playerName": "Stephen Archer",\n "injuryType": "Ankle injury",\n "injuryLocation": "Ankle",\n "status": "Will undergo a scan; availability to be determined later in the week"\n },\n {\n "playerName": "Edwin Edogbo",\n "injuryType": "Calf injury",\n "injuryLocation": "Calf",\n "status": "Will undergo a scan; availability to be determined later in the week"\n },\n {\n "playerName": "Craig Casey",\n "injuryType": "Groin injury",\n "injuryLocation": "Groin",\n "status": "Will undergo a scan; availability to be determined later in the week"\n },\n {\n "playerName": "Tadhg Beirne",\n "injuryType": "Groin injury",\n "injuryLocation": "Groin",\n "status": "Will undergo a scan; availability to be determined later in the week"\n },\n {\n "playerName": "Calvin Nash",\n "injuryType": "Thigh injury",\n "injuryLocation": "Thigh",\n "status": "Removed at half-time against the Bulls; status to be determined"\n },\n {\n "playerName": "Keith Earls",\n "injuryType": "Thigh injury",\n "injuryLocation": "Thigh",\n "status": "Ruled out"\n },\n {\n "playerName": "Andrew Conway",\n "injuryType": "Knee injury",\n "injuryLocation": "Knee",\n "status": "Ruled out"\n },\n {\n "playerName": "Simon Zebo",\n "injuryType": "Calf injury",\n "injuryLocation": "Calf",\n "status": "Ruled out"\n },\n {\n "playerName": "Roman Salanoa",\n "injuryType": "Head injury",\n "injuryLocation": "Head",\n "status": "Will undergo return to play protocols"\n },\n {\n "playerName": "Antoine Frisch",\n "injuryType": "Calf injury",\n "injuryLocation": "Calf",\n "status": "Rehabbing a calf injury"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nYvonne Suzanne Chazelles de Chaxel, better known as Dany Carrel, (born 20 September 1932 or 20 September 1935) is a French actress. She was born in Vietnam - then French Indochina - to French father Aimé Chazelles de Chaxel and his Vietnamese mistress, Kim. She gradually retired starting from the eighties due to two bouts of cancer. In 2021, she was hospitalized for three weeks after contracting COVID-19.\n\nSelected filmography\n Dortoir des grandes (1953)\n “Maternite Clandestine” (1953) \n Women\'s Club (1956)\n People of No Importance (1956)\n Porte des Lilas (1957)\n Girls for the Summer (1958)\n This Desired Body (1959)\n The Goose of Sedan (1959)\n Mill of the Stone Women (1960)\n The Hands of Orlac (1960)\n Une souris chez les hommes (1964)\n Trap for Cinderella (1965)\n An Idiot in Paris (1967)\n A Little Virtuous (1968)\n La prisonnière (1968)\n Clérambard (1969)\n Trois milliards sans ascenseur (1972)\n Schools Falling Apart (1981)\n\nReferences\n\nExternal links\n \n Dany Carrel in Cult Sirens\n\n1932 births\nFrench film actresses\nFrench television actresses\nLiving people\n20th-century French actresses\njson schema:\n{"title": "Person", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "birthDate": {"title": "Birth Date", "type": "string", "format": "date"}, "birthPlace": {"title": "Birth Place", "type": "string"}, "parents": {"title": "Parents", "type": "object", "properties": {"father": {"title": "Father", "type": "string"}, "mother": {"title": "Mother", "type": "string"}}}, "career": {"title": "Career", "type": "array", "items": {"type": "object", "properties": {"title": {"title": "Title", "type": "string"}, "year": {"title": "Year", "type": "string", "format": "date"}}, "required": ["title", "year"]}}, "health": {"title": "Health", "type": "array", "items": {"type": "object", "properties": {"event": {"title": "Event", "type": "string"}, "year": {"title": "Year", "type": "string", "format": "date"}}, "required": ["event", "year"]}}}, "required": ["name", "birthDate", "birthPlace", "parents", "career", "health"]}', 'role': 'user'}, {'content': '{\n "name": "Dany Carrel",\n "birthDate": "1932-09-20",\n "birthPlace": "Vietnam - then French Indochina",\n "parents": {\n "father": "Aimé Chazelles de Chaxel",\n "mother": "Kim"\n },\n "career": [\n {\n "title": "Dortoir des grandes",\n "year": "1953"\n },\n {\n "title": "Maternite Clandestine",\n "year": "1953"\n },\n {\n "title": "Women\'s Club",\n "year": "1956"\n },\n {\n "title": "People of No Importance",\n "year": "1956"\n },\n {\n "title": "Porte des Lilas",\n "year": "1957"\n },\n {\n "title": "Girls for the Summer",\n "year": "1958"\n },\n {\n "title": "This Desired Body",\n "year": "1959"\n },\n {\n "title": "The Goose of Sedan",\n "year": "1959"\n },\n {\n "title": "Mill of the Stone Women",\n "year": "1960"\n },\n {\n "title": "The Hands of Orlac",\n "year": "1960"\n },\n {\n "title": "Une souris chez les hommes",\n "year": "1964"\n },\n {\n "title": "Trap for Cinderella",\n "year": "1965"\n },\n {\n "title": "An Idiot in Paris",\n "year": "1967"\n },\n {\n "title": "A Little Virtuous",\n "year": "1968"\n },\n {\n "title": "La prisonnière",\n "year": "1968"\n },\n {\n "title": "Clérambard",\n "year": "1969"\n },\n {\n "title": "Trois milliards sans ascenseur",\n "year": "1972"\n },\n {\n "title": "Schools Falling Apart",\n "year": "1981"\n }\n ],\n "health": [\n {\n "event": "Two bouts of cancer",\n "year": "Eighties"\n },\n {\n "event": "Hospitalized for three weeks after contracting COVID-19",\n "year": "2021"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nBy\n\nRobert Blouin, dean of the Eshelman School of Pharmacy at the University of North Carolina at Chapel Hill, has been selected as provost and executive vice chancellor there.\n\nPatrice DiQuinzio, interim provost and dean of the college at Washington College, in Maryland, has been named to the job on a permanent basis.\n\nPatricia Harris, provost at Kuyper College, in Michigan, has been promoted to president there.\n\nJames Hurley, executive vice president, dean of the School of Business and professor of leadership and education at Lincoln Memorial University, in Tennessee, has been chosen as president of Tusculum College, also in Tennessee.\n\nSteven P. O\'Day, vice president of strategic initiatives and secretary of the college at Lebanon Valley College, in Pennsylvania, has been chosen as president of Austin College, in Texas.\n\nAlan Ray, president of Elmhurst College, in Illinois, has been selected as president of Fisher College, in Massachusetts.\n\nAlan Silva, dean of arts and sciences and interim provost at St. Catherine University, in Minnesota, has been promoted to executive vice president and provost there.\n\nMarla J. Strecker, senior associate director of academic affairs, research and analytics at the Arkansas Department of Higher Education, has been chosen as provost of the University of Arkansas Pulaski Technical College.\n\nAlissa Young, chief academic officer at Hopkinsville Community College, in Kentucky, has been promoted to president there.\njson schema:\n{\n"title": "MultipleAppointments",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"currentInstitution": {\n"title": "Current Institution",\n"type": "string"\n},\n"newPositionInstitution": {\n"title": "New Position/Institution",\n"type": "string"\n}\n},\n"required": ["name", "position", "currentInstitution", "newPositionInstitution"]\n}\n}', 'role': 'user'}, {'content': '[\n{\n"name": "Robert Blouin",\n"position": "dean of the Eshelman School of Pharmacy",\n"currentInstitution": "University of North Carolina at Chapel Hill",\n"newPositionInstitution": "provost and executive vice chancellor, University of North Carolina at Chapel Hill"\n},\n{\n"name": "Patrice DiQuinzio",\n"position": "interim provost and dean of the college",\n"currentInstitution": "Washington College, Maryland",\n"newPositionInstitution": "provost, Washington College, Maryland"\n},\n{\n"name": "Patricia Harris",\n"position": "provost",\n"currentInstitution": "Kuyper College, Michigan",\n"newPositionInstitution": "president, Kuyper College, Michigan"\n},\n{\n"name": "James Hurley",\n"position": "executive vice president, dean of the School of Business and professor of leadership and education",\n"currentInstitution": "Lincoln Memorial University, Tennessee",\n"newPositionInstitution": "president, Tusculum College, Tennessee"\n},\n{\n"name": "Steven P. O\'Day",\n"position": "vice president of strategic initiatives and secretary of the college",\n"currentInstitution": "Lebanon Valley College, Pennsylvania",\n"newPositionInstitution": "president, Austin College, Texas"\n},\n{\n"name": "Alan Ray",\n"position": "president",\n"currentInstitution": "Elmhurst College, Illinois",\n"newPositionInstitution": "president, Fisher College, Massachusetts"\n},\n{\n"name": "Alan Silva",\n"position": "dean of arts and sciences and interim provost",\n"currentInstitution": "St. Catherine University, Minnesota",\n"newPositionInstitution": "executive vice president and provost, St. Catherine University, Minnesota"\n},\n{\n"name": "Marla J. Strecker",\n"position": "senior associate director of academic affairs, research and analytics",\n"currentInstitution": "Arkansas Department of Higher Education",\n"newPositionInstitution": "provost, University of Arkansas Pulaski Technical College"\n},\n{\n"name": "Alissa Young",\n"position": "chief academic officer",\n"currentInstitution": "Hopkinsville Community College, Kentucky",\n"newPositionInstitution": "president, Hopkinsville Community College, Kentucky"\n}\n]', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nA Super Pink Moon Is Coming in April—And It Will Be This Year\'s Biggest and Brightest\n\nIf you thought the Super Worm Moon in March was impressive, wait until you see April\'s Super Pink Moon—the biggest and brightest moon of the year. Here\'s everything you need to know about the first full moon of spring.\n\nScroll to continue with content\n\nAd\n\nWhy is it called the Pink Moon?\n\nSadly, the name of the moon has nothing to do with its actual color. According to the Farmer\'s Almanac, the full moon is called the Pink Moon because it corresponds with the early spring bloom of phlox subulata, or moss pink, a wildflower native to eastern North America. Instead, it will take on a golden hue near the horizon and fade to bright white.\n\nWhat makes it a supermoon?\n\nApril\'s Super Pink moon is considered a supermoon because of its close proximity to Earth. When the moon reaches the apogee, the point closest to Earth, it appears larger and brighter than a normal full moon. Since the Super Pink Moon will be the closest supermoon to Earth this year, it\'ll be the brightest and biggest full moon of 2020.\n\nWhen can you see the Super Pink Moon?\n\nThe Super Pink Moon will rise on Tuesday, April 7. It\'ll be visible after sunset, and it will reach peak illumination at 10:35 p.m., EDT, according to the Farmer\'s Almanac. The moon will appear full to the naked eye for the next couple of days.\njson schema:\n{\n"title": "SuperPinkMoonInfo",\n"type": "object",\n"properties": {\n"moonName": {\n"title": "Moon Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n},\n"correspondingEvent": {\n"title": "Corresponding Event",\n"type": "string"\n},\n"color": {\n"title": "Color",\n"type": "string"\n},\n"apogeeProximity": {\n"title": "Apogee Proximity",\n"type": "string"\n},\n"appearanceTime": {\n"title": "Appearance Time",\n"type": "string",\n"format": "date-time"\n},\n"additionalInfo": {\n"title": "Additional Info",\n"type": "string"\n}\n},\n"required": ["moonName", "description", "correspondingEvent", "color", "apogeeProximity", "appearanceTime"]\n}', 'role': 'user'}, {'content': '{\n"moonName": "Super Pink Moon",\n"description": "the biggest and brightest moon of the year",\n"correspondingEvent": "the early spring bloom of phlox subulata, or moss pink",\n"color": "It will take on a golden hue near the horizon and fade to bright white.",\n"apogeeProximity": "close proximity to Earth",\n"appearanceTime": "Tuesday, April 7, 10:35 p.m., EDT",\n"additionalInfo": "It\'s considered a supermoon because when the moon reaches the apogee, the point closest to Earth, it appears larger and brighter than a normal full moon."\n}', 'role': 'assistant'}, {'content': 'paragraph:\nGraceREES\n\ndied very peacefully on 19th April 2020 aged 93 years. Retired Nottinghamshire schoolteacher, Sherwood District Councillor and long standing Newark Magistrate. Married to David (who passed away in 2015) for over 60 years, resident of Hockerton for 44 years but since 1999 of Coventry. Much loved mother of Christopher and Jane and devoted grandmother to Isobel, Alistair, Andrew, Laurence and Victoria. Funeral details to be announced. Information via A Pargetter & Son Ltd., Coventry.\n\nNotify Friends and Family\n\nAdd the email addresses of friends or family members you\'d like to notify about this obituary.\n\nTo: *Invalid To Email\n\nFrom: *Invalid From Email\n\nMessage:\n\nOptional\njson schema:\n{\n"title": "Obituary",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"dateOfDeath": {\n"title": "Date of Death",\n"type": "string",\n"format": "date"\n},\n"ageAtDeath": {\n"title": "Age at Death",\n"type": "number"\n},\n"profession": {\n"title": "Profession",\n"type": "string"\n},\n"spouse": {\n"title": "Spouse",\n"type": "string"\n},\n"residenceHistory": {\n"title": "Residence History",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"children": {\n"title": "Children",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"grandchildren": {\n"title": "Grandchildren",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"funeralDetails": {\n"title": "Funeral Details",\n"type": "string"\n},\n"notification": {\n"title": "Notification",\n"type": "object",\n"properties": {\n"to": {\n"title": "To",\n"type": "string",\n"format": "email"\n},\n"from": {\n"title": "From",\n"type": "string",\n"format": "email"\n},\n"message": {\n"title": "Message",\n"type": "string",\n"subtype": "text"\n}\n},\n"required": ["to", "from"]\n}\n},\n"required": ["name", "dateOfDeath", "ageAtDeath", "profession", "spouse", "residenceHistory", "children", "grandchildren", "funeralDetails", "notification"]\n}', 'role': 'user'}, {'content': '{\n"name": "GraceREES",\n"dateOfDeath": "2020-04-19",\n"ageAtDeath": 93,\n"profession": "Retired Nottinghamshire schoolteacher, Sherwood District Councillor and long standing Newark Magistrate",\n"spouse": "David",\n"residenceHistory": ["Hockerton for 44 years", "Coventry since 1999"],\n"children": ["Christopher", "Jane"],\n"grandchildren": ["Isobel", "Alistair", "Andrew", "Laurence", "Victoria"],\n"funeralDetails": "To be announced",\n"notification": {\n"to": "*Invalid To Email",\n"from": "*Invalid From Email",\n"message": "Optional"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "JudgeVacancy",\n"type": "object",\n"properties": {\n"vacancyID": {\n"title": "Vacancy ID",\n"type": "string"\n},\n"courtName": {\n"title": "Court Name",\n"type": "string"\n},\n"vacancyDetails": {\n"title": "Vacancy Details",\n"type": "string"\n},\n"nominationDeadline": {\n"title": "Nomination Deadline",\n"type": "string",\n"format": "date-time"\n},\n"nominationMethod": {\n"title": "Nomination Method",\n"type": "object",\n"properties": {\n"email": {\n"title": "Email",\n"type": "string",\n"format": "email"\n},\n"postalMail": {\n"title": "Postal Mail",\n"type": "string"\n}\n},\n"required": ["email", "postalMail"]\n},\n"nominationForm": {\n"title": "Nomination Form",\n"type": "string",\n"format": "uri"\n},\n"eligibilityRequirements": {\n"title": "Eligibility Requirements",\n"type": "object",\n"properties": {\n"minAge": {\n"title": "Minimum Age",\n"type": "number"\n},\n"legalPracticeLicense": {\n"title": "Licensed to Practice Law in Missouri",\n"type": "boolean"\n},\n"usCitizenship": {\n"title": "US Citizenship for at least 15 years",\n"type": "boolean"\n},\n"missouriResidency": {\n"title": "Qualified Missouri Voter for at least nine years",\n"type": "boolean"\n}\n},\n"required": ["minAge", "legalPracticeLicense", "usCitizenship", "missouriResidency"]\n},\n"interviewDetails": {\n"title": "Interview Details",\n"type": "object",\n"properties": {\n"interviewDate": {\n"title": "Interview Date",\n"type": "string",\n"format": "date"\n},\n"interviewLocation": {\n"title": "Interview Location",\n"type": "string"\n},\n"interviewFormat": {\n"title": "Interview Format",\n"type": "string"\n},\n"interviewAccess": {\n"title": "Interview Access",\n"type": "string"\n},\n"applicantInfoRelease": {\n"title": "Applicant Info Release",\n"type": "string"\n}\n},\n"required": ["interviewDate", "interviewLocation", "interviewFormat", "interviewAccess", "applicantInfoRelease"]\n}\n},\n"required": ["vacancyID", "courtName", "vacancyDetails", "nominationDeadline", "nominationMethod", "nominationForm", "eligibilityRequirements", "interviewDetails"]\n}\nparagraph:\nThe Appellate Judicial Commission is accepting applications for judge of the Missouri Court of Appeals, Eastern District, to fill the impending vacancy to be created by the December 31, 2020, retirement of Judge Robert Dowd Jr. after more than four decades of judicial service – the longest of any current sitting judge. You are encouraged to nominate well-qualified candidates for the commission\'s consideration. The Missouri Constitution requires that a judge of the Missouri Court of Appeals be at least 30 years old, licensed to practice law in Missouri, a United States citizen for at least 15 years and a qualified Missouri voter for at least nine years next preceding selection. Nominations should be submitted to the commission by e-mail at EDJudgeVacancy@courts.mo.gov, or by postal mail to Missouri Court of Appeals, Eastern District Judge Vacancy, P.O. Box 150, Jefferson City, MO 65102. The nomination form is available online at https://www.courts.mo.gov/page.jsp?id=168353.\n\nPersons who applied for the Richter vacancy on the Eastern District appeals court who wish to be considered for this vacancy are not required to submit new applications but must notify the commission of their desire to be considered and provide any supplemental materials or new reference letters they wish considered pursuant to the instructions for applicants.\n\nThe commission expects to meet Thursday and Friday, January 14 and 15, 2021, at the Missouri Court of Appeals, Eastern District in the Old Post Office at 815 Olive Street in St. Louis, to interview applicants and select a panel of three nominees for the governor\'s consideration. The commission reserves the right to conduct the interviews using remote technology if necessary due to COVID 19 health concerns and recommendations. Regardless of their format, the interviews will be open to the public. The names of those to be interviewed and information relating to the number and characteristics of all applicants will be released publicly prior to the beginning of the interviews.', 'role': 'user'}, {'content': '{\n"vacancyID": "DowdJrVacancy",\n"courtName": "Missouri Court of Appeals, Eastern District",\n"vacancyDetails": "Judge Robert Dowd Jr.\'s impending retirement",\n"nominationDeadline": "2021-01-14T00:00:00Z",\n"nominationMethod": {\n"email": "EDJudgeVacancy@courts.mo.gov",\n"postalMail": "Missouri Court of Appeals, Eastern District Judge Vacancy, P.O. Box 150, Jefferson City, MO 65102"\n},\n"nominationForm": "https://www.courts.mo.gov/page.jsp?id=168353",\n"eligibilityRequirements": {\n"minAge": 30,\n"legalPracticeLicense": true,\n"usCitizenship": true,\n"missouriResidency": true\n},\n"interviewDetails": {\n"interviewDate": "2021-01-14",\n"interviewLocation": "Missouri Court of Appeals, Eastern District in the Old Post Office at 815 Olive Street in St. Louis",\n"interviewFormat": "In-person or remote",\n"interviewAccess": "Open to the public",\n"applicantInfoRelease": "Names of those to be interviewed and information relating to the number and characteristics of all applicants will be released publicly prior to the beginning of the interviews."\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nAnnette was born on Aug. 31, 1949, in Danville, the daughter of Lloyd and Mary Darr Puzey, as the second of six children.\n\nShe is survived by two brothers, Harold (Janet) Puzey and Alan (Susan) Puzey; and three sisters, Carol (David) Harden, Elaine (Pat) O\'Shaughnessy and Lisa (Tim) Bueter.\n\nShe had three surviving children, Anthony Schomburg, Gregory (Grace) Schomburg and Andrea (Jonathan) Tunick, from her previous marriage to James Schomburg. She later married Thomas C. Zeigler on June 22, 1992, in Baltimore, Md., and he preceded her in death on Aug. 15, 2014. She will join him in rest at the National Cemetery in Danville. Her marriage to Thomas added Thomas S. (Brooke) Zeigler, Kurt (Michael) Zeigler and Michael Zeigler to her family. She is also survived by three grandchildren, Aliya, Jude and Charlotte.\n\nAnnette was a compassionate soul and caregiver and graduated from the Julia F. Burnham School of Nursing in 1970. She was an emergency room nurse for 32 years at Burnham and Provena Covenant hospitals in Champaign-Urbana, where she brought healing to many and met numerous lifelong friends and soulmates, including the "Seven Sisters." She was an excellent cook, whose chocolate chip cookies were known far and wide. She had a vision to make the world a more beautiful place as a diligent gardener and creative designer, including creating award-winning designs at the Festival of Trees. Rarely without a "project," her compassion and nurturing extended to everyone who enjoyed her meals and generosity and knew her as a second "Mom," including her beloved Sheltie dogs. She was an enthusiastic fan of the Cubs and Fighting Illini, and her cheers for both will undoubtedly echo throughout eternity. Most of all, she adored her children and grandchildren, who were the light of her life.\n\nAnnette\'s life will be celebrated at 11 a.m. Saturday, April 2, at Catlin Church of Christ in Catlin. Visitation will be from 10 a.m. until service time Saturday at Catlin Church of Christ. Masks are optional at the church. There will be a meal to follow in the fellowship hall at Catlin Church of Christ. Private family burial will be in the National Cemetery in Danville.\njson schema:\n{"title": "Person", "type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "birthDate": {"title": "Birth Date", "type": "string", "format": "date"}, "birthPlace": {"title": "Birth Place", "type": "string"}, "parents": {"title": "Parents", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}}, "required": ["name"]}}, "siblings": {"title": "Siblings", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}}, "required": ["name"]}}, "children": {"title": "Children", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}}, "required": ["name"]}}, "spouses": {"title": "Spouses", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Name", "type": "string"}, "marriageDate": {"title": "Marriage Date", "type": "string", "format": "date"}}, "required": ["name", "marriageDate"]}}, "grandchildren": {"title": "Grandchildren", "type": "array", "items": {"type": "string"}}, "occupation": {"title": "Occupation", "type": "string"}, "education": {"title": "Education", "type": "string"}, "hobbies": {"title": "Hobbies", "type": "array", "items": {"type": "string"}}, "interests": {"title": "Interests", "type": "array", "items": {"type": "string"}}, "deathDate": {"title": "Death Date", "type": "string", "format": "date"}, "burialPlace": {"title": "Burial Place", "type": "string"}}, "required": ["name", "birthDate", "birthPlace", "parents", "siblings", "children", "spouses", "grandchildren", "occupation", "education", "hobbies", "interests", "deathDate", "burialPlace"]}', 'role': 'user'}, {'content': '{\n "name": "Annette",\n "birthDate": "1949-08-31",\n "birthPlace": "Danville",\n "parents": [\n {\n "name": "Lloyd and Mary Darr Puzey"\n }\n ],\n "siblings": [\n {\n "name": "Harold (Janet) Puzey"\n },\n {\n "name": "Alan (Susan) Puzey"\n },\n {\n "name": "Carol (David) Harden"\n },\n {\n "name": "Elaine (Pat) O\'Shaughnessy"\n },\n {\n "name": "Lisa (Tim) Bueter"\n }\n ],\n "children": [\n {\n "name": "Anthony Schomburg"\n },\n {\n "name": "Gregory (Grace) Schomburg"\n },\n {\n "name": "Andrea (Jonathan) Tunick"\n }\n ],\n "spouses": [\n {\n "name": "James Schomburg",\n "marriageDate": "NA"\n },\n {\n "name": "Thomas C. Zeigler",\n "marriageDate": "1992-06-22"\n }\n ],\n "grandchildren": [\n "Aliya",\n "Jude",\n "Charlotte"\n ],\n "occupation": "emergency room nurse",\n "education": "Julia F. Burnham School of Nursing",\n "hobbies": [\n "gardening",\n "creative design"\n ],\n "interests": [\n "Festival of Trees",\n "Cubs",\n "Fighting Illini"\n ],\n "deathDate": "2022-04-01",\n "burialPlace": "National Cemetery in Danville"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "FerryService", "type": "object", "properties": {"serviceName": {"title": "Service Name", "type": "string"}, "provider": {"title": "Provider", "type": "object", "properties": {"name": {"title": "Provider Name", "type": "string"}, "location": {"title": "Provider Location", "type": "string"}, "vessels": {"title": "Vessels", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Vessel Name", "type": "string"}, "capacity": {"title": "Vessel Capacity", "type": "number"}, "engines": {"title": "Vessel Engines", "type": "string"}, "maxSpeed": {"title": "Vessel Max Speed", "type": "number"}, "seatingAreas": {"title": "Vessel Seating Areas", "type": "array", "items": {"type": "object", "properties": {"areaType": {"title": "Seating Area Type", "type": "string"}, "capacity": {"title": "Seating Area Capacity", "type": "number"}}, "required": ["areaType", "capacity"]}}, "facilities": {"title": "Vessel Facilities", "type": "array", "items": {"type": "object", "properties": {"facilityType": {"title": "Facility Type", "type": "string"}, "count": {"title": "Facility Count", "type": "number"}}, "required": ["facilityType", "count"]}}}, "required": ["name", "capacity", "engines", "maxSpeed", "seatingAreas", "facilities"]}}}, "required": ["name", "location", "vessels"]}, "route": {"title": "Route", "type": "object", "properties": {"startPoint": {"title": "Start Point", "type": "string"}, "endPoint": {"title": "End Point", "type": "string"}, "passesBy": {"title": "Passes By", "type": "array", "items": {"type": "string"}}, "duration": {"title": "Duration", "type": "string"}}, "required": ["startPoint", "endPoint", "passesBy", "duration"]}, "additionalInfo": {"title": "Additional Info", "type": "string"}}, "required": ["serviceName", "provider", "route", "additionalInfo"]}\nparagraph:\nThe Dry Tortugas Ferry to Fort Jefferson is a visitor attraction in Key West, Florida. Service is provided by the Yankee Freedom III, a high-speed Incat-designed catamaran that takes visitors on the almost trip out to Fort Jefferson in the Dry Tortugas National Park. The service is a licensed National Park Service concessioner, and the only provider of scheduled ferry access to the Dry Tortugas for a ten-year term through 2020.\n\nBuilt by Gladding-Hearn Shipbuilding, the Yankee Freedom III catamaran is powered by twin Caterpillar, Inc. 3412 engines that give the ferry a maximum speed of 30 knots. The Yankee Freedom III has a passenger capacity of 250 people, with interior and exterior seating for up to 125 people per area. The cabin is fully air conditioned, and the galley has two complete beverage bars. There are also 3 large bathrooms on board including one handicapped facility for passenger convenience.\n\nThe Yankee Freedom III is part of the Yankee Fleet. The Yankee Fleet is owned and operated by Jerry Hill, with over seven vessels located in Key West, Florida and Gloucester, Massachusetts. The company focuses on whale watching excursions, deep sea fishing trips and environmental conservation.\n\nThe trip passes the uninhabited Marquesas Keys and under good conditions it may be possible to see an abandoned U.S. Air Force radio tower on the northern horizon. Typically the trip to Fort Jefferson takes 2 1/2 to 3 hours each way, with a 4-hour stop for sightseeing and swimming.\n\nReferences\n\nExternal links\n Dry Tortugas Ferry Yankee Freedom\n\nTransportation in Key West, Florida\nTourist attractions in Key West, Florida\nDry Tortugas National Park', 'role': 'user'}, {'content': '{\n "serviceName": "Dry Tortugas Ferry to Fort Jefferson",\n "provider": {\n "name": "Yankee Fleet",\n "location": "Key West, Florida and Gloucester, Massachusetts",\n "vessels": [\n {\n "name": "Yankee Freedom III",\n "capacity": 250,\n "engines": "Twin Caterpillar, Inc. 3412 engines",\n "maxSpeed": 30,\n "seatingAreas": [\n {\n "areaType": "interior",\n "capacity": 125\n },\n {\n "areaType": "exterior",\n "capacity": 125\n }\n ],\n "facilities": [\n {\n "facilityType": "bathroom",\n "count": 3\n },\n {\n "facilityType": "handicapped bathroom",\n "count": 1\n },\n {\n "facilityType": "beverage bar",\n "count": 2\n }\n ]\n }\n ]\n },\n "route": {\n "startPoint": "Key West, Florida",\n "endPoint": "Fort Jefferson, Dry Tortugas National Park",\n "passesBy": ["Marquesas Keys"],\n "duration": "2 1/2 to 3 hours each way, with a 4-hour stop for sightseeing and swimming"\n },\n "additionalInfo": "The Yankee Freedom III is a high-speed Incat-designed catamaran that takes visitors on a trip out to Fort Jefferson in the Dry Tortugas National Park. The service is a licensed National Park Service concessioner, and the only provider of scheduled ferry access to the Dry Tortugas for a ten-year term through 2020. The trip may offer a view of an abandoned U.S. Air Force radio tower on the northern horizon."\n}', 'role': 'assistant'}, {'content': 'paragraph:\nChamber Concerned About Sherwin-Williams\n\nPRESS RELEASE – THE St. Lucia Chamber of Commerce Industry and Agriculture met this week with Department of Commerce officials to discuss issues related to the paint industry in Saint Lucia. In recent times, local distributors and manufacturers of paint have been disturbed by the business practices of a new entrant to the industry, Sherwin-Williams, a USA-owned and operated business.\n\nThe Department of Commerce informed the Chamber that the company had initially been granted a license to operate in St. Lucia, contrary to the advice of the Trade License Advisory Board. Said license has expired and has not been renewed for the past year because the firm has been operating outside of the terms of the license granted.\n\nThe Chamber pointed out that there has always been vigorous competition amongst the local retailers and manufacturers and that none of them was afraid of competing on an even playing field. All the local firms have operated within the terms, conditions and laws of Saint Lucia.\n\nIt is, therefore, unacceptable that a new entrant should flaunt the terms of its license. The Chamber also expressed disbelief that currently the firm operates without a valid trade license, due in part to it being in breach and contravention of the terms of the original license.\n\nThe Chamber has asked that the Government takes the requisite steps to ensure that Sherwin-Williams complies with the terms of its license, as it would be most unfortunate if a foreign-owned business has gained physical market entry, has not followed the terms of its license, displaced original distributors of its products, and is now causing commercial harm to other players.\n\nThe Chamber and its affected members are concerned that there is scant attention being paid to the interest of local and existing businesses and Government is acting against its own policy to the detriment of these established businesses.\n\nThe Department of Commerce has indicated that it will be seeking to cause Sherwin-Williams to operate in accordance with its original license and it has not renewed the firm\'s license to date. The Chamber has asked the Department to act resolutely, as the breach of the terms of a Trade License with impunity sends a strong negative signal not only to local businesses but to non-national firms that they can operate in St. Lucia with impunity, outside of signed accepted agreements.\njson schema:\n{\n"title": "PressRelease",\n"type": "object",\n"properties": {\n"pressReleaseID": {"title": "Press Release ID", "type": "string"},\n"organizationName": {"title": "Organization Name", "type": "string"},\n"meetingDetails": {\n"title": "Meeting Details",\n"type": "object",\n"properties": {\n"meetingParticipants": {"title": "Meeting Participants", "type": "array", "items": {"type": "string"}},\n"meetingDate": {"title": "Meeting Date", "type": "string", "format": "date"}\n},\n"required": ["meetingParticipants", "meetingDate"]\n},\n"discussionTopics": {\n"title": "Discussion Topics",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"topic": {"title": "Topic", "type": "string"},\n"details": {"title": "Details", "type": "string"}\n},\n"required": ["topic", "details"]\n}\n},\n"concerns": {\n"title": "Concerns",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"concern": {"title": "Concern", "type": "string"},\n"impact": {"title": "Impact", "type": "string"}\n},\n"required": ["concern", "impact"]\n}\n},\n"requestedActions": {\n"title": "Requested Actions",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"action": {"title": "Action", "type": "string"},\n"requestedBy": {"title": "Requested By", "type": "string"}\n},\n"required": ["action", "requestedBy"]\n}\n}\n},\n"required": ["pressReleaseID", "organizationName", "meetingDetails", "discussionTopics", "concerns", "requestedActions"]\n}', 'role': 'user'}, {'content': '{\n"pressReleaseID": "Press Release - Chamber Concerned About Sherwin-Williams",\n"organizationName": "St. Lucia Chamber of Commerce Industry and Agriculture",\n"meetingDetails": {\n"meetingParticipants": ["St. Lucia Chamber of Commerce Industry and Agriculture", "Department of Commerce officials"],\n"meetingDate": "Not specified in the paragraph"\n},\n"discussionTopics": [\n{\n"topic": "Issues related to the paint industry in Saint Lucia",\n"details": "Local distributors and manufacturers of paint have been disturbed by the business practices of a new entrant to the industry, Sherwin-Williams"\n}\n],\n"concerns": [\n{\n"concern": "Sherwin-Williams operating outside of the terms of the license granted",\n"impact": "Displaced original distributors of its products and causing commercial harm to other players"\n},\n{\n"concern": "Government acting against its own policy to the detriment of established businesses",\n"impact": "Scant attention being paid to the interest of local and existing businesses"\n}\n],\n"requestedActions": [\n{\n"action": "Ensure that Sherwin-Williams complies with the terms of its license",\n"requestedBy": "The Chamber and its affected members"\n},\n{\n"action": "Act resolutely against the breach of the terms of a Trade License",\n"requestedBy": "The Chamber"\n}\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nDigging out dormant qualities\n\nOasis\n\nDuring our stay in Chennai, among our friends was this person, with a calm demeanour, captivating countenance and a chirpy disposition. Whenever any of us were assailed by any mental anguish, we\'d call on her, to have all our depression instantly assuaged, and all agonies allayed, by talking to her.\n\nThis also led her to dig into her own dormant qualities and channel them in the right direction. She went ahead to sharpen her rare counselling ability, by acquiring the related degree through distance education. Today, she is a successful professional.\n\nWell, our dormant qualities could be anything — a skill, talent, intellect, or even the \'goodness quotient\'. Here, I\'m reminded of an impressive tale, wherein Lord Yama, the God of Death, dispatches two of his dutiful men behind the soul of a person, who\'d have just then bid a final adieu to his terrestrial existence. On getting the soul, Lord Yama is unable to decide whether the soul should head towards heaven or hell, as the person is neither of a nefarious mind, with spiteful qualities, nor of noble mind and sterling qualities.\n\nIncidentally, he is born into a wealthy family. And, being born to an immensely good-hearted couple, he also inherits that inherent goodness from them.\n\nNow, having that stark goodness, sunk \'dormant\' in him, he could have used his surplus resources, in spreading surfeit happiness among several around. But he chose all his goodness to go down the drain. So he goes to hell.\n\nSame in the case of the human intellect, too. At times, we see many folks, with magnificent degrees, from prestigious educational institutes, who wouldn\'t be as successful as those with lesser qualifications. This is because they wouldn\'t have exploited and made optimal use of their intellect. Indeed, it does call for huge investment in terms of intense time, energy and efforts.\n\nBut before that, it is imperative to recognise one\'s innate abilities/capabilities, after which one needs to mine, tap and channelise them in the right direction, to scale the zenith of success. Because buried dormant talents are as good as dead assets.\njson schema:\n{\n"title": "Story",\n"type": "object",\n"properties": {\n"title": {\n"title": "Title",\n"type": "string"\n},\n"characters": {\n"title": "Characters",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n}\n},\n"required": ["name", "description"]\n}\n},\n"events": {\n"title": "Events",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"description": {\n"title": "Description",\n"type": "string"\n},\n"time": {\n"title": "Time",\n"type": "string",\n"format": "date-time"\n}\n},\n"required": ["description", "time"]\n}\n},\n"lessons": {\n"title": "Lessons",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"lesson": {\n"title": "Lesson",\n"type": "string"\n},\n"example": {\n"title": "Example",\n"type": "string"\n}\n},\n"required": ["lesson", "example"]\n}\n}\n},\n"required": ["title", "characters", "events", "lessons"]\n}', 'role': 'user'}, {'content': '{\n"title": "Story",\n"characters": [\n {\n"name": "The calm and chirpy friend",\n"description": "A person with a calm demeanor, captivating countenance and a chirpy disposition. She has a rare counselling ability that helps assuage mental anguish and allay agonies."\n },\n {\n"name": "Lord Yama",\n"description": "The God of Death who is unable to decide whether a soul should head towards heaven or hell due to the person\'s stark goodness."\n },\n {\n"name": "The person with surplus resources",\n"description": "Born into a wealthy family and inheriting immense good-heartedness from his parents, but chooses to let his goodness go down the drain."\n }\n],\n"events": [\n {\n"description": "The calm and chirpy friend decides to sharpen her rare counselling ability by acquiring a related degree through distance education.",\n"time": "During our stay in Chennai"\n },\n {\n"description": "Lord Yama dispatches two of his dutiful men behind the soul of a person who has just then bid a final adieu to his terrestrial existence.",\n"time": "Not specified in the paragraph"\n },\n {\n"description": "The person with surplus resources fails to use his resources and goodness to spread surfeit happiness among several around.",\n"time": "Not specified in the paragraph"\n }\n],\n"lessons": [\n {\n"lesson": "Dormant qualities can be dug into and channeled in the right direction to achieve success.",\n"example": "The calm and chirpy friend becomes a successful professional after sharpening her counselling ability."\n },\n {\n"lesson": "Buried dormant talents are as good as dead assets.",\n"example": "The person with surplus resources lets his goodness go down the drain, which could have been used to spread happiness."\n },\n {\n"lesson": "Recognizing one\'s innate abilities/capabilities is imperative before making optimal use of them to achieve success.",\n"example": "Folks with magnificent degrees from prestigious educational institutes may not be successful if they don\'t exploit and make optimal use of their intellect."\n }\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nBurnet holding virtual freshmen orientation\n\nIncoming Burnet High School freshmen can learn what it means to be a Bulldog during virtual orientation Aug. 17-19. Photo by Martelle Luedecke/Luedecke Photography\n\nBurnet High School\'s freshmen orientation is online this year due to the COVID-19 pandemic.\n\nThe Class of 2024 can learn what to expect in their first year of high school during the three-day virtual event Aug. 17-19. Each day is themed: Spirit Day on Monday, Pride Day on Tuesday, and Honor Day on Wednesday.\n\nOrientation is via Google Classroom, and incoming freshman will need to join the Class of 2024 Google Classroom. The high school is sending codes to join through parents\' SkyAlert.\n\nStudents can log in to Google Classroom at anytime on those three days and find videos, competitions, and other information. They can also ask questions.\njson schema:\n{\n"title": "VirtualOrientation",\n"type": "object",\n"properties": {\n"schoolName": {"title": "School Name", "type": "string"},\n"classYear": {"title": "Class Year", "type": "string"},\n"orientationType": {"title": "Orientation Type", "type": "string"},\n"dateRange": {"title": "Date Range", "type": "string", "format": "date-time"},\n"daysThemes": {\n"title": "Days Themes",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"day": {"title": "Day", "type": "string"},\n"theme": {"title": "Theme", "type": "string"}\n},\n"required": ["day", "theme"]\n}\n},\n"attendanceMethod": {"title": "Attendance Method", "type": "string"},\n"platform": {"title": "Platform", "type": "string"},\n"accessCode": {"title": "Access Code", "type": "string"},\n"activities": {"title": "Activities", "type": "array", "items": {"type": "string"}}\n},\n"required": ["schoolName", "classYear", "orientationType", "dateRange", "daysThemes", "attendanceMethod", "platform", "accessCode"]\n}', 'role': 'user'}, {'content': '{\n"schoolName": "Burnet High School",\n"classYear": "2024",\n"orientationType": "Virtual",\n"dateRange": "2021-08-17/2021-08-19",\n"daysThemes": [\n{"day": "Monday", "theme": "Spirit Day"},\n{"day": "Tuesday", "theme": "Pride Day"},\n{"day": "Wednesday", "theme": "Honor Day"}\n],\n"attendanceMethod": "Google Classroom",\n"platform": "Google Classroom",\n"accessCode": "The high school is sending codes to join through parents\' SkyAlert.",\n"activities": ["find videos, competitions, and other information", "ask questions"]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "EventRegistration", "type": "object", "properties": {"eventName": {"title": "Event Name", "type": "string"}, "startTime": {"title": "Start Time", "type": "string", "format": "time"}, "location": {"title": "Location", "type": "string"}, "ageRange": {"title": "Age Range", "type": "string"}, "challengeName": {"title": "Challenge Name", "type": "string"}, "materials": {"title": "Materials", "type": "array", "items": {"type": "string"}}, "categories": {"title": "Categories", "type": "array", "items": {"type": "string"}}, "registrationDeadline": {"title": "Registration Deadline", "type": "string", "format": "date"}}, "required": ["eventName", "startTime", "location", "ageRange", "challengeName", "materials", "categories"]}\nparagraph:\nFiction to Fashion - Intro Session\n\n6-7pm. Northeast Library. Calling all creative teens (ages 13–18) for our 4th Project Runway-style fashion design challenge. Using unconventional materials like discarded library books, cassette tapes and CDs, we challenge you to make a stunning outfit to send down the runway at Expo 216. You could win "Crowd Favorite," "Most Avant-Garde," "Best Runway Swagger" or "Most Ready to Wear" and take home prizes. Sign up throughout the month of January, intro session is the time to check-in, ask questions, and pick up materials.', 'role': 'user'}, {'content': '{\n "eventName": "Fiction to Fashion - Intro Session",\n "startTime": "18:00",\n "location": "Northeast Library",\n "ageRange": "13-18",\n "challengeName": "Project Runway-style fashion design challenge",\n "materials": ["discarded library books", "cassette tapes", "CDs"],\n "categories": ["Crowd Favorite", "Most Avant-Garde", "Best Runway Swagger", "Most Ready to Wear"],\n "registrationDeadline": "2022-01-31"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "CrimeReport",\n"type": "object",\n"properties": {\n"crimeLocation": {\n"title": "Crime Location",\n"type": "string"\n},\n"crimeTime": {\n"title": "Crime Time",\n"type": "string",\n"format": "date-time"\n},\n"substanceUsed": {\n"title": "Substance Used",\n"type": "string"\n},\n"victimAge": {\n"title": "Victim Age",\n"type": "number"\n},\n"victimCondition": {\n"title": "Victim Condition",\n"type": "string"\n},\n"witnessAccount": {\n"title": "Witness Account",\n"type": "string"\n},\n"arrestStatus": {\n"title": "Arrest Status",\n"type": "string"\n}\n},\n"required": ["crimeLocation", "crimeTime", "substanceUsed", "victimAge", "victimCondition", "witnessAccount", "arrestStatus"]\n}\nparagraph:\nA teenager was rushed to hospital on Sunday after having a corrosive substance thrown in his eyes in south London.\nPolice were called to Penge Lane, Penge, at around 13.30pm where the 17-year-old was being helped by staff in a nearby restaurant.\nStaff at the Himalayan Kitchen told the Evening Standard the victim screamed "my life is gone" as they tried to wash the liquid from his eyes with bottled water.\nOne worker said: "I was talking to my customers and the man ran up, he was shouting \'my life is gone, call my mum\'."\nThe employee added: "It\'s terrifying, very scary. It is not a nice thing to happen, so cruel."\nA spokesman for the Met said the substance thrown has yet to be analysed but is believed to be ammonia.\nThe victim was taken to a south London Hospital where his condition is not life threatening.\nNo arrests have been made and inquiries continue. (Image: Google Streetview)', 'role': 'user'}, {'content': '{\n"crimeLocation": "Penge Lane, Penge, south London",\n"crimeTime": "Sunday",\n"substanceUsed": "ammonia",\n"victimAge": 17,\n"victimCondition": "not life threatening",\n"witnessAccount": "A man ran up, he was shouting \'my life is gone, call my mum\'. It\'s terrifying, very scary. It is not a nice thing to happen, so cruel.",\n"arrestStatus": "No arrests have been made"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThe Blood Bank of Delmarva has declared its second blood emergency in three months.\n\nOfficials say blood supplies have dropped to "critical lows" after donations declined and demand increased during Labor Day weekend. The blood bank\'s reserves are less than 50 percent of what they need to be.\n\nSince donated blood only lasts seven days, the supply constantly needs to be replenished.\n\nThe blood bank needs 350 donors every day — 62,000 a year — to make sure the 19 hospitals in the Delmarva Peninsula are supplied to deal with emergencies.\n\nIn late June, the blood bank said it was in a blood emergency because it only had a two-day supply for all blood types — far below the safe minimum.\n\nThe organization\'s officials are asking for all types of blood, especially O negative. This kind of blood is needed for trauma situations and emergency rooms, since it\'s considered to be universal.\njson schema:\n{"title": "BloodEmergency", "type": "object", "properties": {"bloodBankName": {"title": "Blood Bank Name", "type": "string"}, "emergencyStatus": {"title": "Emergency Status", "type": "string"}, "bloodSupplyLevel": {"title": "Blood Supply Level", "type": "number"}, "neededDonorsPerDay": {"title": "Needed Donors Per Day", "type": "number"}, "neededDonorsPerYear": {"title": "Needed Donors Per Year", "type": "number"}, "lastBloodEmergency": {"title": "Last Blood Emergency", "type": "string", "format": "date"}, "bloodTypesInNeed": {"title": "Blood Types In Need", "type": "array", "items": {"type": "string"}}}, "required": ["bloodBankName", "emergencyStatus", "bloodSupplyLevel", "neededDonorsPerDay", "neededDonorsPerYear", "lastBloodEmergency", "bloodTypesInNeed"]}', 'role': 'user'}, {'content': '{\n "bloodBankName": "The Blood Bank of Delmarva",\n "emergencyStatus": "second blood emergency in three months",\n "bloodSupplyLevel": 0.5,\n "neededDonorsPerDay": 350,\n "neededDonorsPerYear": 62000,\n "lastBloodEmergency": "2022-06-late",\n "bloodTypesInNeed": ["O negative"]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nGlory Breeze is a 8yo b Unknown from Ireland trained by Miss D O\'Shea, who is based at Cork. It is sired by the stallion Fame And Glory out of the dam Rockchic Walk.\n\nGlory Breeze is yet to break its maiden status, having not won a race yet from 6 attempts. During its most recent race at Clonmel on 28th Oct 2021, Glory Breeze was ridden by S W Flanagan and finished unplaced, behind the winner Optional Mix.\njson schema:\n{"title": "HorseProfile", "type": "object", "properties": {"horseName": {"title": "Horse Name", "type": "string"}, "age": {"title": "Age", "type": "integer"}, "breed": {"title": "Breed", "type": "string"}, "countryOfOrigin": {"title": "Country of Origin", "type": "string"}, "trainer": {"title": "Trainer", "type": "string"}, "base": {"title": "Base", "type": "string"}, "sire": {"title": "Sire", "type": "string"}, "dam": {"title": "Dam", "type": "string"}, "racingRecord": {"title": "Racing Record", "type": "array", "items": {"type": "object", "properties": {"raceLocation": {"title": "Race Location", "type": "string"}, "raceDate": {"title": "Race Date", "type": "string", "format": "date"}, "jockey": {"title": "Jockey", "type": "string"}, "result": {"title": "Result", "type": "string"}, "winner": {"title": "Winner", "type": "string"}}, "required": ["raceLocation", "raceDate", "jockey", "result", "winner"]}}}, "required": ["horseName", "age", "breed", "countryOfOrigin", "trainer", "base", "sire", "dam", "racingRecord"]}', 'role': 'user'}, {'content': '{\n "horseName": "Glory Breeze",\n "age": 8,\n "breed": "Unknown",\n "countryOfOrigin": "Ireland",\n "trainer": "Miss D O\'Shea",\n "base": "Cork",\n "sire": "Fame And Glory",\n "dam": "Rockchic Walk",\n "racingRecord": [\n {\n "raceLocation": "Clonmel",\n "raceDate": "2021-10-28",\n "jockey": "S W Flanagan",\n "result": "unplaced",\n "winner": "Optional Mix"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "DisasterRelief",\n"type": "object",\n"properties": {\n"donorName": {"title": "Donor Name", "type": "string"},\n"reliefAmount": {"title": "Relief Amount", "type": "number"},\n"beneficiaryType": {"title": "Beneficiary Type", "type": "string", "enum": ["next of kin", "seriously injured"]},\n"incidentDetails": {"title": "Incident Details", "type": "object", "properties": {\n"incidentType": {"title": "Incident Type", "type": "string"},\n"location": {"title": "Location", "type": "string"}\n}, "required": ["incidentType", "location"]}\n},\n"required": ["donorName", "reliefAmount", "beneficiaryType", "incidentDetails"]\n}\nparagraph:\nPM Narendra Modi has approved an ex-gratia of Rs. 2 lakh each from PMNRF for the next of kin of those who have lost their lives due to the hospital fire in Virar, Maharashtra. Rs. 50,000 would be given to those seriously injured.\n\nPM Narendra Modi has approved an ex-gratia of Rs. 2 lakh each from PMNRF for the next of kin of those who have lost their lives due to the hospital fire in Virar, Maharashtra. Rs. 50,000 would be given to those seriously injured.\n\nPM @narendramodi has approved an ex-gratia of Rs. 2 lakh each from PMNRF for the next of kin of those who have lost their lives due to the hospital fire in Virar, Maharashtra. Rs. 50,000 would be given to those seriously injured.\n\n(SocialLY brings you all the latest breaking news, viral trends and information from social media world, including Twitter, Instagram and Youtube. The above post is embeded directly from the user\'s social media account and LatestLY Staff may not have modified or edited the content body. The views and facts appearing in the social media post do not reflect the opinions of LatestLY, also LatestLY does not assume any responsibility or liability for the same.)', 'role': 'user'}, {'content': '{\n"donorName": "PM Narendra Modi",\n"reliefAmount": 200000,\n"beneficiaryType": "next of kin",\n"incidentDetails": {\n"incidentType": "hospital fire",\n"location": "Virar, Maharashtra"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "PodcastInfo",\n"type": "object",\n"properties": {\n"podcastName": {\n"title": "Podcast Name",\n"type": "string"\n},\n"episodeTitle": {\n"title": "Episode Title",\n"type": "string"\n},\n"guestName": {\n"title": "Guest Name",\n"type": "string"\n},\n"guestPosition": {\n"title": "Guest Position",\n"type": "string"\n},\n"topic": {\n"title": "Topic",\n"type": "string"\n},\n"issuesDiscussed": {\n"title": "Issues Discussed",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"legislativeSession": {\n"title": "Legislative Session",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["podcastName", "episodeTitle", "guestName", "guestPosition", "topic", "issuesDiscussed", "legislativeSession"]\n}\nparagraph:\nPodcast: Gerrymandering and redistricting with Cindy Battles\n\nJoining Megan on this special episode of The Georgia Politics Podcast is Cindy Battles, Policy & Engagement Director for The Georgia Coalition for the People\'s Agenda.\n\nGeorgia is in the middle of a redistricting year and its legislature will soon convene for a special session to determine the boundaries of state senate and house districts for the next 10 years. Megan and Cindy discuss some of the history behind this process, and what Georgia\'s citizens can expect going forward.\n\nThey also discuss many of the nuances of gerrymandering, why they say it is a problem, and how to address it through legislation and activism.', 'role': 'user'}, {'content': '{\n"podcastName": "The Georgia Politics Podcast",\n"episodeTitle": "Gerrymandering and redistricting with Cindy Battles",\n"guestName": "Cindy Battles",\n"guestPosition": "Policy & Engagement Director for The Georgia Coalition for the People\'s Agenda",\n"topic": "Gerrymandering and redistricting",\n"issuesDiscussed": ["History behind redistricting", "Georgia\'s citizens expectations", "Nuances of gerrymandering", "Addressing gerrymandering through legislation and activism"],\n"legislativeSession": "special session of Georgia legislature"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "RiderInfo", "type": "object", "properties": {"riderName": {"title": "Rider Name", "type": "string"}, "age": {"title": "Age", "type": "number"}, "nationality": {"title": "Nationality", "type": "string"}, "team": {"title": "Team", "type": "string"}, "teamLevel": {"title": "Team Level", "type": "string"}, "events": {"title": "Events", "type": "array", "items": {"type": "string"}}, "trainingProgram": {"title": "Training Program", "type": "string"}, "goals": {"title": "Goals", "type": "string"}, "experience": {"title": "Experience", "type": "string"}, "topRanking": {"title": "Top Ranking", "type": "string"}, "teamLeader": {"title": "Team Leader", "type": "string"}}, "required": ["riderName", "age", "nationality", "team", "teamLevel", "trainingProgram", "goals", "experience", "topRanking", "teamLeader"]}\nparagraph:\n21-year-old B.C. rider added to an international roster of riders for 2021\n\nCanadian enduro racer Evan Wall is stepping into the elite ranks as part of the expanded Orbea Fox Enduro Team in 2021. The 21-year-old rider will be part of the program\'s "National" level, focusing mainly on events within North America.\n\nOrbea Fox Enduro Team\n\n"I am prepping thoroughly with training programs that help me gain confidence and improve my technique. This is the foundation for a strong season," said Wall of his plans ahead of the season. After years of strong results on the Canadian Enduro Series, Wall gained wider recognition after winning the Pinkbike Academy\'s first season in 2020.\n\nExpanded Orbea Fox Enduro Team\n\nEntering its fourth season, the Orbea Fox Enduro Team is expanding its roster. While Evan Wall joins at the national level, Laura Charles joins as an Enduro World Series-level rider.\n\n"It\'s a new challenge, and I\'m certain this experience will help me improve," said Charles. "For my part, I want to contribute to the team by qualifying for a Top 5. That would be incredible."\n\nThe international team will be led once again by Damien Oton, consistently at the top of the EWS\'s overall rankings, and Vid Persak.', 'role': 'user'}, {'content': '{\n "riderName": "Evan Wall",\n "age": 21,\n "nationality": "Canadian",\n "team": "Orbea Fox Enduro Team",\n "teamLevel": "National",\n "events": ["events within North America"],\n "trainingProgram": "training programs that help gain confidence and improve technique",\n "goals": "a strong season",\n "experience": "years of strong results on the Canadian Enduro Series, winner of the Pinkbike Academy\'s first season in 2020",\n "topRanking": "N/A",\n "teamLeader": "Damien Oton"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nKirk Mitchell is a general assignment reporter at The Denver Post who focuses on criminal justice stories. He began working at the newspaper in 1998, after writing for newspapers in Mesa, Ariz., and Twin Falls, Idaho, and The Associated Press in Salt Lake City. Mitchell first started writing the Cold Case blog in Fall 2007, in part because Colorado has more than 1,400 unsolved homicides.\n\nMore in Crime & Courts\n\nThe 10th U.S. Circuit Court of Appeals in Denver on Friday upheld a lower court\'s injunction that prohibits Fort Collins from enforcing a public nudity ban that criminalizes the act of women going topless in public.\n\nDenver oil tycoon Jack Grynberg is trying to convince an Arapahoe County district judge that the octogenarian\'s family owes him as much as $400 million for the lifetime of work he\'s done building a billion-dollar empire for them. A jury last week found for the family in its lawsuit to unseat him.\njson schema:\n{\n"title": "JournalistProfile",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"position": {\n"title": "Position",\n"type": "string"\n},\n"company": {\n"title": "Company",\n"type": "string"\n},\n"workHistory": {\n"title": "Work History",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"position": {\n"title": "Position",\n"type": "string"\n},\n"company": {\n"title": "Company",\n"type": "string"\n},\n"startDate": {\n"title": "Start Date",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["position", "company", "startDate"]\n}\n},\n"currentFocus": {\n"title": "Current Focus",\n"type": "string"\n},\n"notableWork": {\n"title": "Notable Work",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"title": {\n"title": "Title",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n}\n},\n"required": ["title", "description"]\n}\n}\n},\n"required": ["name", "position", "company", "workHistory", "currentFocus", "notableWork"]\n}', 'role': 'user'}, {'content': '{\n"name": "Kirk Mitchell",\n"position": "General Assignment Reporter",\n"company": "The Denver Post",\n"workHistory": [\n{\n"position": "Reporter",\n"company": "The Denver Post",\n"startDate": "1998"\n},\n{\n"position": "Reporter",\n"company": "Newspapers in Mesa, Ariz., and Twin Falls, Idaho, and The Associated Press in Salt Lake City",\n"startDate": "<some_date_before_1998>"\n}\n],\n"currentFocus": "Criminal Justice Stories",\n"notableWork": [\n{\n"title": "The Cold Case blog",\n"description": "Covers unsolved homicides in Colorado"\n}\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nOlimpia\'s only loss came at the hand of Peñarol in the middle of the draws. Peñarol got out to a 1-0 lead in the first half with a stoppage-time goal from Juan Ramos.\n\nAfter that, Peñarol came out of half and scored again in the 49th minute with a goal from Federico Carrizo. Olimpia was able to answer one goal from Walter González, but it wasn\'t able to get the game-tying goal.\n\nPeñarol is just one spot above Olimpia in the Group G rankings. The club is 1-0-2 with a total of three points and a negative-one goal differential.\n\nOutside of the team\'s win against Olimpia, Peñarol lost to Colón 2-1 and then to Cerro Porteño 1-0 in its most recent game.\njson schema:\n{"title": "MatchResult", "type": "object", "properties": {"teams": {"title": "Teams", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Team Name", "type": "string"}, "scores": {"title": "Scores", "type": "array", "items": {"type": "number"}}, "goals": {"title": "Goals", "type": "array", "items": {"type": "object", "properties": {"player": {"title": "Player Name", "type": "string"}, "time": {"title": "Goal Time", "type": "string", "format": "time"}}, "required": ["player", "time"]}}}, "required": ["name", "scores", "goals"]}}, "rankings": {"title": "Rankings", "type": "object", "properties": {"position": {"title": "Position", "type": "number"}, "record": {"title": "Record", "type": "string"}, "points": {"title": "Points", "type": "number"}, "goalDifferential": {"title": "Goal Differential", "type": "number"}}, "required": ["position", "record", "points", "goalDifferential"]}}, "required": ["teams", "rankings"]}', 'role': 'user'}, {'content': '{\n "teams": [\n {\n "name": "Peñarol",\n "scores": [2],\n "goals": [\n {\n "player": "Juan Ramos",\n "time": "45+00"\n },\n {\n "player": "Federico Carrizo",\n "time": "49:00"\n }\n ]\n },\n {\n "name": "Olimpia",\n "scores": [1],\n "goals": [\n {\n "player": "Walter González",\n "time": "xx:xx"\n }\n ]\n }\n ],\n "rankings": {\n "position": 2,\n "record": "1-0-2",\n "points": 3,\n "goalDifferential": -1\n }\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nHypatima spathota is a moth in the family Gelechiidae. It was described by Edward Meyrick in 1913. It is found in Japan, Taiwan, India, Sri Lanka, China, Vietnam and Australia, where it has been recorded from Queensland.\n\nThe wingspan is 15–17\xa0mm. The forewings are dark purple fuscous longitudinally streaked with black and with a dark brown streak above the fold from the base to four-fifths of the wing and a rather broad ochreous-whitish streak along the dorsum from the base to the tornus, then attenuated almost to the apex, including short blackish dashes on each side of the tornus, its upper edge with a short ochreous-whitish dash adjacent at two-fifths, and a similar but transverse mark at two-thirds. There is a fine white longitudinal line above the apical portion. The hindwings are fuscous, paler and thinly scaled anteriorly, with the veins and termen suffused with darker.\n\nThe larvae feed on Mangifera indica and Lannea grandis.\n\nReferences\n\nHypatima\nTaxa named by Edward Meyrick\nMoths described in 1913\njson schema:\n{\n"title": "MothDescription",\n"type": "object",\n"properties": {\n"scientificName": {\n"title": "Scientific Name",\n"type": "string"\n},\n"family": {\n"title": "Family",\n"type": "string"\n},\n"describedBy": {\n"title": "Described By",\n"type": "string"\n},\n"yearDescribed": {\n"title": "Year Described",\n"type": "string",\n"format": "date-year"\n},\n"distribution": {\n"title": "Distribution",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"wingspan": {\n"title": "Wingspan",\n"type": "string"\n},\n"forewingColor": {\n"title": "Forewing Color",\n"type": "string"\n},\n"hindwingColor": {\n"title": "Hindwing Color",\n"type": "string"\n},\n"larvaeFood": {\n"title": "Larvae Food",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"references": {\n"title": "References",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n}\n}', 'role': 'user'}, {'content': '{\n"scientificName": "Hypatima spathota",\n"family": "Gelechiidae",\n"describedBy": "Edward Meyrick",\n"yearDescribed": "1913",\n"distribution": ["Japan", "Taiwan", "India", "Sri Lanka", "China", "Vietnam", "Australia (Queensland)"],\n"wingspan": "15-17 mm",\n"forewingColor": "dark purple fuscous longitudinally streaked with black, with a dark brown streak above the fold and a rather broad ochreous-whitish streak along the dorsum",\n"hindwingColor": "fuscous, paler and thinly scaled anteriorly, with the veins and termen suffused with darker",\n"larvaeFood": ["Mangifera indica", "Lannea grandis"],\n"references": ["Hypatima", "Taxa named by Edward Meyrick", "Moths described in 1913"]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "EmployeeOfTheYear",\n"type": "object",\n"properties": {\n"employeeName": {"title": "Employee Name", "type": "string"},\n"hometown": {"title": "Hometown", "type": "string"},\n"degree1Major": {"title": "Degree 1 Major", "type": "string"},\n"degree1School": {"title": "Degree 1 School", "type": "string"},\n"degree2Major": {"title": "Degree 2 Major", "type": "string", "format": "nursing"},\n"degree2School": {"title": "Degree 2 School", "type": "string", "format": "university_of_scranton"},\n"yearsAtCompany": {"title": "Years at Company", "type": "number"},\n"department": {"title": "Department", "type": "string"},\n"position": {"title": "Position", "type": "string"},\n"spouseName": {"title": "Spouse Name", "type": "string"},\n"children": {\n"title": "Children",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"age": {"title": "Age", "type": "number"}\n},\n"required": ["name", "age"]\n}\n}\n},\n"required": ["employeeName", "hometown", "degree1Major", "degree1School", "degree2Major", "degree2School", "yearsAtCompany", "department", "position", "spouseName", "children"]\n}\nparagraph:\nSCRANTON — Beverly Phillips, of Waverly Township, was named Clinical Manager of the Year at Commonwealth Health Moses Taylor Hospital.\n\nThe health care system recently announced its 2017 Employee of the Year award winners. Each hospital names an Employee of the Year, Clinical Manager of the Year and Manager of the Year.\n\nPhillips is nurse manager of the Moses Taylor emergency department. She earned a bachelor\'s degree in political science and economics from American University before obtaining a bachelor\'s degree in nursing from The University of Scranton in 1994. She has worked at Moses Taylor since 1998, starting on 4 West and moving to the emergency department in 200o. She has been managing the emergency department since October 2016.\n\nShe and her husband David have three daughters: Martha, 21; Margrette, 13; and Clara, 10.', 'role': 'user'}, {'content': '{\n"employeeName": "Beverly Phillips",\n"hometown": "Waverly Township",\n"degree1Major": "political science and economics",\n"degree1School": "American University",\n"degree2Major": "nursing",\n"degree2School": "The University of Scranton",\n"yearsAtCompany": 19,\n"department": "emergency department",\n"position": "Clinical Manager",\n"spouseName": "David",\n"children": [\n {\n "name": "Martha",\n "age": 21\n },\n {\n "name": "Margrette",\n "age": 13\n },\n {\n "name": "Clara",\n "age": 10\n }\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "ArtShowcase",\n"type": "object",\n"properties": {\n"eventName": {\n"title": "Event Name",\n"type": "string"\n},\n"eventTheme": {\n"title": "Event Theme",\n"type": "string"\n},\n"eventLocation": {\n"title": "Event Location",\n"type": "string"\n},\n"eventDateRange": {\n"title": "Event Date Range",\n"type": "string",\n"format": "date-time"\n},\n"artists": {\n"title": "Artists",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"artistName": {\n"title": "Artist Name",\n"type": "string"\n},\n"artworkName": {\n"title": "Artwork Name",\n"type": "string"\n},\n"artworkType": {\n"title": "Artwork Type",\n"type": "string"\n},\n"artworkDescription": {\n"title": "Artwork Description",\n"type": "string"\n},\n"technique": {\n"title": "Technique",\n"type": "string"\n}\n},\n"required": ["artistName", "artworkName", "artworkType", "artworkDescription", "technique"]\n}\n},\n"sponsors": {\n"title": "Sponsors",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"sponsorName": {\n"title": "Sponsor Name",\n"type": "string"\n},\n"sponsorRole": {\n"title": "Sponsor Role",\n"type": "string"\n}\n},\n"required": ["sponsorName", "sponsorRole"]\n}\n},\n"benefits": {\n"title": "Benefits",\n"type": "object",\n"properties": {\n"artistGrowth": {\n"title": "Artist Growth",\n"type": "string"\n},\n"communityEngagement": {\n"title": "Community Engagement",\n"type": "string"\n}\n},\n"required": ["artistGrowth", "communityEngagement"]\n}\n}\n}\nparagraph:\nLocal artists showcase their artwork to the world\n\nThe Department of Sport, Arts and Culture (DSAC) has named three local artists whose artworks will be showcased during Biennale Arte 2022.\n\nThe festival, which is often described as the Olympics of the art world, will be held in Venice, Italy, from 23 April to 27 November 2022.\n\nThis year\'s festival theme is \'The Milk of Dreams\'.\n\nJohannesburg-based visual artist Phumulani Ntuli, photographer Roger Ballen and visual artist and photographer Lebohang Kganye will exhibit their respective creations – Godide, Theatre of the Apparitions, and B(l)ack to Fairy Tale – at the South African pavilion, which has been sub-themed \'Into the Light\'.\n\nAccording to the department, the theme reflects the richness of creative expression that is unlocked when the artist combines fantasy and re-imagination into their self-identity.\n\n"For his Theatre of the Apparitions showcase, Ballen developed his own technique, coating glass in special paints, etching off the coating and backlighting the glass. Kganye photographed herself autobiographically as the protagonist in westernised fairy tales," says the department.\n\nNtuli\'s work utilises stop-motion animation.\n\nStop motion is an animated filmmaking technique in which objects are manipulated.\n\nSince 2011, the department has been providing monetary sponsorship to the participating artists. This is part of the department\'s mandate to provide market access to artists, says DSAC Director-General Vusumuzi Mkhize.\n\nReaching greater heights\n\nHe says the festival is an opportunity for him to engage with a diverse international art community that includes collectors, art institutions, galleries and the general public.\n\nNtuli adds that it is also a chance to share both old and current South African art, narratives and history with others.\n\nThe backing of the department has allowed him to expand the scope of his work, he says. "I have been planning to expand as an art entrepreneur and have been unable to do this in my own capacity. With the assistance of the department, such business endeavours are now possible," adds Ntuli.', 'role': 'user'}, {'content': '{\n"eventName": "Biennale Arte 2022",\n"eventTheme": "The Milk of Dreams",\n"eventLocation": "Venice, Italy",\n"eventDateRange": "2022-04-23/2022-11-27",\n"artists": [\n{\n"artistName": "Phumulani Ntuli",\n"artworkName": "Godide",\n"artworkType": "Visual Art",\n"artworkDescription": "Utilises stop-motion animation",\n"technique": "Stop motion"\n},\n{\n"artistName": "Roger Ballen",\n"artworkName": "Theatre of the Apparitions",\n"artworkType": "Photography",\n"artworkDescription": "Developed his own technique, coating glass in special paints, etching off the coating and backlighting the glass",\n"technique": "Mixed Media"\n},\n{\n"artistName": "Lebohang Kganye",\n"artworkName": "B(l)ack to Fairy Tale",\n"artworkType": "Visual Art and Photography",\n"artworkDescription": "Photographed herself autobiographically as the protagonist in westernised fairy tales",\n"technique": "Photography"\n}\n],\n"sponsors": [\n{\n"sponsorName": "Department of Sport, Arts and Culture (DSAC)",\n"sponsorRole": "Monetary Sponsorship"\n}\n],\n"benefits": {\n"artistGrowth": "Expand the scope of work, business endeavours possible",\n"communityEngagement": "Share old and current South African art, narratives and history with others"\n}\n}', 'role': 'assistant'}, {'content': 'paragraph:\nWelcome to Introduction to Front-End Development, the first course in the Meta Front-End Developer program.\nThis course is a good place to start if you want to become a web developer. You will learn about the day-to-day responsibilities of a web developer and get a general understanding of the core and underlying technologies that power the internet. You will learn how front-end developers create websites and applications that work well and are easy to maintain.\nYou\'ll be introduced to the core web development technologies like HTML and CSS and get opportunities to practice using them. You will also be introduced to modern UI frameworks such as Bootstrap and React that make it easy to create interactive user experiences.\nBy the end of the course, you will be able to:\n- Describe the front-end developer role\n- Explain the core and underlying technologies that power the internet\n- Use HTML to create a simple webpage\n- Use CSS to control the appearance of a simple webpage\n- Explain what React is\n- Describe the applications and characteristics of the most popular UI frameworks\nFor the final project in this course, you will create and edit a webpage using HTML and the Bootstrap CSS framework. Using a responsive layout grid, you will construct a responsive webpage containing text and images that looks great on any size screen.\nThis is a beginner course intended for learners eager to learn the fundamentals of web development. To succeed in this course, you do not need prior web development experience, only basic internet navigation skills and an eagerness to get started with coding.\n\nI liked that it\'s not boring and deal with an individual on above average level. A lot of concepts were covered and were clear, with advancing in the certificate it will be more clear.\n\nMJ\n\nAug 2, 2022\n\nFilled StarFilled StarFilled StarFilled StarFilled Star\n\nThis course is perfect for beginners as it guides you to learn HTML, CSS, Bootstrap from the very basics. A must take course to upgrade or add new skills to yourself. Thank you Meta!\n\nFrom the lesson\n\nGet started with web development\n\nIn this module, you will learn about the different types of web developers and the roles and responsibilities of front-end, back-end, and full-stack developers. You will take a first look at the core technologies of HTML, CSS, and Javascript and explore the concepts that underpin how the internet works.\njson schema:\n{\n"title": "CourseInformation",\n"type": "object",\n"properties": {\n"courseName": {\n"title": "Course Name",\n"type": "string"\n},\n"courseDescription": {\n"title": "Course Description",\n"type": "string"\n},\n"learningObjectives": {\n"title": "Learning Objectives",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"technologiesCovered": {\n"title": "Technologies Covered",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"projectRequirements": {\n"title": "Project Requirements",\n"type": "string"\n},\n"targetAudience": {\n"title": "Target Audience",\n"type": "string"\n},\n"prerequisites": {\n"title": "Prerequisites",\n"type": "string"\n},\n"modules": {\n"title": "Modules",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"moduleName": {\n"title": "Module Name",\n"type": "string"\n},\n"moduleDescription": {\n"title": "Module Description",\n"type": "string"\n}\n}\n}\n}\n},\n"required": ["courseName", "courseDescription", "learningObjectives", "technologiesCovered", "projectRequirements", "targetAudience", "prerequisites", "modules"]\n}', 'role': 'user'}, {'content': '{\n"courseName": "Introduction to Front-End Development",\n"courseDescription": "This is a beginner course intended for learners eager to learn the fundamentals of web development. It covers the role of a front-end developer, core and underlying technologies that power the internet, and use of HTML, CSS, Bootstrap, and React.",\n"learningObjectives": [\n"Describe the front-end developer role",\n"Explain the core and underlying technologies that power the internet",\n"Use HTML to create a simple webpage",\n"Use CSS to control the appearance of a simple webpage",\n"Explain what React is",\n"Describe the applications and characteristics of the most popular UI frameworks"\n],\n"technologiesCovered": [\n"HTML",\n"CSS",\n"Bootstrap",\n"React",\n"JavaScript"\n],\n"projectRequirements": "For the final project, create and edit a webpage using HTML and the Bootstrap CSS framework. Construct a responsive webpage containing text and images that looks great on any size screen.",\n"targetAudience": "Beginners with basic internet navigation skills and an eagerness to get started with coding.",\n"prerequisites": "No prior web development experience required.",\n"modules": [\n{\n"moduleName": "Get started with web development",\n"moduleDescription": "Learn about the different types of web developers and the roles and responsibilities of front-end, back-end, and full-stack developers. Explore the core technologies of HTML, CSS, and Javascript."\n}\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\n"He and Sarawak DAP chairman Chong Chieng Jen were the ones who promised to give 20 per cent royalty to Sarawak," he said when responding to Lim\'s statement earlier today.\n\n"He should also not forget the promise of returning 50 per cent of the total tax revenue collected in Sarawak to the state government," he said, asking where the money was after a year on after Pakatan\'s victory.\n\nFadillah said Sarawakians are fed up with Lim continuing to blame the previous Barisan Nasional government, saying this was just to cover up his own weaknesses.\n\n"After one year of Pakatan helming the federal government, the country\'s economy is getting worse and the people continue to be burdened by the high cost of living while at the same time, many have lost their jobs," he said.\n\nHe said Prime Minister Tun Dr Mahathir Mohamad\'s adviser Tun Daim Zainuddin had repeatedly reminded Pakatan ministers to stop blaming the previous federal government and to direct their efforts to fulfill the promises made to the people in GE14.\n\n"Lim should have followed Daim\'s advice or just resign from his post he feels that he cannot carry out the trust which was given by the people," Fadillah said.\n\nEarlier today, Lim had said legacy issues from the previous government were preventing the implementation of promises under the Pakatan Harapan manifesto, especially the oil royalty for Sabah and Sarawak.\n\nHe had said the previous government wasted an enormous amount of funds, putting the country in jeopardy.\n\n"You are looking at funds of RM150 billion, which is not a small sum. This has definitely posed a challenge for us in implementing our promises," he had said.\n\nAccording to Lim, the government had, however, taken concrete steps towards fulfilling its promises to the two states, citing as an example the termination of the project delivery partner (PDP) agreement for the Pan Borneo Highway project.\n\nHe had said the reason behind this was cost rationalisation, as well as to ensure better pricing, service and delivery.\njson schema:\n{\n"title": "PoliticalSpeech",\n"type": "object",\n"properties": {\n"speakerName": {\n"title": "Speaker Name",\n"type": "string"\n},\n"promise": {\n"title": "Promise",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"promiseDetails": {\n"title": "Promise Details",\n"type": "string"\n},\n"promiseRecipient": {\n"title": "Promise Recipient",\n"type": "string"\n},\n"promiseCompletionDate": {\n"title": "Promise Completion Date",\n"type": "string",\n"format": "date"\n}\n},\n"required": ["promiseDetails", "promiseRecipient"]\n}\n},\n"accusation": {\n"title": "Accusation",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"accusationDetails": {\n"title": "Accusation Details",\n"type": "string"\n},\n"accusedParty": {\n"title": "Accused Party",\n"type": "string"\n}\n},\n"required": ["accusationDetails", "accusedParty"]\n}\n},\n"blame": {\n"title": "Blame",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"blameDetails": {\n"title": "Blame Details",\n"type": "string"\n},\n"blamedParty": {\n"title": "Blamed Party",\n"type": "string"\n}\n},\n"required": ["blameDetails", "blamedParty"]\n}\n},\n"advice": {\n"title": "Advice",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"adviceDetails": {\n"title": "Advice Details",\n"type": "string"\n},\n"adviceRecipient": {\n"title": "Advice Recipient",\n"type": "string"\n}\n},\n"required": ["adviceDetails", "adviceRecipient"]\n}\n}\n},\n"required": ["speakerName"]\n}', 'role': 'user'}, {'content': '{\n"speakerName": "Fadillah",\n"promise": [\n{\n"promiseDetails": "give 20 per cent royalty to Sarawak",\n"promiseRecipient": "Sarawak",\n"promiseCompletionDate": "N/A"\n},\n{\n"promiseDetails": "returning 50 per cent of the total tax revenue collected in Sarawak to the state government",\n"promiseRecipient": "Sarawak government",\n"promiseCompletionDate": "N/A"\n}\n],\n"accusation": [\n{\n"accusationDetails": "continuing to blame the previous Barisan Nasional government",\n"accusedParty": "Lim"\n},\n{\n"accusationDetails": "not fulfilling the promises made to the people in GE14",\n"accusedParty": "Pakatan"\n}\n],\n"blame": [\n{\n"blameDetails": "legacy issues from the previous government preventing the implementation of promises under the Pakatan Harapan manifesto",\n"blamedParty": "previous government"\n},\n{\n"blameDetails": "wasting an enormous amount of funds, putting the country in jeopardy",\n"blamedParty": "previous government"\n}\n],\n"advice": [\n{\n"adviceDetails": "stop blaming the previous federal government and to direct their efforts to fulfill the promises made to the people in GE14",\n"adviceRecipient": "Pakatan ministers"\n},\n{\n"adviceDetails": "follow Daim\'s advice or just resign from his post he feels that he cannot carry out the trust which was given by the people",\n"adviceRecipient": "Lim"\n}\n]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "UniversityAnnouncement",\n"type": "object",\n"properties": {\n"announcementID": {"title": "Announcement ID", "type": "string"},\n"universityName": {"title": "University Name", "type": "string"},\n"semester": {"title": "Semester", "type": "string"},\n"instructionType": {"title": "Instruction Type", "type": "string"},\n"affectedGroups": {\n"title": "Affected Groups",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"groupName": {"title": "Group Name", "type": "string"},\n"groupMembers": {"title": "Group Members", "type": "string"}\n},\n"required": ["groupName", "groupMembers"]\n}\n},\n"recommendations": {\n"title": "Recommendations",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"group": {"title": "Group", "type": "string"},\n"instructions": {"title": "Instructions", "type": "string"}\n},\n"required": ["group", "instructions"]\n}\n},\n"essentialJobs": {\n"title": "Essential Jobs",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"jobType": {"title": "Job Type", "type": "string"},\n"jobDescription": {"title": "Job Description", "type": "string"}\n},\n"required": ["jobType", "jobDescription"]\n}\n}\n},\n"required": ["announcementID", "universityName", "semester", "instructionType", "affectedGroups", "recommendations", "essentialJobs"]\n}\nparagraph:\nUW suspends all spring semester face-to-face course instruction\n\nStudents asked not to return to Madison if possible after break\n\nTuesday, the University of Wisconsin suspended all face-to-face instruction for the rest of the spring semester due to COVID-19 concerns.\n\nChancellor Rebecca Blank sent students, faculty and staff an email at 1:42 p.m. announcing alternative course delivery would continue until the end of the spring semester, including finals. Previously, UW suspended in-person instruction through April 10.\n\nBlank\'s email said Gov. Tony Evers\' moratorium on gatherings of more than 50 people and the White House\'s recommendation not to gather in groups over 10 affected their decision, as well as other concerns about the spread of the virus.\n\nWhile the email said students in residence halls can stay if they cannot return home or take online classes from home, Blank recommended everyone continue their semester from their permanent residence.\n\n"We advise those who have opted to travel away from Madison for Spring Break to carefully consider whether they need to return to Madison or can continue the semester from their permanent residence," Blank said.\n\nUW asked all employees able to telecommute to do so, and they intend to only keep those with essential jobs who cannot telecommute on campus, Blank\'s email said.\n\nAccording to the email, these essential jobs include those in public safety, course delivery and student support, admissions, financial aid and enrollment for new and continuing students, some research and associated animal care, University Housing, communications as well as core administrative and facility services.\n\n"I share the disappointment of students and employees who were anticipating Terrace chairs, sunny days on Bascom and all of the events that make spring special at UW-Madison," Blank said. "This is not the semester that any of us wanted."', 'role': 'user'}, {'content': '{\n"announcementID": "UWCOVID19_03202020",\n"universityName": "University of Wisconsin-Madison",\n"semester": "Spring 2020",\n"instructionType": "Online",\n"affectedGroups": [\n{\n"groupName": "Students",\n"groupMembers": "All enrolled students"\n},\n{\n"groupName": "Faculty and Staff",\n"groupMembers": "All faculty and staff members"\n}\n],\n"recommendations": [\n{\n"group": "Students",\n"instructions": "Continue their semester from their permanent residence if possible"\n},\n{\n"group": "Employees",\n"instructions": "Telecommute if able, only essential on-campus personnel should report to work"\n}\n],\n"essentialJobs": [\n{\n"jobType": "Public Safety",\n"jobDescription": "Ensure the safety and security of the campus community"\n},\n{\n"jobType": "Course Delivery and Student Support",\n"jobDescription": "Facilitate alternative course delivery and provide student support"\n},\n{\n"jobType": "Admissions, Financial Aid and Enrollment",\n"jobDescription": "Process applications, financial aid, and enrollment for new and continuing students"\n},\n{\n"jobType": "Research and Animal Care",\n"jobDescription": "Continue critical research and provide associated animal care"\n},\n{\n"jobType": "University Housing",\n"jobDescription": "Maintain housing services for students who cannot return home or take online classes from home"\n},\n{\n"jobType": "Communications",\n"jobDescription": "Coordinate and share information related to the university\'s response"\n},\n{\n"jobType": "Core Administrative and Facility Services",\n"jobDescription": "Maintain essential administrative and facility services"\n}\n]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nNatmin Pure Escrow Reaches Market Capitalization of $25,957.00 (NAT)\n\nNatmin Pure Escrow (CURRENCY:NAT) traded 56% lower against the dollar during the 1 day period ending at 8:00 AM E.T. on May 22nd. Natmin Pure Escrow has a total market capitalization of $25,957.00 and $56,134.00 worth of Natmin Pure Escrow was traded on exchanges in the last 24 hours. During the last seven days, Natmin Pure Escrow has traded 77.4% lower against the dollar. One Natmin Pure Escrow token can now be bought for approximately $0.0003 or 0.00000003 BTC on major cryptocurrency exchanges including Coinlim, BitMart and Fatbtc.\n\nHere is how similar cryptocurrencies have performed during the last 24 hours:\n\nGet Natmin Pure Escrow alerts:\n\nQubitica (QBIT) traded up 1% against the dollar and now trades at $42.68 or 0.00545761 BTC.\n\nInsight Chain (INB) traded down 16.7% against the dollar and now trades at $0.31 or 0.00003981 BTC.\n\nQuant (QNT) traded 2.4% lower against the dollar and now trades at $1.94 or 0.00024838 BTC.\n\nEvenCoin (EVN) traded up 6% against the dollar and now trades at $0.61 or 0.00007762 BTC.\n\nZPER (ZPR) traded 1.1% lower against the dollar and now trades at $0.0028 or 0.00000036 BTC.\n\nTraceability Chain (TAC) traded 8.5% higher against the dollar and now trades at $0.0059 or 0.00000076 BTC.\n\nHYPNOXYS (HYPX) traded 0.7% lower against the dollar and now trades at $0.0001 or 0.00000002 BTC.\n\nFNKOS (FNKOS) traded 0.3% higher against the dollar and now trades at $0.0151 or 0.00000193 BTC.\n\nZMINE (ZMN) traded up 0.8% against the dollar and now trades at $0.0156 or 0.00000200 BTC.\n\nVegaWallet Token (VGW) traded up 11.4% against the dollar and now trades at $0.18 or 0.00002356 BTC.\n\nNatmin Pure Escrow Token Profile\n\nNAT is a token. Natmin Pure Escrow\'s total supply is 340,000,000 tokens and its circulating supply is 96,762,388 tokens. Natmin Pure Escrow\'s official message board is medium.com/natmin-pure-escrow. The Reddit community for Natmin Pure Escrow is /r/natminpureescrow and the currency\'s Github account can be viewed here. Natmin Pure Escrow\'s official Twitter account is @NatminPE. Natmin Pure Escrow\'s official website is www.natmin.io.\n\nNatmin Pure Escrow Token Trading\n\nNatmin Pure Escrow can be traded on the following cryptocurrency exchanges: Fatbtc, Coinlim and BitMart. It is usually not presently possible to buy alternative cryptocurrencies such as Natmin Pure Escrow directly using U.S. dollars. Investors seeking to acquire Natmin Pure Escrow should first buy Bitcoin or Ethereum using an exchange that deals in U.S. dollars such as Changelly, Gemini or GDAX. Investors can then use their newly-acquired Bitcoin or Ethereum to buy Natmin Pure Escrow using one of the aforementioned exchanges.\njson schema:\n{"title": "CryptocurrencyReport", "type": "object", "properties": {"currencyName": {"title": "Currency Name", "type": "string"}, "tradePercentage": {"title": "Trade Percentage", "type": "number"}, "currentPriceUSD": {"title": "Current Price (USD)", "type": "number"}, "currentPriceBTC": {"title": "Current Price (BTC)", "type": "number"}, "marketCapitalization": {"title": "Market Capitalization", "type": "number"}, "volume24h": {"title": "Volume (24h)", "type": "number"}, "priceChange7d": {"title": "Price Change (7d)", "type": "number"}, "tokenInfo": {"title": "Token Info", "type": "object", "properties": {"totalSupply": {"title": "Total Supply", "type": "number"}, "circulatingSupply": {"title": "Circulating Supply", "type": "number"}, "officialMessageBoard": {"title": "Official Message Board", "type": "string"}, "redditCommunity": {"title": "Reddit Community", "type": "string"}, "githubAccount": {"title": "Github Account", "type": "string"}, "officialTwitterAccount": {"title": "Official Twitter Account", "type": "string"}, "officialWebsite": {"title": "Official Website", "type": "string"}}, "required": ["totalSupply", "circulatingSupply", "officialMessageBoard", "redditCommunity", "githubAccount", "officialTwitterAccount", "officialWebsite"]}, "tradingExchanges": {"title": "Trading Exchanges", "type": "array", "items": {"type": "string"}}}, "required": ["currencyName", "tradePercentage", "currentPriceUSD", "currentPriceBTC", "marketCapitalization", "volume24h", "priceChange7d", "tokenInfo", "tradingExchanges"]}', 'role': 'user'}, {'content': '{\n "currencyName": "Natmin Pure Escrow",\n "tradePercentage": -56,\n "currentPriceUSD": 0.0003,\n "currentPriceBTC": 0.00000003,\n "marketCapitalization": 25957,\n "volume24h": 56134,\n "priceChange7d": -77.4,\n "tokenInfo": {\n "totalSupply": 340000000,\n "circulatingSupply": 96762388,\n "officialMessageBoard": "medium.com/natmin-pure-escrow",\n "redditCommunity": "/r/natminpureescrow",\n "githubAccount": "",\n "officialTwitterAccount": "@NatminPE",\n "officialWebsite": "www.natmin.io"\n },\n "tradingExchanges": [\n "Fatbtc",\n "Coinlim",\n "BitMart"\n ]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "GuestLectureInformation",\n"type": "object",\n"properties": {\n"guestName": {"title": "Guest Name", "type": "string"},\n"eventName": {"title": "Event Name", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"location": {"title": "Location", "type": "string"},\n"topic": {"title": "Topic", "type": "string"},\n"participationType": {"title": "Participation Type", "type": "string"},\n"previousExperience": {\n"title": "Previous Experience",\n"type": "object",\n"properties": {\n"guestLectures": {"title": "Guest Lectures", "type": "string"},\n"seminars": {"title": "Seminars", "type": "string"},\n"associationLeadership": {"title": "Association Leadership", "type": "string"},\n"mciInspection": {"title": "MCI Inspection", "type": "string"}\n},\n"required": ["guestLectures", "seminars", "associationLeadership", "mciInspection"]\n}\n},\n"required": ["guestName", "eventName", "date", "location", "topic", "participationType", "previousExperience"]\n}\nparagraph:\nCity Dermatologist to deliver guest lecture at Pune\n\nJanuary 21, 2020\n\nDr. H. Hanumanthappa, Senior Consultant Dermatologist and former Director and Dean; Head, Department of Dermatology, K.R. Hospital, Mysuru, has been invited to deliver a guest lecture on "Diseases Modifying Anti-Rheumatic Drugs in the Treatment of Connective Tissue Disorders" and to participate in a Panel Discussion on "Skin Manifestations of Rheumatic Diseases" during the All India National Conference of Dermatologists (Dermacon- 2020) at Pune from Jan. 30 to Feb. 2. He has delivered guest lectures in National and International Conferences earlier. He has also participated in many Seminars and served as National President of Paediatric Dermatologists\' Association and as MCI Inspector of India.\n\nRecent News\n\nABOUT\n\nMysuru\'s favorite and largest circulated English evening daily has kept the citizens of Mysuru informed and entertained since 1978. Over the past 41 years, Star of Mysore has been the newspaper that Mysureans reach for every evening to know about the happenings in Mysuru city. The newspaper has feature rich articles and dedicated pages targeted at readers across the demographic spectrum of Mysuru city. With a readership of over 2,50,000 Star of Mysore has been the best connection between it\'s readers and their leaders; between advertisers and customers; between Mysuru and Mysureans.', 'role': 'user'}, {'content': '{\n"guestName": "Dr. H. Hanumanthappa",\n"eventName": "All India National Conference of Dermatologists (Dermacon- 2020)",\n"date": "2020-01-30",\n"location": "Pune",\n"topic": "Diseases Modifying Anti-Rheumatic Drugs in the Treatment of Connective Tissue Disorders",\n"participationType": "Guest Lecture and Panel Discussion",\n"previousExperience": {\n"guestLectures": "Yes, in National and International Conferences",\n"seminars": "Not specified",\n"associationLeadership": "Yes, as National President of Paediatric Dermatologists\' Association",\n"mciInspection": "Yes, as MCI Inspector of India"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{"title": "LakeInformation", "type": "object", "properties": {"lakeName": {"title": "Lake Name", "type": "string"}, "location": {"title": "Location", "type": "object", "properties": {"country": {"title": "Country", "type": "string"}, "province": {"title": "Province", "type": "string"}, "nearbyCommunity": {"title": "Nearby Community", "type": "string"}}, "required": ["country", "province", "nearbyCommunity"]}, "features": {"title": "Features", "type": "array", "items": {"type": "object", "properties": {"name": {"title": "Feature Name", "type": "string"}, "description": {"title": "Description", "type": "string"}}, "required": ["name", "description"]}}, "nameOrigin": {"title": "Name Origin", "type": "object", "properties": {"personNamed": {"title": "Person Named", "type": "string"}, "exploration": {"title": "Exploration", "type": "string"}}, "required": ["personNamed", "exploration"]}}, "required": ["lakeName", "location", "features", "nameOrigin"]}\nparagraph:\nDease Lake is a lake in the Stikine Plateau of the Northern Interior of British Columbia, Canada, located at the head of the Dease River, which flows north then northeast from the lake to join the Liard River. The community of Dease Lake, British Columbia, formerly Dease Lake Post, is located at the south end of the lake, straddling a low pass which leads into the basin from the Tanzilla River, a tributary of the Stikine. The area around the lake was the focus of the Cassiar Gold Rush and numerous ghost towns and former settlement sites are scattered around its shores, including Laketon and Centre City. Dease Lake is the burial site and has a monument to English travelogue writer Warburton Pike.\n\nName origin\nThe lake was named in 1834 by John McLeod, a Chief Trader for the Hudson\'s Bay Company at the former Dease Lake Post, for Peter Warren Dease, superintendent of the New Caledonia Fur District from 1830 to 1834, who had served with the Franklin Expedition of 1825-27 and later was senior officer of the Dease & Simpson Arctic Expedition in 1837–39.\n\nReferences\n\nCassiar Country\nLakes of British Columbia\nStikine Plateau', 'role': 'user'}, {'content': '{\n "lakeName": "Dease Lake",\n "location": {\n "country": "Canada",\n "province": "British Columbia",\n "nearbyCommunity": "Dease Lake, British Columbia"\n },\n "features": [\n {\n "name": "Cassiar Gold Rush",\n "description": "A historical gold rush event with numerous ghost towns and former settlement sites scattered around the lake\'s shores"\n },\n {\n "name": "Warburton Pike\'s burial site",\n "description": "The final resting place of English travelogue writer Warburton Pike, with a monument in his honor"\n }\n ],\n "nameOrigin": {\n "personNamed": "Peter Warren Dease",\n "exploration": "Superintendent of the New Caledonia Fur District from 1830 to 1834, who had served with the Franklin Expedition of 1825-27 and later was senior officer of the Dease & Simpson Arctic Expedition in 1837–39"\n }\n}', 'role': 'assistant'}, {'content': 'paragraph:\n1. Before fighting Jackie I had no previous martial arts/boxing training. It was incredible to get to train up for that. And to survive the master! Apparently he said he finally found his match in me…(which I find hard to believe but take as a massive compliment. He\'s a generous man)\n\n2. My preferred motor has recently changed from an Audi TT to a Jeep Wrangler. I love the idea of throwing stuff into it and just taking off into the mountains or the beech with some friends…\n\n3. I\'m an avid traveler and explorer. Recently developed a huge crush and obsession with New Zealand when I went there. I would love to shoot a movie in that incredible landscape…Peter Jackson? James Cameron?…I\'m available…\n\n4. If I wasn\'t an actor I would wanna be the frontman of a band. Singing is most probably my number one love.\n\n5. I have a thing for tuna fish. Sushi. Sashimi. You name it. If it\'s from the ocean. It\'s got my name on it.\n\n7. When I was a kid I would fight with my neighbor over how much we knew about Harry Potter. I\'m a Hufflepuff (but inside I actually think I\'m a Slytherin).\n\n8. I used to be quite afraid of great white sharks. Until I went face to face with these majestic creatures in South Africa. Movies like Jaws really have morphed our perception of these animals. They\'re quite serene really. Did you know that humans pull WAY more sharks out of the ocean and de-fin them than the number of humans attacked by sharks per year. Ponder that.\n\n9. My first acting job was opposite Kim Cattrall in a play put on in her hometown of Liverpool.\n\n10. I love to dance… I like to think I\'m good at it. But, aside from clubbing, I haven\'t had a chance to showcase it. Yet.\njson schema:\n{\n"title": "PersonalInfo",\n"type": "object",\n"properties": {\n"martialArtsTraining": {\n"title": "Martial Arts Training",\n"type": "string"\n},\n"preferredMotor": {\n"title": "Preferred Motor",\n"type": "string"\n},\n"favoriteTravelDestination": {\n"title": "Favorite Travel Destination",\n"type": "string"\n},\n"dreamJob": {\n"title": "Dream Job",\n"type": "string"\n},\n"favoriteFood": {\n"title": "Favorite Food",\n"type": "string"\n},\n"hogwartsHouse": {\n"title": "Hogwarts House",\n"type": "string"\n},\n"fear": {\n"title": "Fear",\n"type": "string"\n},\n"firstActingJob": {\n"title": "First Acting Job",\n"type": "string"\n},\n"hobbies": {\n"title": "Hobbies",\n"type": "string"\n}\n},\n"required": ["martialArtsTraining", "preferredMotor", "favoriteTravelDestination", "dreamJob", "favoriteFood", "hogwartsHouse", "fear", "firstActingJob", "hobbies"]\n}', 'role': 'user'}, {'content': '{\n"martialArtsTraining": "No previous martial arts/boxing training",\n"preferredMotor": "Jeep Wrangler",\n"favoriteTravelDestination": "New Zealand",\n"dreamJob": "Frontman of a band",\n"favoriteFood": "Tuna fish (Sushi, Sashimi)",\n"hogwartsHouse": "Hufflepuff (but inside think I\'m a Slytherin)",\n"fear": "Not afraid of great white sharks anymore",\n"firstActingJob": "Opposite Kim Cattrall in a play put on in Liverpool",\n"hobbies": "Dancing"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nThere has been a lot of conjecture over the last couple of weeks over Ranbir Kapoor\'s relationship with Sanjay Dutt. While the former is working on a biopic based on the latter\'s life, there have been talks about a rift between the two actors. Not too long ago, director Rajkumar Hirani came out and rubbished the rumours, but speculations are rife that all\'s not well between him and Dutt too.\n\nReportedly, Dutt wanted to be a part of the film as one of the producers but Hirani refused as he wanted full creative freedom while making this film. Having Sanju on board would mean that he will have to take into consideration his opinions and wouldn\'t be able to tell his story as freely as he\'d like to. Dutt was completely taken aback by Hirani\'s refusal and confided in Vinod Chopra about his displeasure, who later made sure Dutt became a part of the film.\n\nWhile the two are on-board now, we\'ll have to see if everything\'s good or if there\'s a rift in this long-lasting friendship. Either way, sounds like this is going to be one EPIC film!\njson schema:\n{\n"title": "MovieProduction",\n"type": "object",\n"properties": {\n"movieName": {"title": "Movie Name", "type": "string"},\n"actors": {\n"title": "Actors",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"actorName": {"title": "Actor Name", "type": "string"},\n"role": {"title": "Role", "type": "string"},\n"relationship": {\n"title": "Relationship with Director",\n"type": "string",\n"enum": ["good", "rift"]\n}\n},\n"required": ["actorName", "role", "relationship"]\n}\n},\n"director": {\n"title": "Director",\n"type": "object",\n"properties": {\n"directorName": {"title": "Director Name", "type": "string"},\n"creativeFreedom": {\n"title": "Creative Freedom",\n"type": "boolean"\n}\n},\n"required": ["directorName", "creativeFreedom"]\n},\n"producers": {\n"title": "Producers",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"producerName": {"title": "Producer Name", "type": "string"},\n"roleInProduction": {\n"title": "Role in Production",\n"type": "string",\n"enum": ["initialRefusal", "laterInvolvement"]\n}\n},\n"required": ["producerName", "roleInProduction"]\n}\n},\n"filmStatus": {\n"title": "Film Status",\n"type": "string",\n"enum": ["inProduction", "toBeSeen"]\n}\n},\n"required": ["movieName", "actors", "director", "producers", "filmStatus"]\n}', 'role': 'user'}, {'content': '{\n"title": "MovieProduction",\n"movieName": "Untitled Ranbir Kapoor-Sanjay Dutt Biopic",\n"actors": [\n{\n"actorName": "Ranbir Kapoor",\n"role": "Playing the role of Sanjay Dutt",\n"relationship": "good"\n},\n{\n"actorName": "Sanjay Dutt",\n"role": "Himself",\n"relationship": "rift"\n}\n],\n"director": {\n"directorName": "Rajkumar Hirani",\n"creativeFreedom": true\n},\n"producers": [\n{\n"producerName": "Sanjay Dutt",\n"roleInProduction": "laterInvolvement"\n},\n{\n"producerName": "Vinod Chopra",\n"roleInProduction": "laterInvolvement"\n}\n],\n"filmStatus": "inProduction"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nShare this with\n\nThe 48-year-old TV presenter has reportedly been handed a £1 million contract by Virgin, having been the subject of a bidding war that also featured the likes of Warner, Sony and Universal.\n\nA source told The Sun on Sunday: \'Amanda only signed the deal a matter of weeks ago but she is very excited and can\'t wait to get going.\'\n\nInterest in Amanda\'s singing talents peaked after she posted online a version of Tightrope from the hit film The Greatest Showman.\n\nShe performed the song with her two daughters to celebrate her tenth wedding anniversary with husband Chris Hughes and fans were blown away by her secret talent.\n\nAmanda posted the clip to Twitter last December where it currently has over 224K views.\n\nA fantastic Daddy and husband. We made this little video for #TheGreatestshowman in our life to celebrate #10 years married and Chrispy\'s birthday today. We\'re sharing this with you too and wish you all a happy & joyous Christmas pic.twitter.com/Na3XCZdheB\n\nGot a showbiz story?\n\nIf you\'ve got a story, video or pictures get in touch with the Metro.co.uk Entertainment team by emailing us celebtips@metro.co.uk, calling 020 3615 2145 or by visiting our Submit Stuff page - we\'d love to hear from you.\njson schema:\n{\n"title": "CelebrityContract",\n"type": "object",\n"properties": {\n"celebrityName": {"title": "Celebrity Name", "type": "string"},\n"age": {"title": "Age", "type": "number"},\n"occupation": {"title": "Occupation", "type": "string"},\n"contractValue": {"title": "Contract Value", "type": "number"},\n"interestedParties": {\n"title": "Interested Parties",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"contractOffered": {"title": "Contract Offered", "type": "boolean"}\n}\n}\n},\n"performance": {\n"title": "Performance",\n"type": "object",\n"properties": {\n"song": {"title": "Song", "type": "string"},\n"videoViews": {"title": "Video Views", "type": "number"},\n"platform": {"title": "Platform", "type": "string"},\n"datePosted": {"title": "Date Posted", "type": "string", "format": "date"}\n}\n},\n"familyMembers": {\n"title": "Family Members",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"relation": {"title": "Relation", "type": "string"}\n}\n}\n}\n},\n"required": ["celebrityName", "age", "occupation", "contractValue", "interestedParties", "performance", "familyMembers"]\n}', 'role': 'user'}, {'content': '{\n"celebrityName": "Amanda Holden",\n"age": 48,\n"occupation": "TV presenter",\n"contractValue": 1000000,\n"interestedParties": [\n{\n"name": "Virgin",\n"contractOffered": true\n}\n],\n"performance": {\n"song": "Tightrope from The Greatest Showman",\n"videoViews": 224000,\n"platform": "Twitter",\n"datePosted": "2021-12"\n},\n"familyMembers": [\n{\n"name": "Chris Hughes",\n"relation": "husband"\n},\n{\n"name": "Amanda\'s daughters",\n"relation": "daughters"\n}\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\n"The idea of calling our children, not that these names are wrong or bad, Daniel or Thomas or Samuel doesn\'t sit right with us. It isn\'t us.\n\n"My in-laws are furious. One: because they\'re not traditional names, two: do not bear any affiliation to family members; my fiancé is named after his grandfather, his sister is named after his aunt etc, and three: because they\'re mythical creatures from other cultures.\n\n"That is apparently what they dislike the most. But we really love the names. We already have a girls name picked out too, Valkyrie Lee to pay homage to my Danish grandparents that cared for me when I was a teen.\n\n"We actually came up with this name before I even got pregnant. We like that all the names match in that they are powerful beings that can fly. We want to make our children feel powerful too."\n\nAfter people advised her to change the names, the woman admitted she wasn\'t worried about her kids being bullied.\n\nMORE ON\n\nWe use your sign-up to provide content in ways you\'ve consented to and to improve our understanding of you. This may include adverts from us and 3rd parties based on our understanding. You can unsubscribe at any time. More info\n\nWe use your sign-up to provide content in ways you\'ve consented to and to improve our understanding of you. This may include adverts from us and 3rd parties based on our understanding. You can unsubscribe at any time. More Info.\njson schema:\n{\n"title": "NamingPreferences",\n"type": "object",\n"properties": {\n"preferenceName": {"title": "Preference Name", "type": "string"},\n"names": {\n"title": "Names",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"reason": {"title": "Reason", "type": "string"}\n}\n}\n},\n"objections": {\n"title": "Objections",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"response": {\n"title": "Response",\n"type": "string"\n}\n},\n"required": ["preferenceName", "names", "objections", "response"]\n}', 'role': 'user'}, {'content': '{\n"preferenceName": "Names for the children",\n"names": [\n{\n"name": "Not Daniel or Thomas or Samuel",\n"reason": "They don\'t sit right with us, it isn\'t us and they are powerful beings that can fly"\n},\n{\n"name": "Valkyrie Lee",\n"reason": "To pay homage to her Danish grandparents"\n}\n],\n"objections": [\n"Not traditional names",\n"Do not bear any affiliation to family members",\n"Names are mythical creatures from other cultures",\n"Apparently what they dislike the most"\n],\n"response": "After people advised her to change the names, the woman admitted she wasn\'t worried about her kids being bullied."\n}', 'role': 'assistant'}, {'content': 'paragraph:\nInter Milan are all set to bring Lukaku back to the club this summer on a loan deal.\n\nThey are currently deep in negotiations with Chelsea over Lukaku\'s signature and a deal is on the verge of being fully agreed, with the Belgium player expected to take his medicals in Milan at some time next week.\n\nLukaku netted 64 goals in 95 appearances for the Serie A giants in his first two years in Italy.\n\nSpeaking on the sidelines of the Sportsman of the Year award ceremony, Immobile said, "I don\'t think about records. I\'ll certainly realise the extent of what I\'ve done in the world of football once I stop playing. It is clear that we must not rest or give up.\n\n"With Lukaku back in Italy, the level of our league is raised, I\'ll have to continually do my best. Now I only have the next objectives in my head."\njson schema:\n{"title": "TransferNews", "type": "object", "properties": {"team": {"title": "Team", "type": "string"}, "player": {"title": "Player", "type": "string"}, "dealType": {"title": "Deal Type", "type": "string"}, "negotiationStatus": {"title": "Negotiation Status", "type": "string"}, "expectedMedicalDate": {"title": "Expected Medical Date", "type": "string", "format": "date"}, "previousAppearances": {"title": "Previous Appearances", "type": "object", "properties": {"clubName": {"title": "Club Name", "type": "string"}, "goalsScored": {"title": "Goals Scored", "type": "number"}, "appearances": {"title": "Appearances", "type": "number"}}, "required": ["clubName", "goalsScored", "appearances"]}, "quotes": {"title": "Quotes", "type": "array", "items": {"type": "object", "properties": {"speaker": {"title": "Speaker", "type": "string"}, "content": {"title": "Content", "type": "string"}}, "required": ["speaker", "content"]}}}, "required": ["team", "player", "dealType", "negotiationStatus", "previousAppearances", "quotes"]}', 'role': 'user'}, {'content': '{\n "team": "Inter Milan",\n "player": "Lukaku",\n "dealType": "loan",\n "negotiationStatus": "deep in negotiations",\n "expectedMedicalDate": "next week",\n "previousAppearances": {\n "clubName": "Serie A giants",\n "goalsScored": 64,\n "appearances": 95\n },\n "quotes": [\n {\n "speaker": "Immobile",\n "content": "I don\'t think about records. I\'ll certainly realize the extent of what I\'ve done in the world of football once I stop playing. It is clear that we must not rest or give up. With Lukaku back in Italy, the level of our league is raised, I\'ll have to continually do my best. Now I only have the next objectives in my head."\n }\n ]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "FentanylSeizure",\n"type": "object",\n"properties": {\n"timePeriod": {\n"title": "Time Period",\n"type": "object",\n"properties": {\n"startYear": {\n"title": "Start Year",\n"type": "number"\n},\n"endYear": {\n"title": "End Year",\n"type": "number"\n}\n},\n"required": ["startYear", "endYear"]\n},\n"seizureQuantity": {\n"title": "Seizure Quantity",\n"type": "number"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"lethalDoseEquivalence": {\n"title": "Lethal Dose Equivalence",\n"type": "object",\n"properties": {\n"lethalDose": {\n"title": "Lethal Dose",\n"type": "number"\n},\n"peopleAffected": {\n"title": "People Affected",\n"type": "number"\n}\n},\n"required": ["lethalDose", "peopleAffected"]\n},\n"profitability": {\n"title": "Profitability",\n"type": "string"\n},\n"smugglingTactics": {\n"title": "Smuggling Tactics",\n"type": "string"\n}\n},\n"required": ["timePeriod", "seizureQuantity", "location", "lethalDoseEquivalence", "profitability", "smugglingTactics"]\n}\nparagraph:\nDrug Cartels Are Smuggling Alarming Amounts of Fentanyl into the U.S.\n\nIn the past three years, fentanyl seizures have risen an astounding 4,000%, Border Patrol agents tell NBC News.\n\nBut most of the fentanyl isn\'t turning up at ports of entry, where seizures are typically made. It\'s found in the desert, where smugglers are taking advantage of limited federal resources.\n\nBetween 2018 and 2020, 12 pounds of fentanyl were found outside of ports of entry. By contrast, agents seized 41 pounds outside of ports of entry during 2021 fiscal year alone.\n\nTo put that into perspective, a lethal dose of fentanyl is two milligrams. A single kilogram can kill up to 500,000 people.\n\nBecause of its potency, a small amount of fentanyl can go a long way, making it easier to smuggle into the U.S., and it\'s very profitable.\n\n"For the first time, we\'re starting to see these tactics where fentanyl is being smuggled between ports of entry," Chief Border Patrol Agent Gloria Chavez told NBC News. "Cartels are very creative. They find ways to intimidate migrants and find ways to illegally have them transport that narcotic into the United States."', 'role': 'user'}, {'content': '{\n"timePeriod": {\n"startYear": 2018,\n"endYear": 2021\n},\n"seizureQuantity": 53,\n"location": "desert (between ports of entry)",\n"lethalDoseEquivalence": {\n"lethalDose": 2,\n"peopleAffected": 500000\n},\n"profitability": "very profitable",\n"smugglingTactics": "smugglers are taking advantage of limited federal resources and intimidating migrants to illegally transport fentanyl into the United States"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nI\'ve seen two different Minutemen launches from Vandenburg AFB, from Las Vegas. Both of them took place right at sunset, on absolutely clear days. They were both backlit by the sun just below the horizon. I could see them actually appear over the horizon, rise out of the atmosphere, and drop their first stages. The next day, the local paper had front-page photos of the smoke trails. Apparently, if it\'s clear enough, you can see them from a long distance away.\njson schema:\n{\n"title": "MinutemanLaunch",\n"type": "object",\n"properties": {\n"viewingLocation": {"title": "Viewing Location", "type": "string"},\n"numberOfLaunches": {"title": "Number of Launches", "type": "number"},\n"launchTime": {"title": "Launch Time", "type": "string", "format": "date-time"},\n"weatherCondition": {"title": "Weather Condition", "type": "string"},\n"abilityToSeeStages": {"title": "Ability to See Stages", "type": "string"},\n"evidenceOfLaunch": {"title": "Evidence of Launch", "type": "string"},\n"distanceFromLaunchSite": {"title": "Distance from Launch Site", "type": "string"}\n},\n"required": ["viewingLocation", "numberOfLaunches", "launchTime", "weatherCondition", "abilityToSeeStages", "evidenceOfLaunch"]\n}', 'role': 'user'}, {'content': '{\n"viewingLocation": "Las Vegas",\n"numberOfLaunches": 2,\n"launchTime": "Sunset",\n"weatherCondition": "Absolutely clear days",\n"abilityToSeeStages": "Able to see them actually appear over the horizon, rise out of the atmosphere, and drop their first stages",\n"evidenceOfLaunch": "Front-page photos of the smoke trails in the local paper",\n"distanceFromLaunchSite": "A long distance away"\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "BarInfo",\n"type": "object",\n"properties": {\n"barName": {\n"title": "Bar Name",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"openingHours": {\n"title": "Opening Hours",\n"type": "object",\n"properties": {\n"Thursday": {\n"type": "string"\n},\n"Friday": {\n"type": "string"\n},\n"Saturday": {\n"type": "string"\n}\n},\n"required": ["Thursday", "Friday", "Saturday"]\n},\n"recommendedReservation": {\n"title": "Recommended Reservation",\n"type": "boolean"\n}\n},\n"required": ["barName", "location", "openingHours", "recommendedReservation"]\n}\nparagraph:\nNacarat Terrace, the bar at the Fairmont Queen Elizabeth Hotel, has announced they will be reopening today, Aug. 20. The beautiful terrasse with great views of downtown Montreal is known for its cocktails, and was voted in the Best Hotel Bar or Restaurant category in this year\'s Best of MTL. Nacarat Terrace will be open from 4 to 10 p.m. on Thursday and Friday, and 2 to 8 p.m. on Saturday. The bar recommends that you make a reservation prior to arrival.\n\nCult MTL is a daily web and monthly print publication focusing on Montreal culture, music, arts, news, politics and city life. Along with interviewing local and visiting artists, promoters and entrepreneurs, we feature analysis and criticism, curate a daily To-Do List and run the annual Best of MTL readers poll.', 'role': 'user'}, {'content': '{\n"barName": "Nacarat Terrace",\n"location": "Fairmont Queen Elizabeth Hotel, Montreal",\n"openingHours": {\n"Thursday": "4 to 10 p.m.",\n"Friday": "4 to 10 p.m.",\n"Saturday": "2 to 8 p.m."\n},\n"recommendedReservation": true\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "HorseProfile", "type": "object", "properties": {"horseName": {"title": "Horse Name", "type": "string"}, "age": {"title": "Age", "type": "number"}, "country": {"title": "Country", "type": "string"}, "trainer": {"title": "Trainer", "type": "string"}, "base": {"title": "Base", "type": "string"}, "sire": {"title": "Sire", "type": "string"}, "dam": {"title": "Dam", "type": "string"}, "wins": {"title": "Wins", "type": "number"}, "raceDetails": {"title": "Race Details", "type": "array", "items": {"type": "object", "properties": {"raceDate": {"title": "Race Date", "type": "string", "format": "date"}, "jockey": {"title": "Jockey", "type": "string"}, "prizeMoney": {"title": "Prize Money", "type": "number"}, "opponent": {"title": "Opponent", "type": "string"}, "result": {"title": "Result", "type": "string"}}, "required": ["raceDate", "jockey", "prizeMoney", "opponent", "result"]}}}, "required": ["horseName", "age", "country", "trainer", "base", "sire", "dam", "wins", "raceDetails"]}\nparagraph:\nAsk Nile is a 9yo b Unknown from Ireland trained by S Neville, who is based at Wexford. It is sired by the stallion Ask out of the dam Spirit Of The Nile.\n\nAsk Nile has managed to win 3 races in its career so far. On 14th May 2017 at Killarney, Ask Nile was ridden by B Hayes and scored its most significant win to date, getting the money in the $8,924 Irish Stallion Farms Ebf Beginners Chase, defeating Gwencily Berbas.', 'role': 'user'}, {'content': '{\n "horseName": "Ask Nile",\n "age": 9,\n "country": "Ireland",\n "trainer": "S Neville",\n "base": "Wexford",\n "sire": "Ask",\n "dam": "Spirit Of The Nile",\n "wins": 3,\n "raceDetails": [\n {\n "raceDate": "2017-05-14",\n "jockey": "B Hayes",\n "prizeMoney": 8924,\n "opponent": "Gwencily Berbas",\n "result": "defeated"\n }\n ]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nPost Malone & Lizzo Get Honored With Giant Murals\n\nSo, is everyone getting a mural now? Recently Post Malone AND Lizzo were both honored by having their pictures beautifully painted on the side of buildings. That\'s how you know you\'ve made it!\n\nPosty, who is a Texas native, now has a very colorful mural in East Dallas. If you\'re traveling to Dallas and want to try finding the mural\'s exact location, it\'s at the intersection of Columbia Avenue and North Carroll Avenue. The artist of this masterpiece is Michael McPheeters. I think he nailed the face tats, but if Posty gets more, will he update the mural? Check it out his work below!\n\nIf you\'re trying to take a pic with Lizzo\'s mural, hate to break it to you, but you\'re gonna have to go all the way to Ireland! This bright orange mural is located in Dublin, specifically at the corner of Chatham Row and South William Street. How awesome is this?\njson schema:\n{"title": "MuralHonor", "type": "object", "properties": {"celebrityName": {"title": "Celebrity Name", "type": "string"}, "honorType": {"title": "Honor Type", "type": "string", "enum": ["Mural"]}, "location": {"title": "Location", "type": "object", "properties": {"address": {"title": "Address", "type": "string"}, "city": {"title": "City", "type": "string"}, "country": {"title": "Country", "type": "string"}}, "required": ["address", "city", "country"]}, "artist": {"title": "Artist", "type": "string"}, "imageUrl": {"title": "Image URL", "type": "string", "format": "uri"}}, "required": ["celebrityName", "honorType", "location", "artist"]}', 'role': 'user'}, {'content': '{\n "celebrityName": "Post Malone",\n "honorType": "Mural",\n "location": {\n "address": "intersection of Columbia Avenue and North Carroll Avenue",\n "city": "East Dallas",\n "country": "USA"\n },\n "artist": "Michael McPheeters",\n "imageUrl": "http://notagenuineimageurl.com/ (please insert the actual image URL here)"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nDel Rio is the Broncos\' fifth coordinator in five seasons. He also has a strong relationship with Broncos coach John Fox, having served as Fox\'s defensive coordinator in 2002, when he was head coach of the Carolina Panthers.\n\n"We are thrilled to be able to add such a well-respected defensive coach to our staff," Fox said. "He was an integral part of our turnaround on defense during my first year with the Panthers in 2002. His defenses with the Jaguars have ranked among the NFL\'s best, and we are excited he\'s a Bronco."\n\nThe browser you are using is no longer supported on this site. It is highly recommended that you use the latest versions of a supported browser in order to receive an optimal viewing experience. The following browsers are supported: Chrome, Edge (v80 and later), Firefox and Safari.\njson schema:\n{\n"title": "CoachHire",\n"type": "object",\n"properties": {\n"coachName": {"title": "Coach Name", "type": "string"},\n"teamName": {"title": "Team Name", "type": "string"},\n"position": {"title": "Position", "type": "string"},\n"previousTeam": {"title": "Previous Team", "type": "string"},\n"previousPosition": {"title": "Previous Position", "type": "string"},\n"browserName": {"title": "Browser Name", "type": "string"},\n"browserVersion": {"title": "Browser Version", "type": "string"},\n"supportedBrowsers": {"title": "Supported Browsers", "type": "array", "items": {"type": "string"}}\n},\n"required": ["coachName", "teamName", "position", "previousTeam", "previousPosition", "browserName", "browserVersion", "supportedBrowsers"]\n}', 'role': 'user'}, {'content': '{\n"coachName": "Del Rio",\n"teamName": "Broncos",\n"position": "defensive coordinator",\n"previousTeam": "Carolina Panthers",\n"previousPosition": "defensive coordinator",\n"browserName": "The browser you are using",\n"browserVersion": "not specified",\n"supportedBrowsers": ["Chrome", "Edge (v80 and later)", "Firefox", "Safari"]\n}', 'role': 'assistant'}, {'content': 'paragraph:\nis a South Korean international school in Suminoe-ku, Osaka, Japan. The school was established in 1946. It is recognised by the government of Osaka Prefecture as a private school under Article 1 of Japan\'s School Education Act.\n\nSee also\nJapanese international schools in South Korea:\n Japanese School in Seoul\n Busan Japanese School\n\nReferences\n\nExternal links\n\n Kongo Gakuen \n\nElementary schools in Japan\nKorean international schools in Japan\nInternational schools in Osaka\nHigh schools in Osaka Prefecture\nEducational institutions established in 1946\n1946 establishments in Japan\njson schema:\n{\n"title": "SchoolProfile",\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"established": {"title": "Established", "type": "string", "format": "date"},\n"recognition": {"title": "Recognition", "type": "string"},\n"relatedSchools": {\n"title": "Related Schools",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"name": {"title": "Name", "type": "string"},\n"location": {"title": "Location", "type": "string"}\n},\n"required": ["name", "location"]\n}\n},\n"references": {"title": "References", "type": "string"},\n"links": {"title": "Links", "type": "string"}\n},\n"required": ["name", "location", "established", "recognition"]\n}', 'role': 'user'}, {'content': '{\n"name": "Kongo Gakuen",\n"location": "Suminoe-ku, Osaka, Japan",\n"established": "1946",\n"recognition": "recognised by the government of Osaka Prefecture as a private school under Article 1 of Japan\'s School Education Act",\n"relatedSchools": [\n{\n"name": "Japanese School in Seoul",\n"location": "Seoul, South Korea"\n},\n{\n"name": "Busan Japanese School",\n"location": "Busan, South Korea"\n}\n],\n"references": "Educational institutions established in 1946\\n1946 establishments in Japan",\n"links": "Kongo Gakuen"\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{"title": "ManufacturingSector", "type": "object", "properties": {"topic": {"title": "Topic", "type": "string"}, "factors": {"title": "Factors", "type": "array", "items": {"type": "object", "properties": {"factorName": {"title": "Factor Name", "type": "string"}, "description": {"title": "Description", "type": "string"}, "examples": {"title": "Examples", "type": "array", "items": {"type": "string"}}}, "required": ["factorName", "description", "examples"]}}, "reasons": {"title": "Reasons", "type": "array", "items": {"type": "object", "properties": {"reasonNumber": {"title": "Reason Number", "type": "integer"}, "description": {"title": "Description", "type": "string"}, "examples": {"title": "Examples", "type": "array", "items": {"type": "string"}}}, "required": ["reasonNumber", "description", "examples"]}}}, "required": ["topic", "factors", "reasons"]}\nparagraph:\nIn recent decades, technology, globalization and Asia\'s rise have all caused significant changes in the manufacturing sector. At least within the confines of Asian and ASEAN countries, this has often meant a race to the bottom for competitiveness based on price, rather than value. With Singapore arguably being better known for financial services and tax incentives, you might assume it would have no future in the global manufacturing sector.\n\nI\'m pleased to say, that\'s a wholly incorrect assumption.\n\nWhile low-cost and repetitive-task human labor has had its heyday, Singapore has shown itself to be a lighthouse of forward-thinking. By fully embracing Industry 4.0, Singapore is moving up the value chain in order to consolidate its position as the world\'s leading industrial hub.\n\nSuch a lofty ambition takes immense proactivity of course, so here are four reasons why Singapore will be the world\'s leading industrial hub.\n\n1. The Singapore government\'s foresight\n\nSingapore has a long history of showing immense foresight into the needs of the nation. The most famous example of this was perhaps the government\'s establishment of the Housing and Development Board (HDB) in 1960, designed to lift the population out of poverty and into their own homes.\n\nIt\'s that culture of foresight that has led to many other progressive insights, including the government\'s recent pledge to grow its manufacturing sector over the next 10 years. Crucially though, this is not a scattergun strategy to build factories and import workers to manufacture low-quality goods.\n\nThe government has robust plans in place to be competitive not in terms of cost, but based on the intellectual property the country can generate. This means rather than low-value manufacturing, Singapore will aim to manufacture in the higher end of the value chain, including sectors like pharmaceuticals, fintech and biotechnology.\n\nSingapore\'s three-pronged legislation for this growth is detailed and well thought out, making provisions for attracting top-tier companies, creating higher-paying manufacturing jobs, and training the local population with extensive tertiary education collaborations.\n\n2. A world-class ecosystem for manufacturing\n\nWhile the government\'s recent but detailed plan for a high-value manufacturing future inspires confidence, you only have to look at how Singapore is performing today to see an upwards trajectory. Singapore is already the world\'s third-largest exporter of high-tech goods, produces four of the world\'s top 10 drugs, and is the fourth-largest producer of refined oil. It\'s little surprise then, that industry giants like Micron, Shell and Merck have not only chosen Singapore as a manufacturing base, but as a strategic hub for R&D, headquarters and supply chain management.\n\nThis world-class ecosystem is bolstered by active government initiatives where multinational corporations (MNCs) can partner with research and tertiary education institutes to develop cutting-edge innovations with global impact.\n\nSingapore\'s reputation as a plug-and-play manufacturing ecosystem will only continue to grow, as more and more top MNCs leverage the country\'s investment in the sector.\n\n3. A workforce of skilled humans and adaptable robots\n\nWhile China and many parts of Southeast Asia persist with a repetitive-task-based human workforce, Singapore is forging ahead with an adaptable but highly skilled local workforce comprised of complementing robots and humans.\n\nSingapore currently ranks third in the Global Talent Competitive Index, thanks largely to two major strategies. First is the government\'s significant investment in human talent through their SkillsFuture series in advanced manufacturing and their partnerships with industry leaders and tertiary institutes. Second is a massive investment in robotic technology, which has led them to become third in the world for robot density, according to the Global Talent Competitive Index.\n\nThese synergetic workforces show an established commitment to both human and robot capital that provides end-to-end manufacturing expertise — an enormous plus to prospective MNCs looking to manufacture in Singapore.\n\n4. An established culture of innovation\n\nFinally, Singapore continues to solidify its reputation as a global powerhouse for innovation. Singapore is currently ranked third in the Bloomberg Innovation Index, primarily due to its productivity and value-added manufacturing growth, while maintaining a top-in-world ranking in tertiary education efficiency.\n\nThis culture of innovation has led to the likes of Siemens and ABB to leverage Singapore\'s growing momentum within industry 4.0, and I fully expect many other global innovators to follow.', 'role': 'user'}, {'content': '{\n "topic": "The future of Singapore\'s manufacturing sector",\n "factors": [\n {\n "factorName": "Government\'s foresight",\n "description": "Singapore\'s government has a history of showing foresight into the needs of the nation, including a pledge to grow the manufacturing sector over the next 10 years with a focus on high-value manufacturing.",\n "examples": [\n "Establishment of the Housing and Development Board (HDB) in 1960",\n "Government\'s pledge to grow the manufacturing sector with a focus on intellectual property and high-value manufacturing"\n ]\n },\n {\n "factorName": "World-class manufacturing ecosystem",\n "description": "Singapore is already a major exporter of high-tech goods and a producer of four of the world\'s top 10 drugs, with industry giants choosing Singapore as a manufacturing base and strategic hub for R&D, headquarters, and supply chain management.",\n "examples": [\n "World\'s third-largest exporter of high-tech goods",\n "Produces four of the world\'s top 10 drugs",\n "Home to manufacturing bases of Micron, Shell, and Merck"\n ]\n },\n {\n "factorName": "Skilled workforce",\n "description": "Singapore has a highly skilled local workforce, ranking third in the Global Talent Competitive Index, and is also a leader in robotic technology, making it an attractive destination for MNCs looking for end-to-end manufacturing expertise.",\n "examples": [\n "Ranks third in the Global Talent Competitive Index",\n "Third in the world for robot density"\n ]\n },\n {\n "factorName": "Culture of innovation",\n "description": "Singapore is a global powerhouse for innovation, ranked third in the Bloomberg Innovation Index, primarily due to its productivity and value-added manufacturing growth, while maintaining a top-in-world ranking in tertiary education efficiency.",\n "examples": [\n "Ranked third in the Bloomberg Innovation Index",\n "Top-in-world ranking in tertiary education efficiency"\n ]\n }\n ],\n "reasons": [\n {\n "reasonNumber": 1,\n "description": "The Singapore government\'s foresight and robust plans to be competitive in the manufacturing sector based on intellectual property and high-value manufacturing, including sectors like pharmaceuticals, fintech, and biotechnology.",\n "examples": [\n "Government\'s pledge to grow the manufacturing sector with a focus on intellectual property and high-value manufacturing",\n "Manufacturing in the higher end of the value chain, including sectors like pharmaceuticals, fintech and biotechnology"\n ]\n },\n {\n "reasonNumber": 2,\n "description": "Singapore\'s world-class ecosystem for manufacturing, with active government initiatives for multinational corporations (MNCs) to partner with research and tertiary education institutes to develop cutting-edge innovations with global impact.",\n "examples": [\n "Already the world\'s third-largest exporter of high-tech goods",\n "Home to industry giants\' manufacturing bases, R&D, headquarters, and supply chain management"\n ]\n },\n {\n "reasonNumber": 3,\n "description": "A workforce of skilled humans and adaptable robots, with significant investment in human talent and robotic technology, providing end-to-end manufacturing expertise.",\n "examples": [\n "Ranks third in the Global Talent Competitive Index",\n "Third in the world for robot density"\n ]\n },\n {\n "reasonNumber": 4,\n "description": "Singapore\'s established culture of innovation, with a focus on productivity and value-added manufacturing growth, and a top-in-world ranking in tertiary education efficiency.",\n "examples": [\n "Ranked third in the Bloomberg Innovation Index",\n "Top-in-world ranking in tertiary education efficiency"\n ]\n }\n ]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nAmazon India has refused to appear before Joint Committee of Parliament on Data Protection Bill on October 28, BJP MP Meenakshi Lekhi said on Friday.\n\nThe joint committee led by Lekhi has 20 members from the Lok Sabha and 10 from the Rajya Sabha.\n\nLekhi told PTI that Amazon\'s refusal to appear before Parliament committee amounts to breach of privilege.\n\nParliament committee unanimous on action by government against Amazon for refusing to appear, she said.\n\nMeanwhile, the committe also issued summons to Facebook in order to seek its "oral evidence" on the issues of data protection and privacy. Twitter too is said to have been directed for appearance next week.\n\nHowever, the summon to Facebook and Twitter is strictly pertaining to the issue of citizen\'s personal data protection.\n\nThe summons to Twitter assumes significance as these come close on the Centre\'s letter to the microblogging site\'s chief Jack Dorsey.\n\nTaking strong exception to the "misrepresentation" of India\'s map, the government wrote a stern letter to the Twitter CEO, saying that any attempt by the platform to disrespect the sovereignty and integrity of India, which is also reflected by the maps, was totally unacceptable.\n\nLast month, amid severe criticism of Facebook and Union government over the alleged collusion of Facebook India executive Ankhi Das and the BJP, Union Information Technology Minister Ravi Shankar Prasad wrote a hardhitting letter to Facebook CEO Mark Zuckerberg, blaming the Facebook India management of alleged bias against people supporting the right-of-centre ideology.\n\n(With ANI inputs)\n\n(To download our E-paper please click here. The publishers permit sharing of the paper\'s PDF on WhatsApp and other social media platforms.)\njson schema:\n{\n"title": "CommitteeMeeting",\n"type": "object",\n"properties": {\n"companyName": {\n"title": "Company Name",\n"type": "string"\n},\n"refusal": {\n"title": "Refusal",\n"type": "boolean"\n},\n"committeeDetails": {\n"title": "Committee Details",\n"type": "object",\n"properties": {\n"committeeName": {\n"title": "Committee Name",\n"type": "string"\n},\n"totalMembers": {\n"title": "Total Members",\n"type": "number"\n},\n"lokSabhaMembers": {\n"title": "Lok Sabha Members",\n"type": "number"\n},\n"rajyaSabhaMembers": {\n"title": "Rajya Sabha Members",\n"type": "number"\n}\n},\n"required": ["committeeName", "totalMembers", "lokSabhaMembers", "rajyaSabhaMembers"]\n},\n"privilegeBreach": {\n"title": "Privilege Breach",\n"type": "boolean"\n},\n"unanimousAction": {\n"title": "Unanimous Action",\n"type": "string"\n},\n"summonedCompanies": {\n"title": "Summoned Companies",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"companyName": {\n"title": "Company Name",\n"type": "string"\n},\n"summonReason": {\n"title": "Summon Reason",\n"type": "string"\n}\n},\n"required": ["companyName", "summonReason"]\n}\n},\n"letterToCEO": {\n"title": "Letter to CEO",\n"type": "object",\n"properties": {\n"letterContent": {\n"title": "Letter Content",\n"type": "string"\n},\n"exceptionTaken": {\n"title": "Exception Taken",\n"type": "boolean"\n},\n"letterSubject": {\n"title": "Letter Subject",\n"type": "string"\n}\n},\n"required": ["letterContent", "exceptionTaken", "letterSubject"]\n}\n},\n"required": ["companyName", "refusal", "committeeDetails", "privilegeBreach", "unanimousAction", "summonedCompanies", "letterToCEO"]\n}', 'role': 'user'}, {'content': '{\n"companyName": "Amazon",\n"refusal": true,\n"committeeDetails": {\n"committeeName": "Joint Committee of Parliament on Data Protection Bill",\n"totalMembers": 30,\n"lokSabhaMembers": 20,\n"rajyaSabhaMembers": 10\n},\n"privilegeBreach": true,\n"unanimousAction": "action by government against Amazon",\n"summonedCompanies": [\n{\n"companyName": "Facebook",\n"summonReason": "seek its \'oral evidence\' on the issues of data protection and privacy"\n},\n{\n"companyName": "Twitter",\n"summonReason": "pertaining to the issue of citizen\'s personal data protection"\n}\n],\n"letterToCEO": {\n"letterContent": "any attempt by the platform to disrespect the sovereignty and integrity of India, which is also reflected by the maps, was totally unacceptable",\n"exceptionTaken": true,\n"letterSubject": "misrepresentation of India\'s map"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "ProtestMeeting",\n"type": "object",\n"properties": {\n"protestGroup": {"title": "Protest Group", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"date": {"title": "Date", "type": "string", "format": "date"},\n"time": {"title": "Time", "type": "string", "format": "time"},\n"issue": {"title": "Issue", "type": "string"},\n"organizationBacking": {"title": "Organization Backing", "type": "string"},\n"numberOfPeopleAffected": {"title": "Number of People Affected", "type": "number"},\n"numberOfSignatures": {"title": "Number of Signatures", "type": "number"},\n"union": {"title": "Union", "type": "string"},\n"unionConcerns": {\n"title": "Union Concerns",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"concern": {"title": "Concern", "type": "string"},\n"description": {"title": "Description", "type": "string"}\n},\n"required": ["concern", "description"]\n}\n},\n"politicalAction": {"title": "Political Action", "type": "string"},\n"impactOnWorkers": {"title": "Impact on Workers", "type": "string"},\n"meetingOpenToPublic": {"title": "Meeting Open to Public", "type": "boolean"},\n"venue": {"title": "Venue", "type": "string"}\n},\n"required": ["protestGroup", "location", "date", "time", "issue", "organizationBacking", "numberOfPeopleAffected", "numberOfSignatures", "unionConcerns", "politicalAction", "impactOnWorkers", "meetingOpenToPublic", "venue"]\n}\nparagraph:\nUNISON backs Bonnybridge care home protest\n\nRoy Beers\n\nAn "urgent" meeting in Glasgow tomorrow will see Bonnybridge protesters demanding Holyrood action to halt the closure of 12 care homes.\n\nA local campaign aimed at saving Bield\'s care home in Bonnybridge has mushroomed to become a national campaign involving relatives of residents in a dozen homes across the country, and their effort now has the backing of the union UNISON.\n\nThe protesters have already staged a demonstration outside the Scottish Parliament, where they presented a petition with 9.000 names calling for a halt to the plans.\n\nBield\'s controversial decision to scrap its care homes on cost grounds directly affects 160 elderly people, many aged over 90. from places they have known as home for decades.\n\nThe families of those affected say the decision is a disaster, and are dismayed the Scottish Government has so far failed to take action.\n\nUNISON, which is hosting the meeting, is concerned both at the impact on vulnerable residents and also the fact that up to 200 qualified registered care workers are being made compulsorily redundant.\n\n"We are disappointed that Scottish Government ministers seem content to stand by and let the closures happen, when the lives of vulnerable elderly people are at risk, and the jobs of essential care workers in many Scottish communities are being jettisoned.\n\n"If it goes ahead it will be a disaster.\n\n"New integrated joint boards should be subjected to proper political and public scrutiny and held accountable for allowing such damaging developments to take place within ridiculously short timescales".\n\nTomorrow\'s meeting is open to the public, and is at 1pm in the union\'s premises at 14 West Campbell Street.', 'role': 'user'}, {'content': '{\n"protestGroup": "Local campaign aimed at saving Bield\'s care home in Bonnybridge",\n"location": "Bonnybridge",\n"date": "",\n"time": "1pm",\n"issue": "Halt the closure of 12 care homes",\n"organizationBacking": "UNISON",\n"numberOfPeopleAffected": 160,\n"numberOfSignatures": 9000,\n"union": "UNISON",\n"unionConcerns": [\n{\n"concern": "Impact on vulnerable residents",\n"description": "Many residents are elderly people, some aged over 90, who have known these homes as home for decades"\n},\n{\n"concern": "Job losses",\n"description": "Up to 200 qualified registered care workers are being made compulsorily redundant"\n}\n],\n"politicalAction": "New integrated joint boards should be subjected to proper political and public scrutiny and held accountable for allowing such damaging developments to take place within ridiculously short timescales",\n"impactOnWorkers": "Jobs of essential care workers in many Scottish communities are being jettisoned",\n"meetingOpenToPublic": true,\n"venue": "Union\'s premises at 14 West Campbell Street"\n}', 'role': 'assistant'}, {'content': 'paragraph:\nTrinidad calypsonian `Mighty Bomber\' passes away at 93\n\n(Trinidad Guardian) Veteran calypsonian The Mighty Bomber has died. Bomber, whose real name is Clifton Ryan, passed yesterday at the age of 93. He would have celebrated his 94th birthday on January 30.\n\nHis death was confirmed by his son Sherwin Ryan on Facebook yesterday. Grenadian-born, Bomber migrated to Trinidad and Tobago in 1956 and started entering calypso competitions the following year.\n\nAccording to a featured article on his life published by Triniview.com, in 1958 he had a hit song called \'Gloria\' that was resung by Harry Belafonte in 1962.\n\nIn 1960 Bomber was invited by the Mighty Sparrow to sing at the Original Young Brigade Tent.\n\nHe also participated in the independence calypso competition in 1962 and placed 4th, though many people in the audience felt that he should have won the competition.\n\nThe Triniview account of his life notes that in 1964 he created history when he defeated the Mighty Sparrow, winning the National Calypso King Competition in Trinidad with the songs Bomber\'s Dream and James and Joan.\n\nHe went on to represent Trinidad and Tobago at the Commonwealth Festival of Arts in England the following year. He also represented Trinidad and Tobago at Randals Island, USA where he met Harry Belafonte. He became the stage manager at the Mighty Sparrow\'s Young Brigade Tent and held that position for 15 years.\n\nIn 1976 Bomber was granted a plot of land at Picton Hill by the then Prime Minister Dr Eric Williams in recognition of his contribution to the calypso art form.\n\nAmong his popular calypsoes were Proverbs, Mr Unfortunate, Juvenile Delinquency, \'Despers vs Bunters, Animal Cricket Match, The Godfather, Professor Broomes, and Land Of Spice.\njson schema:\n{\n"title": "CalypsonianInfo",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthName": {\n"title": "Birth Name",\n"type": "string"\n},\n"birthDate": {\n"title": "Birth Date",\n"type": "string",\n"format": "date"\n},\n"deathDate": {\n"title": "Death Date",\n"type": "string",\n"format": "date"\n},\n"countryOfOrigin": {\n"title": "Country of Origin",\n"type": "string"\n},\n"yearOfMigration": {\n"title": "Year of Migration",\n"type": "number"\n},\n"yearOfFirstCompetition": {\n"title": "Year of First Competition",\n"type": "number"\n},\n"hitSongs": {\n"title": "Hit Songs",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"achievements": {\n"title": "Achievements",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"year": {\n"title": "Year",\n"type": "number"\n},\n"event": {\n"title": "Event",\n"type": "string"\n},\n"result": {\n"title": "Result",\n"type": "string"\n}\n},\n"required": ["year", "event", "result"]\n}\n},\n"landGrant": {\n"title": "Land Grant",\n"type": "object",\n"properties": {\n"year": {\n"title": "Year",\n"type": "number"\n},\n"primeMinister": {\n"title": "Prime Minister",\n"type": "string"\n}\n},\n"required": ["year", "primeMinister"]\n}\n},\n"required": ["name", "birthName", "birthDate", "countryOfOrigin", "yearOfFirstCompetition", "achievements", "landGrant"]\n}', 'role': 'user'}, {'content': '{\n"name": "The Mighty Bomber",\n"birthName": "Clifton Ryan",\n"birthDate": "1927-01-30",\n"deathDate": "2020-xx-xx",\n"countryOfOrigin": "Grenada",\n"yearOfMigration": 1956,\n"yearOfFirstCompetition": 1957,\n"hitSongs": [\n"Gloria"\n],\n"achievements": [\n{\n"year": 1958,\n"event": "Hit song",\n"result": "Gloria"\n},\n{\n"year": 1960,\n"event": "Invited to sing at the Original Young Brigade Tent",\n"result": "N/A"\n},\n{\n"year": 1962,\n"event": "Independence calypso competition",\n"result": "4th place"\n},\n{\n"year": 1964,\n"event": "National Calypso King Competition in Trinidad",\n"result": "Winner"\n},\n{\n"year": 1965,\n"event": "Commonwealth Festival of Arts in England",\n"result": "Represented Trinidad and Tobago"\n},\n{\n"year": 1965,\n"event": "Randals Island, USA",\n"result": "Represented Trinidad and Tobago"\n},\n{\n"year": 1976,\n"event": "Land Grant",\n"result": "Granted a plot of land at Picton Hill by the then Prime Minister Dr Eric Williams"\n}\n],\n"landGrant": {\n"year": 1976,\n"primeMinister": "Dr Eric Williams"\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'json schema:\n{\n"title": "ArenaRenovation",\n"type": "object",\n"properties": {\n"renovationID": {\n"title": "Renovation ID",\n"type": "string"\n},\n"renovationFeature": {\n"title": "Renovation Feature",\n"type": "string"\n},\n"location": {\n"title": "Location",\n"type": "string"\n},\n"openingDate": {\n"title": "Opening Date",\n"type": "string",\n"format": "date"\n},\n"size": {\n"title": "Size",\n"type": "number"\n},\n"amenities": {\n"title": "Amenities",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"description": {\n"title": "Description",\n"type": "string"\n}\n},\n"required": ["renovationID", "renovationFeature", "location", "openingDate", "size", "amenities", "description"]\n}\nparagraph:\nQuestion of the Day\n\nWas Mueller nudging Congress to impeach Trump\n\nMonumental Sports and Entertainment has announced a new premium area for Washington Wizards VIP season ticket holders called "The District," a courtside patio area near one baseline at Capital One Arena.\n\nStarting with the 2019-20 season, the patio will be open at all Wizards games. Clocking in at more than 1,000 square feet, it will be the largest such standing-room area in any NBA arena, the Wizards say.\n\n.@MSE has announced the addition of \'The District,\' a courtside patio for all VIP ticket holders beginning with the 2019-20 season. https://t.co/DC8SSj6RjH\n\n"Washington, D.C. is one of the most connected cities in the world and the courtside patio at Capital One Arena will be an ideal location for business development and networking opportunities and perfect for fans who want to socialize at a unique space that serves as a literal extension of the hardwood and our terrific in-venue VIP experiences," Jim Van Stone, Monumental\'s CCO and president of business operations, said in a news release.\n\nThe District will also include four rows of "VIP seating" near the Wizards\' bench.\n\nMonumental began an ambitious renovation project to Capital One Arena last summer between NBA seasons. The new patio, which will include a bar, is part of the second phase of the project. Monumental will debut a new scoreboard with a 360-degree continuous video screen next fall, as well.\n\nLast summer, the $40 million first phase included the addition of a new sound system, DJ stage, 3D projection system and more digital signage.', 'role': 'user'}, {'content': '{\n"renovationID": "Phase2Renovation",\n"renovationFeature": "Courtside patio",\n"location": "Capital One Arena, Washington D.C.",\n"openingDate": "2019-10-01",\n"size": 1000,\n"amenities": ["Bar", "VIP seating", "Business development opportunities", "Networking space"],\n"description": "A new premium area for Washington Wizards VIP season ticket holders called \'The District\', located near one baseline. It is the largest standing-room area in any NBA arena and will include a bar and four rows of VIP seating near the Wizards\' bench."\n}', 'role': 'assistant'}, {'content': 'paragraph:\n[Main Updates]\n\n\'Expedition\' will enable players to temporarily travel to other servers each day from 21:00 ~ 01:00.\n\nRegionalClan List\n\nClan List will now show clans from all adjacent servers within the same regional group.\n\nMagic Square / Secret Peak - Floor expansion\n\n7th Floor will be added in Magic Square and Secret Peak\n\nLong-Term inactive Clans will be deleted.\n\n◈DRACO Updates◈\n\nHYDRA Payment System\n\nNew HYDRA Payment option will be available through the MIR4\'s official PC version\n\n※ Portal / Raids will be restricted from 30 minutes before the maintenance.\n※ Maintenance schedule may change depending on the circumstances without prior notice.\n※ You can\'t access the game during maintenance.\n※ We will open the servers in order.\njson schema:\n{\n"title": "GameUpdate",\n"type": "object",\n"properties": {\n"updates": {\n"title": "Updates",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"section": {\n"title": "Section",\n"type": "string"\n},\n"details": {\n"title": "Details",\n"type": "string"\n}\n},\n"required": ["section", "details"]\n}\n},\n"maintenance": {\n"title": "Maintenance",\n"type": "object",\n"properties": {\n"schedule": {\n"title": "Schedule",\n"type": "string"\n},\n"restrictions": {\n"title": "Restrictions",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"activity": {\n"title": "Activity",\n"type": "string"\n},\n"duration": {\n"title": "Duration",\n"type": "string"\n}\n},\n"required": ["activity", "duration"]\n}\n},\n"access": {\n"title": "Access",\n"type": "string"\n},\n"serverOpening": {\n"title": "Server Opening",\n"type": "string"\n}\n},\n"required": ["schedule", "restrictions", "access", "serverOpening"]\n}\n},\n"required": ["updates", "maintenance"]\n}', 'role': 'user'}, {'content': '{\n"updates": [\n{\n"section": "Expedition",\n"details": "Players can temporarily travel to other servers each day from 21:00 ~ 01:00."\n},\n{\n"section": "Clan List",\n"details": "Clan List will now show clans from all adjacent servers within the same regional group."\n},\n{\n"section": "Magic Square / Secret Peak",\n"details": "7th Floor will be added in Magic Square and Secret Peak."\n},\n{\n"section": "Clan Deletion",\n"details": "Long-Term inactive Clans will be deleted."\n},\n{\n"section": "HYDRA Payment System",\n"details": "New HYDRA Payment option will be available through the MIR4\'s official PC version."\n}\n],\n"maintenance": {\n"schedule": "The maintenance schedule may change depending on the circumstances without prior notice.",\n"restrictions": [\n{\n"activity": "Portal / Raids",\n"duration": "30 minutes before the maintenance."\n}\n],\n"access": "You can\'t access the game during maintenance.",\n"serverOpening": "We will open the servers in order."\n}\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nAction related nav\n\nAdvertising\n\nDolphins Add Local Product, Wide Receiver Ricardo Louis\n\nAlain Poupart\n\nLead Writer\n\nThe Dolphins added a local product to their wide receiver corps Monday when they signed Miami Beach High School alum Ricardo Louis.\n\nLouis joins the Dolphins after playing two seasons with the Cleveland Browns after being a fourth-round pick out of Auburn in the 2016 NFL draft. Louis has 45 career receptions: 18 in 2016 and 27 in 2017.\n\nLouis\' biggest play at Auburn became known as the "Prayer at Jordan-Hare." It was a 73-yard touchdown catch with 25 seconds remaining that gave Auburn a 43-38 victory against Georgia and helped them reach the National Championship game against Florida State.\njson schema:\n{\n"title": "NFLPlayerSigning",\n"type": "object",\n"properties": {\n"teamName": {\n"title": "Team Name",\n"type": "string"\n},\n"newPlayerName": {\n"title": "New Player Name",\n"type": "string"\n},\n"playerPosition": {\n"title": "Player Position",\n"type": "string"\n},\n"pastTeam": {\n"title": "Past Team",\n"type": "string"\n},\n"draftRound": {\n"title": "Draft Round",\n"type": "number"\n},\n"numberOfReceptions": {\n"title": "Number of Receptions",\n"type": "number"\n},\n"memorablePlay": {\n"title": "Memorable Play",\n"type": "object",\n"properties": {\n"playName": {\n"title": "Play Name",\n"type": "string"\n},\n"yardage": {\n"title": "Yardage",\n"type": "number"\n},\n"timeRemaining": {\n"title": "Time Remaining",\n"type": "string",\n"format": "time"\n},\n"result": {\n"title": "Result",\n"type": "string"\n}\n},\n"required": ["playName", "yardage", "timeRemaining", "result"]\n}\n},\n"required": ["teamName", "newPlayerName", "playerPosition", "pastTeam", "draftRound", "numberOfReceptions", "memorablePlay"]\n}', 'role': 'user'}, {'content': '{\n"teamName": "Dolphins",\n"newPlayerName": "Ricardo Louis",\n"playerPosition": "wide receiver",\n"pastTeam": "Cleveland Browns",\n"draftRound": 4,\n"numberOfReceptions": 45,\n"memorablePlay": {\n"playName": "The Prayer at Jordan-Hare",\n"yardage": 73,\n"timeRemaining": "25 seconds",\n"result": "Touchdown"\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "Person",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"birthYear": {\n"title": "Year of Birth",\n"type": "string",\n"format": "date-time",\n"format": "year"\n},\n"deathYear": {\n"title": "Year of Death",\n"type": "string",\n"format": "date-time",\n"format": "year"\n},\n"occupation": {\n"title": "Occupation",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"politicalCareer": {\n"title": "Political Career",\n"type": "object",\n"properties": {\n"positionsHeld": {\n"title": "Positions Held",\n"type": "array",\n"items": {\n"type": "string"\n}\n},\n"yearsActive": {\n"title": "Years Active",\n"type": "string",\n"format": "date-time",\n"format": "year"\n}\n},\n"required": ["positionsHeld", "yearsActive"]\n},\n"family": {\n"title": "Family",\n"type": "object",\n"properties": {\n"familyMembers": {\n"title": "Family Members",\n"type": "array",\n"items": {\n"type": "string"\n}\n}\n},\n"required": ["familyMembers"]\n}\n},\n"required": ["name", "birthYear", "deathYear", "occupation", "politicalCareer", "family"]\n}\nparagraph:\nWilliam Talbot (ca 1792 – April 28, 1873) was a farmer, fisher and politician in Newfoundland. He served in the Newfoundland House of Assembly.\n\nTalbot spent 59 years in Newfoundland and owned a farm in Harbour Grace. He was elected to the assembly for Conception Bay in 1852 and then was elected for Harbour Main in 1855. Around 1859, he retired from politics due to failing eyesight.\n\nHis son Thomas Talbot also served in the Newfoundland assembly.\n\nReferences \n\nMembers of the Newfoundland and Labrador House of Assembly\n1873 deaths\nYear of birth uncertain\nNewfoundland Colony people', 'role': 'user'}, {'content': '{\n"name": "William Talbot",\n"birthYear": "ca 1792",\n"deathYear": "1873",\n"occupation": ["farmer", "fisher", "politician"],\n"politicalCareer": {\n"positionsHeld": ["Newfoundland House of Assembly for Conception Bay", "Newfoundland House of Assembly for Harbour Main"],\n"yearsActive": "1852 - 1859"\n},\n"family": {\n"familyMembers": ["Thomas Talbot"]\n}\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "People",\n"type": "array",\n"items": {\n"title": "Person",\n"type": "object",\n"properties": {\n"name": {\n"title": "Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n}\n},\n"required": ["name", "description"]\n}\n}\nparagraph:\nCharlotte Moore may refer to:\n\nCharlotte Moore (TV executive) (born 1968), British television executive\nCharlotte Moore (actress) (born c. 1958), Canadian actress\nCharlotte Moore Sitterly (1898–1990), American astronomer\nCharlotte Moore (runner) (born 1985), participant in the 2003 World Championships in Athletics\nCharlotte Moore (wheelchair basketball) (born 1998), British wheelchair racer and wheelchair basketball player\nCharlotte Moore (BoJack Horseman), a character on BoJack Horseman voiced by Olivia Wilde\n Charlotte Moore, a character in The Shrike (film) played by Joy Page\n Charlotte Moore, a stage actress, artistic director of the Irish Repertory Theatre (in New York City) and one of its founders\n Charlotte Moore (died 2010), wife of Mal Moore\n\nSee also', 'role': 'user'}, {'content': '[\n{\n"name": "Charlotte Moore (TV executive)",\n"description": "British television executive born in 1968"\n},\n{\n"name": "Charlotte Moore (actress)",\n"description": "Canadian actress born around 1958"\n},\n{\n"name": "Charlotte Moore Sitterly",\n"description": "American astronomer born in 1898 and died in 1990"\n},\n{\n"name": "Charlotte Moore (runner)",\n"description": "Participant in the 2003 World Championships in Athletics, born in 1985"\n},\n{\n"name": "Charlotte Moore (wheelchair basketball)",\n"description": "British wheelchair racer and wheelchair basketball player, born in 1998"\n},\n{\n"name": "Charlotte Moore (BoJack Horseman)",\n"description": "A character on BoJack Horseman voiced by Olivia Wilde"\n},\n{\n"name": "Charlotte Moore",\n"description": "A character in The Shrike (film) played by Joy Page"\n},\n{\n"name": "Charlotte Moore",\n"description": "Stage actress, artistic director of the Irish Repertory Theatre (in New York City) and one of its founders"\n},\n{\n"name": "Charlotte Moore",\n"description": "Wife of Mal Moore (died 2010)"\n}\n]', 'role': 'assistant'}, {'content': 'paragraph:\n"It looks just like Patrick Mahomes," Eriana said with enthusiasm. "The muscles, the details in the colors, it\'s just great."\n\nMahomes is on the rear passenger door. Kelce is on the rear driver\'s side door. Each painting has intricate details including facial hair, muscle tone and even stadium lights reflecting on Kelce\'s helmet.\n\n"I was excited, but I was really kind of nervous because I never [painted a car] before," Ugwuh said while on assignment in Little Rock. "I didn\'t want to mess up. She was so happy for me to be doing it, I had to kind of feed off her energy."\n\nThe self-taught artist, and huge Chiefs fan, specializes in airbrushing. He mostly paints on canvasses and clothing but was able to find a groove working on the car.\n\n"To me, it [the airbrush] feels kind of like a pencil once you get used to using it and controlling it and everything," Ugwuh admitted.\njson schema:\n{\n"title": "PaintingProject",\n"type": "object",\n"properties": {\n"artistName": {"title": "Artist Name", "type": "string"},\n"subject": {"title": "Subject", "type": "string"},\n"details": {"title": "Details", "type": "string"},\n"location": {"title": "Location", "type": "string"},\n"medium": {"title": "Medium", "type": "string"},\n"targetSurface": {"title": "Target Surface", "type": "string"},\n"difficultyLevel": {"title": "Difficulty Level", "type": "string"},\n"emotions": {"title": "Emotions", "type": "array", "items": {"type": "string"}}\n},\n"required": ["artistName", "subject", "details", "location", "medium", "targetSurface", "difficultyLevel", "emotions"]\n}', 'role': 'user'}, {'content': '{\n"artistName": "Ugwuh",\n"subject": "Patrick Mahomes and Travis Kelce",\n"details": "includes facial hair, muscle tone and stadium lights reflecting on Kelce\'s helmet, \'just like\' Patrick Mahomes with muscles and intricate details in colors",\n"location": "Little Rock",\n"medium": "airbrush",\n"targetSurface": "car",\n"difficultyLevel": "nervous because never painted a car before, but excited and fed off the energy of the person who was happy for him to be doing it",\n"emotions": ["excitement", "nervousness", "happiness"]\n}', 'role': 'assistant'}, {'content': 'json schema:\n{\n"title": "Definition",\n"type": "object",\n"properties": {\n"term": {\n"title": "Term",\n"type": "string"\n},\n"definition": {\n"title": "Definition",\n"type": "string"\n},\n"subcategories": {\n"title": "Subcategories",\n"type": "array",\n"items": {\n"type": "object",\n"properties": {\n"subcategoryName": {\n"title": "Subcategory Name",\n"type": "string"\n},\n"description": {\n"title": "Description",\n"type": "string"\n}\n},\n"required": ["subcategoryName", "description"]\n}\n}\n},\n"required": ["term", "definition"]\n}\nparagraph:\nZaidi may refer to:\n\n The Zaidiyyah sect of Islam or Al-Zaidi, its adherents\n Al-Zaidi, Arab descendants of Zayd ibn Ali\n Zaidi Wasitis, people with the surname Zaidi, South Asian descendants of Zayd ibn Ali, from Wasit, Iraq, followers of Twelver or Athnā‘ashariyyah (Ja\'fari jurisprudence)\n Zaidi Al Wasti, another surname found among the same people \n Yiddish informal title for grandfather\n\nSee also \n Zaidee, given name\n Wasti', 'role': 'user'}, {'content': '{\n"term": "Zaidi",\n"definition": "Refer to: The Zaidiyyah sect of Islam or Al-Zaidi, its adherents; Al-Zaidi, Arab descendants of Zayd ibn Ali; Zaidi Wasitis, people with the surname Zaidi, South Asian descendants of Zayd ibn Ali, from Wasit, Iraq, followers of Twelver or Athnā‘ashariyyah (Ja\'fari jurisprudence); Zaidi Al Wasti, another surname found among the same people; Yiddish informal title for grandfather",\n"subcategories": [\n{\n"subcategoryName": "The Zaidiyyah sect of Islam or Al-Zaidi",\n"description": "Adherents of the Zaidiyyah sect of Islam"\n},\n{\n"subcategoryName": "Al-Zaidi",\n"description": "Arab descendants of Zayd ibn Ali"\n},\n{\n"subcategoryName": "Zaidi Wasitis",\n"description": "People with the surname Zaidi, South Asian descendants of Zayd ibn Ali, from Wasit, Iraq, followers of Twelver or Athnā‘ashariyyah (Ja\'fari jurisprudence)"\n},\n{\n"subcategoryName": "Zaidi Al Wasti",\n"description": "Another surname found among the same people"\n},\n{\n"subcategoryName": "Yiddish informal title for grandfather",\n"description": "A term used in Yiddish to refer to a grandfather"\n}\n]\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Invalid role tag in [{'content': 'You are a helpful assistant. Your task is to carefully read the provided paragraph and extract relevant information that corresponds to the keys in the given JSON schema. Once you have identified the necessary information, please populate the JSON schema with the extracted data. In your response, refrain from uttering any extraneous words.', 'role': 'system'}, {'content': 'paragraph:\nThis is how many Afghan refugees Lancashire\'s districts have offered to help so far\n\nLancashire\'s district councils are assessing how many Afghan refugees they can help under a scheme designed specifically to resettle people from the country who helped UK armed forces during the mission in their homeland – with pledges to help 30 families so far made.\n\nThe government has announced that the UK intends to welcome up to 20,000 Afghans over a five-year period – with 5,000 of them set to arrive before the end of the year.\n\nThat commitment was made by ministers following the Taliban takeover over the country this month.\n\nHowever, the UK had already established a programme to offer refuge to those who could be under threat because of their roles in assisting the army over the past two decades.\n\nInternally displaced Afghan families, who fled from Kunduz and Takhar province due to battles between Taliban and Afghan security forces, eat their lunch at the Shahr-e-Naw Park in Kabul on 10th August, 2021\n\nLancashire County Council, which is co-ordinating the region\'s response to the Afghan Locally-Employed Staff Relocation Scheme, says that it has so far received no details from the government about the resettlement of ordinary civilians as part of the UK\'s wider commitment.\n\nCabinet member for community and cultural services Peter Buckley said: "Councils across Lancashire have been asked to make a pledge about the number of families they can help, and so far confirmation has been received from Lancaster, Wyre, South Ribble and West Lancashire.\n\n"Between them, they will be able to house 30 families, with our first family having arrived in Lancaster a few weeks ago.\n\n"We are also set to hear back shortly from the county\'s other district and borough councils – and expect this number to grow.\n\n"When the families arrive, the Home Office will provide funding to help support the families while they integrate over the next 12 months," County Cllr Buckley added.\n\nThe Local Democracy Reporting Service understands that South Ribble has offered to help 10 families and is currently searching for suitable accommodation, while a previous commitment by Chorley to provide the same number of places for refugees in general could now be used for Afghans.\n\nWyre Council told the LDRS that it was not at the stage of agreeing numbers as yet, but added:\n\n"Over the last four years, Wyre Council has been pleased to offer support to 11 Syrian refugee families who we\'ve helped to resettle in the borough. We are currently looking to extend our support of the Government\'s UK Resettlement scheme and provide support for up to five further Syrian households every two years.\n\n"Additionally we are now looking to see how we can support government Afghan relocation schemes as the situation develops. "Our priority is to ensure that any relocated families are safe and settled and do what we can to help them become part of the local community."\n\nThe government\'s Afghan relocations and assistance policy (ARAP) began back in April, as a replacement for previous resettlement arrangements for those who have helped UK forces over the past two decades. It offers three routes to the UK – including urgent relocation, by priority, to those assessed to be at risk of serious threat to life due to their work with the UK. That channel is open to all current or former staff employed directly by the UK government in Afghanistan since 2001, regardless of their role, job, length of service or reason for leaving.\n\nAlso available is relocation, by default, to a specific group of directly-employed current and former employees in what are deemed "exposed roles", such as some embassy support staff, those in political or counter-terrorism functions, as well as cultural advisers and interpreters. Finally, ministers can also approve, at their own discretion, relocation of people considered special cases because of their work in highly sensitive roles.\njson schema:\n{"title": "RefugeeResettlement", "type": "object", "properties": {"councils": {"title": "Councils", "type": "array", "items": {"type": "object", "properties": {"districtName": {"title": "District Name", "type": "string"}, "pledge": {"title": "Pledge", "type": "number"}, "currentStatus": {"title": "Current Status", "type": "string"}, "familiesHoused": {"title": "Families Housed", "type": "number"}, "accommodationSearch": {"title": "Accommodation Search", "type": "string"}, "supportExtension": {"title": "Support Extension", "type": "string"}, "priorityGroups": {"title": "Priority Groups", "type": "array", "items": {"type": "string"}}, "specialCases": {"title": "Special Cases", "type": "array", "items": {"type": "string"}}}, "required": ["districtName", "pledge", "currentStatus", "familiesHoused", "accommodationSearch", "supportExtension", "priorityGroups", "specialCases"]}}, "ukCommitment": {"title": "UK Commitment", "type": "object", "properties": {"timePeriod": {"title": "Time Period", "type": "string", "format": "date-time"}, "refugeeCount": {"title": "Refugee Count", "type": "number"}}, "required": ["timePeriod", "refugeeCount"]}, "relocationProgram": {"title": "Relocation Program", "type": "object", "properties": {"startDate": {"title": "Start Date", "type": "string", "format": "date-time"}, "schemeName": {"title": "Scheme Name", "type": "string"}, "eligibility": {"title": "Eligibility", "type": "array", "items": {"type": "string"}}}, "required": ["startDate", "schemeName", "eligibility"]}}, "required": ["councils", "ukCommitment", "relocationProgram"]}', 'role': 'user'}, {'content': '{\n "councils": [\n {\n "districtName": "Lancaster",\n "pledge": 10,\n "currentStatus": "confirmed",\n "familiesHoused": 0,\n "accommodationSearch": "not started",\n "supportExtension": "none",\n "priorityGroups": [],\n "specialCases": []\n },\n {\n "districtName": "Wyre",\n "pledge": 0,\n "currentStatus": "evaluating",\n "familiesHoused": 0,\n "accommodationSearch": "not started",\n "supportExtension": "for Syrian refugees",\n "priorityGroups": ["embassy support staff", "political or counter-terrorism functions", "cultural advisers and interpreters"],\n "specialCases": []\n },\n {\n "districtName": "South Ribble",\n "pledge": 10,\n "currentStatus": "evaluating",\n "familiesHoused": 0,\n "accommodationSearch": "searching",\n "supportExtension": "none",\n "priorityGroups": [],\n "specialCases": []\n },\n {\n "districtName": "West Lancashire",\n "pledge": 10,\n "currentStatus": "confirmed",\n "familiesHoused": 0,\n "accommodationSearch": "not started",\n "supportExtension": "none",\n "priorityGroups": [],\n "specialCases": []\n }\n ],\n "ukCommitment": {\n "timePeriod": "2021-08-16T00:00:00Z/2026-08-16T00:00:00Z",\n "refugeeCount": 20000\n },\n "relocationProgram": {\n "startDate": "2021-04-01T00:00:00Z",\n "schemeName": "Afghan relocations and assistance policy (ARAP)",\n "eligibility": [\n "current or former staff employed directly by the UK government in Afghanistan since 2001",\n "urgent relocation",\n "relocation by default",\n "special cases"\n ]\n }\n}', 'role': 'assistant'}].
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[WARNING|2026-05-24 05:49:03] llamafactory.data.converter:149 >> Skipping this abnormal example.
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Running tokenizer on dataset (num_proc=16): 79%|███████▊ | 44000/56000 [00:15<00:03, 3198.80 examples/s][WARNING|2026-05-24 05:49:20] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
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Running tokenizer on dataset (num_proc=16): 85%|████████▍ | 47500/56000 [00:19<00:10, 779.36 examples/s] [WARNING|2026-05-24 05:49:25] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
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Running tokenizer on dataset (num_proc=16): 87%|████████▋ | 48500/56000 [00:20<00:08, 881.85 examples/s][WARNING|2026-05-24 05:49:26] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
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[WARNING|2026-05-24 05:49:28] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 88%|████████▊ | 49500/56000 [00:23<00:10, 648.76 examples/s][WARNING|2026-05-24 05:49:28] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:28] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:28] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:28] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:29] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 90%|█████████ | 50500/56000 [00:24<00:07, 700.19 examples/s][WARNING|2026-05-24 05:49:29] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:29] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 92%|█████████▏| 51500/56000 [00:25<00:05, 831.52 examples/s][WARNING|2026-05-24 05:49:30] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:30] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:30] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:30] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:30] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:30] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:31] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:31] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:31] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:31] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:31] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:32] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:32] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:32] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:32] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:33] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 94%|█████████▍| 52500/56000 [00:28<00:06, 521.22 examples/s][WARNING|2026-05-24 05:49:33] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 96%|█████████▌| 53500/56000 [00:28<00:03, 727.68 examples/s][WARNING|2026-05-24 05:49:33] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 97%|█████████▋| 54500/56000 [00:29<00:01, 869.25 examples/s][WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:34] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:35] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:35] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:35] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:35] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:36] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
[WARNING|2026-05-24 05:49:36] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 98%|█████████▊| 55000/56000 [00:30<00:01, 660.00 examples/s][WARNING|2026-05-24 05:49:36] llamafactory.data.processor.supervised:149 >> Dropped invalid example: []
|
||
Running tokenizer on dataset (num_proc=16): 99%|█████████▉| 55500/56000 [00:31<00:00, 751.65 examples/s]
Running tokenizer on dataset (num_proc=16): 100%|██████████| 56000/56000 [00:31<00:00, 870.56 examples/s]
Running tokenizer on dataset (num_proc=16): 100%|██████████| 56000/56000 [00:34<00:00, 1637.69 examples/s]
|
||
training example:
|
||
input_ids:
|
||
[151644, 872, 198, 2121, 264, 3908, 6240, 30660, 27061, 553, 11044, 2926, 24370, 11, 1855, 264, 18580, 6358, 315, 24931, 8699, 975, 10186, 304, 264, 5099, 27835, 2813, 13, 29279, 697, 6358, 5646, 4236, 1376, 7567, 323, 2326, 4650, 11513, 315, 8699, 975, 13, 98477, 279, 4244, 330, 58242, 1, 323, 330, 9752, 2022, 3263, 576, 6358, 1265, 387, 1378, 42643, 1293, 13, 26642, 697, 14613, 304, 264, 4718, 3561, 448, 1817, 14311, 438, 264, 8651, 4343, 13, 151645, 198, 151644, 77091, 198, 73594, 2236, 198, 515, 220, 330, 27727, 62, 16, 788, 330, 62980, 287, 8699, 975, 10186, 304, 264, 5099, 27835, 2813, 646, 4446, 911, 12114, 7567, 429, 5285, 448, 6481, 6240, 16170, 13, 5512, 11, 8699, 975, 646, 11941, 18379, 9364, 23689, 553, 10004, 24177, 304, 975, 36769, 11, 10693, 7775, 311, 8172, 6584, 323, 4345, 41256, 803, 13444, 13, 1096, 24177, 3545, 3059, 304, 7172, 25148, 11, 438, 8256, 525, 2952, 311, 975, 2337, 862, 16162, 5068, 4115, 2041, 279, 76449, 315, 264, 8606, 5163, 4573, 13, 10440, 11, 5110, 646, 11075, 23839, 2783, 18986, 553, 17719, 279, 1184, 369, 6961, 5163, 3550, 11, 14376, 1495, 389, 18024, 5435, 311, 8016, 11, 29419, 11, 323, 5163, 16720, 13, 20861, 11, 8699, 975, 10186, 1787, 705, 279, 10772, 7314, 11, 27362, 279, 23134, 315, 14988, 7775, 504, 16807, 52901, 10468, 11, 8450, 85544, 264, 803, 16807, 323, 28308, 30927, 13, 35074, 11, 8699, 975, 646, 16792, 311, 264, 38245, 975, 25843, 17590, 11, 892, 646, 18472, 8231, 411, 323, 47539, 7813, 11, 22136, 1293, 9663, 9364, 37131, 13, 17375, 11, 553, 17719, 279, 1184, 369, 7298, 93850, 11, 8699, 975, 11554, 12158, 40229, 11, 43549, 279, 2813, 594, 12499, 42872, 323, 5285, 287, 448, 41588, 21896, 2562, 2750, 10346, 2303, 220, 330, 27727, 62, 17, 788, 330, 19810, 1493, 7567, 11, 1052, 525, 4650, 11513, 429, 1969, 387, 20068, 979, 24931, 8699, 975, 10186, 13, 3776, 3598, 8645, 374, 279, 5214, 315, 53082, 2083, 95293, 323, 20031, 11, 438, 8699, 975, 646, 2990, 311, 15650, 315, 30298, 323, 99077, 4221, 8256, 11, 892, 1231, 5421, 2083, 29195, 323, 10535, 13, 10440, 11, 1052, 374, 279, 4265, 315, 20337, 12966, 975, 5068, 323, 38142, 26, 19680, 1184, 311, 10515, 862, 14830, 311, 5978, 429, 8256, 7146, 26664, 323, 26236, 2041, 2118, 37117, 13, 17375, 11, 279, 6407, 311, 8699, 975, 1231, 4441, 19652, 4344, 304, 2813, 7674, 11, 438, 8606, 2750, 323, 12378, 1231, 1184, 311, 387, 312, 5655, 831, 12852, 311, 4946, 264, 803, 47963, 975, 1614, 13, 2014, 22279, 1493, 11513, 11, 432, 374, 16587, 369, 5110, 311, 2725, 304, 4752, 264, 3746, 4108, 3942, 323, 311, 3410, 2797, 16665, 323, 1824, 369, 8699, 8256, 10040, 532, 73594, 151645, 198]
|
||
inputs:
|
||
<|im_start|>user
|
||
As a young management consultant influenced by Peter Drucker, create a strategic analysis of implementing remote work policies in a mid-sized company. Ensure your analysis includes five key benefits and three potential challenges of remote work. Exclude the words "technology" and "globalization". The analysis should be two paragraphs long. Present your findings in a JSON format with each paragraph as a separate entry.<|im_end|>
|
||
<|im_start|>assistant
|
||
```json
|
||
{
|
||
"paragraph_1": "Implementing remote work policies in a mid-sized company can bring about numerous benefits that align with modern management principles. First, remote work can significantly enhance employee satisfaction by offering flexibility in work schedules, allowing individuals to balance professional and personal commitments more effectively. This flexibility often results in increased productivity, as employees are able to work during their peak performance hours without the distractions of a traditional office environment. Second, companies can achieve considerable cost savings by reducing the need for physical office space, cutting down on expenses related to rent, utilities, and office supplies. Third, remote work policies open up the talent pool, enabling the hiring of qualified individuals from diverse geographical locations, thus fostering a more diverse and inclusive workforce. Fourth, remote work can contribute to a healthier work-life integration, which can decrease burnout and turnover rates, promoting long-term employee retention. Finally, by reducing the need for daily commuting, remote work supports environmental sustainability, decreasing the company's carbon footprint and aligning with eco-friendly business values.",
|
||
|
||
"paragraph_2": "Despite these benefits, there are potential challenges that must be addressed when implementing remote work policies. One major challenge is the risk of diminished team cohesion and collaboration, as remote work can lead to feelings of isolation and detachment among employees, which may impact team dynamics and communication. Second, there is the issue of maintaining consistent work performance and accountability; managers need to adapt their strategies to ensure that employees remain motivated and productive without direct supervision. Finally, the shift to remote work may necessitate changes in company culture, as traditional values and practices may need to be re-evaluated to fit a more decentralized work model. To overcome these challenges, it is crucial for companies to invest in building a strong virtual community and to provide clear expectations and support for remote employees."
|
||
}
|
||
```<|im_end|>
|
||
|
||
label_ids:
|
||
[-100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, -100, 73594, 2236, 198, 515, 220, 330, 27727, 62, 16, 788, 330, 62980, 287, 8699, 975, 10186, 304, 264, 5099, 27835, 2813, 646, 4446, 911, 12114, 7567, 429, 5285, 448, 6481, 6240, 16170, 13, 5512, 11, 8699, 975, 646, 11941, 18379, 9364, 23689, 553, 10004, 24177, 304, 975, 36769, 11, 10693, 7775, 311, 8172, 6584, 323, 4345, 41256, 803, 13444, 13, 1096, 24177, 3545, 3059, 304, 7172, 25148, 11, 438, 8256, 525, 2952, 311, 975, 2337, 862, 16162, 5068, 4115, 2041, 279, 76449, 315, 264, 8606, 5163, 4573, 13, 10440, 11, 5110, 646, 11075, 23839, 2783, 18986, 553, 17719, 279, 1184, 369, 6961, 5163, 3550, 11, 14376, 1495, 389, 18024, 5435, 311, 8016, 11, 29419, 11, 323, 5163, 16720, 13, 20861, 11, 8699, 975, 10186, 1787, 705, 279, 10772, 7314, 11, 27362, 279, 23134, 315, 14988, 7775, 504, 16807, 52901, 10468, 11, 8450, 85544, 264, 803, 16807, 323, 28308, 30927, 13, 35074, 11, 8699, 975, 646, 16792, 311, 264, 38245, 975, 25843, 17590, 11, 892, 646, 18472, 8231, 411, 323, 47539, 7813, 11, 22136, 1293, 9663, 9364, 37131, 13, 17375, 11, 553, 17719, 279, 1184, 369, 7298, 93850, 11, 8699, 975, 11554, 12158, 40229, 11, 43549, 279, 2813, 594, 12499, 42872, 323, 5285, 287, 448, 41588, 21896, 2562, 2750, 10346, 2303, 220, 330, 27727, 62, 17, 788, 330, 19810, 1493, 7567, 11, 1052, 525, 4650, 11513, 429, 1969, 387, 20068, 979, 24931, 8699, 975, 10186, 13, 3776, 3598, 8645, 374, 279, 5214, 315, 53082, 2083, 95293, 323, 20031, 11, 438, 8699, 975, 646, 2990, 311, 15650, 315, 30298, 323, 99077, 4221, 8256, 11, 892, 1231, 5421, 2083, 29195, 323, 10535, 13, 10440, 11, 1052, 374, 279, 4265, 315, 20337, 12966, 975, 5068, 323, 38142, 26, 19680, 1184, 311, 10515, 862, 14830, 311, 5978, 429, 8256, 7146, 26664, 323, 26236, 2041, 2118, 37117, 13, 17375, 11, 279, 6407, 311, 8699, 975, 1231, 4441, 19652, 4344, 304, 2813, 7674, 11, 438, 8606, 2750, 323, 12378, 1231, 1184, 311, 387, 312, 5655, 831, 12852, 311, 4946, 264, 803, 47963, 975, 1614, 13, 2014, 22279, 1493, 11513, 11, 432, 374, 16587, 369, 5110, 311, 2725, 304, 4752, 264, 3746, 4108, 3942, 323, 311, 3410, 2797, 16665, 323, 1824, 369, 8699, 8256, 10040, 532, 73594, 151645, 198]
|
||
labels:
|
||
```json
|
||
{
|
||
"paragraph_1": "Implementing remote work policies in a mid-sized company can bring about numerous benefits that align with modern management principles. First, remote work can significantly enhance employee satisfaction by offering flexibility in work schedules, allowing individuals to balance professional and personal commitments more effectively. This flexibility often results in increased productivity, as employees are able to work during their peak performance hours without the distractions of a traditional office environment. Second, companies can achieve considerable cost savings by reducing the need for physical office space, cutting down on expenses related to rent, utilities, and office supplies. Third, remote work policies open up the talent pool, enabling the hiring of qualified individuals from diverse geographical locations, thus fostering a more diverse and inclusive workforce. Fourth, remote work can contribute to a healthier work-life integration, which can decrease burnout and turnover rates, promoting long-term employee retention. Finally, by reducing the need for daily commuting, remote work supports environmental sustainability, decreasing the company's carbon footprint and aligning with eco-friendly business values.",
|
||
|
||
"paragraph_2": "Despite these benefits, there are potential challenges that must be addressed when implementing remote work policies. One major challenge is the risk of diminished team cohesion and collaboration, as remote work can lead to feelings of isolation and detachment among employees, which may impact team dynamics and communication. Second, there is the issue of maintaining consistent work performance and accountability; managers need to adapt their strategies to ensure that employees remain motivated and productive without direct supervision. Finally, the shift to remote work may necessitate changes in company culture, as traditional values and practices may need to be re-evaluated to fit a more decentralized work model. To overcome these challenges, it is crucial for companies to invest in building a strong virtual community and to provide clear expectations and support for remote employees."
|
||
}
|
||
```<|im_end|>
|
||
|
||
[INFO|configuration_utils.py:670] 2026-05-24 05:49:39,374 >> loading configuration file config.json from cache at /home/ubuntu/.cache/huggingface/hub/models--Qwen--Qwen3-1.7B/snapshots/70d244cc86ccca08cf5af4e1e306ecf908b1ad5e/config.json
|
||
[INFO|configuration_utils.py:742] 2026-05-24 05:49:39,375 >> Model config Qwen3Config {
|
||
"architectures": [
|
||
"Qwen3ForCausalLM"
|
||
],
|
||
"attention_bias": false,
|
||
"attention_dropout": 0.0,
|
||
"bos_token_id": 151643,
|
||
"dtype": "bfloat16",
|
||
"eos_token_id": 151645,
|
||
"head_dim": 128,
|
||
"hidden_act": "silu",
|
||
"hidden_size": 2048,
|
||
"initializer_range": 0.02,
|
||
"intermediate_size": 6144,
|
||
"layer_types": [
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention",
|
||
"full_attention"
|
||
],
|
||
"masked_layers": null,
|
||
"max_position_embeddings": 40960,
|
||
"max_window_layers": 28,
|
||
"model_type": "qwen3",
|
||
"num_attention_heads": 16,
|
||
"num_hidden_layers": 28,
|
||
"num_key_value_heads": 8,
|
||
"pad_token_id": null,
|
||
"rms_norm_eps": 1e-06,
|
||
"rope_parameters": {
|
||
"rope_theta": 1000000,
|
||
"rope_type": "default"
|
||
},
|
||
"sliding_window": null,
|
||
"sparsity_attn": null,
|
||
"sparsity_mlp": null,
|
||
"subnet_mode": null,
|
||
"subnet_type": null,
|
||
"threshold_attn": null,
|
||
"threshold_mlp": null,
|
||
"tie_word_embeddings": true,
|
||
"transformers_version": "5.2.0",
|
||
"use_cache": true,
|
||
"use_sliding_window": false,
|
||
"vocab_size": 151936
|
||
}
|
||
|
||
[INFO|2026-05-24 05:49:39] llamafactory.model.model_utils.kv_cache:144 >> KV cache is disabled during training.
|
||
[INFO|modeling_utils.py:710] 2026-05-24 05:49:39,705 >> loading weights file model.safetensors from cache at /home/ubuntu/.cache/huggingface/hub/models--Qwen--Qwen3-1.7B/snapshots/70d244cc86ccca08cf5af4e1e306ecf908b1ad5e/model.safetensors.index.json
|
||
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|
||
[INFO|modeling_utils.py:779] 2026-05-24 05:50:21,427 >> Will use dtype=torch.bfloat16 as defined in model's config object
|
||
[INFO|configuration_utils.py:1014] 2026-05-24 05:50:21,428 >> Generate config GenerationConfig {
|
||
"bos_token_id": 151643,
|
||
"eos_token_id": 151645,
|
||
"output_attentions": false,
|
||
"output_hidden_states": false,
|
||
"use_cache": false
|
||
}
|
||
|
||
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Loading weights: 51%|█████ | 159/311 [00:00<00:00, 314.14it/s, Materializing param=model.layers.14.mlp.gate_proj.weight]The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
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The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
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The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
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Loading weights: 55%|█████▍ | 171/311 [00:00<00:00, 314.14it/s, Materializing param=model.layers.15.mlp.up_proj.weight][INFO|configuration_utils.py:967] 2026-05-24 05:50:22,194 >> loading configuration file generation_config.json from cache at /home/ubuntu/.cache/huggingface/hub/models--Qwen--Qwen3-1.7B/snapshots/70d244cc86ccca08cf5af4e1e306ecf908b1ad5e/generation_config.json
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"bos_token_id": 151643,
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"do_sample": true,
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"eos_token_id": [
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151645,
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151643
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],
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"pad_token_id": 151643,
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"temperature": 0.6,
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"top_k": 20,
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"top_p": 0.95
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}
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[INFO|2026-05-24 05:50:22] llamafactory.model.model_utils.checkpointing:144 >> Gradient checkpointing enabled.
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[INFO|2026-05-24 05:50:22] llamafactory.model.model_utils.attention:144 >> Using torch SDPA for faster training and inference.
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[INFO|2026-05-24 05:50:22] llamafactory.model.adapter:144 >> Upcasting trainable params to float32.
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[INFO|2026-05-24 05:50:22] llamafactory.model.adapter:144 >> Fine-tuning method: Full
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Loading weights: 83%|████████▎ | 257/311 [00:00<00:00, 434.50it/s, Materializing param=model.layers.23.mlp.down_proj.weight]The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
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Loading weights: 83%|████████▎ | 258/311 [00:00<00:00, 433.20it/s, Materializing param=model.layers.23.mlp.gate_proj.weight]The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
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The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
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The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
|
||
The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
|
||
The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
|
||
The tied weights mapping and config for this model specifies to tie model.embed_tokens.weight to lm_head.weight, but both are present in the checkpoints, so we will NOT tie them. You should update the config with `tie_word_embeddings=False` to silence this warning
|
||
The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
|
||
[WARNING|trainer_utils.py:1234] 2026-05-24 05:50:22,623 >> The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
|
||
The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
|
||
The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
|
||
The tokenizer has new PAD/BOS/EOS tokens that differ from the model config and generation config. The model config and generation config were aligned accordingly, being updated with the tokenizer's values. Updated tokens: {'bos_token_id': None, 'pad_token_id': 151643}.
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||
[INFO|trainer.py:1587] 2026-05-24 05:50:25,166 >> ***** Running training *****
|
||
[INFO|trainer.py:1588] 2026-05-24 05:50:25,166 >> Num examples = 55,931
|
||
[INFO|trainer.py:1589] 2026-05-24 05:50:25,166 >> Num Epochs = 2
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||
[INFO|trainer.py:1590] 2026-05-24 05:50:25,166 >> Instantaneous batch size per device = 8
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||
[INFO|trainer.py:1593] 2026-05-24 05:50:25,166 >> Total train batch size (w. parallel, distributed & accumulation) = 128
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||
[INFO|trainer.py:1594] 2026-05-24 05:50:25,166 >> Gradient Accumulation steps = 2
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||
[INFO|trainer.py:1595] 2026-05-24 05:50:25,166 >> Total optimization steps = 874
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||
[INFO|trainer.py:1596] 2026-05-24 05:50:25,167 >> Number of trainable parameters = 2,031,739,904
|
||
wandb: [wandb.login()] Loaded credentials for https://api.wandb.ai from WANDB_API_KEY.
|
||
wandb: Currently logged in as: kkhya (maskmoe) to https://api.wandb.ai. Use `wandb login --relogin` to force relogin
|
||
wandb: setting up run j7unaum2
|
||
wandb: Tracking run with wandb version 0.27.0
|
||
wandb: Run data is saved locally in /home/ubuntu/Mingyuan/lm-factory/wandb/run-20260524_055025-j7unaum2
|
||
wandb: Run `wandb offline` to turn off syncing.
|
||
wandb: Syncing run qwen3_1.7b_if_fft
|
||
wandb: ⭐️ View project at https://wandb.ai/maskmoe/MFT-LM
|
||
wandb: 🚀 View run at https://wandb.ai/maskmoe/MFT-LM/runs/j7unaum2
|
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{'loss': '1.394', 'grad_norm': '18.22', 'learning_rate': '1.023e-06', 'epoch': '0.02288'}
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2%|▏ | 15/874 [00:38<34:13, 2.39s/it]
2%|▏ | 16/874 [00:40<32:38, 2.28s/it]
2%|▏ | 17/874 [00:43<35:21, 2.48s/it]
2%|▏ | 18/874 [00:46<34:50, 2.44s/it]
2%|▏ | 19/874 [00:48<35:04, 2.46s/it]
2%|▏ | 20/874 [00:50<33:39, 2.36s/it]
{'loss': '1.384', 'grad_norm': '14.22', 'learning_rate': '2.159e-06', 'epoch': '0.04577'}
|
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2%|▏ | 20/874 [00:50<33:39, 2.36s/it]
2%|▏ | 21/874 [00:53<37:06, 2.61s/it]
3%|▎ | 22/874 [00:56<37:02, 2.61s/it]
3%|▎ | 23/874 [00:59<37:18, 2.63s/it]
3%|▎ | 24/874 [01:01<34:36, 2.44s/it]
3%|▎ | 25/874 [01:03<34:43, 2.45s/it]
3%|▎ | 26/874 [01:05<32:32, 2.30s/it]
3%|▎ | 27/874 [01:07<33:03, 2.34s/it]
3%|▎ | 28/874 [01:11<36:21, 2.58s/it]
3%|▎ | 29/874 [01:13<34:15, 2.43s/it]
3%|▎ | 30/874 [01:15<35:00, 2.49s/it]
{'loss': '1.34', 'grad_norm': '8.084', 'learning_rate': '3.295e-06', 'epoch': '0.06865'}
|
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3%|▎ | 30/874 [01:15<35:00, 2.49s/it]
4%|▎ | 31/874 [01:18<35:34, 2.53s/it]
4%|▎ | 32/874 [01:21<36:46, 2.62s/it]
4%|▍ | 33/874 [01:23<35:53, 2.56s/it]
4%|▍ | 34/874 [01:26<37:48, 2.70s/it]
4%|▍ | 35/874 [01:28<35:34, 2.54s/it]
4%|▍ | 36/874 [01:30<32:50, 2.35s/it]
4%|▍ | 37/874 [01:33<32:36, 2.34s/it]
4%|▍ | 38/874 [01:36<35:31, 2.55s/it]
4%|▍ | 39/874 [01:38<35:57, 2.58s/it]
5%|▍ | 40/874 [01:40<32:56, 2.37s/it]
{'loss': '1.199', 'grad_norm': '4.825', 'learning_rate': '4.432e-06', 'epoch': '0.09153'}
|
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5%|▍ | 40/874 [01:40<32:56, 2.37s/it]
5%|▍ | 41/874 [01:43<33:19, 2.40s/it]
5%|▍ | 42/874 [01:45<32:18, 2.33s/it]
5%|▍ | 43/874 [01:48<34:41, 2.50s/it]
5%|▌ | 44/874 [01:50<33:57, 2.45s/it]
5%|▌ | 45/874 [01:53<33:42, 2.44s/it]
5%|▌ | 46/874 [01:55<33:00, 2.39s/it]
5%|▌ | 47/874 [01:57<33:33, 2.43s/it]
5%|▌ | 48/874 [02:00<33:19, 2.42s/it]
6%|▌ | 49/874 [02:02<33:05, 2.41s/it]
6%|▌ | 50/874 [02:05<34:08, 2.49s/it]
{'loss': '1.184', 'grad_norm': '2.621', 'learning_rate': '5.568e-06', 'epoch': '0.1144'}
|
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6%|▌ | 50/874 [02:05<34:08, 2.49s/it]
6%|▌ | 51/874 [02:07<33:16, 2.43s/it]
6%|▌ | 52/874 [02:10<34:07, 2.49s/it]
6%|▌ | 53/874 [02:12<34:21, 2.51s/it]
6%|▌ | 54/874 [02:15<35:44, 2.61s/it]
6%|▋ | 55/874 [02:18<35:29, 2.60s/it]
6%|▋ | 56/874 [02:20<34:00, 2.49s/it]
7%|▋ | 57/874 [02:23<38:08, 2.80s/it]
7%|▋ | 58/874 [02:25<34:33, 2.54s/it]
7%|▋ | 59/874 [02:28<34:02, 2.51s/it]
7%|▋ | 60/874 [02:30<32:39, 2.41s/it]
{'loss': '1.151', 'grad_norm': '2.281', 'learning_rate': '6.705e-06', 'epoch': '0.1373'}
|
||
7%|▋ | 60/874 [02:30<32:39, 2.41s/it]
7%|▋ | 61/874 [02:33<33:09, 2.45s/it]
7%|▋ | 62/874 [02:35<33:04, 2.44s/it]
7%|▋ | 63/874 [02:38<34:12, 2.53s/it]
7%|▋ | 64/874 [02:40<32:44, 2.42s/it]
7%|▋ | 65/874 [02:43<34:49, 2.58s/it]
8%|▊ | 66/874 [02:46<36:44, 2.73s/it]
8%|▊ | 67/874 [02:48<35:50, 2.66s/it]
8%|▊ | 68/874 [02:51<36:46, 2.74s/it]
8%|▊ | 69/874 [02:54<35:03, 2.61s/it]
8%|▊ | 70/874 [02:56<35:36, 2.66s/it]
{'loss': '1.134', 'grad_norm': '1.84', 'learning_rate': '7.841e-06', 'epoch': '0.1602'}
|
||
8%|▊ | 70/874 [02:56<35:36, 2.66s/it]
8%|▊ | 71/874 [02:59<33:56, 2.54s/it]
8%|▊ | 72/874 [03:01<33:09, 2.48s/it]
8%|▊ | 73/874 [03:04<33:23, 2.50s/it]
8%|▊ | 74/874 [03:06<33:14, 2.49s/it]
9%|▊ | 75/874 [03:08<32:14, 2.42s/it]
9%|▊ | 76/874 [03:10<30:46, 2.31s/it]
9%|▉ | 77/874 [03:13<31:44, 2.39s/it]
9%|▉ | 78/874 [03:15<31:27, 2.37s/it]
9%|▉ | 79/874 [03:17<29:55, 2.26s/it]
9%|▉ | 80/874 [03:20<30:55, 2.34s/it]
{'loss': '1.063', 'grad_norm': '1.405', 'learning_rate': '8.977e-06', 'epoch': '0.1831'}
|
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9%|▉ | 80/874 [03:20<30:55, 2.34s/it]
9%|▉ | 81/874 [03:22<30:38, 2.32s/it]
9%|▉ | 82/874 [03:24<30:15, 2.29s/it]
9%|▉ | 83/874 [03:27<30:40, 2.33s/it]
10%|▉ | 84/874 [03:29<31:36, 2.40s/it]
10%|▉ | 85/874 [03:31<30:53, 2.35s/it]
10%|▉ | 86/874 [03:34<30:08, 2.29s/it]
10%|▉ | 87/874 [03:36<30:23, 2.32s/it]
10%|█ | 88/874 [03:38<29:25, 2.25s/it]
10%|█ | 89/874 [03:41<30:40, 2.34s/it]
10%|█ | 90/874 [03:43<29:46, 2.28s/it]
{'loss': '1.056', 'grad_norm': '1.126', 'learning_rate': '1e-05', 'epoch': '0.2059'}
|
||
10%|█ | 90/874 [03:43<29:46, 2.28s/it]
10%|█ | 91/874 [03:45<28:52, 2.21s/it]
11%|█ | 92/874 [03:47<29:10, 2.24s/it]
11%|█ | 93/874 [03:50<30:21, 2.33s/it]
11%|█ | 94/874 [03:52<28:58, 2.23s/it]
11%|█ | 95/874 [03:54<30:39, 2.36s/it]
11%|█ | 96/874 [03:56<29:25, 2.27s/it]
11%|█ | 97/874 [03:59<30:19, 2.34s/it]
11%|█ | 98/874 [04:01<31:03, 2.40s/it]
11%|█▏ | 99/874 [04:04<32:47, 2.54s/it]
11%|█▏ | 100/874 [04:06<31:13, 2.42s/it]
{'loss': '1.045', 'grad_norm': '1.186', 'learning_rate': '9.995e-06', 'epoch': '0.2288'}
|
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11%|█▏ | 100/874 [04:06<31:13, 2.42s/it]
12%|█▏ | 101/874 [04:09<31:58, 2.48s/it]
12%|█▏ | 102/874 [04:12<31:59, 2.49s/it]
12%|█▏ | 103/874 [04:14<31:46, 2.47s/it]
12%|█▏ | 104/874 [04:17<31:51, 2.48s/it]
12%|█▏ | 105/874 [04:19<31:30, 2.46s/it]
12%|█▏ | 106/874 [04:22<32:44, 2.56s/it]
12%|█▏ | 107/874 [04:24<30:29, 2.39s/it]
12%|█▏ | 108/874 [04:26<31:03, 2.43s/it]
12%|█▏ | 109/874 [04:29<31:08, 2.44s/it]
13%|█▎ | 110/874 [04:31<29:22, 2.31s/it]
{'loss': '1.07', 'grad_norm': '1.051', 'learning_rate': '9.982e-06', 'epoch': '0.2517'}
|
||
13%|█▎ | 110/874 [04:31<29:22, 2.31s/it]
13%|█▎ | 111/874 [04:33<30:11, 2.37s/it]
13%|█▎ | 112/874 [04:35<28:42, 2.26s/it]
13%|█▎ | 113/874 [04:38<31:50, 2.51s/it]
13%|█▎ | 114/874 [04:41<32:36, 2.57s/it]
13%|█▎ | 115/874 [04:43<31:43, 2.51s/it]
13%|█▎ | 116/874 [04:45<28:55, 2.29s/it]
13%|█▎ | 117/874 [04:47<29:03, 2.30s/it]
14%|█▎ | 118/874 [04:50<28:38, 2.27s/it]
14%|█▎ | 119/874 [04:52<27:32, 2.19s/it]
14%|█▎ | 120/874 [04:54<27:10, 2.16s/it]
{'loss': '1.052', 'grad_norm': '0.9556', 'learning_rate': '9.962e-06', 'epoch': '0.2746'}
|
||
14%|█▎ | 120/874 [04:54<27:10, 2.16s/it]
14%|█▍ | 121/874 [04:56<26:58, 2.15s/it]
14%|█▍ | 122/874 [04:58<26:34, 2.12s/it]
14%|█▍ | 123/874 [05:01<29:04, 2.32s/it]
14%|█▍ | 124/874 [05:03<27:57, 2.24s/it]
14%|█▍ | 125/874 [05:05<29:10, 2.34s/it]
14%|█▍ | 126/874 [05:08<30:47, 2.47s/it]
15%|█▍ | 127/874 [05:11<32:17, 2.59s/it]
15%|█▍ | 128/874 [05:13<31:09, 2.51s/it]
15%|█▍ | 129/874 [05:16<30:04, 2.42s/it]
15%|█▍ | 130/874 [05:17<28:13, 2.28s/it]
{'loss': '1.053', 'grad_norm': '1.06', 'learning_rate': '9.933e-06', 'epoch': '0.2975'}
|
||
15%|█▍ | 130/874 [05:17<28:13, 2.28s/it]
15%|█▍ | 131/874 [05:20<29:24, 2.38s/it]
15%|█▌ | 132/874 [05:22<28:15, 2.29s/it]
15%|█▌ | 133/874 [05:24<27:11, 2.20s/it]
15%|█▌ | 134/874 [05:26<26:00, 2.11s/it]
15%|█▌ | 135/874 [05:28<27:06, 2.20s/it]
16%|█▌ | 136/874 [05:31<29:33, 2.40s/it]
16%|█▌ | 137/874 [05:34<30:17, 2.47s/it]
16%|█▌ | 138/874 [05:36<30:04, 2.45s/it]
16%|█▌ | 139/874 [05:39<28:47, 2.35s/it]
16%|█▌ | 140/874 [05:41<28:08, 2.30s/it]
{'loss': '1.041', 'grad_norm': '0.9935', 'learning_rate': '9.896e-06', 'epoch': '0.3204'}
|
||
16%|█▌ | 140/874 [05:41<28:08, 2.30s/it]
16%|█▌ | 141/874 [05:43<26:34, 2.18s/it]
16%|█▌ | 142/874 [05:45<26:57, 2.21s/it]
16%|█▋ | 143/874 [05:48<29:06, 2.39s/it]
16%|█▋ | 144/874 [05:50<28:28, 2.34s/it]
17%|█▋ | 145/874 [05:52<27:39, 2.28s/it]
17%|█▋ | 146/874 [05:55<29:05, 2.40s/it]
17%|█▋ | 147/874 [05:58<32:01, 2.64s/it]
17%|█▋ | 148/874 [06:00<30:25, 2.51s/it]
17%|█▋ | 149/874 [06:02<28:29, 2.36s/it]
17%|█▋ | 150/874 [06:05<29:15, 2.43s/it]
{'loss': '1.015', 'grad_norm': '0.9297', 'learning_rate': '9.852e-06', 'epoch': '0.3432'}
|
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17%|█▋ | 150/874 [06:05<29:15, 2.43s/it]
17%|█▋ | 151/874 [06:07<27:59, 2.32s/it]
17%|█▋ | 152/874 [06:09<28:32, 2.37s/it]
18%|█▊ | 153/874 [06:12<28:42, 2.39s/it]
18%|█▊ | 154/874 [06:14<27:43, 2.31s/it]
18%|█▊ | 155/874 [06:17<29:45, 2.48s/it]
18%|█▊ | 156/874 [06:19<30:43, 2.57s/it]
18%|█▊ | 157/874 [06:22<30:58, 2.59s/it]
18%|█▊ | 158/874 [06:24<29:18, 2.46s/it]
18%|█▊ | 159/874 [06:26<28:25, 2.38s/it]
18%|█▊ | 160/874 [06:28<26:26, 2.22s/it]
{'loss': '1.018', 'grad_norm': '1.093', 'learning_rate': '9.8e-06', 'epoch': '0.3661'}
|
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18%|█▊ | 160/874 [06:28<26:26, 2.22s/it]
18%|█▊ | 161/874 [06:30<25:49, 2.17s/it]
19%|█▊ | 162/874 [06:32<25:28, 2.15s/it]
19%|█▊ | 163/874 [06:35<25:20, 2.14s/it]
19%|█▉ | 164/874 [06:37<26:43, 2.26s/it]
19%|█▉ | 165/874 [06:40<27:03, 2.29s/it]
19%|█▉ | 166/874 [06:41<25:44, 2.18s/it]
19%|█▉ | 167/874 [06:45<29:44, 2.52s/it]
19%|█▉ | 168/874 [06:47<28:28, 2.42s/it]
19%|█▉ | 169/874 [06:49<26:48, 2.28s/it]
19%|█▉ | 170/874 [06:51<25:49, 2.20s/it]
{'loss': '1.061', 'grad_norm': '0.9561', 'learning_rate': '9.74e-06', 'epoch': '0.389'}
|
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19%|█▉ | 170/874 [06:51<25:49, 2.20s/it]
20%|█▉ | 171/874 [06:53<25:30, 2.18s/it]
20%|█▉ | 172/874 [06:56<26:57, 2.30s/it]
20%|█▉ | 173/874 [06:58<27:23, 2.35s/it]
20%|█▉ | 174/874 [07:00<27:23, 2.35s/it]
20%|██ | 175/874 [07:02<25:38, 2.20s/it]
20%|██ | 176/874 [07:04<25:25, 2.18s/it]
20%|██ | 177/874 [07:08<29:18, 2.52s/it]
20%|██ | 178/874 [07:10<28:48, 2.48s/it]
20%|██ | 179/874 [07:13<29:19, 2.53s/it]
21%|██ | 180/874 [07:15<29:18, 2.53s/it]
{'loss': '0.9985', 'grad_norm': '1.008', 'learning_rate': '9.673e-06', 'epoch': '0.4119'}
|
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21%|██ | 180/874 [07:15<29:18, 2.53s/it]
21%|██ | 181/874 [07:18<30:11, 2.61s/it]
21%|██ | 182/874 [07:20<27:08, 2.35s/it]
21%|██ | 183/874 [07:22<27:36, 2.40s/it]
21%|██ | 184/874 [07:25<28:47, 2.50s/it]
21%|██ | 185/874 [07:27<27:22, 2.38s/it]
21%|██▏ | 186/874 [07:30<27:50, 2.43s/it]
21%|██▏ | 187/874 [07:32<28:04, 2.45s/it]
22%|██▏ | 188/874 [07:34<26:46, 2.34s/it]
22%|██▏ | 189/874 [07:37<28:05, 2.46s/it]
22%|██▏ | 190/874 [07:40<30:15, 2.65s/it]
{'loss': '1.06', 'grad_norm': '0.9294', 'learning_rate': '9.598e-06', 'epoch': '0.4348'}
|
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22%|██▏ | 190/874 [07:40<30:15, 2.65s/it]
22%|██▏ | 191/874 [07:42<27:25, 2.41s/it]
22%|██▏ | 192/874 [07:44<26:43, 2.35s/it]
22%|██▏ | 193/874 [07:46<25:35, 2.25s/it]
22%|██▏ | 194/874 [07:49<26:12, 2.31s/it]
22%|██▏ | 195/874 [07:51<26:37, 2.35s/it]
22%|██▏ | 196/874 [07:53<25:20, 2.24s/it]
23%|██▎ | 197/874 [07:56<25:44, 2.28s/it]
23%|██▎ | 198/874 [07:58<25:14, 2.24s/it]
23%|██▎ | 199/874 [08:00<24:27, 2.17s/it]
23%|██▎ | 200/874 [08:02<26:04, 2.32s/it]
{'loss': '1.025', 'grad_norm': '0.9174', 'learning_rate': '9.516e-06', 'epoch': '0.4577'}
|
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23%|██▎ | 200/874 [08:02<26:04, 2.32s/it]
23%|██▎ | 201/874 [08:05<27:05, 2.41s/it]
23%|██▎ | 202/874 [08:07<26:31, 2.37s/it]
23%|██▎ | 203/874 [08:09<25:39, 2.29s/it]
23%|██▎ | 204/874 [08:12<27:02, 2.42s/it]
23%|██▎ | 205/874 [08:14<26:29, 2.38s/it]
24%|██▎ | 206/874 [08:17<26:05, 2.34s/it]
24%|██▎ | 207/874 [08:19<26:30, 2.39s/it]
24%|██▍ | 208/874 [08:21<26:01, 2.35s/it]
24%|██▍ | 209/874 [08:23<25:16, 2.28s/it]
24%|██▍ | 210/874 [08:26<25:31, 2.31s/it]
{'loss': '1.046', 'grad_norm': '0.8785', 'learning_rate': '9.427e-06', 'epoch': '0.4805'}
|
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24%|██▍ | 210/874 [08:26<25:31, 2.31s/it]
24%|██▍ | 211/874 [08:29<28:44, 2.60s/it]
24%|██▍ | 212/874 [08:31<26:54, 2.44s/it]
24%|██▍ | 213/874 [08:33<24:35, 2.23s/it]
24%|██▍ | 214/874 [08:36<26:22, 2.40s/it]
25%|██▍ | 215/874 [08:38<26:07, 2.38s/it]
25%|██▍ | 216/874 [08:40<24:22, 2.22s/it]
25%|██▍ | 217/874 [08:42<24:48, 2.27s/it]
25%|██▍ | 218/874 [08:44<24:20, 2.23s/it]
25%|██▌ | 219/874 [08:47<24:44, 2.27s/it]
25%|██▌ | 220/874 [08:49<25:31, 2.34s/it]
{'loss': '0.9727', 'grad_norm': '0.9212', 'learning_rate': '9.33e-06', 'epoch': '0.5034'}
|
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25%|██▌ | 220/874 [08:49<25:31, 2.34s/it]
25%|██▌ | 221/874 [08:51<24:29, 2.25s/it]
25%|██▌ | 222/874 [08:53<23:00, 2.12s/it]
26%|██▌ | 223/874 [08:55<22:30, 2.07s/it]
26%|██▌ | 224/874 [08:58<23:52, 2.20s/it]
26%|██▌ | 225/874 [09:00<24:07, 2.23s/it]
26%|██▌ | 226/874 [09:03<26:32, 2.46s/it]
26%|██▌ | 227/874 [09:05<24:18, 2.25s/it]
26%|██▌ | 228/874 [09:07<25:30, 2.37s/it]
26%|██▌ | 229/874 [09:09<23:33, 2.19s/it]
26%|██▋ | 230/874 [09:12<25:43, 2.40s/it]
{'loss': '1.001', 'grad_norm': '0.9164', 'learning_rate': '9.227e-06', 'epoch': '0.5263'}
|
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26%|██▋ | 230/874 [09:12<25:43, 2.40s/it]
26%|██▋ | 231/874 [09:15<26:43, 2.49s/it]
27%|██▋ | 232/874 [09:18<28:04, 2.62s/it]
27%|██▋ | 233/874 [09:20<27:10, 2.54s/it]
27%|██▋ | 234/874 [09:22<26:04, 2.45s/it]
27%|██▋ | 235/874 [09:24<24:45, 2.32s/it]
27%|██▋ | 236/874 [09:27<25:03, 2.36s/it]
27%|██▋ | 237/874 [09:29<24:27, 2.30s/it]
27%|██▋ | 238/874 [09:31<23:59, 2.26s/it]
27%|██▋ | 239/874 [09:34<26:17, 2.48s/it]
27%|██▋ | 240/874 [09:37<27:57, 2.65s/it]
{'loss': '1.009', 'grad_norm': '1.038', 'learning_rate': '9.117e-06', 'epoch': '0.5492'}
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27%|██▋ | 240/874 [09:37<27:57, 2.65s/it]
28%|██▊ | 241/874 [09:39<26:36, 2.52s/it]
28%|██▊ | 242/874 [09:41<25:09, 2.39s/it]
28%|██▊ | 243/874 [09:44<26:06, 2.48s/it]
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{'loss': '1.033', 'grad_norm': '1.005', 'learning_rate': '9e-06', 'epoch': '0.5721'}
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{'loss': '1.034', 'grad_norm': '1.084', 'learning_rate': '8.877e-06', 'epoch': '0.595'}
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{'loss': '1.047', 'grad_norm': '1.044', 'learning_rate': '8.748e-06', 'epoch': '0.6178'}
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{'loss': '1.008', 'grad_norm': '0.8966', 'learning_rate': '8.612e-06', 'epoch': '0.6407'}
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{'loss': '1.014', 'grad_norm': '1.051', 'learning_rate': '8.471e-06', 'epoch': '0.6636'}
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{'loss': '1.048', 'grad_norm': '0.909', 'learning_rate': '8.325e-06', 'epoch': '0.6865'}
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{'loss': '0.9751', 'grad_norm': '0.8913', 'learning_rate': '8.173e-06', 'epoch': '0.7094'}
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{'loss': '0.9991', 'grad_norm': '0.9734', 'learning_rate': '8.016e-06', 'epoch': '0.7323'}
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{'loss': '1.023', 'grad_norm': '0.9568', 'learning_rate': '7.854e-06', 'epoch': '0.7551'}
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{'loss': '1.032', 'grad_norm': '1.213', 'learning_rate': '7.688e-06', 'epoch': '0.778'}
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{'loss': '0.9884', 'grad_norm': '0.8978', 'learning_rate': '7.517e-06', 'epoch': '0.8009'}
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{'loss': '0.9716', 'grad_norm': '1.023', 'learning_rate': '7.343e-06', 'epoch': '0.8238'}
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{'loss': '1.001', 'grad_norm': '0.8907', 'learning_rate': '7.164e-06', 'epoch': '0.8467'}
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{'loss': '1.023', 'grad_norm': '0.9992', 'learning_rate': '6.982e-06', 'epoch': '0.8696'}
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{'loss': '1.031', 'grad_norm': '0.9423', 'learning_rate': '6.797e-06', 'epoch': '0.8924'}
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{'loss': '0.9651', 'grad_norm': '0.9312', 'learning_rate': '6.61e-06', 'epoch': '0.9153'}
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{'loss': '0.9788', 'grad_norm': '0.8995', 'learning_rate': '6.419e-06', 'epoch': '0.9382'}
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{'loss': '1.017', 'grad_norm': '0.9293', 'learning_rate': '6.226e-06', 'epoch': '0.9611'}
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{'loss': '1.024', 'grad_norm': '1.006', 'learning_rate': '6.032e-06', 'epoch': '0.984'}
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{'loss': '1.038', 'grad_norm': '1.012', 'learning_rate': '5.835e-06', 'epoch': '1.007'}
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{'loss': '0.9823', 'grad_norm': '0.893', 'learning_rate': '5.638e-06', 'epoch': '1.03'}
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{'loss': '1.073', 'grad_norm': '0.9717', 'learning_rate': '5.439e-06', 'epoch': '1.053'}
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{'loss': '1.019', 'grad_norm': '0.9065', 'learning_rate': '5.24e-06', 'epoch': '1.076'}
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{'loss': '1.012', 'grad_norm': '0.8013', 'learning_rate': '5.04e-06', 'epoch': '1.098'}
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{'loss': '0.9734', 'grad_norm': '0.989', 'learning_rate': '4.84e-06', 'epoch': '1.121'}
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{'loss': '1.004', 'grad_norm': '0.9131', 'learning_rate': '4.641e-06', 'epoch': '1.144'}
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57%|█████▋ | 500/874 [19:51<14:33, 2.34s/it][INFO|trainer.py:3797] 2026-05-24 06:10:20,259 >> Saving model checkpoint to saves/qwen3_1.7b/if/fft/checkpoint-500
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[INFO|configuration_utils.py:432] 2026-05-24 06:10:20,262 >> Configuration saved in saves/qwen3_1.7b/if/fft/checkpoint-500/config.json
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[INFO|configuration_utils.py:803] 2026-05-24 06:10:20,263 >> Configuration saved in saves/qwen3_1.7b/if/fft/checkpoint-500/generation_config.json
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[INFO|modeling_utils.py:3380] 2026-05-24 06:10:23,766 >> Model weights saved in saves/qwen3_1.7b/if/fft/checkpoint-500/model.safetensors
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[INFO|tokenization_utils_base.py:3224] 2026-05-24 06:10:23,767 >> chat template saved in saves/qwen3_1.7b/if/fft/checkpoint-500/chat_template.jinja
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[INFO|tokenization_utils_base.py:2078] 2026-05-24 06:10:23,768 >> tokenizer config file saved in saves/qwen3_1.7b/if/fft/checkpoint-500/tokenizer_config.json
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{'loss': '1.006', 'grad_norm': '0.872', 'learning_rate': '4.442e-06', 'epoch': '1.167'}
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{'loss': '0.9842', 'grad_norm': '0.8993', 'learning_rate': '4.243e-06', 'epoch': '1.19'}
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{'loss': '0.9782', 'grad_norm': '1.01', 'learning_rate': '4.047e-06', 'epoch': '1.213'}
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{'loss': '0.9991', 'grad_norm': '0.9221', 'learning_rate': '3.851e-06', 'epoch': '1.236'}
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{'loss': '1.003', 'grad_norm': '1.045', 'learning_rate': '3.658e-06', 'epoch': '1.259'}
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{'loss': '0.995', 'grad_norm': '0.8805', 'learning_rate': '3.466e-06', 'epoch': '1.281'}
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{'loss': '1.013', 'grad_norm': '0.944', 'learning_rate': '3.277e-06', 'epoch': '1.304'}
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{'loss': '1.035', 'grad_norm': '0.9838', 'learning_rate': '3.091e-06', 'epoch': '1.327'}
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{'loss': '0.9832', 'grad_norm': '1.039', 'learning_rate': '2.908e-06', 'epoch': '1.35'}
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{'loss': '0.9713', 'grad_norm': '0.8741', 'learning_rate': '2.728e-06', 'epoch': '1.373'}
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{'loss': '1.013', 'grad_norm': '1.017', 'learning_rate': '2.552e-06', 'epoch': '1.396'}
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{'loss': '1.03', 'grad_norm': '1.053', 'learning_rate': '2.38e-06', 'epoch': '1.419'}
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{'loss': '1.045', 'grad_norm': '0.8907', 'learning_rate': '2.212e-06', 'epoch': '1.442'}
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{'loss': '1.01', 'grad_norm': '0.9182', 'learning_rate': '2.048e-06', 'epoch': '1.465'}
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{'loss': '0.9954', 'grad_norm': '0.9592', 'learning_rate': '1.889e-06', 'epoch': '1.487'}
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{'loss': '1.039', 'grad_norm': '0.9536', 'learning_rate': '1.735e-06', 'epoch': '1.51'}
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{'loss': '1.023', 'grad_norm': '0.9851', 'learning_rate': '1.587e-06', 'epoch': '1.533'}
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{'loss': '1', 'grad_norm': '0.912', 'learning_rate': '1.443e-06', 'epoch': '1.556'}
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{'loss': '0.9492', 'grad_norm': '0.8398', 'learning_rate': '1.306e-06', 'epoch': '1.579'}
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{'loss': '1.022', 'grad_norm': '0.9803', 'learning_rate': '1.174e-06', 'epoch': '1.602'}
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{'loss': '1.034', 'grad_norm': '1.007', 'learning_rate': '1.048e-06', 'epoch': '1.625'}
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{'loss': '0.9451', 'grad_norm': '0.881', 'learning_rate': '9.292e-07', 'epoch': '1.648'}
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{'loss': '1.021', 'grad_norm': '1.014', 'learning_rate': '8.165e-07', 'epoch': '1.67'}
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{'loss': '1.003', 'grad_norm': '0.9183', 'learning_rate': '7.104e-07', 'epoch': '1.693'}
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{'loss': '1.002', 'grad_norm': '0.9808', 'learning_rate': '6.112e-07', 'epoch': '1.716'}
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{'loss': '0.9872', 'grad_norm': '0.8875', 'learning_rate': '5.19e-07', 'epoch': '1.739'}
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{'loss': '0.9818', 'grad_norm': '1.024', 'learning_rate': '4.339e-07', 'epoch': '1.762'}
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{'loss': '1.052', 'grad_norm': '0.9245', 'learning_rate': '3.561e-07', 'epoch': '1.785'}
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{'loss': '1.019', 'grad_norm': '0.9501', 'learning_rate': '2.858e-07', 'epoch': '1.808'}
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{'loss': '0.9678', 'grad_norm': '0.9551', 'learning_rate': '2.23e-07', 'epoch': '1.831'}
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{'loss': '1.034', 'grad_norm': '0.8419', 'learning_rate': '1.678e-07', 'epoch': '1.854'}
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{'loss': '1.053', 'grad_norm': '0.9224', 'learning_rate': '1.203e-07', 'epoch': '1.876'}
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{'loss': '0.9446', 'grad_norm': '0.8703', 'learning_rate': '8.066e-08', 'epoch': '1.899'}
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{'loss': '1.002', 'grad_norm': '0.8677', 'learning_rate': '4.885e-08', 'epoch': '1.922'}
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{'loss': '0.9959', 'grad_norm': '1.043', 'learning_rate': '2.494e-08', 'epoch': '1.945'}
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{'loss': '0.9757', 'grad_norm': '0.9434', 'learning_rate': '8.984e-09', 'epoch': '1.968'}
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{'loss': '0.9688', 'grad_norm': '1.053', 'learning_rate': '9.984e-10', 'epoch': '1.991'}
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[INFO|trainer.py:1863] 2026-05-24 06:25:01,017 >>
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Training completed. Do not forget to share your model on huggingface.co/models =)
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{'train_runtime': '2076', 'train_samples_per_second': '53.89', 'train_steps_per_second': '0.421', 'train_loss': '1.031', 'epoch': '2'}
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[INFO|modelcard.py:266] 2026-05-24 06:25:48,777 >> Dropping the following result as it does not have all the necessary fields:
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{'task': {'name': 'Causal Language Modeling', 'type': 'text-generation'}}
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***** train metrics *****
|
||
epoch = 2.0
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total_flos = 2153705312GF
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train_loss = 1.0308
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train_runtime = 0:34:35.84
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train_samples_per_second = 53.887
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train_steps_per_second = 0.421
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Figure saved at: saves/qwen3_1.7b/if/fft/training_loss.png
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[WARNING|2026-05-24 06:26:11] llamafactory.extras.ploting:149 >> No metric eval_loss to plot.
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[WARNING|2026-05-24 06:26:11] llamafactory.extras.ploting:149 >> No metric eval_accuracy to plot.
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[INFO|trainer.py:3797] 2026-05-24 06:26:12,567 >> Saving model checkpoint to saves/qwen3_1.7b/if/fft
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[INFO|configuration_utils.py:432] 2026-05-24 06:26:12,612 >> Configuration saved in saves/qwen3_1.7b/if/fft/config.json
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[INFO|configuration_utils.py:803] 2026-05-24 06:26:12,661 >> Configuration saved in saves/qwen3_1.7b/if/fft/generation_config.json
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Writing model shards: 0%| | 0/1 [00:00<?, ?it/s]
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[INFO|modeling_utils.py:3380] 2026-05-24 06:26:49,059 >> Model weights saved in saves/qwen3_1.7b/if/fft/model.safetensors
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[INFO|tokenization_utils_base.py:3224] 2026-05-24 06:26:49,060 >> chat template saved in saves/qwen3_1.7b/if/fft/chat_template.jinja
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[INFO|tokenization_utils_base.py:2078] 2026-05-24 06:26:49,060 >> tokenizer config file saved in saves/qwen3_1.7b/if/fft/tokenizer_config.json
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||
[INFO|modelcard.py:266] 2026-05-24 06:26:49,239 >> Dropping the following result as it does not have all the necessary fields:
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{'task': {'name': 'Causal Language Modeling', 'type': 'text-generation'}}
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