330 lines
11 KiB
Markdown
330 lines
11 KiB
Markdown
---
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language:
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- it
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- en
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license: apache-2.0
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tags:
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- small-language-model
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- slm
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- edge-ai
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- italian
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- bilingual
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- instruction-following
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- open-source
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- fully-reproducible
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- llama
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- nanotron
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- axolotl
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base_model: mii-llm/zagreus-0.4B-ita
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model_type: llama
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pipeline_tag: text-generation
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library_name: transformers
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datasets:
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- DeepMount00/OpenItalianData
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---
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# Open-Zagreus-0.4B
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**Open-Zagreus-0.4B** is a fully open-source bilingual English/Italian Small Language Model (SLM) — open data, open weights, open recipe. It is post-trained on top of [Zagreus-0.4B-ita](https://huggingface.co/mii-llm/zagreus-0.4B-ita) using the publicly available [OpenItalianData](https://huggingface.co/datasets/DeepMount00/OpenItalianData) dataset published by Michele Montebovi, making the entire pipeline — from pre-training data to final weights — **fully reproducible by anyone**.
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This model is released by the [mii-llm](https://mii-llm.ai) community (*Made in Italy – Large Language Model*) as a contribution to the open-source Italian NLP ecosystem, demonstrating that it is possible to build competitive English/Italian language models using exclusively open resources.
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> ✅ **Fully open**: all training data, model weights, and training recipes are publicly available and reproducible.
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---
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## Model Details
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| Property | Value |
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|---|---|
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| **Architecture** | Modified Llama-3.2 (fully dense) |
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| **Parameters** | ~400M |
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| **Hidden size** | 960 |
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| **Layers** | 32 |
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| **Attention heads** | 15 (KV heads: 5) |
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| **Context length** | 4096 tokens |
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| **Tokenizer** | Llama-3.2 (`vocab_size`: 128,256) |
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| **Precision** | BF16 |
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| **Languages** | English, Italian |
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| **Base model** | mii-llm/zagreus-0.4B-ita |
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| **SFT dataset** | [DeepMount00/OpenItalianData](https://huggingface.co/datasets/DeepMount00/OpenItalianData) |
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| **Post-training framework** | Axolotl + FSDP |
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| **Chat template** | ChatML |
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---
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## Training Details
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### Base Model Pre-training
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`Open-Zagreus-0.4B` is built on `Zagreus-0.4B-ita`, pre-trained on approximately **1 trillion tokens**:
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| Dataset | Description |
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|---|---|
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| [FineWeb (350BT sample)](https://huggingface.co/datasets/HuggingFaceFW/fineweb/viewer/sample-350BT) | ~350B tokens of English web text |
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| [FineWeb-2 (ita_Latn)](https://huggingface.co/datasets/HuggingFaceFW/fineweb-2/viewer/ita_Latn) | Italian web text |
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| [FinePDFs (ita_Latn)](https://huggingface.co/datasets/HuggingFaceFW/finepdfs/viewer/ita_Latn) | Italian PDF documents |
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| [StarCoder Data](https://huggingface.co/datasets/bigcode/starcoderdata) | ~250B tokens of code |
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**Token distribution**: ~400B English + ~400B Italian + ~200B Code
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**Infrastructure**: 64× NVIDIA A100 GPUs (8 nodes × 8 GPUs) on Seeweb HPC
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**Pre-training framework**: [Nanotron (mii-llm fork)](https://github.com/mii-llm/nanotron)
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### Post-training (SFT)
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Post-training was performed using **Axolotl** with FSDP across 4 nodes (32× A100 GPUs), using the fully public **OpenItalianData** dataset.
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**SFT dataset**: [DeepMount00/OpenItalianData](https://huggingface.co/datasets/DeepMount00/OpenItalianData)
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**Dataset author**: Michele Montebovi
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**Key hyperparameters:**
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| Hyperparameter | Value |
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|---|---|
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| Optimizer | AdamW (fused) |
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| Learning rate | `1e-3` |
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| LR scheduler | Cosine (constant ratio: 0.8, min ratio: 0.3) |
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| Epochs | 3 |
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| Micro batch size | 1 |
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| Gradient accumulation steps | 8 |
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| Sequence length | 4096 |
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| Max grad norm | 1.0 |
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| Precision | BF16 + Flash Attention |
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| FSDP strategy | FULL_SHARD |
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### Full Axolotl Configuration
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```yaml
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base_model: giux78/zagreus-0.4B-ita
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strict: false
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output_dir: ./ale_outputs/opendata-zagreus-sft-final
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seed: 42
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chat_template_jinja: "{%- for message in messages -%}\n {{- \"<|im_start|>\" + message.role + \"\\n\" + message.content + \"<|im_end|>\" + \"\\n\" -}}\n{%- endfor -%}\n{%- if add_generation_prompt -%}\n\t{{- \"<|im_start|>assistant\\n\" -}}\n{%- endif -%}"
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datasets:
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- path: /training/openitaliandata
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type: chat_template
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field_messages: conversation
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roles_to_train: ["assistant"]
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train_on_eos: turn
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dataset_prepared_path: ./ale_outputs/dataset_cache/opendata-zagreus-sft
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sequence_len: 4096
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sample_packing: true
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eval_sample_packing: true
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pad_to_sequence_len: true
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cosine_constant_lr_ratio: 0.8
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cosine_min_lr_ratio: 0.3
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optimizer: adamw_torch_fused
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lr_scheduler: constant
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learning_rate: 1.0e-03
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max_grad_norm: 1.0
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micro_batch_size: 1
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gradient_accumulation_steps: 8
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num_epochs: 3
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bf16: auto
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flash_attention: true
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gradient_checkpointing: true
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logging_steps: 10
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eval_strategy: steps
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eval_steps: 300
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save_strategy: steps
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save_steps: 500
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save_total_limit: 3
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val_set_size: 10000
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fsdp_config:
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fsdp_sharding_strategy: FULL_SHARD
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fsdp_auto_wrap_policy: TRANSFORMER_BASED_WRAP
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fsdp_transformer_layer_cls_to_wrap: LlamaDecoderLayer
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fsdp_backward_prefetch_policy: BACKWARD_PRE
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fsdp_state_dict_type: FULL_STATE_DICT
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special_tokens:
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pad_token: <|im_end|>
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eos_token: <|im_end|>
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```
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---
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## Chat Template
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This model uses the **ChatML** format:
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```
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<|im_start|>system
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Sei un assistente utile.<|im_end|>
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<|im_start|>user
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Ciao! Come posso imparare l'italiano?<|im_end|>
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<|im_start|>assistant
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```
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Special tokens:
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- `pad_token`: `<|im_end|>`
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- `eos_token`: `<|im_end|>`
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---
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## Usage
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```python
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from transformers import AutoTokenizer, AutoModelForCausalLM
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import torch
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model_id = "mii-llm/open-zagreus-0.4B"
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tokenizer = AutoTokenizer.from_pretrained(model_id)
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model = AutoModelForCausalLM.from_pretrained(
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model_id,
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torch_dtype=torch.bfloat16,
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device_map="auto"
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)
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messages = [
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{"role": "system", "content": "Sei un assistente utile e preciso."},
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{"role": "user", "content": "Raccontami qualcosa di interessante sull'Italia."}
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]
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input_ids = tokenizer.apply_chat_template(
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messages,
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add_generation_prompt=True,
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return_tensors="pt"
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).to(model.device)
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output = model.generate(
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input_ids,
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max_new_tokens=512,
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temperature=0.7,
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do_sample=True
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)
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print(tokenizer.decode(output[0][input_ids.shape[-1]:], skip_special_tokens=True))
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```
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---
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## Evaluation
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### Standard Benchmarks
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#### Evaluation Command
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```bash
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lm-eval --model hf --model_args pretrained=giux78/Open-Zagreus-0.4B \
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--tasks m_mmlu_it,arc_it,hellaswag_it --device cuda:0 --batch_size 1
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```
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#### Results
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| Model | MMLU IT ↑ | ARC IT ↑ | HellaSwag IT ↑ | **Average** |
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| **Open-Zagreus-0.4B** | 0.2530 | 0.3020 | 0.3608 | **0.3053** |
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---
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### Evalita Benchmark
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Evalita is a comprehensive Italian NLP evaluation suite covering a wide range of linguistic tasks. We evaluate Open-Zagreus-0.4B using the [evalita-mp](https://github.com/evalita) tasks and compare it directly against its base model (`Zagreus-0.4B-ita`) to measure the impact of SFT.
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#### Evaluation Command
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```bash
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lm_eval --model hf \
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--model_args pretrained=giux78/Open-Zagreus-0.4B \
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--tasks evalita-mp \
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--device cuda:0 \
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--batch_size 1
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```
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#### Results: Open-Zagreus-0.4B vs. Zagreus-0.4B-ita (Base)
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| Task | Metric | Zagreus-0.4B-ita (base) | **Open-Zagreus-0.4B (SFT)** | Δ |
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|---|---|---|---|---|
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| **Overall** | acc | 0.3226 | **0.3313** | **+0.0087** |
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| Admission Test | acc | **0.2137** | 0.2083 | -0.0054 |
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| FAQ | acc | **0.2681** | 0.2672 | -0.0009 |
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| Hate Speech Detection | f1 | **0.6056** | 0.4340 | -0.1716 |
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| Lexical Substitution | f1 | 0.0000 | 0.0000 | = |
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| NER | f1 | **0.1611** | 0.1357 | -0.0254 |
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| Relation Extraction | f1 | **0.1244** | 0.0000 | -0.1244 |
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| Sentiment Analysis | f1 | 0.3660 | **0.3712** | +0.0052 |
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| Summarization (Fanpage) | rouge1 | 0.1947 | **0.2305** | +0.0358 |
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| Text Entailment | acc | 0.5133 | **0.5492** | +0.0359 |
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| Word in Context | f1 | 0.4697 | **0.4880** | +0.0183 |
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#### Discussion
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The SFT stage delivers a net **+0.0087 overall improvement** on Evalita. Gains are most significant in generative and semantic tasks:
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- **Summarization** (+0.0358): the model produces more coherent and relevant summaries after instruction tuning
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- **Text Entailment** (+0.0359): improved language understanding and reasoning
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- **Word in Context** (+0.0183): better contextual semantic disambiguation
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- **Sentiment Analysis** (+0.0052): marginal improvement in affective understanding
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Some structured classification tasks (Hate Speech Detection, Relation Extraction, NER) regress after SFT — a known phenomenon when general-purpose instruction tuning shifts the model away from the specific output format expected by these extractive tasks. This is expected behavior and not indicative of degraded general language quality.
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Overall, these results confirm that **a fully open-source pipeline — using only publicly available data and tools — is sufficient to produce a competitive Italian SLM**.
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---
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## Reproducibility
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This is the only model in the Nesso/Zagreus family where **every component is fully open and reproducible**:
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| Component | Resource |
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| Pre-training data | FineWeb, FineWeb-2, FinePDFs, StarCoder (all public) |
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| Pre-training framework | [mii-llm/nanotron](https://github.com/mii-llm/nanotron) |
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| SFT data | [DeepMount00/OpenItalianData](https://huggingface.co/datasets/DeepMount00/OpenItalianData) |
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| SFT framework | [Axolotl](https://github.com/OpenAccess-AI-Collective/axolotl) |
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| Evaluation | [lm-evaluation-harness](https://github.com/EleutherAI/lm-evaluation-harness) |
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| Model weights | This repository |
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| Training config | See Axolotl configuration above |
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---
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## Related Models
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| Model | Description |
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| [Zagreus-0.4B-ita](https://huggingface.co/mii-llm/zagreus-0.4B-ita) | Base pre-trained model (this model's foundation) |
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| [Nesso-0.4B-instruct](https://huggingface.co/mii-llm/nesso-0.4B-instruct) | Proprietary SFT — optimized for instruction following |
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| [Nesso-0.4B-agentic](https://huggingface.co/mii-llm/nesso-0.4B-agentic) | Proprietary SFT — optimized for function calling and agentic tasks |
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---
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## Citation
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If you use this model in your research, please cite:
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```bibtex
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@misc{nesso2025,
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title = {The Joy and Pain of Training an LLM from Scratch:
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A Technical Report on the Zagreus and Nesso Model Families},
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author = {mii-llm community},
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year = {2025},
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howpublished = {\url{https://github.com/mii-llm/zagreus-nesso-slm}},
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}
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```
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---
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## Acknowledgements
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- **Antonio Baldassarra** (CEO, Seeweb) and **Marco Cristofanilli** (Head of AI, Seeweb) for infrastructure sponsorship
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- **Michele Montebovi** for publishing the [OpenItalianData](https://huggingface.co/datasets/DeepMount00/OpenItalianData) SFT dataset that makes this model fully reproducible
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- The **Hugging Face** team for Nanotron, datatrove, FineWeb, and FineWeb-2
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- The **mii-llm** open-source community
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---
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## License
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Released under the **Apache 2.0** license.
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> Made with ❤️ in Italy by [mii-llm](https://mii-llm.ai) |