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ModelHub XC 8818c3bebf 初始化项目,由ModelHub XC社区提供模型
Model: iamshnoo/combined_without_metadata_1b_step2k
Source: Original Platform
2026-04-24 01:00:43 +08:00

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---
pipeline_tag: text-generation
library_name: transformers
tags:
- text-generation
- metadata-localization
- global
- 1b
- without-metadata
- pretraining
- intermediate-checkpoint
---
# combined_without_metadata_1b_step2k
## Summary
This repo contains the global combined model exported from the 2k checkpoint for the metadata localization project. It was trained from scratch on the project corpus, using the Llama 3.2 tokenizer and vocabulary.
## Variant Metadata
- Stage: `pretrain`
- Family: `global`
- Size: `1b`
- Metadata condition: `without_metadata`
- Checkpoint export: `2k`
- Base model lineage: `Trained from scratch; tokenizer/vocabulary from meta-llama/Llama-3.2-1B`
## Weights & Biases Provenance
- Run name: `14/11/2025_16:54:30_combined_without_metadata_1b`
- Internal run URL: `https://wandb.ai/iamshnoo/nanotron/runs/09p25aoo`
- Note: the Weights & Biases workspace is private; public readers should use the summarized metrics and configuration below.
- State: `finished`
- Runtime: `113h 35m 30s`
## Run Summary
- `KPI/train_lm_loss`: `2.171`
- `KPI/train_perplexity`: `8.7673`
- `KPI/val_loss`: `2.2472`
- `KPI/val_perplexity`: `9.4612`
- `KPI/consumed_tokens/train`: `41,943,040,000`
- `_step`: `10,000`
## Training Configuration
- `train_steps`: `10,000`
- `sequence_length`: `2,048`
- `micro_batch_size`: `8`
- `batch_accumulation_per_replica`: `64`
- `learning_rate`: `0.003`
- `min_decay_lr`: `0.0003`
- `checkpoint_interval`: `1,000`
## Training Curves
Static plots below were exported from the private Weights & Biases run and embedded here for public access.
### Train Loss
![Train Loss](assets/train_loss.png)
### Validation Perplexity
![Validation Perplexity](assets/val_perplexity.png)
### Throughput
![Throughput](assets/tokens_per_sec.png)
## Project Context
This model is part of the metadata localization release. Related checkpoints and variants are grouped in the public Hugging Face collection [Metadata Conditioned LLMs](https://huggingface.co/collections/iamshnoo/metadata-conditioned-llms).
- Training data source: [News on the Web (NOW) Corpus](https://www.english-corpora.org/now/)
- Project repository: [https://github.com/iamshnoo/metadata_localization](https://github.com/iamshnoo/metadata_localization)
- Paper: [https://arxiv.org/abs/2601.15236](https://arxiv.org/abs/2601.15236)
Last synced: `2026-04-02 14:39:43 UTC`