初始化项目,由ModelHub XC社区提供模型

Model: ik-ram28/MedMistral-CPT-SFT-7B
Source: Original Platform
This commit is contained in:
ModelHub XC
2026-05-26 11:10:37 +08:00
commit d6ce3fa9f9
16 changed files with 268637 additions and 0 deletions

103
README.md Normal file
View File

@@ -0,0 +1,103 @@
---
library_name: transformers
tags:
- medical
license: apache-2.0
language:
- fr
- en
base_model:
- ik-ram28/MedMistral-CPT-7B
- mistralai/Mistral-7B-v0.1
---
## Model Description
MedMistral-CPT-SFT-7B is a French medical language model based on Mistral-7B-v0.1, adapted for medical domain applications through a combined approach of Continual Pre-Training (CPT) followed by Supervised Fine-Tuning (SFT).
## Model Details
- **Model Type**: Causal Language Model
- **Base Model**: Mistral-7B-v0.1
- **Language**: French
- **Domain**: Medical/Healthcare
- **License**: Apache 2.0
- **Paper**: [Adaptation des connaissances médicales pour les grands modèles de langue : Stratégies et analyse comparative](https://aclanthology.org/2025.jeptalnrecital-taln.3/)
## Training Details
### Continual Pre-Training (CPT)
- **Dataset**: NACHOS corpus (opeN crAwled frenCh Healthcare cOrpuS)
- **Size**: 7.4 GB of French medical texts
- **Word Count**: Over 1 billion words (1,088,867,950 words)
- **Sources**: 24 French medical websites
- **Training Duration**: 2.8 epochs
- **Hardware**: 32 NVIDIA H100 80GB GPUs
- **Training Time**: 12 hours
- **Optimizer**: AdamW
- **Learning Rate**: 2e-5
- **Weight Decay**: 0.01
- **Batch Size**: 16 with gradient accumulation of 2
### Supervised Fine-Tuning (SFT)
- **Dataset**: 30K French medical question-answer pairs
- 10K native French medical questions
- 10K translated medical questions from English resources
- 10K generated questions from French medical texts
- **Method**: DoRA (Weight-Decomposed Low-Rank Adaptation)
- **Training Duration**: 10 epochs
- **Hardware**: 1 NVIDIA A100 80GB GPU
- **Training Time**: 75 hours
- **Rank**: 16
- **Alpha**: 16
- **Learning Rate**: 2e-5
- **Batch Size**: 4
## Computational Impact
- **Total Training Time**: 87 hours (12h CPT + 75h SFT)
- **Carbon Emissions**: 11.78 kgCO2e (9.86 + 1.92)
## Ethical Considerations
- **Medical Accuracy**: This model is for research and educational purposes only. All outputs should be verified by qualified medical professionals
- **Bias**: Training data may contain biases present in medical literature and online medical resources
## Citation
If you use this model, please cite:
```bibtex
@inproceedings{belmadani-etal-2025-adaptation,
title = "Adaptation des connaissances m{\'e}dicales pour les grands mod{\`e}les de langue : Strat{\'e}gies et analyse comparative",
author = "Belmadani, Ikram and
Favre, Benoit and
Dufour, Richard and
B{\'e}chet, Fr{\'e}d{\'e}ric and
Ramisch, Carlos",
editor = "Bechet, Fr{\'e}d{\'e}ric and
Chifu, Adrian-Gabriel and
Pinel-sauvagnat, Karen and
Favre, Benoit and
Maes, Eliot and
Nurbakova, Diana",
booktitle = "Actes des 32{\`e}me Conf{\'e}rence sur le Traitement Automatique des Langues Naturelles (TALN), volume 1 : articles scientifiques originaux",
month = "6",
year = "2025",
address = "Marseille, France",
publisher = "ATALA {\textbackslash}{\textbackslash}{\&} ARIA",
url = "https://aclanthology.org/2025.jeptalnrecital-taln.3/",
pages = "50--72",
language = "fra",
abstract = "Cet article pr{\'e}sente une {\'e}tude sur l{'}adaptation des grands mod{\`e}les de langue (LLMs) {\`a} des domaines sp{\'e}cialis{\'e}s disposant de donn{\'e}es limit{\'e}es. Bien que certaines recherches remettent en question le pr{\'e}-entra{\^i}nement adaptatif (DAPT) dans le contexte m{\'e}dical en anglais, nous montrons que l{'}adaptation au domaine peut {\^e}tre efficace sous certaines conditions. En prenant comme exemple l{'}adaptation au domaine m{\'e}dical en fran{\c{c}}ais, nous comparons de mani{\`e}re syst{\'e}matique le pr{\'e}-entra{\^i}nement continu (CPT), l{'}affinage supervis{\'e} (SFT) et une approche combin{\'e}e (CPT suivi de SFT). Nos r{\'e}sultats indiquent que l{'}adaptation d{'}un mod{\`e}le g{\'e}n{\'e}raliste {\`a} de nouvelles donn{\'e}es dans le domaine m{\'e}dical offre des am{\'e}liorations notables (taux de r{\'e}ussite de 87{\%}), tandis que l{'}adaptation suppl{\'e}mentaire de mod{\`e}les d{\'e}j{\`a} familiaris{\'e}s avec ce domaine procure des b{\'e}n{\'e}fices limit{\'e}s. Bien que CPT+SFT offre les meilleures performances globales, SFT-seul pr{\'e}sente des r{\'e}sultats solides et requiert moins de ressources mat{\'e}rielles."
}
```
## Contact
For questions about this model, please contact: ikram.belmadani@lis-lab.fr