The current generation of large language models (LLMs) is typically designed for broad, general-purpose applications, while domain-specific LLMs, especially in vertical fields like medicine, remain relatively scarce. In particular, the development of highly efficient and practical LLMs for the medical domain is challenging due to the complexity of medical knowledge and the limited availability of high-quality data. To bridge this gap, we introduce Baichuan-M1, a series of large language models specifically optimized for medical applications. Unlike traditional approaches that simply continue pretraining on existing models or apply post-training to a general base model, Baichuan-M1 is trained from scratch with a dedicated focus on enhancing medical capabilities. Our model is trained on 20 trillion tokens and incorporates a range of effective training methods that strike a balance between general capabilities and medical expertise. As a result, Baichuan-M1 not only performs strongly across general domains such as mathematics and coding but also excels in specialized medical fields. We have open-sourced Baichuan-M1-14B, a mini version of our model, which can be accessed through the following links.
Baichuan-M1: Pushing the Medical Capability of Large Language Models
Baichuan-M1 is a series of large language models optimized for medical applications, trained from scratch with strong performance across general domains and specialized medical fields.
- Year
- 2025
- Venue
- arXiv 2025
- Authors
- 42
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2502.12671v2ARXIV-DEFAULT
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42Xin ChenWei ChengHaizhou ZhaoXuezhen DongWeiPeng ChenYan ZhangBingning WangMingyu XuZhengyun ZhaoYuqi HuoMang WangWenjing LuoHuozhi ZhouLiang SongXiangrong ZengYupeng ZhangZecheng WangDa PanFei KouFei LiFuzhong ChenGuosheng DongHan LiuHongda ZhangJin HeJinjie YangKangxi WuKegeng WuLei SuLinlin NiuLinzhuang SunPengcheng FanQianli ShenRihui XinShunya DangSongchi ZhouXin MenXionghai LinYifei DuanYuyan ZhouZhi MaZhiying Wu