SmileyLlama:为定向化学空间探索修改大型语言模型

Joseph M. Cavanagh, Kunyang Sun, Andrew Gritsevskiy, Dorian Bagni, Thomas D. Bannister, Teresa Head-Gordon
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摘要

在这里,我们展示了大型语言模型(LLM)可以作为化学语言模型(CLM)的基础模型,其性能达到或超过仅根据化学SMILES字符串数据训练的CLM的水平。通过在开源 Llama LLM 上使用监督微调(SFT)和直接偏好优化(DPO),我们证明了可以训练 LLM 响应提示,例如生成具有药物开发所需的特性的分子。这一整体框架使 LLM 不仅仅成为化学和材料任务的聊天机器人客户端,还能更直接地作为 CLM 发言,生成具有用户指定特性的分子。
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SmileyLlama: Modifying Large Language Models for Directed Chemical Space Exploration
Here we show that a Large Language Model (LLM) can serve as a foundation model for a Chemical Language Model (CLM) which performs at or above the level of CLMs trained solely on chemical SMILES string data. Using supervised fine-tuning (SFT) and direct preference optimization (DPO) on the open-source Llama LLM, we demonstrate that we can train an LLM to respond to prompts such as generating molecules with properties of interest to drug development. This overall framework allows an LLM to not just be a chatbot client for chemistry and materials tasks, but can be adapted to speak more directly as a CLM which can generate molecules with user-specified properties.
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