Organic Chemistry
Organic chemistry research is undergoing a transformation driven by the integration of artificial intelligence and automation, aiming to accelerate discovery and improve efficiency in tasks such as molecular design, synthesis planning, and property prediction. Current research heavily utilizes large language models (LLMs), graph neural networks (GNNs), and Bayesian optimization methods, often incorporating multimodal data from various spectroscopic techniques to enhance model performance and interpretability. This shift promises to significantly impact drug discovery, materials science, and other fields by automating laborious processes, improving the accuracy of predictions, and providing deeper insights into structure-property relationships.
Papers
A Review of Large Language Models and Autonomous Agents in Chemistry
Mayk Caldas Ramos, Christopher J. Collison, Andrew D. White
PharmaGPT: Domain-Specific Large Language Models for Bio-Pharmaceutical and Chemistry
Linqing Chen, Weilei Wang, Zilong Bai, Peng Xu, Yan Fang, Jie Fang, Wentao Wu, Lizhi Zhou, Ruiji Zhang, Yubin Xia, Chaobo Xu, Ran Hu, Licong Xu, Qijun Cai, Haoran Hua, Jing Sun, Jin Liu, Tian Qiu, Haowen Liu, Meng Hu, Xiuwen Li, Fei Gao, Yufu Wang, Lin Tie, Chaochao Wang, Jianping Lu, Cheng Sun, Yixin Wang, Shengjie Yang, Yuancheng Li, Lu Jin, Lisha Zhang, Fu Bian, Zhongkai Ye, Lidong Pei, Changyang Tu