Harnessing Machine Learning to Enhance Transition State Search with Interatomic Potentials and Generative Models.

Journal: Advanced science (Weinheim, Baden-Wurttemberg, Germany)
Published Date:

Abstract

Transition state (TS) search is crucial for illuminating chemical reaction mechanisms but remains the major bottleneck in automated discovery because of the high computational cost. Recently, machine learning interatomic potentials (MLIPs) and generative models have shown promise in accelerating TS search, but their comparative strengths and limitations remain unclear. In this study, the first systematic and rigorous benchmarking framework is established to evaluate the effectiveness of ML methods in TS search, enabling a standardized and application-relevant assessment of their performance. Using an end-to-end TS search workflow, seven representative MLIPs are benchmarked alongside React-OT, a state-of-the-art generative model. These results demonstrate that pre-trained foundation MLIPs frequently fall short in reliably localizing TSs without task-specific fine-tuning. Furthermore, traditional energy and force metrics alone do not reliably predict TS search success, underscoring the need for more tailored evaluation criteria. Notably, with the same graph neural network architecture, React-OT frequently outperforms its MLIP counterpart, highlighting the potential of generative approaches for TS discovery. This benchmark serves as a critical foundation for the development and evaluation of future ML methods in chemical reactions, offering guidance for improving their generalizability and reliability in reactive chemistry.

Authors

  • Qiyuan Zhao
    Davidson School of Chemical Engineering, Purdue University, West Lafayette, Indiana 47906, United States.
  • Yunhong Han
    Deep Principle Inc., Cambridge, MA, 02139, USA.
  • Duo Zhang
    Research Center for Healthcare Data Science, Zhejiang Lab, Hangzhou, China.
  • Jiaxu Wang
    School of Aeronautics and Astronautics, Sichuan University, Chengdu 610065, China.
  • Peichen Zhong
    Bakar Institute of Digital Materials for the Planet, UC Berkeley, California, 94720, United States.
  • Taoyong Cui
    Deep Principle Inc., Cambridge, MA, 02139, USA.
  • Bangchen Yin
    Department of Computer Science and Technology, Tsinghua University, Beijing 100084, China.
  • Yirui Cao
    Deep Principle Inc., Cambridge, MA, 02139, USA.
  • Haojun Jia
    Deep Principle Inc., Cambridge, MA, 02139, USA.
  • Chenru Duan
    Department of Chemical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, United States.

Keywords

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