中文

Ai2-Kit: Streamlining AI-Accelerated Ab Initio Workflows for Complex Chemical Systems

化学物理 2026-07-01 v1

摘要

Molecular simulations of complex chemical systems, such as catalysis, electrochemistry, and energy storage, often need to capture the interplay of effects such as electronic structure, finite-temperature fluctuations, and electric-field response. Such complexity is difficult to address with traditional ab initio calculations, which are limited by the time and length scales they can reach. AI-accelerated ab initio (AI2) methods use machine learning potentials trained on first-principles data to replace expensive electronic-structure calculations, extending ab initio accuracy to these regimes, but their routine application requires reliable workflows that connect first-principles calculations, model training, molecular dynamics, enhanced sampling, trajectory analysis, and HPC orchestration. Here we present ai2-kit, a software toolkit for developing accessible, reproducible, and extensible AI2 workflows. ai2-kit provides high-semantic-density command-line interfaces and Python APIs for structure and dataset conversion, batch task generation, active-learning screening, job orchestration, and workflow recovery. We demonstrate ai2-kit in four representative applications: active-learning-based machine learning potential construction, free-energy perturbation for redox and acid-base processes, electrochemical machine learning potentials for electrified interfaces, and spectroscopies from machine learning molecular dynamics. ai2-kit also provides AI-agent skills that help users adapt these use cases into customized workflows for their own chemical systems and computational software stacks. Together, ai2-kit helps turn AI2 methods from bespoke computational protocols into reusable and extensible workflows for complex chemical systems, from model construction to property prediction.

引用

@article{arxiv.2607.00613,
  title  = {Ai2-Kit: Streamlining AI-Accelerated Ab Initio Workflows for Complex Chemical Systems},
  author = {Sheng Bi and Wei-Hong Xu and Yong-Bin Zhuang and Jia-Xin Zhu and Jiang-Peng Qiu and Yu-Hang Tang and Xiang-Long Du and Qi You and Yun-Pei Liu and Fu-Qiang Gong and Yu-Xin Guo and Yi-Ze Wang and Cheng-Xuan Wang and Zi-Heng Gong and Zi-Qiang Chen and Chang Liu and Si-Yuan Han and Jian Gu and Jia-Xin Li and Yi-Ming Chen and Lin Huang and Si-Jie Chen and Bo-Ying Huang and Jie-Zhen Xia and Fan-Jie Xu and Su-Yang Zhong and Peng-Wei Xu and Jun-Yi Wang and Xing-Yun Xie and Yu-Lei Gong and Yan-Yi Su and Yue Liu and Rui-Hao Bi and Lang Li and Fei-Teng Wang and Jing-Xiang Zou and Mei Jia and Jie-Qiong Li and Min Lin and Qi-Yuan Fan and Juan-Juan Sun and Jia-Bo Le and Zixuan Wei and Jin-Yuan Hu and Meng-Lei Jia and Yan Sun and Xiao-Hui Yang and Fujie Tang and Feng Wang and Jun Cheng},
  journal= {arXiv preprint arXiv:2607.00613},
  year   = {2026}
}

备注

24 pages, 11 figures. Submitted to Chemical Science