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