English

Efficient Long-Range Machine Learning Force Fields for Liquid and Materials Properties

Chemical Physics 2025-08-05 v2 Materials Science

Abstract

Machine learning force fields (MLFFs) have emerged as a sophisticated tool for cost-efficient atomistic simulations approaching DFT accuracy, with recent message passing MLFFs able to cover the entire periodic table. We present an invariant message passing MLFF architecture (MPNICE) which iteratively predicts atomic partial charges, including long-range interactions, enabling the prediction of charge-dependent properties while achieving 5-20x faster inference versus models with comparable accuracy. We train direct and delta-learned MPNICE models for organic systems, and benchmark against experimental properties of liquid and solid systems. We also benchmark the energetics of finite systems, contributing a new set of torsion scans with charged species and a new set of DLPNO-CCSD(T) references for the TorsionNet500 benchmark. We additionally train and benchmark MPNICE models for bulk inorganic crystals, focusing on structural ranking and mechanical properties. Finally, we explore multi-task models for both inorganic and organic systems, which exhibit slightly decreased performance on domain-specific tasks but surprising generalization, stably predicting the gas phase structure of 500\simeq500 Pt/Ir organometallic complexes despite never training to organometallic complexes of any kind.

Keywords

Cite

@article{arxiv.2505.06462,
  title  = {Efficient Long-Range Machine Learning Force Fields for Liquid and Materials Properties},
  author = {John L. Weber and Rishabh D. Guha and Garvit Agarwal and Yujing Wei and Aidan A. Fike and Xiaowei Xie and James Stevenson and Biswajit Santra and Richard A. Friesner and Karl Leswing and Mathew D. Halls and Robert Abel and Leif D. Jacobson},
  journal= {arXiv preprint arXiv:2505.06462},
  year   = {2025}
}

Comments

60 pages 10 figures

R2 v1 2026-06-28T23:27:53.076Z