Teacher-Student Training improves accuracy and efficiency of Machine Learning Interatomic Potentials

ORAL

Abstract

Machine learning interatomic potentials (MLIPs) are revolutionizing molecular dynamics (MD) simulations, which are ubiquitous in chemistry and materials modelling. Recent MLIPs have tended towards more complex architectures and larger datasets. The resulting increase in computational and memory costs may prohibit large scale MD simulations. Here, we present a teacher-student training framework, where the latent knowledge from the teacher (atomic energies) is used to augment the students' training to improve the accuracy at no extra computational cost during inference. The light-weight student MLIPs have faster MD speeds at a fraction of the memory footprint. Additionally, we show that student MLIPs can surpass the accuracy of the teacher models, especially, when using the knowledge from an ensemble of teachers. This work highlights a practical method to train more accurate MLIPs using existing data sets and to reduce the resources required for large scale MD simulations.

*Authors acknowledge support from the US DOE, Office of Science, Basic Energy Sciences, Chemical Sciences, Geosciences, and Biosciences Division under Triad National Security, LLC ("Triad") contract Grant 89233218CNA000001 (FWP: LANLE3F2). Authors also acknowledge support from the Los Alamos National Laboratory (LANL) Directed Research and Development funds (LDRD). This research was performed in part at the Center for Nonlinear Studies (CNLS) at LANL. This research used resources provided by the Darwin testbed at LANL which is funded by the Computational Systems and Software Environments subprogram of LANL's Advanced Simulation and Computing program. LANL is operated by the Triad National Security, LLC, for the National Nuclear Security Administration of the U.S. Department of Energy (contract no. 89233218NCA000001)

Presenters

  • Sakib Matin

    • Los Alamos National Laboratory (LANL)
    • Los Alamos National Laboratory

Authors

  • Sakib Matin

    • Los Alamos National Laboratory (LANL)
    • Los Alamos National Laboratory
  • Alice Allen

    • Los Alamos National Lab
  • Emily Shinkle

    • Los Alamos National Laboratory
  • Yulia Pimonova

    • University of Utah
  • Aleksandra Pachalieva

    • Los Alamos National Laboratory (LANL)
  • Galen Craven

    • Los Alamos National Laboratory (LANL)
  • Ben T Nebgen

    • Los Alamos National Laboratory (LANL)
  • Justin Smith

    • Nvidia
  • Richard Alma Messerly

    • Los Alamos National Laboratory (LANL)
  • Ying Wai Li

    • Los Alamos National Laboratory
    • Los Alamos National Laboratory (LANL)
    • Los Alamos National Lab
  • Sergei Tretiak

    • Los Alamos National Laboratory (LANL)
  • Kipton Marcos Barros

    • Los Alamos National Laboratory (LANL)
  • Nicholas E Lubbers

    • Los Alamos National Laboratory