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OpenMM 8: Molecular Dynamics Simulation with Machine Learning Potentials

4 October 2023
Peter K. Eastman
Raimondas Galvelis
Raúl P. Peláez
C. Abreu
Stephen E. Farr
Emilio Gallicchio
Anton Gorenko
Mike Henry
Frank Hu
Jing Huang
Andreas Krämer
Julien Michel
Joshua A. Mitchell
Vijay S. Pande
J. P. Rodrigues
Jaime Rodríguez-Guerra
Andrew C. Simmonett
Sukrit Singh
J. Swails
Philip Turner
Yuanqing Wang
Ivy Zhang
J. Chodera
Gianni De Fabritiis
T. Markland
    AI4CE
    VLM
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Abstract

Machine learning plays an important and growing role in molecular simulation. The newest version of the OpenMM molecular dynamics toolkit introduces new features to support the use of machine learning potentials. Arbitrary PyTorch models can be added to a simulation and used to compute forces and energy. A higher-level interface allows users to easily model their molecules of interest with general purpose, pretrained potential functions. A collection of optimized CUDA kernels and custom PyTorch operations greatly improves the speed of simulations. We demonstrate these features on simulations of cyclin-dependent kinase 8 (CDK8) and the green fluorescent protein (GFP) chromophore in water. Taken together, these features make it practical to use machine learning to improve the accuracy of simulations at only a modest increase in cost.

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