2024
DOI: 10.3390/ijms25031448
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Implementation and Validation of an OpenMM Plugin for the Deep Potential Representation of Potential Energy

Ye Ding,
Jing Huang

Abstract: Machine learning potentials, particularly the deep potential (DP) model, have revolutionized molecular dynamics (MD) simulations, striking a balance between accuracy and computational efficiency. To facilitate the DP model’s integration with the popular MD engine OpenMM, we have developed a versatile OpenMM plugin. This plugin supports a range of applications, from conventional MD simulations to alchemical free energy calculations and hybrid DP/MM simulations. Our extensive validation tests encompassed energy … Show more

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