2024
DOI: 10.1021/acs.jctc.4c01012
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Hyperparameter Optimization for Atomic Cluster Expansion Potentials

Daniel F. Thomas du Toit,
Yuxing Zhou,
Volker L. Deringer

Abstract: Machine learning-based interatomic potentials enable accurate materials simulations on extended time-and length scales. ML potentials based on the atomic cluster expansion (ACE) framework have recently shown promising performance for this purpose. Here, we describe a largely automated computational approach to optimizing hyperparameters for ACE potential models. We extend our openly available Python package, XPOT, to include an interface for ACE fitting, and discuss the optimization of the functional form and … Show more

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