sGDML: Constructing accurate and data efficient molecular force fields using machine learning

Volume: 240, Pages: 38 - 45
Published: Jul 1, 2019
Abstract
We present an optimized implementation of the recently proposed symmetric gradient domain machine learning (sGDML) model. The sGDML model is able to faithfully reproduce global potential energy surfaces (PES) for molecules with a few dozen atoms from a limited number of user-provided reference molecular conformations and the associated atomic forces. Here, we introduce a Python software package to reconstruct and evaluate custom sGDML force...
Paper Details
Title
sGDML: Constructing accurate and data efficient molecular force fields using machine learning
Published Date
Jul 1, 2019
Volume
240
Pages
38 - 45
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