Machine learning assisted interatomic and electronic structure models for molecular simulation
Invited
Abstract
We introduce a machine learning (ML)-based framework for building interatomic and electronic structure models following two general principles: 1) ML-based models should respect important physical constraints in a faithful and adaptive way; 2) to build truly reliable models, efficient algorithms are needed to explore relevant physical space and construct optimal training data sets. Two examples are given: 1) DeePMD, an end-to-end symmetry-preserving model for efficient molecular dynamics with ab initio accuracy; 2) DeePKS, a chemically accurate and widely-applicable electronic structure model within the framework of generalized Kohn-Sham density functional theory. If time permits, we will also present our efforts on developing related software packages and high-performance computing schemes, which have now been widely used worldwide by experts and practitioners in the molecular and materials simulation community.
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Presenters
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Linfeng Zhang
Program in Applied and Computational Mathematics, Princeton University, Princeton University, Beijing Institute of Big Data Research, Program in Applied and Computational Mathematics, Princeton University, Princeton, NJ 08544, USA
Authors
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Linfeng Zhang
Program in Applied and Computational Mathematics, Princeton University, Princeton University, Beijing Institute of Big Data Research, Program in Applied and Computational Mathematics, Princeton University, Princeton, NJ 08544, USA