Developing a GPU/CPU Gaussian Process Regression code for molecular properties
ORAL
Abstract
In this talk, we present lessons learned during the development of a proxy app representative for workloads in producing machine learning interatomic potentials and its application to predict energies and forces of molecules and materials, particularly using Gaussian Approximation Potentials (GAP). We compared the performance of multiple providers of smooth overlap of atomic positions (SOAP) descriptor, in terms of accuracy and speed. We also propose a new SOAP implementation that could work in hybrid GPU/CPU architectures. We trained the potentials with the TensorFlow back-end. We discuss the implications of optimizing hyperparameters of Gaussian Processes.
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Presenters
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Alvaro Vazquez-Mayagoitia
Argonne National Laboratory
Authors
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Alvaro Vazquez-Mayagoitia
Argonne National Laboratory
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Jose L Mendoza-Cortes
Michigan State University
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Murat Keceli
Argonne National Laboratory
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Sean M Stafford
Florida State University