Gaussian representation for image recognition and reinforcement learning of atomistic structure
Published 2020 View Full Article
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Title
Gaussian representation for image recognition and reinforcement learning of atomistic structure
Authors
Keywords
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Journal
JOURNAL OF CHEMICAL PHYSICS
Volume 153, Issue 4, Pages 044107
Publisher
AIP Publishing
Online
2020-07-24
DOI
10.1063/5.0015571
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