Abstract book of Annual Meeting of the Japan Society of Vacuum and Surface Science
Online ISSN : 2434-8589
Annual Meeting of the Japan Society of Vacuum and Surface Science 2020
Session ID : 1Da01
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Data-driven self-consistent learning machine for density functional theory
*Masashi Tsubaki
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Abstract

This presentation provides the quantum deep field (QDF), which provides the electron density with an unsupervised but end-to-end physics-informed modeling by learning the atomization energy on a large-scale dataset. QDF performed well at atomization energy prediction, generated valid electron density, and demonstrated extrapolation.

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© 2020 The Japan Society of Vacuum and Surface Science
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