Using Machine Learning to Find New Density Functionals (original) (raw)
A Deep Dive into Machine Learning Density Functional Theory for Materials Science and Chemistry
Michael Bussmann
2021
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Dataset and scripts for A Deep Dive into Machine Learning Density Functional Theory for Materials Science and Chemistry
Michael Bussmann
2021
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arXiv (Cornell University), 2018
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Journal of Physics: Materials, 2019
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Evan Ronald Antoniuk
arXiv (Cornell University), 2020
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New Journal of Physics, 2013
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The Journal of Chemical Physics, 2022
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APL Materials, 2021
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Advanced Theory and Simulations, 2018
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Chemistry of …, 2010
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john dobson
Springer eBooks, 1998
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Ramón Castañeda-Priego
Journal of Physics: Condensed Matter, 2020
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