Amp: A modular approach to machine learning in atomistic simulations
- 1 October 2016
- journal article
- Published by Elsevier BV in Computer Physics Communications
- Vol. 207, 310-324
- https://doi.org/10.1016/j.cpc.2016.05.010
Abstract
No abstract availableFunding Information
- ONR Award (N000014-15-1-2223)
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