DScribe: Library of descriptors for machine learning in materials science

DScribe: Library of descriptors for machine learning in materials science

Description

DScribe is a software package for machine learning that provides popular feature transformations (“descriptors”) for atomistic materials simulations. DScribe accelerates the application of machine learning for atomistic property prediction by providing user-friendly, off-the-shelf descriptor implementations. The package currently contains implementations for Coulomb matrix, Ewald sum matrix, sine matrix, Many-body Tensor Representation (MBTR), Atom-centered Symmetry Function (ACSF) and Smooth Overlap of Atomic Positions (SOAP). Usage of the package is illustrated for two different applications: formation energy prediction for solids and ionic charge prediction for atoms in organic molecules. The package is freely available under the open-source Apache License 2.0.
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Year of publication

2019

Authors

Department of Applied Physics

Adam S. Foster Orcid -palvelun logo - Creator

David Z. Gao - Creator

Eiaki V. Morooka - Creator

Filippo Federici Canova - Creator

Lauri Himanen - Creator

Marc O.J. Jäger - Creator

Patrick Rinke Orcid -palvelun logo - Creator

Yashasvi S. Ranawat - Creator

Mendeley Data - Publisher

Nanolayers Research Computing Ltd - Contributor

Other information

Fields of science

Nanotechnology

Open access

Open

License

Apache Software License 2.0

DScribe: Library of descriptors for machine learning in materials science - Research.fi