Litcius/Paper detail

Updates to the DScribe library: New descriptors and derivatives

Jarno Laakso, Lauri Himanen, Henrietta Homm, Eiaki V. Morooka, Marc O. J. Jäger, Milica Todorović, Patrick Rinke

2023The Journal of Chemical Physics83 citationsDOI

Abstract

We present an update of the DScribe package, a Python library for atomistic descriptors. The update extends DScribe's descriptor selection with the Valle-Oganov materials fingerprint and provides descriptor derivatives to enable more advanced machine learning tasks, such as force prediction and structure optimization. For all descriptors, numeric derivatives are now available in DScribe. For the many-body tensor representation (MBTR) and the Smooth Overlap of Atomic Positions (SOAP), we have also implemented analytic derivatives. We demonstrate the effectiveness of the descriptor derivatives for machine learning models of Cu clusters and perovskite alloys.

Topics & Concepts

Python (programming language)Computer scienceRepresentation (politics)Artificial intelligenceTensor (intrinsic definition)Machine learningMathematicsProgramming languageGeometryLawPolitical sciencePoliticsMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyCatalysis and Oxidation Reactions
Updates to the DScribe library: New descriptors and derivatives | Litcius