Benchmarking Coordination Number Prediction Algorithms on Inorganic Crystal Structures
ORAL
Abstract
Coordination numbers play a fundamental role in describing materials and conceptualizing their properties. On a large scale, algorithms to determine coordination numbers are useful for applications in machine learning and automatic structure analysis. We have developed a benchmarking framework called MaterialsCoord, an open-source software package for comparing algorithms on how well they determine coordination environments as described in the literature. A total of eight algorithms—seven of which are well-established and a novel algorithm, CrystalNN—are benchmarked on a diverse set of prototypical crystal structures. Apart from performance on the benchmark, we provide other analyses that may be important for implementation of these algorithms such as computational demand and sensitivity towards small perturbations that mimic thermal motion.
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Presenters
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Hillary Pan
Energy Technologies Area, Lawrence Berkeley National Laboratory
Authors
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Hillary Pan
Energy Technologies Area, Lawrence Berkeley National Laboratory
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Alex Ganose
Energy Technologies Area, Lawrence Berkeley National Laboratory
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Matthew Horton
Materials Science & Engineering, University of California, Berkeley
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Muratahan Aykol
Toyota Research Institute, Energy Technologies Area, Lawrence Berkeley National Laboratory
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Kristin Persson
Materials Science & Engineering, University of California, Berkeley, Lawrence Berkeley National Laboratory
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Nils E.R. Zimmermann
Energy Technologies Area, Lawrence Berkeley National Laboratory
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Anubhav Jain
Energy Technologies Area, Lawrence Berkeley National Laboratory