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Gaussian Approximation Potentials: a brief tutorial introduction
Published 4 Feb 2015 in cond-mat.mtrl-sci and physics.chem-ph | (1502.01366v2)
Abstract: We present a swift walk-through of our recent work that uses machine learning to fit interatomic potentials based on quantum mechanical data. We describe our Gaussian Approximation Potentials (GAP) framework, discussing a variety of descriptors, how to train the model on total energies and derivatives and the simultaneous use of multiple models. We also show a small example using QUIP, the software sandbox implementation of GAP that is available for non-commercial use.
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