Gaussian process regression for materials and molecules

VL Deringer, AP Bartók, N Bernstein… - Chemical …, 2021 - ACS Publications
We provide an introduction to Gaussian process regression (GPR) machine-learning
methods in computational materials science and chemistry. The focus of the present review …

Machine learning for alloys

GLW Hart, T Mueller, C Toher, S Curtarolo - Nature Reviews Materials, 2021 - nature.com
Alloy modelling has a history of machine-learning-like approaches, preceding the tide of
data-science-inspired work. The dawn of computational databases has made the integration …

Physics-inspired structural representations for molecules and materials

F Musil, A Grisafi, AP Bartók, C Ortner… - Chemical …, 2021 - ACS Publications
The first step in the construction of a regression model or a data-driven analysis, aiming to
predict or elucidate the relationship between the atomic-scale structure of matter and its …

The MLIP package: moment tensor potentials with MPI and active learning

IS Novikov, K Gubaev, EV Podryabinkin… - Machine Learning …, 2020 - iopscience.iop.org
The subject of this paper is the technology (the'how') of constructing machine-learning
interatomic potentials, rather than science (the'what'and'why') of atomistic simulations using …

Neuroevolution machine learning potentials: Combining high accuracy and low cost in atomistic simulations and application to heat transport

Z Fan, Z Zeng, C Zhang, Y Wang, K Song, H Dong… - Physical Review B, 2021 - APS
We develop a neuroevolution-potential (NEP) framework for generating neural network-
based machine-learning potentials. They are trained using an evolutionary strategy for …

[HTML][HTML] Perspective on integrating machine learning into computational chemistry and materials science

J Westermayr, M Gastegger, KT Schütt… - The Journal of Chemical …, 2021 - pubs.aip.org
Machine learning (ML) methods are being used in almost every conceivable area of
electronic structure theory and molecular simulation. In particular, ML has become firmly …

Linear atomic cluster expansion force fields for organic molecules: beyond rmse

DP Kovács, C Oord, J Kucera, AEA Allen… - Journal of chemical …, 2021 - ACS Publications
We demonstrate that fast and accurate linear force fields can be built for molecules using the
atomic cluster expansion (ACE) framework. The ACE models parametrize the potential …

The design space of e (3)-equivariant atom-centered interatomic potentials

I Batatia, S Batzner, DP Kovács, A Musaelian… - arXiv preprint arXiv …, 2022 - arxiv.org
The rapid progress of machine learning interatomic potentials over the past couple of years
produced a number of new architectures. Particularly notable among these are the Atomic …

Performant implementation of the atomic cluster expansion (PACE) and application to copper and silicon

Y Lysogorskiy, C Oord, A Bochkarev, S Menon… - npj computational …, 2021 - nature.com
The atomic cluster expansion is a general polynomial expansion of the atomic energy in
multi-atom basis functions. Here we implement the atomic cluster expansion in the …

On-the-fly active learning of interatomic potentials for large-scale atomistic simulations

R Jinnouchi, K Miwa, F Karsai, G Kresse… - The Journal of …, 2020 - ACS Publications
The on-the-fly generation of machine-learning force fields by active-learning schemes
attracts a great deal of attention in the community of atomistic simulations. The algorithms …