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 …
methods in computational materials science and chemistry. The focus of the present review …
Machine learning for alloys
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 …
data-science-inspired work. The dawn of computational databases has made the integration …
Physics-inspired structural representations for molecules and materials
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 …
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 …
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
We develop a neuroevolution-potential (NEP) framework for generating neural network-
based machine-learning potentials. They are trained using an evolutionary strategy for …
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
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 …
electronic structure theory and molecular simulation. In particular, ML has become firmly …
Linear atomic cluster expansion force fields for organic molecules: beyond rmse
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 …
atomic cluster expansion (ACE) framework. The ACE models parametrize the potential …
The design space of e (3)-equivariant atom-centered interatomic potentials
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 …
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
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 …
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 …
attracts a great deal of attention in the community of atomistic simulations. The algorithms …