Seung Gu Kang, Jeff Weber, et al.
ACS Fall 2023
Machine learning potentials have revolutionised the field of atomistic simulations in recent years and are becoming a mainstay in the toolbox of computational scientists. This paper aims to provide an overview and introduction into machine learning potentials and their practical application to scientific problems. We provide a systematic guide for developing machine learning potentials, reviewing chemical descriptors, regression models, data generation and validation approaches. We begin with an emphasis on the earlier generation of models, such as high-dimensional neural network potentials (HD-NNPs) and Gaussian approximation potential (GAP), to provide historical perspective and guide the reader towards the understanding of recent developments, which are discussed in detail thereafter. Furthermore, we refer to relevant expert reviews, open-source software, and practical examples - further lowering the barrier to exploring these methods. The paper ends with selected showcase examples, highlighting the capabilities of machine learning potentials and how they can be applied to push the boundaries in atomistic simulations.
Seung Gu Kang, Jeff Weber, et al.
ACS Fall 2023
Fahiem Bacchus, Joseph Y. Halpern, et al.
IJCAI 1995
Amarachi Blessing Mbakwe, Joy Wu, et al.
NeurIPS 2023
Rama Akkiraju, Pinar Keskinocak, et al.
Applied Intelligence