Data generation for machine learning interatomic potentials and beyond

M Kulichenko, B Nebgen, N Lubbers, JS Smith… - Chemical …, 2024 - ACS Publications
The field of data-driven chemistry is undergoing an evolution, driven by innovations in
machine learning models for predicting molecular properties and behavior. Recent strides in …

Performance assessment of universal machine learning interatomic potentials: Challenges and directions for materials' surfaces

B Focassio, LP M. Freitas… - ACS Applied Materials & …, 2024 - ACS Publications
Machine learning interatomic potentials (MLIPs) are one of the main techniques in the
materials science toolbox, able to bridge ab initio accuracy with the computational efficiency …

Scalable parallel algorithm for graph neural network interatomic potentials in molecular dynamics simulations

Y Park, J Kim, S Hwang, S Han - Journal of chemical theory and …, 2024 - ACS Publications
Message-passing graph neural network interatomic potentials (GNN-IPs), particularly those
with equivariant representations such as NequIP, are attracting significant attention due to …

General-purpose machine-learned potential for 16 elemental metals and their alloys

K Song, R Zhao, J Liu, Y Wang, E Lindgren… - Nature …, 2024 - nature.com
Abstract Machine-learned potentials (MLPs) have exhibited remarkable accuracy, yet the
lack of general-purpose MLPs for a broad spectrum of elements and their alloys limits their …

[HTML][HTML] Improving machine-learning models in materials science through large datasets

J Schmidt, TFT Cerqueira, AH Romero, A Loew… - Materials Today …, 2024 - Elsevier
The accuracy of a machine learning model is limited by the quality and quantity of the data
available for its training and validation. This problem is particularly challenging in materials …

Diffusion mechanisms of fast lithium-ion conductors

KJ Jun, Y Chen, G Wei, X Yang, G Ceder - Nature Reviews Materials, 2024 - nature.com
The quest for next-generation energy-storage technologies has pivoted towards all-solid-
state batteries, primarily owing to their potential for enhanced safety and energy density. At …

Recent Advances in Machine Learning‐Assisted Multiscale Design of Energy Materials

B Mortazavi - Advanced Energy Materials, 2024 - Wiley Online Library
This review highlights recent advances in machine learning (ML)‐assisted design of energy
materials. Initially, ML algorithms were successfully applied to screen materials databases …

[HTML][HTML] Perspective: Atomistic simulations of water and aqueous systems with machine learning potentials

A Omranpour, P Montero De Hijes, J Behler… - The Journal of …, 2024 - pubs.aip.org
As the most important solvent, water has been at the center of interest since the advent of
computer simulations. While early molecular dynamics and Monte Carlo simulations had to …

The potential of neural network potentials

TT Duignan - ACS Physical Chemistry Au, 2024 - ACS Publications
In the next half-century, physical chemistry will likely undergo a profound transformation,
driven predominantly by the combination of recent advances in quantum chemistry and …

Machine learning interatomic potential: Bridge the gap between small-scale models and realistic device-scale simulations

G Wang, C Wang, X Zhang, Z Li, J Zhou, Z Sun - Iscience, 2024 - cell.com
Summary Machine Learning Interatomic Potential (MLIP) overcomes the challenges of high
computational costs in density-functional theory and the relatively low accuracy in classical …