[HTML][HTML] Evaluation of the MACE force field architecture: From medicinal chemistry to materials science

DP Kovács, I Batatia, ES Arany… - The Journal of Chemical …, 2023 - pubs.aip.org
The MACE architecture represents the state of the art in the field of machine learning force
fields for a variety of in-domain, extrapolation, and low-data regime tasks. In this paper, we …

MACE-OFF23: Transferable machine learning force fields for organic molecules

DP Kovács, JH Moore, NJ Browning, I Batatia… - arXiv preprint arXiv …, 2023 - arxiv.org
Classical empirical force fields have dominated biomolecular simulation for over 50 years.
Although widely used in drug discovery, crystal structure prediction, and biomolecular …

Combining Force Fields and Neural Networks for an Accurate Representation of Chemically Diverse Molecular Interactions

A Illarionov, S Sakipov, L Pereyaslavets… - Journal of the …, 2023 - ACS Publications
A key goal of molecular modeling is the accurate reproduction of the true quantum
mechanical potential energy of arbitrary molecular ensembles with a tractable classical …

In silico chemical experiments in the Age of AI: From quantum chemistry to machine learning and back

A Aldossary, JA Campos‐Gonzalez‐Angulo… - Advanced …, 2024 - Wiley Online Library
Computational chemistry is an indispensable tool for understanding molecules and
predicting chemical properties. However, traditional computational methods face significant …

Accurate machine learning force fields via experimental and simulation data fusion

S Röcken, J Zavadlav - npj Computational Materials, 2024 - nature.com
Abstract Machine Learning (ML)-based force fields are attracting ever-increasing interest
due to their capacity to span spatiotemporal scales of classical interatomic potentials at …

Electronic Excited States from Physically Constrained Machine Learning

E Cignoni, D Suman, J Nigam, L Cupellini… - ACS Central …, 2024 - ACS Publications
Data-driven techniques are increasingly used to replace electronic-structure calculations of
matter. In this context, a relevant question is whether machine learning (ML) should be …

Accurate description of ion migration in solid-state ion conductors from machine-learning molecular dynamics

T Miyagawa, N Krishnan, M Grumet… - Journal of Materials …, 2024 - pubs.rsc.org
Solid-state ion conductors (SSICs) have emerged as a promising material class for
electrochemical storage devices and novel compounds of this kind are continuously being …

Artificial intelligence-aiding lab-on-a-chip workforce designed oral [3.1. 0] bi and [4.2. 0] tricyclic catalytic interceptors inhibiting multiple SARS-CoV-2 protomers …

S Kalasin, W Surareungchai - RSC advances, 2024 - pubs.rsc.org
While each massive pandemic has claimed the lives of millions of vulnerable populations
over the centuries, one limitation exists: that the Edisonian approach (human-directed with …

Analyzing Atomic Interactions in Molecules as Learned by Neural Networks

M Esders, T Schnake, J Lederer… - Journal of Chemical …, 2024 - ACS Publications
While machine learning (ML) models have been able to achieve unprecedented accuracies
across various prediction tasks in quantum chemistry, it is now apparent that accuracy on a …

Data-Driven Discovery of Gas-Selective Organic Linkers in Metal–Organic Frameworks for the Separation of Ethylene and Ethane

M Zhang, Q Xie, Z Wang, W Zhang, Y Bo… - The Journal of …, 2024 - ACS Publications
Metal–organic frameworks (MOFs) are potential candidates for gas-selective adsorbents for
the separation of an ethylene/ethane mixture. To accelerate material discovery, high …