Chemical Physics · Physics
Introduction to machine learning potentials for atomistic simulations
Fabian L. Thiemann, Niamh O'Neill, Venkat Kapil, Angelos Michaelides +1
2024-10-02
Chemical Physics · Physics
The Evolution of Machine Learning Potentials for Molecules, Reactions and Materials
Junfan Xia, Yaolong Zhang, Bin Jiang
2025-05-13
Chemical Physics · Physics
Machine learning for molecular simulation
Frank Noé, Alexandre Tkatchenko, Klaus-Robert Müller, Cecilia Clementi
2019-11-11
Quantum Physics · Physics
Extending the reach of quantum computing for materials science with machine learning potentials
Julian Schuhmacher, Guglielmo Mazzola, Francesco Tacchino, Olga Dmitriyeva +3
2023-11-15
Quantitative Methods · Quantitative Biology
Molecular modeling with machine-learned universal potential functions
Ke Liu, Zekun Ni, Zhenyu Zhou, Suocheng Tan +6
2021-04-20
Chemical Physics · Physics
High-Accuracy Molecular Simulations with Machine-Learning Potentials and Semiclassical Approximations to Quantum Dynamics
Valerii Andreichev, Jindra Dušek, Markus Meuwly, Jeremy O. Richardson
2026-02-24
Quantum Physics · Physics
Challenges and Opportunities in Quantum Machine Learning
M. Cerezo, Guillaume Verdon, Hsin-Yuan Huang, Lukasz Cincio +1
2023-03-17
Computational Physics · Physics
Machine learning force fields and coarse-grained variables in molecular dynamics: application to materials and biological systems
Paraskevi Gkeka, Gabriel Stoltz, Amir Barati Farimani, Zineb Belkacemi +13
2020-04-16
Chemical Physics · Physics
Molecular Machine Learning in Chemical Process Design
Jan G. Rittig, Manuel Dahmen, Martin Grohe, Philippe Schwaller +1
2025-09-01
Machine Learning · Computer Science
Benchmarking Compositional Generalisation for Machine Learning Interatomic Potentials
Amir Masoud Nourollah, Irtaza Khalid, Stefano Leoni, Steven Schockaert
2026-05-12
Computational Physics · Physics
A Perspective on Deep Learning for Molecular Modeling and Simulations
Jun Zhang, Yao-Kun Lei, Zhen Zhang, Junhan Chang +5
2021-03-19
Materials Science · Physics
Strategies for the Construction of Machine-Learning Potentials for Accurate and Efficient Atomic-Scale Simulations
April M. Miksch, Tobias Morawietz, Johannes Kästner, Alexander Urban +1
2021-05-06