Materials Science · Physics
Orb-v3: atomistic simulation at scale
Benjamin Rhodes, Sander Vandenhaute, Vaidotas Šimkus, James Gin +3
2025-04-14
Materials Science · Physics
Universal Machine Learning Potential for Systems with Reduced Dimensionality
Giulio Benedini, Antoine Loew, Matti Hellstrom, Silvana Botti +1
2025-08-22
Quantitative Methods · Quantitative Biology
Molecular modeling with machine-learned universal potential functions
Ke Liu, Zekun Ni, Zhenyu Zhou, Suocheng Tan +6
2021-04-20
Computational Physics · Physics
Fast, accurate, and transferable many-body interatomic potentials by symbolic regression
Alberto Hernandez, Adarsh Balasubramanian, Fenglin Yuan, Simon Mason +1
2022-11-03
Materials Science · Physics
Systematic assessment of various universal machine-learning interatomic potentials
Haochen Yu, Matteo Giantomassi, Giuliana Materzanini, Junjie Wang +1
2024-07-23
Materials Science · Physics
A Systematic Approach to Generating Accurate Neural Network Potentials: the Case of Carbon
Yusuf Shaidu, Emine Kucukbenli, Ruggero Lot, Franco Pellegrini +2
2020-11-10
Computational Physics · Physics
Fast and Sample-Efficient Interatomic Neural Network Potentials for Molecules and Materials Based on Gaussian Moments
Viktor Zaverkin, David Holzmüller, Ingo Steinwart, Johannes Kästner
2021-10-05
Materials Science · Physics
Towards Universal Neural Network Potential for Material Discovery Applicable to Arbitrary Combination of 45 Elements
So Takamoto, Chikashi Shinagawa, Daisuke Motoki, Kosuke Nakago +18
2022-07-06
Chemical Physics · Physics
Egret-1: Pretrained Neural Network Potentials for Efficient and Accurate Bioorganic Simulation
Elias L. Mann, Corin C. Wagen, Jonathon E. Vandezande, Arien M. Wagen +1
2025-06-12
Materials Science · Physics
Performance of universal machine learning potentials in global optimization
Edan T. Marcial, Laxman Chaudhary, Olesya Gorbunova, Aleksey N. Kolmogorov
2026-03-02
Chemical Physics · Physics
Efficient Approximations of Complete Interatomic Potentials for Crystal Property Prediction
Yuchao Lin, Keqiang Yan, Youzhi Luo, Yi Liu +2
2023-11-08
Computational Physics · Physics
Neuroevolution machine learning potentials: Combining high accuracy and low cost in atomistic simulations and application to heat transport
Zheyong Fan, Zezhu Zeng, Cunzhi Zhang, Yanzhou Wang +3
2022-01-25
Chemical Physics · Physics
OrbNet: Deep Learning for Quantum Chemistry Using Symmetry-Adapted Atomic-Orbital Features
Zhuoran Qiao, Matthew Welborn, Animashree Anandkumar, Frederick R. Manby +1
2022-01-20
Materials Science · Physics
Fine-tuning foundation models of materials interatomic potentials with frozen transfer learning
Mariia Radova, Wojciech G. Stark, Connor S. Allen, Reinhard J. Maurer +1
2025-07-30
Materials Science · Physics
NEP89: Universal neuroevolution potential for inorganic and organic materials across 89 elements
Ting Liang, Ke Xu, Eric Lindgren, Zherui Chen +15
2025-06-11
Chemical Physics · Physics
A Universal Density Matrix Functional from Molecular Orbital-Based Machine Learning: Transferability across Organic Molecules
Lixue Cheng, Matthew Welborn, Anders S. Christensen, Thomas F. Miller
2019-04-17
Materials Science · Physics
MatterTune: An Integrated, User-Friendly Platform for Fine-Tuning Atomistic Foundation Models to Accelerate Materials Simulation and Discovery
Lingyu Kong, Nima Shoghi, Guoxiang Hu, Pan Li +1
2025-04-16
Materials Science · Physics
Evaluating Mechanical Property Prediction across Material Classes using Molecular Dynamics Simulations with Universal Machine-Learned Interatomic Potentials
Konstantin Stracke, Connor W. Edwards, Jack D. Evans
2025-12-01