Computational Physics · Physics
On Machine Learning Force Fields for Metallic Nanoparticles
Claudio Zeni, Kevin Rossi, Aldo Glielmo, Francesca Baletto
2019-09-17
Machine Learning · Computer Science
Ensemble Learning of Machine Learning Force Fields
Bangchen Yin, Yue Yin, Yuda W. Tang, Hai Xiao
2025-12-09
Materials Science · Physics
Data-driven Prediction of Ionic Conductivity in Solid-State Electrolytes with Machine Learning and Large Language Models
Haewon Kim, Taekgi Lee, Seongeun Hong, Kyeong-Ho Kim +1
2026-03-31
Chemical Physics · Physics
Scalable Machine Learning Force Fields for Macromolecular Systems Through Long-Range Aware Message Passing
Chu Wang, Lin Huang, Xinran Wei, Tao Qin +3
2026-01-08
Materials Science · Physics
Machine learning force fields: Construction, validation, and outlook
Venkatesh Botu, Rohit Batra, James Chapman, Rampi Ramprasad
2016-11-01
Chemical Physics · Physics
Efficient Long-Range Machine Learning Force Fields for Liquid and Materials Properties
John L. Weber, Rishabh D. Guha, Garvit Agarwal, Yujing Wei +9
2025-08-05
Machine Learning · Computer Science
DEQuify your force field: More efficient simulations using deep equilibrium models
Andreas Burger, Luca Thiede, Alán Aspuru-Guzik, Nandita Vijaykumar
2025-09-11
Chemical Physics · Physics
Beyond Force Metrics: Pre-Training MLFFs for Stable MD Simulations
Shagun Maheshwari, Zhengxian Tang, Janghoon Ock, Adeesh Kolluru +2
2025-12-22
Chemical Physics · Physics
Construction of Machine Learned Force Fields with Quantum Chemical Accuracy: Applications and Chemical Insights
Huziel E. Sauceda, Stefan Chmiela, Igor Poltavsky, Klaus-Robert Müller +1
2021-04-14
Chemical Physics · Physics
Machine Learning Force Fields
Oliver T. Unke, Stefan Chmiela, Huziel E. Sauceda, Michael Gastegger +4
2024-01-18
Materials Science · Physics
Parametrization of Non-Bonded Force Field Terms for Metal-Organic Frameworks Using Machine Learning Approach
Vadim V. Korolev, Yurii M. Nevolin, Thomas A. Manz, Pavel V. Protsenko
2021-11-22
Materials Science · Physics
Machine Learned Force Fields: Fundamentals, its reach, and challenges
Carlos A. Vital, Román J. Armenta-Rico, Huziel E. Sauceda
2025-03-11
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
Machine Learning · Computer Science
Robustness Evaluation of Machine Learning Models for Fault Classification and Localization In Power System Protection
Julian Oelhaf, Mehran Pashaei, Georg Kordowich, Christian Bergler +3
2025-12-18
Materials Science · Physics
High-Entropy Solid Electrolytes Discovery: A Dual-Stage Machine Learning Framework Bridging Atomic Configurations and Ionic Transport Properties
Xiao Fu, Jing Xu, Qifan Yang, Xuhe Gong +5
2025-05-27
Materials Science · Physics
Machine learning aided materials design platform for predicting the mechanical properties of Na-ion solid-state electrolytes
Junho Jo, Eunseong Choi, Minseon Kim, Kyoungmin Min
2021-08-13
Chemical Physics · Physics
On the design space between molecular mechanics and machine learning force fields
Yuanqing Wang, Kenichiro Takaba, Michael S. Chen, Marcus Wieder +13
2025-04-07
Chemical Physics · Physics
A Hybrid Physics-Driven Neural Network Force Field for Liquid Electrolytes
Junmin Chen, Qian Gao, Yange Lin, Miaofei Huang +5
2025-11-18