Editor: @dhhagan (all papers)
Reviewers: @ml-evs (all reviews), @ianfhunter (all reviews)
Muhammed Shuaibi, Yuge Hu (0000-0003-3648-7749), Xiangyun Lei, Benjamin M. Comer, Matt Adams, Jacob Paras, Rui Qi Chen, Eric Musa, Joseph Musielewicz, Andrew A. Peterson (0000-0003-2855-9482), Andrew J. Medford (0000-0001-8311-9581), Zachary Ulissi (0000-0002-9401-4918)
Shuaibi et al., (2023). AmpTorch: A Python package for scalable fingerprint-based neural network training on multi-element systems with integrated uncertainty quantification. Journal of Open Source Software, 8(87), 5035, https://doi.org/10.21105/joss.05035
machine learning interatomic potentials neural networks molecular dynamics
Authors of JOSS papers retain copyright.
This work is licensed under a Creative Commons Attribution 4.0 International License.
Journal of Open Source Software is an affiliate of the Open Source Initiative.
Journal of Open Source Software is part of Open Journals, which is a NumFOCUS-sponsored project.
Table of Contents
Public user content licensed CC BY 4.0 unless otherwise specified.
ISSN 2475-9066