Universal machine-learning models for advanced atomistic simulations
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Updated
Jul 3, 2026 - Python
Universal machine-learning models for advanced atomistic simulations
Code for automated fitting of machine learned interatomic potentials.
This repository investigates how different atomic descriptors (SOAP, Behler-Parrinello, Bispectrum, ChIMES, and Euler characteristic) induce sampling biases when curating MLIP training sets via Farthest Point Sampling, and whether the resulting latent spaces encode physically meaningful structure.
Files to reproduce results of a study on solvent-inclusive ML/MM simulations
Codes and data for the Review: "Machine-Learned Potentials for Solvation Modeling"
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