GLIMPS: A Machine Learning Approach to Resolution Transformation for Multiscale Modeling

Keverne A Louison, Ian L Dryden, Charles A Laughton
2021
We describe a general approach to transforming molecular models between different levels of resolution, based on machine learning methods. The approach uses a matched set of models at both levels of resolution for training, but requires only the coordinates of their particles and no side information (e.g., templates for substructures, defined mappings, or molecular mechanics force fields). Once trained, the approach can transform further molecular models of the system between the two levels of resolution in either direction with equal facility.
doi:10.1021/acs.jctc.1c00735 pmid:34852200 fatcat:rpsvm6rgmnba3ldvc5vqcz3mua