This is a workspace to test and experiment espfit which is a refactored version of refit-espaloma to train and validate espaloma. Espaloma is an end-to-end differentibale graph neural network framework to parameterize classical molecular mechanics force fields.
The motivation and final goal of this repository to refit espaloma using QC data and NMR experimental observables of RNA nucleosides to simulate RNA systems.
experiments/
- workspace for each espaloma model trained on different dataset and/or protocolespaloma-0.3.2/
- experiments usingespaloma-0.3.2
which is equivalent to the model created in Ref1.openff-default/
- experiments using espaloma model trained with the same dataset asespaloma-0.3.2
but with espfitspice-default/
- experiments using espaloma model trained with the SPICE-1.1.4 datasetspice-openff-default/
- experiments using espaloma model trained with the SPICE dataset included in theespaloma-0.3.2
training datasetspice2-default/
- experiments using espaloma model trained with the SPICE-2.0.0 dataset
scripts/
- common scripts to run benchmark experimentspl-benchmark/
- alchemical protein-ligand binding free energy calculationsrna-nucleoside/
- RNA nucleoside simulations
Note that espaloma-0.3.2
, openff-default
, and spice-openff-default
uses QC data generated using B3LYP-D3BJ/DZVP level of theory whereas spice-default
and spice2-default
uses ωB97M-D3BJ/def2-TZVPPD. See Ref2 for the details about the impact of QM level of theory.
[1] Takaba, K et al., Machine-learned molecular mechanics force field for the simulation of protein-ligand systems and beyond, 2023, arXiv:2307.07085
[2] Behara, P. K. et al., Benchmarking QM theory for drug-like molecules to train force fields, 2022, OpenEye CUP XII, Santa Fe, NM. Zenodo