English

ChemFit: A framework for automated high-dimensional model parameter optimization

Chemical Physics 2026-05-13 v2 Mesoscale and Nanoscale Physics

Abstract

The parameterization of simulation-based models is a central yet laborious task in computational chemistry and physics, often driven by human intuition and manual iteration. Automating this task necessitates the definition of suitable objective functions, which tend to be expensive to evaluate, noisy, non-differentiable, or composed of heterogeneous contributions originating from separate sets of simulations. Gradient-free and black-box optimization algorithms are powerful tools which are particularly well-suited to minimizing such objective functions. Here, we introduce ChemFit, a flexible Python framework for the definition, composition, and massively concurrent evaluation of simulation-based objective functions, which is designed to operate in conjunction with these algorithms. We demonstrate the broad applicability of this approach by using ChemFit for three representative examples of increasing complexity and real-world relevance. First, we obtain the parameters of the Lennard-Jones potential for liquid argon from experimental measurements of the density. Second, we parameterize a polarizable and flexible potential energy function to reproduce the structure of small H2_2O clusters obtained from density functional theory calculations. Finally, we tune a small subset of the parameters of a residue-level coarse-grained protein force-field, with the goal to reproduce the experimental critical solution temperature of the low complexity domain of the wild-type hnRNPA1 sequence and an arginine-enriched mutant of this protein. hnRNPA1 is an RNA-binding protein linked to amyotrophic lateral sclerosis. Together, these examples illustrate how ChemFit enables scalable, reproducible, and optimizer-agnostic parameter fitting for broadly applicable multiscale models.

Keywords

Cite

@article{arxiv.2603.11769,
  title  = {ChemFit: A framework for automated high-dimensional model parameter optimization},
  author = {Moritz Sallermann and Amrita Goswami and Rosana Collepardo-Guevara and Alberto Ocana and Hannes Jónsson and Elvar Ö. Jónsson and Jorge R. Espinosa},
  journal= {arXiv preprint arXiv:2603.11769},
  year   = {2026}
}
R2 v1 2026-07-01T11:16:26.994Z