Stability-Aware Training of Machine Learning Force Fields with Differentiable Boltzmann Estimators
Sanjeev Raja, Ishan Amin, Fabian Pedregosa, Aditi S. Krishnapriyan

TL;DR
This paper introduces StABlE Training, a novel method for improving the stability of machine learning force fields in molecular dynamics by integrating system observables and quantum calculations, enabling longer simulations and larger timesteps.
Contribution
We develop a stability-aware training procedure that enhances ML force fields by iteratively correcting instabilities using a differentiable Boltzmann Estimator without extra ab-initio calculations.
Findings
Significant improvements in simulation stability and data efficiency.
Models achieve better agreement with reference observables.
Enables larger timesteps beyond traditional stability limits.
Abstract
Machine learning force fields (MLFFs) are an attractive alternative to ab-initio methods for molecular dynamics (MD) simulations. However, they can produce unstable simulations, limiting their ability to model phenomena occurring over longer timescales and compromising the quality of estimated observables. To address these challenges, we present Stability-Aware Boltzmann Estimator (StABlE) Training, a multi-modal training procedure which leverages joint supervision from reference quantum-mechanical calculations and system observables. StABlE Training iteratively runs many MD simulations in parallel to seek out unstable regions, and corrects the instabilities via supervision with a reference observable. We achieve efficient end-to-end automatic differentiation through MD simulations using our Boltzmann Estimator, a generalization of implicit differentiation techniques to a broader class…
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Taxonomy
TopicsNeural Networks and Applications · Machine Learning in Materials Science · Gaussian Processes and Bayesian Inference
