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Enhanced Sampling with Machine Learning

Shams Mehdi, Zachary A. Smith, Lukas Herron, Ziyue Zou, Pratyush Tiwary

2024Annual Review of Physical Chemistry122 citationsDOIOpen Access PDF

Abstract

Molecular dynamics (MD) enables the study of physical systems with excellent spatiotemporal resolution but suffers from severe timescale limitations. To address this, enhanced sampling methods have been developed to improve the exploration of configurational space. However, implementing these methods is challenging and requires domain expertise. In recent years, integration of machine learning (ML) techniques into different domains has shown promise, prompting their adoption in enhanced sampling as well. Although ML is often employed in various fields primarily due to its data-driven nature, its integration with enhanced sampling is more natural with many common underlying synergies. This review explores the merging of ML and enhanced MD by presenting different shared viewpoints. It offers a comprehensive overview of this rapidly evolving field, which can be difficult to stay updated on. We highlight successful strategies such as dimensionality reduction, reinforcement learning, and flow-based methods. Finally, we discuss open problems at the exciting ML-enhanced MD interface.

Topics & Concepts

Computer scienceViewpointsSampling (signal processing)Reinforcement learningField (mathematics)Dimensionality reductionData scienceArtificial intelligenceCurse of dimensionalityInterface (matter)Machine learningDomain (mathematical analysis)Data miningMathematicsVisual artsMathematical analysisParallel computingArtComputer visionBubbleMaximum bubble pressure methodPure mathematicsFilter (signal processing)Machine Learning in Materials ScienceMicrofluidic and Capillary Electrophoresis ApplicationsProtein Structure and Dynamics
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