Litcius/Paper detail

Enhanced Sampling in the Age of Machine Learning: Algorithms and Applications

Kai Zhu, Enrico Trizio, Jintu Zhang, Renling Hu, Linlong Jiang, Tingjun Hou, Luigi Bonati

2025Chemical Reviews27 citationsDOIOpen Access PDF

Abstract

Molecular dynamics simulations hold great promise for providing insight into the microscopic behavior of complex molecular systems. However, their effectiveness is often constrained by long timescales associated with rare events. Enhanced sampling methods have been developed to address these challenges, and recent years have seen a growing integration with machine learning techniques. This Review provides a comprehensive overview of how they are reshaping the field, with a particular focus on the data-driven construction of collective variables. Furthermore, these techniques have also improved biasing schemes and unlocked novel strategies via reinforcement learning and generative approaches. In addition to methodological advances, we highlight applications spanning different areas, such as biomolecular processes, ligand binding, catalytic reactions, and phase transitions. We conclude by outlining future directions aimed at enabling more automated strategies for rare-event sampling.

Topics & Concepts

Focus (optics)Reinforcement learningGenerative grammarArtificial intelligenceSampling (signal processing)Computer scienceMachine learningPhase (matter)ChemistryComplex systemAlgorithmSimple (philosophy)Molecular dynamicsData scienceMachine Learning in Materials ScienceProtein Structure and DynamicsAnomaly Detection Techniques and Applications
Enhanced Sampling in the Age of Machine Learning: Algorithms and Applications | Litcius