4.8 Article

Deep learning the slow modes for rare events sampling

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NATL ACAD SCIENCES
DOI: 10.1073/pnas.2113533118

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enhanced sampling; collective variables; machine learning; molecular dynamics

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The development of enhanced sampling methods has expanded the scope of atomistic simulations, allowing the study of long-time phenomena with accessible computational resources. By identifying appropriate collective variables and utilizing machine learning and probability-enhanced sampling techniques, efficient transfer operator eigenfunctions can be extracted to accelerate the sampling of rare events, demonstrating the versatility and power of this approach across various systems.
The development of enhanced sampling methods has greatly extended the scope of atomistic simulations, allowing longtime phenomena to be studied with accessible computational resources. Many such methods rely on the identification of an appropriate set of collective variables. These are meant to describe the system's modes that most slowly approach equilibrium under the action of the sampling algorithm. Once identified, the equilibration of these modes is accelerated by the enhanced sampling method of choice. An attractive way of determining the collective variables is to relate them to the eigenfunctions and eigenvalues of the transfer operator. Unfortunately, this requires knowing the long-term dynamics of the system beforehand, which is generally not available. However, we have recently shown that it is indeed possible to determine efficient collective variables starting from biased simulations. In this paper, we bring the power of machine learning and the efficiency of the recently developed on the fly probability-enhanced sampling method to bear on this approach. The result is a powerful and robust algorithm that, given an initial enhanced sampling simulation performed with trial collective variables or generalized ensembles, extracts transfer operator eigenfunctions using a neural network ansatz and then accelerates them to promote sampling of rare events. To illustrate the generality of this approach, we apply it to several systems, ranging from the conformational transition of a small molecule to the folding of a miniprotein and the study of materials crystallization.

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