Abstract
Nonadiabatic quantum dynamics are important for understanding light-harvesting processes, but their propagation with traditional methods can be rather expensive. Here we present a one-shot trajectory learning approach that allows to directly make ultra-fast prediction of the entire trajectory of the reduced density matrix for a new set of such simulation parameters as temperature and reorganization energy. The whole 10ps long propagation takes 70 milliseconds as we demonstrate on the comparatively large quantum system, the Fenna–Matthews–Olsen (FMO) complex. Our approach
also significantly reduces time and memory requirements for training.
Supplementary materials
Title
Supporting Information for One-shot Trajectory Learning of Open Quantum Systems Dynamics
Description
Supporting Information
for One-shot Trajectory Learning of Open
Quantum Systems Dynamics
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Dral's group
Description
The goal of research is accelerating and improving computational chemistry with artificial intelligence / machine learning.
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