Reinforcement learning control of atom cooling
ORAL
Abstract
We apply reinforcement learning to the preparation of a rubidium-87 ultracold quantum gas to realize a consistent and large number of atoms at microkelvin temperatures. This reinforcement learning agent determines an optimal set of thirty experimental control parameters in a dynamically changing environment that is characterized by thirty experimentally sensed parameters. By comparing this method to that of training supervised-learning regression models, as well as to human-driven control schemes, we find that both machine learning approaches accurately predict the number of cooled atoms and both result in occasional superhuman control schemes. However, only the reinforcement learning method achieves consistent outcomes in the laboratory, even in the presence of a dynamic environment.
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Publication: N Milson et al 2023 Mach. Learn.: Sci. Technol. 4 045057
Presenters
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Nicholas Milson
University of Alberta
Authors
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Nicholas Milson
University of Alberta
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Arina Tashchilina
University of Alberta
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Tian Ooi
University of Colorado Boulder
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Anna Czarnecka
University of Alberta
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Zaheen F Ahmad
University of Alberta
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Lindsay J LeBlanc
University of Alberta Department of Physics, Department of Physics, University of Alberta