High-dimensional reinforcement learning for optimization and control of ultracold quantum gases

Author:

Milson NORCID,Tashchilina AORCID,Ooi T,Czarnecka A,Ahmad Z F,LeBlanc L JORCID

Abstract

Abstract Machine-learning (ML) techniques are emerging as a valuable tool in experimental physics, and among them, reinforcement learning (RL) offers the potential to control high-dimensional, multistage processes in the presence of fluctuating environments. In this experimental work, we apply RL to the preparation of an ultracold quantum gas to realize a consistent and large number of atoms at microkelvin temperatures. This RL agent determines an optimal set of 30 control parameters in a dynamically changing environment that is characterized by 30 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 ML approaches accurately predict the number of cooled atoms and both result in occasional superhuman control schemes. However, only the RL method achieves consistent outcomes, even in the presence of a dynamic environment.

Funder

Alberta Innovates

Natural Sciences and Engineering Research Council of Canada

Canada Foundation for Innovation

Canada Research Chairs

Alberta Quantum Major Innovation Fund

University of Alberta

Publisher

IOP Publishing

Subject

Artificial Intelligence,Human-Computer Interaction,Software

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