Bulletin of the American Physical Society
2024 APS March Meeting
Monday–Friday, March 4–8, 2024; Minneapolis & Virtual
Session B18: AI, ML, and Data Science for Quantum Systems
11:30 AM–2:18 PM,
Monday, March 4, 2024
Room: M100I
Sponsoring
Unit:
GDS
Chair: Paul Kairys, Argonne National Laboratory
Abstract: B18.00003 : Deep Reinforcement Learning for Robust Dynamical Decoupling
11:54 AM–12:06 PM
Presenter:
George Witt
(University of Maryland, College Park)
Authors:
George Witt
(University of Maryland, College Park)
Jner Tzern Oon
(University of Maryland, College Park)
Connor A Hart
(Quantum Catalyzer)
Ronald L Walsworth
(University of Maryland, College Park)
paradigm, by allowing a neural network agent to determine the choice of pulses for a spin system with dipolar interactions, magnetic disorder and control errors. Perhaps unsurprisingly, we find that machine-learning based searches fail to consider varying noise environments unless such inho-
mogeneities are explicitly included during training. To address this issue, we employ Monte-Carlo sampling to generate an array of spin systems, each with parameters sampled from user-defined noise distributions. We study the statistics of these measurement observables during unitary evolution, using them to inform our search for robust decoupling sequences.
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