Quantum Noise Spectroscopy Informed Optimized Gates
ORAL
Abstract
In recent years, a number of quantum noise spectroscopy (QNS) protocols have been developed to characterize spatio-temporally correlated noise processes. Estimates of the noise power spectral density from QNS protocols are meant to inform optimized control protocols designed to mitigate noise while simultaneously implementing a particular quantum operation. While it is widely accepted that QNS should yield an added advantage to optimized control, there has yet to be an experimental demonstration of QNS-informed optimized control on a non-trivial gate. In this talk, we experimentally demonstrate the advantage of Gradient Ascent in Function Space (Filter GrAFS) optimized control, using injected noise as a probe. Injected noise is generated using the Schrodinger Wave Autoregressive Moving Average (SchWARMA) model, phase-modulating an ideal control signal to mimic the noise spectrum of pure-tone dephasing noise. By subjecting optimized and non-optimized controls to different noise environments, we experimentally demonstrate the advantage of Filter GrAFS optimized control.
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Presenters
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Andrew J Murphy
Johns Hopkins University Applied Physics Laboratory
Authors
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Andrew J Murphy
Johns Hopkins University Applied Physics Laboratory
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Helena G Yoest
Applied Phys Lab/JHU
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Yasuo Oda
Johns Hopkins University
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Leigh M Norris
Johns Hopkins University Applied Physics Laboratory, Johns Hopkins University Applied Physics Lab
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Kevin Schultz
Applied Phys Lab/JHU
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Gregory Quiroz
Johns Hopkins University Applied Physics
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Timothy M Sweeney
Johns Hopkins University Applied Physics, Johns Hopkins University Applied Physics Lab