Data-Driven Characterization of Latent Dynamics on Quantum Testbeds
- URL: http://arxiv.org/abs/2401.09822v2
- Date: Thu, 1 Feb 2024 22:45:04 GMT
- Title: Data-Driven Characterization of Latent Dynamics on Quantum Testbeds
- Authors: Sohail Reddy, Stefanie Guenther, and Yujin Cho
- Abstract summary: We augment the dynamical equation of quantum systems described by the Lindblad master equation with a parameterized source term.
We consider a structure preserving augmentation that learns and distinguishes unitary from dissipative latent dynamics parameterized by a basis of linear operators.
We demonstrate that our interpretable, structure preserving, and nonlinear models are able to improve the prediction accuracy of the Lindblad master equation.
- Score: 0.23408308015481663
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This paper presents a data-driven approach to learn latent dynamics in
superconducting quantum computing hardware. To this end, we augment the
dynamical equation of quantum systems described by the Lindblad master equation
with a parameterized source term that is trained from experimental data to
capture unknown system dynamics, such as environmental interactions and system
noise. We consider a structure preserving augmentation that learns and
distinguishes unitary from dissipative latent dynamics parameterized by a basis
of linear operators, as well as an augmentation given by a nonlinear
feed-forward neural network. Numerical results are presented using data from
two different quantum processing units (QPU) at Lawrence Livermore National
Laboratory's Quantum Device and Integration Testbed. We demonstrate that our
interpretable, structure preserving, and nonlinear models are able to improve
the prediction accuracy of the Lindblad master equation and accurately model
the latent dynamics of the QPUs.
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