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Bibliographic Details
Main Authors: Zhukov, A. A., Pogosov, W. V.
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2310.13382
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author Zhukov, A. A.
Pogosov, W. V.
author_facet Zhukov, A. A.
Pogosov, W. V.
contents We address a learning-based quantum error mitigation method, which utilizes deep neural network applied at the postprocessing stage, and study its performance in presence of different types of quantum noises. We concentrate on the simulation of Trotterized dynamics of 2D spin lattice in the regime of high noise, when expectation values of bounded traceless observables are strongly suppressed. By using numerical simulations, we demonstrate a dramatic improvement of data quality for both local weight-1 and weight-2 observables for the depolarizing and inhomogeneous Pauli channels. At the same time, the effect of coherent $ZZ$ crosstalks is not mitigated, so that in practise crosstalks should be at first converted into incoherent errors by randomized compiling.
format Preprint
id arxiv_https___arxiv_org_abs_2310_13382
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Quantum error mitigation in the regime of high noise using deep neural network: Trotterized dynamics
Zhukov, A. A.
Pogosov, W. V.
Quantum Physics
We address a learning-based quantum error mitigation method, which utilizes deep neural network applied at the postprocessing stage, and study its performance in presence of different types of quantum noises. We concentrate on the simulation of Trotterized dynamics of 2D spin lattice in the regime of high noise, when expectation values of bounded traceless observables are strongly suppressed. By using numerical simulations, we demonstrate a dramatic improvement of data quality for both local weight-1 and weight-2 observables for the depolarizing and inhomogeneous Pauli channels. At the same time, the effect of coherent $ZZ$ crosstalks is not mitigated, so that in practise crosstalks should be at first converted into incoherent errors by randomized compiling.
title Quantum error mitigation in the regime of high noise using deep neural network: Trotterized dynamics
topic Quantum Physics
url https://arxiv.org/abs/2310.13382