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Published October 2023 | Published
Journal Article Open

Learning Correlated Noise in a 39-Qubit Quantum Processor

Abstract

Building error-corrected quantum computers relies crucially on measuring and modeling noise on candidate devices. In particular, optimal error correction requires knowing the noise that occurs in the device as it executes the circuits required for error correction. As devices increase in size, we will become more reliant on efficient models of this noise. However, such models must still retain the information required to optimize the algorithms used for error correction. Here, we propose a method of extracting detailed information of the noise in a device running syndrome extraction circuits. We introduce and execute an experiment on a superconducting device using 39 of its qubits in a surface code doing repeated rounds of syndrome extraction but omitting the midcircuit measurement and reset. We show how to extract from the 20 data qubits the information needed to build noise models of various sophistication in the form of graphical models. These models give efficient descriptions of noise in large-scale devices and are designed to illuminate the effectiveness of error correction against correlated noise. Our estimates are furthermore precise: we learn a consistent global distribution where all one- and two-qubit error rates are known to a relative error of 0.1%. By extrapolating our experimentally learned noise models toward lower error rates, we demonstrate that accurate correlated noise models are increasingly important for successfully predicting subthreshold behavior in quantum error-correction experiments.

Copyright and License

Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article's title, journal citation, and DOI.

Acknowledgement

The experiment was performed in collaboration with the Google Quantum AI hardware team under the direction of Y. Chen, J. Kelly, and A. Megrant. We acknowledge the work of the team in fabricating and packaging the processor, building and outfitting the cryogenic and control systems, executing baseline calibrations, optimizing processor performance, and providing the tools to execute the experiment. We thank D. Debroy, B. Foxen, M. Harrigan, and M. Newman for reading the manuscript thoroughly and providing helpful feedback. R.H. would like to thank Robin Blume-Kohout for several insightful conversations relating to the paper. R.H. is funded by the Sydney Quantum Academy and this work was supported by Army Research Office (ARO) Grant No. W911NF2110001. S.F.'s contributions to this project were completed while he was affiliated with the University of Sydney.

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Additional details

Created:
October 18, 2023
Modified:
October 18, 2023