39-Qubit量子处理器的相关噪声学习

IF 11 Q1 PHYSICS, APPLIED
Robin Harper, Steven T. Flammia
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引用次数: 5

摘要

构建纠错量子计算机主要依赖于对候选设备上的噪声进行测量和建模。特别是,最佳的纠错需要知道在执行纠错所需的电路时发生在器件中的噪声。随着设备尺寸的增加,我们将更加依赖于这种噪音的高效模型。然而,这些模型仍然必须保留优化用于纠错的算法所需的信息。在此,我们提出了一种提取设备运行综合症提取电路中噪声详细信息的方法。我们在超导设备上介绍并执行了一个实验,在表面代码中使用39个量子比特进行反复的综合征提取,但省略了中路测量和重置。我们展示了如何从20个数据量子位中提取所需的信息,以图形模型的形式构建各种复杂的噪声模型。这些模型有效地描述了大型器件中的噪声,并阐明了针对相关噪声进行误差校正的有效性。我们的估计进一步精确:我们了解到一个一致的全球分布,其中所有的一个和两个量子位错误率已知相对误差为0.1%。通过将我们的实验学习的噪声模型外推到更低的错误率,我们证明了准确的相关噪声模型对于成功预测量子纠错实验中的亚阈值行为越来越重要根据知识共享署名4.0国际许可协议,美国物理学会doi:https://doi.org/10.1103/PRXQuantum.4.040311Published。这项工作的进一步分发必须保持作者的归属和已发表文章的标题,期刊引用和DOI。发表于美国物理学会物理学科标题(PhySH)研究领域量子电路量子信息中的量子关联量子纠错量子信息理论量子信息科学与技术
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Learning Correlated Noise in a 39-Qubit Quantum Processor

Learning Correlated Noise in a 39-Qubit Quantum Processor
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.4 MoreReceived 18 April 2023Accepted 29 August 2023DOI:https://doi.org/10.1103/PRXQuantum.4.040311Published 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.Published by the American Physical SocietyPhysics Subject Headings (PhySH)Research AreasQuantum circuitsQuantum correlations in quantum informationQuantum error correctionQuantum information theoryQuantum Information, Science & Technology
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CiteScore
14.60
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