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从随机序列估计门集属性的影子估计

Shadow estimation of gate-set properties from random sequences.

作者信息

Helsen J, Ioannou M, Kitzinger J, Onorati E, Werner A H, Eisert J, Roth I

机构信息

QuSoft, Centrum Wiskunde & Informatica (CWI), Amsterdam, The Netherlands.

Korteweg-de Vries Institute for Mathematics, University of Amsterdam, Amsterdam, The Netherlands.

出版信息

Nat Commun. 2023 Aug 19;14(1):5039. doi: 10.1038/s41467-023-39382-9.

Abstract

With quantum computing devices increasing in scale and complexity, there is a growing need for tools that obtain precise diagnostic information about quantum operations. However, current quantum devices are only capable of short unstructured gate sequences followed by native measurements. We accept this limitation and turn it into a new paradigm for characterizing quantum gate-sets. A single experiment-random sequence estimation-solves a wealth of estimation problems, with all complexity moved to classical post-processing. We derive robust channel variants of shadow estimation with close-to-optimal performance guarantees and use these as a primitive for partial, compressive and full process tomography as well as the learning of Pauli noise. We discuss applications to the quantum gate engineering cycle, and propose novel methods for the optimization of quantum gates and diagnosing cross-talk.

摘要

随着量子计算设备在规模和复杂性上不断增加,对获取有关量子操作精确诊断信息的工具的需求也日益增长。然而,当前的量子设备仅能执行简短的无结构门序列,随后进行原生测量。我们接受这一限制,并将其转变为一种用于表征量子门集的新范式。单个实验——随机序列估计——解决了大量的估计问题,所有复杂性都转移到了经典后处理中。我们推导了具有接近最优性能保证的稳健的阴影估计信道变体,并将其用作部分、压缩和全流程层析成像以及泡利噪声学习的原语。我们讨论了在量子门工程循环中的应用,并提出了优化量子门和诊断串扰的新方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2064/10439944/86ea5c2bb1f2/41467_2023_39382_Fig1_HTML.jpg

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