论文标题

使用隐藏的倒置来表征和减轻被困的离子量子处理器中的相干错误

Characterizing and mitigating coherent errors in a trapped ion quantum processor using hidden inverses

论文作者

Majumder, Swarnadeep, Yale, Christopher G., Morris, Titus D., Lobser, Daniel S., Burch, Ashlyn D., Chow, Matthew N. H., Revelle, Melissa C., Clark, Susan M., Pooser, Raphael C.

论文摘要

量子计算测试台表现出对小Qubits集合的高保真量子控制,从而实现了精确的,可重复的操作的性能,然后进行测量。当前,这些嘈杂的中间尺度设备可以在变质之前支持足够数量的顺序操作,从而可以以近距离的精度执行近期算法(例如量子化学的化学精度)。尽管这些算法的结果不完美,但这些缺陷可以帮助引导量子计算机测试床的开发。这些算法在过去几年中的演示,再加上不完美的算法性能可能是由量子处理器中的几个主要噪声源引起的,量子处理器中的几个主要噪声源可以在算法执行期间进行测量和校准,或者在后处理过程中可以导致使用噪声缓解效果来改善计算结果。相反,基准算法加上降低噪声,可以帮助诊断噪声的性质,无论是系统的还是纯粹随机的。在这里,我们概述了将连贯的降解噪声技术用作陷阱离子测试床中的特征工具。我们对嘈杂数据进行模型拟合,以基于逼真的噪声模型来确定噪声源,并证明系统的噪声放大与误差缓解方案相结合为噪声模型减少提供了有用的数据。此外,为了将较低级别噪声模型的详细信息与近期算法的应用特定性能联系起来,我们在各种注射噪声源和误差缓解技术下实验构建了变异算法的损失格局。这种类型的连接启用了应用程序意识的硬件代码,其中特定应用中最重要的噪声源(如量子化学)成为随后的硬件一代的改进焦点。

Quantum computing testbeds exhibit high-fidelity quantum control over small collections of qubits, enabling performance of precise, repeatable operations followed by measurements. Currently, these noisy intermediate-scale devices can support a sufficient number of sequential operations prior to decoherence such that near term algorithms can be performed with proximate accuracy (like chemical accuracy for quantum chemistry). While the results of these algorithms are imperfect, these imperfections can help bootstrap quantum computer testbed development. Demonstrations of these algorithms over the past few years, coupled with the idea that imperfect algorithm performance can be caused by several dominant noise sources in the quantum processor, which can be measured and calibrated during algorithm execution or in post-processing, has led to the use of noise mitigation to improve computational results. Conversely, benchmark algorithms coupled with noise mitigation can help diagnose the nature of noise, whether systematic or purely random. Here, we outline the use of coherent noise mitigation techniques as a characterization tool in trapped-ion testbeds. We perform model-fitting of the noisy data to determine the noise source based on realistic noise models and demonstrate that systematic noise amplification coupled with error mitigation schemes provides useful data for noise model deduction. Further, in order to connect lower level noise model details with application specific performance of near term algorithms, we experimentally construct the loss landscape of a variational algorithm under various injected noise sources coupled with error mitigation techniques. This type of connection enables application-aware hardware codesign, in which the most important noise sources in specific applications, like quantum chemistry, become foci of improvement in subsequent hardware generations.

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