量子漏洞分析指导稳健的量子计算系统设计

Fang Qi;Kaitlin N. Smith;Travis LeCompte;Nian-feng Tzeng;Xu Yuan;Frederic T. Chong;Lu Peng
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引用次数: 0

摘要

虽然量子计算机为信息处理提供了令人兴奋的机遇,但目前它们在计算过程中受到的噪声影响尚未得到充分了解。不完整的噪声模型导致量子程序成功率(SR)估计值与机器实际结果之间存在差异。例如,估计成功概率(ESP)是用于衡量量子程序性能的最先进指标。由于 ESP 未能考虑到电路结构、量子态和量子计算机特性的独特组合,因此对每个程序执行的预测效果不佳。因此,我们迫切需要一种系统的方法来阐明各种噪声的影响,并准确、稳健地预测量子计算机的成功率,同时强调应用和设备的扩展性。在本文中,我们提出了量子脆弱性分析(QVA),以系统地量化错误对量子应用的影响,并解决当前成功率(SR)估算器与实际量子计算机结果之间的差距。量子脆弱性分析确定目标量子计算的累积量子脆弱性(CQV),根据应用于目标量子机器的整个算法量化量子错误影响。通过在三台 27 量子位量子计算机上使用知名基准对 CQV 进行评估,CQV 成功估算优于成功概率估算的最先进预测技术,对于实际 SR 率高于 0.1% 的基准,CQV 成功估算的相对预测误差平均减少了六倍,最好的情况下减少了 30 倍。QVA 的直接应用有助于研究人员在编译时选择有前途的编译策略。
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Quantum Vulnerability Analysis to Guide Robust Quantum Computing System Design
While quantum computers provide exciting opportunities for information processing, they currently suffer from noise during computation that is not fully understood. Incomplete noise models have led to discrepancies between quantum program success rate (SR) estimates and actual machine outcomes. For example, the estimated probability of success (ESP) is the state-of-the-art metric used to gauge quantum program performance. The ESP suffers poor prediction since it fails to account for the unique combination of circuit structure, quantum state, and quantum computer properties specific to each program execution. Thus, an urgent need exists for a systematic approach that can elucidate various noise impacts and accurately and robustly predict quantum computer success rates, emphasizing application and device scaling. In this article, we propose quantum vulnerability analysis (QVA) to systematically quantify the error impact on quantum applications and address the gap between current success rate (SR) estimators and real quantum computer results. The QVA determines the cumulative quantum vulnerability (CQV) of the target quantum computation, which quantifies the quantum error impact based on the entire algorithm applied to the target quantum machine. By evaluating the CQV with well-known benchmarks on three 27-qubit quantum computers, the CQV success estimation outperforms the estimated probability of success state-of-the-art prediction technique by achieving on average six times less relative prediction error, with best cases at 30 times, for benchmarks with a real SR rate above 0.1%. Direct application of QVA has been provided that helps researchers choose a promising compiling strategy at compile time.
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