论文标题
超导量子计算机上的基准测试幅度估计
Benchmarking Amplitude Estimation on a Superconducting Quantum Computer
论文作者
论文摘要
在许多量子算法中,振幅估计(AE)是一个关键的子例程,可以在各种应用中进行二次加速,例如涉及估算各种功能统计的统计数据,如金融蒙特卡洛模拟中。设计方法已经进行了许多工作,以有效地估计量子状态的幅度,而没有昂贵的操作(例如量子傅立叶变换(QFT)),鉴于当前NISQ设备的限制,该量度特别令人难以置信。较新的方法减少了量子计算机所需的操作数量,并且是AE子例程的最有希望的近期实现。尽管在依赖AE的应用中对量子优势的确切电路要求还有待观察,但有必要继续对算法在当前量子计算机上的性能以及与该子例程相关的电路成本进行基准测试。 考虑到这些考虑,我们从以前的实验扩展了结果,该结果使用最大似然估计(MLE)近似量子状态的幅度,并在超导量子计算机上AE的当前可行电路深度上提供经验上限。我们的结果表明,使用最佳编译电路的MLE目前可以优于幼稚抽样,以进行多达3个斜率的迭代迭代,其电路深度为131,这比其他实验结果中报道的要高。该功能性基准是将不断监视当前量子硬件的众多基准之一,以衡量朝量子优势的必要进展。
Amplitude Estimation (AE) is a critical subroutine in many quantum algorithms, allowing for a quadratic speedup in various applications like those involving estimating statistics of various functions as in financial Monte Carlo simulations. Much work has gone into devising methods to efficiently estimate the amplitude of a quantum state without expensive operations like the Quantum Fourier Transform (QFT), which is especially prohibitive given the constraints of current NISQ devices. Newer methods have reduced the number of operations required on a quantum computer and are the most promising near-term implementations of the AE subroutine. While it remains to be seen the exact circuit requirements for a quantum advantage in applications relying on AE, it is necessary to continue to benchmark the algorithm's performance on current quantum computers and the circuit costs associated with such subroutines. Given these considerations, we expand on results from previous experiments in using Maximum Likelihood Estimation (MLE) to approximate the amplitude of a quantum state and provide empirical upper bounds on the current feasible circuit depths for AE on a superconducting quantum computer. Our results show that MLE using optimally-compiled circuits can currently outperform naive sampling for up to 3 Grover Iterations with a circuit depth of 131, which is higher than reported in other experimental results. This functional benchmark is one of many that will be continually monitored against current quantum hardware to measure the necessary progress towards quantum advantage.