论文标题
对小量子处理器的连续参数化量子门的样品验证
Sample-efficient verification of continuously-parameterized quantum gates for small quantum processors
论文作者
论文摘要
大多数近期量子信息处理设备将无法实现量子误差校正和相关的逻辑量子门集。相反,将使用设备的物理本机门集直接实现量子电路。这些天然门通常具有参数化(例如旋转角度),该参数提供了执行连续操作范围的能力。验证这些门在允许的参数范围内的正确操作对于获得对这些设备的可靠性的信心很重要。在这项工作中,我们演示了一种方法,用于对小量子处理器的连续参数量子门进行样品有效验证,最多约为10吨。此过程涉及生成从设备的天然门集选择的随机参数层的随机序列,然后随机地对该序列进行近似近似,以便在设备上执行完整序列应在其初始状态接近系统。我们表明,通过该技术进行的忠诚度估计值的差异低于通过跨熵基准制定进行的保真度估计。当估计一些预期的精确度时,这在样品效率方面提供了与实验相关的优势。我们使用来自Sandia Qscout的被困离子量子处理器上的连续参数化的量子门集描述了该技术的实验实现,以及来自IBM Q的超导量子处理器,我们在数值和实验上证明了该技术的样品效率优势。
Most near-term quantum information processing devices will not be capable of implementing quantum error correction and the associated logical quantum gate set. Instead, quantum circuits will be implemented directly using the physical native gate set of the device. These native gates often have a parameterization (e.g., rotation angles) which provide the ability to perform a continuous range of operations. Verification of the correct operation of these gates across the allowable range of parameters is important for gaining confidence in the reliability of these devices. In this work, we demonstrate a procedure for sample-efficient verification of continuously-parameterized quantum gates for small quantum processors of up to approximately 10 qubits. This procedure involves generating random sequences of randomly-parameterized layers of gates chosen from the native gate set of the device, and then stochastically compiling an approximate inverse to this sequence such that executing the full sequence on the device should leave the system near its initial state. We show that fidelity estimates made via this technique have a lower variance than fidelity estimates made via cross-entropy benchmarking. This provides an experimentally-relevant advantage in sample efficiency when estimating the fidelity loss to some desired precision. We describe the experimental realization of this technique using continuously-parameterized quantum gate sets on a trapped-ion quantum processor from Sandia QSCOUT and a superconducting quantum processor from IBM Q, and we demonstrate the sample efficiency advantage of this technique both numerically and experimentally.