论文标题
用于学习量子处理器控制参数的蛇优化器
The Snake Optimizer for Learning Quantum Processor Control Parameters
论文作者
论文摘要
高性能量子计算需要一个校准系统,该校准系统比系统漂移更快地学习最佳控制参数。在某些情况下,学习过程需要解决非凸,高维,高度约束并具有天文搜索空间的复杂优化问题。此类问题构成了可扩展性的障碍,因为传统的全球优化器通常对于包括数十吨的小规模处理器而言,效率过低且缓慢。在此白皮书中,我们介绍了蛇优化器,以通过利用人工智能,动态编程和图形优化的概念来有效,快速解决此类优化问题。实际上,该蛇已被应用于优化量子逻辑门以频率可调的超导速度实现的频率。该应用程序启用了53个Qubit量子处理器上的最先进的系统性能,它是展示量子至高无上的关键组成部分。此外,蛇优化器对Qubit数字有利地缩放,并且适合局部重视和并行化,这显示了优化大量较大量子处理器的希望。
High performance quantum computing requires a calibration system that learns optimal control parameters much faster than system drift. In some cases, the learning procedure requires solving complex optimization problems that are non-convex, high-dimensional, highly constrained, and have astronomical search spaces. Such problems pose an obstacle for scalability since traditional global optimizers are often too inefficient and slow for even small-scale processors comprising tens of qubits. In this whitepaper, we introduce the Snake Optimizer for efficiently and quickly solving such optimization problems by leveraging concepts in artificial intelligence, dynamic programming, and graph optimization. In practice, the Snake has been applied to optimize the frequencies at which quantum logic gates are implemented in frequency-tunable superconducting qubits. This application enabled state-of-the-art system performance on a 53 qubit quantum processor, serving as a key component of demonstrating quantum supremacy. Furthermore, the Snake Optimizer scales favorably with qubit number and is amenable to both local re-optimization and parallelization, showing promise for optimizing much larger quantum processors.