Near-term quantum computers will operate in a noisy environment, without error correction. A critical problem for near-term quantum computing is laying out a logical circuit onto a physical device with limited connectivity between qubits. This is known as the qubit mapping and routing (QMR) problem, an intractable combinatorial problem. It is important to solve QMR as optimally as possible to reduce the amount of added noise, which may render a quantum computation useless. In this paper, we present a novel approach for optimally solving the QMR problem via a reduction to maximum satisfiability (MAXSAT). Additionally, we present two novel relaxation ideas that shrink the size of the MAXSAT constraints by exploiting the structure of a quantum circuit. Our thorough empirical evaluation demonstrates (1) the scalability of our approach compared to state-of-the-art optimal QMR techniques (solves more than 3x benchmarks with 40x speedup), (2) the significant cost reduction compared to state-of-the-art heuristic approaches (an average of ~5x swap reduction), and (3) the power of our proposed constraint relaxations.
翻译:近距离量子计算机将在一个杂乱的环境中运行,没有错误校正。近期量子计算的一个关键问题是将逻辑电路投放到一个物质装置上,而qubits之间的连接有限。这被称为qubit 绘图和路径问题(QMR),这是一个棘手的组合问题。重要的是尽可能最佳地解决QMR,以减少增加的噪音数量,从而可能使量子计算失去效用。在本文件中,我们提出了一个新颖的方法,通过降低最大可达性(MAXSAT)来最佳地解决QMR问题。此外,我们提出了两个新的放松想法,通过利用量子电路结构缩小MAXSAT限制的大小。我们彻底的经验评估表明:(1) 我们的方法与最先进的QMR最佳技术(40x速度的悬浮超过3x基准)相比,具有可扩展性;(2) 与最先进的超标准超标准超标准方法相比,成本大大降低(平均为~5x交换),以及(3)我们拟议的抑制力。