跨量子体系结构的多层组合优化

Hayato Ushijima-Mwesigwa, Ruslan Shaydulin, C. Negre, S. Mniszewski, Y. Alexeev, Ilya Safro
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引用次数: 37

摘要

新兴的量子处理器为后摩尔定律超级计算时代探索解决传统问题的新方法提供了机会。然而,有限的量子比特数量使得在不久的将来直接处理大量现实世界的数据集变得不可行,这导致了将这些量子处理器用于实际目的的新挑战。利用量子和经典类型设备的混合量子经典算法被认为是将量子计算应用于大规模问题的主要策略之一。在本文中,我们提倡使用多层框架进行组合优化,作为设计混合量子经典算法的一种有前途的通用范例。为了证明这种方法,我们将这种方法应用于两个著名的组合优化问题,即图划分问题和社区检测问题。我们在D-Wave的量子退火器和IBM的基于门模型的量子处理器上开发了具有量子局部搜索的混合多层求解器。我们在比当前量子硬件尺寸大几个数量级的图形上进行实验,我们观察到的结果在解决方案的质量方面与最先进的解决方案相当。可重复性:我们的代码和数据可在参考文献[1]中获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilevel Combinatorial Optimization across Quantum Architectures
Emerging quantum processors provide an opportunity to explore new approaches for solving traditional problems in the post Moore’s law supercomputing era. However, the limited number of qubits makes it infeasible to tackle massive real-world datasets directly in the near future, leading to new challenges in utilizing these quantum processors for practical purposes. Hybrid quantum-classical algorithms that leverage both quantum and classical types of devices are considered as one of the main strategies to apply quantum computing to large-scale problems. In this article, we advocate the use of multilevel frameworks for combinatorial optimization as a promising general paradigm for designing hybrid quantum-classical algorithms. To demonstrate this approach, we apply this method to two well-known combinatorial optimization problems, namely, the Graph Partitioning Problem, and the Community Detection Problem. We develop hybrid multilevel solvers with quantum local search on D-Wave’s quantum annealer and IBM’s gate-model based quantum processor. We carry out experiments on graphs that are orders of magnitude larger than the current quantum hardware size, and we observe results comparable to state-of-the-art solvers in terms of quality of the solution. Reproducibility: Our code and data are available at Reference [1].
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