利用决策图并行化量子模拟

Shaowen Li;Yusuke Kimura;Hiroyuki Sato;Masahiro Fujita
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摘要

自从人们意识到量子现象在传统计算领域的强大威力后,大量曾被认为在经典世界中难以解决的复杂问题都得到了解决。量子优势的缺点是成本高昂和不可预测。许多研究人员都依赖于在经典计算机上运行的量子模拟器。经典计算机在执行量子模拟任务时面临的关键障碍是其有限的内存空间。量子模拟从本质上模拟了量子子系统的状态演化。量子位在希尔伯特空间中以数学方式构建,其大小呈指数增长。因此,直接的状态矢量方法的可扩展性是有限的。事实证明,在各个领域采用决策图(DD)来缓解内存成本问题是有效的。近年来,研究人员已将决策图调整为不同形式,用于表示量子态和高效执行量子计算。由此,人们开始研究基于决策图的量子模拟。然而,它们在内存效率方面的优势并没有让它们取代主流的基于状态向量和张量网络的方法。我们认为,原因在于在 DD 上执行计算时缺乏有效的并行化策略。在本文中,我们探讨了几种并行化 DD 运算的策略,重点是利用它们进行量子模拟。目标是找到最佳并行化策略,提高基于 DD 的量子模拟性能。根据实验结果,我们提出的策略比最先进的基于 DD 的单线程模拟器 DDSIM 对格罗弗算法和随机电路的模拟速度快 2-3 倍。
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Parallelizing Quantum Simulation With Decision Diagrams
Since people became aware of the power of quantum phenomena in the domain of traditional computation, a great number of complex problems that were once considered intractable in the classical world have been tackled. The downsides of quantum supremacy are its high cost and unpredictability. Numerous researchers are relying on quantum simulators running on classical computers. The critical obstacle facing classical computers in the task of quantum simulation is its limited memory space. Quantum simulation intrinsically models the state evolution of quantum subsystems. Qubits are mathematically constructed in the Hilbert space whose size grows exponentially. Consequently, the scalability of the straightforward statevector approach is limited. It has been proven effective in adopting decision diagrams (DDs) to mitigate the memory cost issue in various fields. In recent years, researchers have adapted DDs into different forms for representing quantum states and performing quantum calculations efficiently. This leads to the study of DD-based quantum simulation. However, their advantage of memory efficiency does not let it replace the mainstream statevector and tensor network-based approaches. We argue the reason is the lack of effective parallelization strategies in performing calculations on DDs. In this article, we explore several strategies for parallelizing DD operations with a focus on leveraging them for quantum simulations. The target is to find the optimal parallelization strategies and improve the performance of DD-based quantum simulation. Based on the experiment results, our proposed strategy achieves a 2–3 times faster simulation of Grover's algorithm and random circuits than the state-of-the-art single-thread DD-based simulator DDSIM.
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