QuCLEAR:克利福德抽取和吸收,显著缩小量子电路尺寸

Ji Liu, Alvin Gonzales, Benchen Huang, Zain Hamid Saleem, Paul Hovland
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引用次数: 0

摘要

量子计算在解决实际问题方面潜力巨大。然而,目前可用的量子设备都存在量子门噪声问题,这会降低执行量子电路的保真度。因此,量子电路优化对于获得有用的结果至关重要。在本文中,我们介绍了一个旨在优化量子电路的编译框架--QuCLEAR。QuCLEAR 通过两个新颖的优化步骤,大大减少了双量子比特门计数和电路深度。首先,我们引入了克利福德抽取(Clifford Extraction)的概念,在优化门电路的同时,将克利福德子电路抽取到电路的末端。其次,由于克利福德电路是可以进行经典模拟的,我们提出了克利福德吸收(Clifford Absorption),它可以高效地对提取的克利福德子电路进行经典处理。我们在量子模拟电路上演示了我们的框架,它在量子化学模拟、多体物理和组合优化问题中有着广泛的应用。VQE 和 QAOA 等近期算法也属于这一范畴。各种基准测试的实验结果表明,与最先进的方法相比,QuCLEAR最多可将CNOT门数减少77.7%美元,最多可将纠缠深度减少84.1%美元。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
QuCLEAR: Clifford Extraction and Absorption for Significant Reduction in Quantum Circuit Size
Quantum computing carries significant potential for addressing practical problems. However, currently available quantum devices suffer from noisy quantum gates, which degrade the fidelity of executed quantum circuits. Therefore, quantum circuit optimization is crucial for obtaining useful results. In this paper, we present QuCLEAR, a compilation framework designed to optimize quantum circuits. QuCLEAR significantly reduces both the two-qubit gate count and the circuit depth through two novel optimization steps. First, we introduce the concept of Clifford Extraction, which extracts Clifford subcircuits to the end of the circuit while optimizing the gates. Second, since Clifford circuits are classically simulatable, we propose Clifford Absorption, which efficiently processes the extracted Clifford subcircuits classically. We demonstrate our framework on quantum simulation circuits, which have wide-ranging applications in quantum chemistry simulation, many-body physics, and combinatorial optimization problems. Near-term algorithms such as VQE and QAOA also fall within this category. Experimental results across various benchmarks show that QuCLEAR achieves up to a $77.7\%$ reduction in CNOT gate count and up to an $84.1\%$ reduction in entangling depth compared to state-of-the-art methods.
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