MarkTechPost@AI 2024年09月13日
MIT Researchers Introduce Stochastic Quantum Signal Processing (QSP) as a Randomly-Compiled Version of QSP, and Reduce the Cost of QSP-based Algorithms by a Factor of 1/2
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MIT 和 IBM 研究人员提出了一种名为随机量子信号处理 (Stochastic QSP) 的方法,该方法利用随机编译技术,可以将基于 QSP 的算法的成本降低一半。Stochastic QSP 通过将随机编译应用于量子算法中常用的多项式来实现,并通过测试证明它可以有效地降低查询复杂度,从而使量子算法更接近实际应用。

🤔 Stochastic QSP 是一种新方法,它结合了量子信号处理 (QSP) 和随机编译技术,旨在降低基于 QSP 的量子算法的成本。它通过将随机编译应用于量子算法中常用的多项式来实现,并通过测试证明它可以有效地降低查询复杂度。

🚀 Stochastic QSP 的架构旨在将随机编译技术应用于量子算法中常用的多项式。研究人员在四种特定多项式上评估了该方法,包括余弦的雅可比-安格尔展开、指数衰减的雅可比-安格尔展开、远离原点的 x ∈ [−1, 1] 域中 1/x 的平滑近似以及通过对高斯函数的雅可比-安格尔展开进行积分得到的 erf(kx) 近似。

📈 实验结果表明,随着阶数的增加,成本降低率 davg/d 接近 1/2,偏差按 O(1/d) 缩放。这证实了该方法在实际应用中将基于 QSP 的算法的查询复杂度降低一半的能力。对于某些函数和成本参数值,davg/d 从下方接近 1/2,表明对于更小的 d 值,性能甚至更好。

💡 Stochastic QSP 具有广泛的应用前景,可以应用于各种量子算法,例如实/虚时间演化、矩阵求逆、相位估计和基态准备。该研究强调了经典随机性作为量子计算资源的重要性,并使量子算法更接近实际应用。未来研究将探索在存在噪声门的情况下使用 Stochastic QSP,这可能会进一步提高实际应用。

🔍 该研究表明,随机编译技术可以有效地降低基于 QSP 的量子算法的成本,这对于推动量子计算领域的发展具有重要意义。

Classical randomness has emerged as an important tool in addressing the challenge of designing quantum protocols and algorithms. Current methods for calibrating and evaluating quantum gates, like randomized benchmarking, depend heavily on classical randomness. Many researchers are exploring ways to incorporate classical randomness to reduce the requirements of traditional quantum algorithms due to the progress towards gaining quantum advantage and developing early fault-tolerant quantum hardware. However, these techniques, especially randomized compiling, have been limited to specific areas like Trotterized Hamiltonian simulation and phase estimation, leaving a gap for other quantum algorithms.

The existing methods discussed in this paper include a model of quantum computation that uses a constant-size control register, strongly coupled to many qubits with local connectivity. While this setup supports controlled time evolution using the Trotter approximation, it struggles to implement Hamiltonian simulation with Quantum Signal Processing (QSP) due to the small size of the control register. Other efforts have aimed at optimizing QSP implementation, particularly when dealing with unitary block-encoded operators encoded via controlled-U operations. Although there are ways to remove parity constraints for real polynomials, these methods often introduce an unwanted factor of 1/2.

Researchers from the Center for Theoretical Physics, Massachusetts Institute of Technology, and IBM Quantum, MIT-IBM Watson AI Lab, have proposed an approach called Stochastic QSP to address the limitations in randomized quantum algorithms. This method aims to reduce the error in QSP polynomial approximations of target functions with the help of randomized compiling. Moreover, Stochastic QSP can achieve a query complexity scaling with error ϵ as O(log(1/ϵ)) for almost all QSP-based algorithms. This leads to an asymptotic halving of the cost of QSP-based algorithms compared to their deterministic versions, effectively combining the strengths of QSP and randomization.

The architecture of Stochastic QSP is designed to apply randomized compiling techniques to common polynomials used in quantum algorithms. This method is evaluated on four specific polynomials: 

Each polynomial includes a cost parameter, that determines the necessary truncation degree for accurate approximation.

The results of applying Stochastic QSP to the selected polynomials demonstrate its effectiveness in reducing query complexity. As the degree d increases, the cost reduction ratio davg/d approaches 1/2, with the discrepancy scaling as O(1/d). This confirms the method’s ability to halve the query complexity of QSP-based algorithms in practical applications. For some functions and cost parameter values, davg/d approaches 1/2 from below, indicating even better performance for smaller d values. This advantage is due to optimizing constants C and q values in the implementation process. Moreover, a pattern in the cost reduction ratio is observed, linked to the ceiling function used when setting the cutoff degree d*.

In this paper, researchers introduced Stochastic QSP to overcome limitations in randomized quantum algorithms. It marks a major step in optimizing quantum algorithms by combining QSP with randomized compiling. It can reduce circuit complexity by a factor of 2 across various quantum algorithms, including real/imaginary time evolution, matrix inversion, phase estimation, and ground state preparation. The results highlight the importance of classical randomness as a resource in quantum computing, bringing quantum algorithms closer to practical use. Future research includes exploration using Stochastic QSP with noisy gates, which may improve practical applications further.


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The post MIT Researchers Introduce Stochastic Quantum Signal Processing (QSP) as a Randomly-Compiled Version of QSP, and Reduce the Cost of QSP-based Algorithms by a Factor of 1/2 appeared first on MarkTechPost.

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量子计算 量子信号处理 随机编译 量子算法
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