数据驱动用户功能的量子加速器集成与评估

T. Hubregtsen, Christoph Segler, Josef Pichlmeier, A. Sarkar, Thomas Gabor, K. Bertels
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引用次数: 3

摘要

未来几年,量子计算机有望在有噪声的中等规模量子(NISQ)设备上加速具有计算挑战性的算法。当前研究的大部分注意力都集中在与实际系统脱节的人工数据的算法研究上,例如系统优化或学习算法的训练。在本文中,我们研究量子系统集成到工业级系统架构。在这项工作中,我们提出了一个量子加速器集成的系统架构。为了评估我们提出的系统架构,我们研究了各种加速器的各种数据驱动功能,包括经典系统,基于门的量子加速器和量子退火炉。数据驱动函数预测用户偏好,并在实际数据上进行训练。这项工作还包括对量子增强核的评估,以前只在人工数据上进行评估。在我们的评估中,我们表明,在模拟时,量子增强内核的性能至少与经典的最先进内核一样好。我们还展示了在基于门的IBM量子加速器上运行时,精度和延迟数在可接受范围内的低降低。因此,我们得出结论,将nisq时代的设备集成到工业级系统架构中,为量子硬件的未来发展做准备是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integration and Evaluation of Quantum Accelerators for Data-Driven User Functions
Quantum computers hold great promise for accelerating computationally challenging algorithms on noisy intermediate-scale quantum (NISQ) devices in the upcoming years. Much attention of the current research is directed towards algorithmic research on artificial data that is disconnected from live systems, such as optimization of systems or training of learning algorithms. In this paper we investigate the integration of quantum systems into industry-grade system architectures. In this work we propose a system architecture for the integration of quantum accelerators. In order to evaluate our proposed system architecture we investigated various data-driven functions for various accelerators, including a classical system, a gate-based quantum accelerator and a quantum annealer. The data-driven function predict user preference and is trained on real-world data. This work also includes an evaluation of the quantum enhanced kernel, that previously was only evaluated on artificial data. In our evaluation, we showed that the quantum-enhanced kernel performs at least equally well to a classical state-of-the-art kernel when simulated. We also showed a low reduction in accuracy and latency numbers within acceptable bounds when running on the gate-based IBM quantum accelerator. We therefore conclude it is feasible to integrate NISQ-era devices in industry-grade system architectures in preparation for future advancements in quantum hardware.
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