Influence of HW-SW-Co-Design on Quantum Computing Scalability

Hila Safi, K. Wintersperger, W. Mauerer
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引用次数: 1

Abstract

The use of quantum processing units (QPUs) promises speed-ups for solving computational problems. Yet, current devices are limited by the number of qubits and suffer from significant imperfections, which prevents achieving quantum advantage. To step towards practical utility, one approach is to apply hardware-software co-design methods. This can involve tailoring problem formulations and algorithms to the quantum execution environment, but also entails the possibility of adapting physical properties of the QPU to specific applications. In this work, we follow the latter path, and investigate how key figures–circuit depth and gate count–required to solve four cornerstone NP-complete problems vary with tailored hardware properties.Our results reveal that achieving near-optimal performance and properties does not necessarily require optimal quantum hardware, but can be satisfied with much simpler structures that can potentially be realised for many hardware approaches. Using statistical analysis techniques, we additionally identify an underlying general model that applies to all subject problems. This suggests that our results may be universally applicable to other algorithms and problem domains, and tailored QPUs can find utility outside their initially envisaged problem domains. The substantial possible improvements nonetheless highlight the importance of QPU tailoring to progress towards practical deployment and scalability of quantum software.
hw - sw协同设计对量子计算可扩展性的影响
使用量子处理单元(qpu)有望加快解决计算问题的速度。然而,目前的设备受到量子比特数量的限制,并且存在重大缺陷,这阻碍了实现量子优势。为了走向实用,一种方法是应用硬件软件协同设计方法。这可能涉及到根据量子执行环境定制问题公式和算法,但也可能需要调整量子处理器的物理特性以适应特定的应用。在这项工作中,我们遵循后一种路径,并研究解决四个基石np完全问题所需的关键数字-电路深度和栅极计数如何随定制硬件属性而变化。我们的研究结果表明,实现接近最佳的性能和特性并不一定需要最佳的量子硬件,但可以满足更简单的结构,可以实现许多硬件方法。使用统计分析技术,我们还确定了一个适用于所有主题问题的基本通用模型。这表明我们的结果可能普遍适用于其他算法和问题领域,定制的qpu可以在其最初设想的问题领域之外找到效用。尽管如此,大量可能的改进强调了量子处理器裁剪对量子软件的实际部署和可扩展性的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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