Machine and quantum learning for diamond-based quantum applications

Dylan G. Stone, C. Bradac
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引用次数: 1

Abstract

In recent years, machine and quantum learning have gained considerable momentum sustained by growth in computational power and data availability and have shown exceptional aptness for solving recognition- and classification-type problems, as well as problems that require complex, strategic planning. In this work, we discuss and analyze the role machine and quantum learning are playing in the development of diamond-based quantum technologies. This matters as diamond and its optically-addressable spin defects are becoming prime hardware candidates for solid state-based applications in quantum information, computing and metrology. Through a selected number of demonstrations, we show that machine and quantum learning are leading to both practical and fundamental improvements in measurement speed and accuracy. This is crucial for quantum applications, especially for those where coherence time and signal-to-noise ratio are scarce resources. We summarize some of the most prominent machine and quantum learning approaches that have been conducive to the presented advances and discuss their potential for proposed and future quantum applications.
基于钻石的量子应用的机器和量子学习
近年来,由于计算能力和数据可用性的增长,机器和量子学习获得了相当大的势头,并且在解决识别和分类类型的问题以及需要复杂战略规划的问题方面表现出了非凡的能力。在这项工作中,我们讨论和分析了机器和量子学习在基于钻石的量子技术发展中所起的作用。这一点很重要,因为金刚石及其光学可寻址的自旋缺陷正成为量子信息、计算和计量领域基于固态的应用的主要硬件候选者。通过选定数量的演示,我们表明机器和量子学习正在导致测量速度和准确性的实际和根本改进。这对于量子应用是至关重要的,特别是对于相干时间和信噪比是稀缺资源的应用。我们总结了一些最突出的机器和量子学习方法,这些方法有助于提出的进展,并讨论了它们在拟议和未来量子应用中的潜力。
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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