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中国物理学会期刊

量子态制备及其在量子机器学习中的前景

CSTR: 32037.14.aps.70.20210958

Quantum state preparation and its prospects in quantum machine learning

CSTR: 32037.14.aps.70.20210958
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  • 经典计算机的运算能力依赖于芯片单位面积上晶体管的数量, 其发展符合摩尔定律. 未来随着晶体管的间距接近工艺制造的物理极限, 经典计算机的运算能力将面临发展瓶颈. 另一方面, 机器学习的发展对计算机的运算能力的需求却快速增长, 计算机的运算能力和需求之间的矛盾日益突出. 量子计算作为一种新的计算模式, 比起经典计算, 在一些特定算法上有着指数加速的能力, 有望给机器学习提供足够的计算能力. 用量子计算来处理机器学习任务时, 首要的一个基本问题就是如何将经典数据有效地在量子体系中表示出来. 这个问题称为态制备问题. 本文回顾态制备的相关工作, 介绍目前提出的多种态制备方案, 描述这些方案的实现过程, 总结并分析了这些方案的复杂度. 最后对态制备这个方向的研究工作做了一些展望.

     

    The development of traditional classic computers relies on the transistor structure of microchips, which develops in accordance with Moore's Law. In the future, as the distance between transistors approaches to the physical limit of manufacturing process, the development of computation capability of classical computers will encounter a bottleneck. On the other hand, with the development of machine learning, the demand for computation capability of computer is growing rapidly, and the contradiction between computation capability and demand for computers is becoming increasingly prominent. As a new computing model, quantum computing is significantly faster than classical computing for some specific problems, so, sufficient computation capability for machine learning is expected. When using quantum computing to deal with machine learning tasks, the first basic problem is how to represent the classical data effectively in the quantum system. This problem is called the state preparation problem. In this paper, the relevant researches of state preparation are reviewed, various state preparation schemes proposed at present are introduced, the processes of realizing these schemes are described, and the complexities of these schemes are summarized and analyzed. Finally, some prospects of the research work in the direction of state preparation are also presented.

     

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