i-QER:一种减少量子误差的智能方法

Saikat Basu, A. Saha, Amlan Chakrabarti, S. Sur-Kolay
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引用次数: 9

摘要

量子计算已经成为一种很有前途的计算方法,因为它能够解决某些问题,比经典计算机快得多。n量子位量子系统能够为量子算法提供2n的计算空间。然而,量子计算机容易出错。能够在当今嘈杂的中等规模量子(NISQ)器件上可靠运行的量子电路不仅受到其量子比特数的限制,而且受到其嘈杂的门操作的限制。在本文中,我们介绍了i-QER,这是一种可扩展的基于机器学习的方法,用于评估量子电路中的误差,并在不使用任何额外量子资源的情况下减少这些误差。i-QER使用监督学习模型预测给定量子电路中可能出现的误差。如果预测误差高于预先指定的阈值,就我们所知,它首次使用误差影响碎片策略将大量子电路切割成两个较小的子电路。迭代所提出的分段过程,直到每个子电路的预测误差低于阈值。然后在量子器件上执行子电路。对从子电路得到的输出进行经典重构可以产生完整电路的输出。因此,i-QER还提供了对可扩展混合计算方法的经典控制,这是量子计算机和经典计算机的结合。i-QER工具可在https://github.com/SaikatBasu90/i-QER上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
i-QER: An Intelligent Approach Towards Quantum Error Reduction
Quantum computing has become a promising computing approach because of its capability to solve certain problems, exponentially faster than classical computers. A n-qubit quantum system is capable of providing 2n computational space to a quantum algorithm. However, quantum computers are prone to errors. Quantum circuits that can reliably run on today’s Noisy Intermediate-Scale Quantum (NISQ) devices are not only limited by their qubit counts but also by their noisy gate operations. In this article, we have introduced i-QER, a scalable machine learning-based approach to evaluate errors in a quantum circuit and reduce these without using any additional quantum resources. The i-QER predicts possible errors in a given quantum circuit using supervised learning models. If the predicted error is above a pre-specified threshold, it cuts the large quantum circuit into two smaller sub-circuits using an error-influenced fragmentation strategy for the first time to the best of our knowledge. The proposed fragmentation process is iterated until the predicted error reaches below the threshold for each sub-circuit. The sub-circuits are then executed on a quantum device. Classical reconstruction of the outputs obtained from the sub-circuits can generate the output of the complete circuit. Thus, i-QER also provides classical control over a scalable hybrid computing approach, which is a combination of quantum and classical computers. The i-QER tool is available at https://github.com/SaikatBasu90/i-QER.
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