Poster: Scalable Quantum Convolutional Neural Networks for Edge Computing

Jindi Wu, Qun Li
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引用次数: 1

Abstract

The convolutional neural network (CNN) has become a general approach for image processing in machine learning tasks. Quantum CNN (QCNN) is an emerging method to implement CNN using quantum computing. Quantum computing utilizes the properties of quantum mechanics to perform efficient computing. However, current quantum machines do not support large-scale QCNNs due to a lack of qubits. As a consequence, QCNNs are limited in scale and cannot directly process high-dimensional images. These shortcomings result in suboptimal QCNN performance. Meanwhile, building quantum machines with enough qubits is technically difficult and costly. These obstacles motivate us to design a quantum edge computing (QEC) system capable of achieving the scalability of QCNNs. Quantum machines are organized hierarchically in the QEC system. The quantum machines closer to the users collaboratively load and extract quantum features from the high-dimensional input data. Subsequently, the quantum machine in the next layer collects the extracted features and performs further operations to produce the final results. Each quantum machine in the QEC system is equipped with a local small-scale QCNN to capture the data pattern of its input. The local QCNNs could be combined to form a large-scale QCNN capable of learning and processing high-dimensional data, overcoming hardware limitations and improving performance.
海报:用于边缘计算的可扩展量子卷积神经网络
卷积神经网络(CNN)已经成为机器学习任务中图像处理的通用方法。量子CNN (Quantum CNN)是一种利用量子计算实现CNN的新兴方法。量子计算利用量子力学的特性来进行高效的计算。然而,由于缺乏量子比特,目前的量子机器不支持大规模的qcnn。因此,qcnn在规模上是有限的,不能直接处理高维图像。这些缺点导致QCNN性能不够理想。与此同时,建造具有足够量子位的量子机器在技术上是困难和昂贵的。这些障碍促使我们设计一个能够实现qcnn可扩展性的量子边缘计算(QEC)系统。量子机器在QEC系统中是分层组织的。靠近用户的量子机器协同加载并从高维输入数据中提取量子特征。随后,下一层的量子机器收集提取的特征并进行进一步的操作以产生最终结果。QEC系统中的每台量子机都配备了一个局部小规模的QCNN来捕获其输入的数据模式。局部QCNN可以组合成一个能够学习和处理高维数据的大规模QCNN,克服硬件限制,提高性能。
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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