Distributed quantum machine learning via classical communication

Authors
Hwang, KiwmannLim, Hyang-TagKim, Yong-SuPark, Daniel K.Kim, Yosep
Issue Date
2025-01
Publisher
IOP PUBLISHING LTD
Citation
Quantum Science and Technology, v.10, no.1
Abstract
Quantum machine learning is emerging as a promising application of quantum computing due to its distinct way of encoding and processing data. It is believed that large-scale quantum machine learning demonstrates substantial advantages over classical counterparts, but a reliable scale-up is hindered by the fragile nature of quantum systems. Here we present an experimentally accessible distributed quantum machine learning scheme that integrates quantum processor units via classical communication. As a demonstration, we perform data classification tasks on eight-dimensional synthetic datasets by emulating two four-qubit processors and employing quantum convolutional neural networks. Our results indicate that incorporating classical communication notably improves classification accuracy compared to schemes without communication. Furthermore, at the tested circuit depths, we observe that the accuracy with classical communication is no less than that achieved with quantum communication. Our work provides a practical path to demonstrating large-scale quantum machine learning on intermediate-scale quantum processors by leveraging classical communication that can be implemented through currently available mid-circuit measurements.
Keywords
quantum machine learning; distributed quantum computing; classical communication; quantum communication
ISSN
2058-9565
URI
https://pubs.kist.re.kr/handle/201004/151632
DOI
10.1088/2058-9565/ad9cb9
Appears in Collections:
KIST Article > Others
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