Quantum Neuronal Sensing on a 61-Qubit NISQ Superconducting Processor
ORAL
Abstract
We propose a new approach called “quantum neuronal sensing” that combines the computational power of QNNs with quantum sensing. Using our sixty-one qubit NISQ superconducting processor, we demonstrate that we can efficiently classify two different types of many-body phenomena (the localized and ergodic phases of matter). Our QNN learns the highly relevant features we require by directly processing that information without measurement while the sensing part allows us to extract that information by measuring only one qubit. The simplicity and efficiency of this approach demonstrates both the feasibility (and scalability) of quantum neuronal sensing on NISQ processors.
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Publication: 1) Ming Gong et.al, Quantum walks on a programmable two-dimensional 62-qubit superconducting processor, Science 372 (6545), 948 - 952 (2021).<br>2) Ming Gong et.al, Quantum Neuronal Sensing of Quantum Many-Body States on a 61-Qubit Programmable Superconducting Processor, arXiv:2201.05957
Presenters
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William J Munro
NTT Basic Research Labs
Authors
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William J Munro
NTT Basic Research Labs
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Ming Gong
USTC
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He-Liang Huang
USTC
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Shiyu Wang
USTC
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Chu Guo
USTC
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Shaowei Li
USTC
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Yulin Wu
USTC
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Qingling Zhu
USTC
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Youwei Zhao
USTC
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Shaojun Guo
USTC
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Haoran Qian
USTC
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Yangsen Ye
USTC
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Chen Zha
USTC
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Fusheng Chen
USTC
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Chong Ying
USTC
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Jiale Yu
USTC
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Daojin Fan
USTC
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Akitada Sakurai
OSIT
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Kae Nemoto
OIST, Okinawa Institute of Science & Technology
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Yong-Heng Huo
USTC
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Chao-Yang Lu
USTC
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Cheng-Zhi Peng
USTC
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Xiaobo Zhu
USTC
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Jian-Wei Pan
USTC