Experimental quantum end-to-end learning on a superconducting processor

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作者
Xiaoxuan Pan
Xi Cao
Weiting Wang
Ziyue Hua
Weizhou Cai
Xuegang Li
Haiyan Wang
Jiaqi Hu
Yipu Song
Dong-Ling Deng
Chang-Ling Zou
Re-Bing Wu
Luyan Sun
机构
[1] Tsinghua University,Center for Quantum Information, Institute for Interdisciplinary Information Sciences
[2] Tsinghua University,Center for Intelligent and Networked Systems, Department of Automation
[3] Shanghai Qi Zhi Institute,Key Laboratory of Quantum Information, CAS
[4] Heifei National Laboratory,undefined
[5] University of Science and Technology of China,undefined
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Machine learning can be enhanced by a quantum computer via its inherent quantum parallelism. In the pursuit of quantum advantages for machine learning with noisy intermediate-scale quantum devices, it was proposed that the learning model can be designed in an end-to-end fashion, i.e., the quantum ansatz is parameterized by directly manipulable control pulses without circuit design and compilation. Such gate-free models are hardware friendly and can fully exploit limited quantum resources. Here, we report the experimental realization of quantum end-to-end machine learning on a superconducting processor. The trained model can achieve 98% recognition accuracy for two handwritten digits (via two qubits) and 89% for four digits (via three qubits) in the MNIST (Mixed National Institute of Standards and Technology) database. The experimental results exhibit the great potential of quantum end-to-end learning for resolving complex real-world tasks when more qubits are available.
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