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Realizing quantum convolutional neural networks on a superconducting quantum processor to recognize quantum phases

Author

Listed:
  • Johannes Herrmann

    (ETH Zurich)

  • Sergi Masot Llima

    (ETH Zurich)

  • Ants Remm

    (ETH Zurich)

  • Petr Zapletal

    (Friedrich-Alexander University Erlangen-Nürnberg (FAU))

  • Nathan A. McMahon

    (Friedrich-Alexander University Erlangen-Nürnberg (FAU))

  • Colin Scarato

    (ETH Zurich)

  • François Swiadek

    (ETH Zurich)

  • Christian Kraglund Andersen

    (ETH Zurich)

  • Christoph Hellings

    (ETH Zurich)

  • Sebastian Krinner

    (ETH Zurich)

  • Nathan Lacroix

    (ETH Zurich)

  • Stefania Lazar

    (ETH Zurich)

  • Michael Kerschbaum

    (ETH Zurich)

  • Dante Colao Zanuz

    (ETH Zurich)

  • Graham J. Norris

    (ETH Zurich)

  • Michael J. Hartmann

    (Friedrich-Alexander University Erlangen-Nürnberg (FAU))

  • Andreas Wallraff

    (ETH Zurich
    Quantum Center, ETH Zurich)

  • Christopher Eichler

    (ETH Zurich)

Abstract

Quantum computing crucially relies on the ability to efficiently characterize the quantum states output by quantum hardware. Conventional methods which probe these states through direct measurements and classically computed correlations become computationally expensive when increasing the system size. Quantum neural networks tailored to recognize specific features of quantum states by combining unitary operations, measurements and feedforward promise to require fewer measurements and to tolerate errors. Here, we realize a quantum convolutional neural network (QCNN) on a 7-qubit superconducting quantum processor to identify symmetry-protected topological (SPT) phases of a spin model characterized by a non-zero string order parameter. We benchmark the performance of the QCNN based on approximate ground states of a family of cluster-Ising Hamiltonians which we prepare using a hardware-efficient, low-depth state preparation circuit. We find that, despite being composed of finite-fidelity gates itself, the QCNN recognizes the topological phase with higher fidelity than direct measurements of the string order parameter for the prepared states.

Suggested Citation

  • Johannes Herrmann & Sergi Masot Llima & Ants Remm & Petr Zapletal & Nathan A. McMahon & Colin Scarato & François Swiadek & Christian Kraglund Andersen & Christoph Hellings & Sebastian Krinner & Nathan, 2022. "Realizing quantum convolutional neural networks on a superconducting quantum processor to recognize quantum phases," Nature Communications, Nature, vol. 13(1), pages 1-7, December.
  • Handle: RePEc:nat:natcom:v:13:y:2022:i:1:d:10.1038_s41467-022-31679-5
    DOI: 10.1038/s41467-022-31679-5
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    References listed on IDEAS

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    1. Xiaoxuan Pan & Zhide Lu & Weiting Wang & Ziyue Hua & Yifang Xu & Weikang Li & Weizhou Cai & Xuegang Li & Haiyan Wang & Yi-Pu Song & Chang-Ling Zou & Dong-Ling Deng & Luyan Sun, 2023. "Deep quantum neural networks on a superconducting processor," Nature Communications, Nature, vol. 14(1), pages 1-7, December.

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