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

Author:

Herrmann Johannes,Llima Sergi Masot,Remm Ants,Zapletal PetrORCID,McMahon Nathan A.,Scarato ColinORCID,Swiadek François,Andersen Christian KraglundORCID,Hellings ChristophORCID,Krinner Sebastian,Lacroix NathanORCID,Lazar Stefania,Kerschbaum Michael,Zanuz Dante Colao,Norris Graham J.,Hartmann Michael J.ORCID,Wallraff AndreasORCID,Eichler ChristopherORCID

Abstract

AbstractQuantum 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.

Funder

ODNI | Intelligence Advanced Research Projects Activity

Swiss National Science Foundation | National Center of Competence in Research Quantum Science and Technology

Publisher

Springer Science and Business Media LLC

Subject

General Physics and Astronomy,General Biochemistry, Genetics and Molecular Biology,General Chemistry,Multidisciplinary

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