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Learning high-accuracy error decoding for quantum processors

Author

Listed:
  • Johannes Bausch

    (Google DeepMind)

  • Andrew W. Senior

    (Google DeepMind)

  • Francisco J. H. Heras

    (Google DeepMind)

  • Thomas Edlich

    (Google DeepMind)

  • Alex Davies

    (Google DeepMind)

  • Michael Newman

    (Google Quantum AI)

  • Cody Jones

    (Google Quantum AI)

  • Kevin Satzinger

    (Google Quantum AI)

  • Murphy Yuezhen Niu

    (Google Quantum AI)

  • Sam Blackwell

    (Google DeepMind)

  • George Holland

    (Google DeepMind)

  • Dvir Kafri

    (Google Quantum AI)

  • Juan Atalaya

    (Google Quantum AI)

  • Craig Gidney

    (Google Quantum AI)

  • Demis Hassabis

    (Google DeepMind)

  • Sergio Boixo

    (Google Quantum AI)

  • Hartmut Neven

    (Google Quantum AI)

  • Pushmeet Kohli

    (Google DeepMind)

Abstract

Building a large-scale quantum computer requires effective strategies to correct errors that inevitably arise in physical quantum systems1. Quantum error-correction codes2 present a way to reach this goal by encoding logical information redundantly into many physical qubits. A key challenge in implementing such codes is accurately decoding noisy syndrome information extracted from redundancy checks to obtain the correct encoded logical information. Here we develop a recurrent, transformer-based neural network that learns to decode the surface code, the leading quantum error-correction code3. Our decoder outperforms other state-of-the-art decoders on real-world data from Google’s Sycamore quantum processor for distance-3 and distance-5 surface codes4. On distances up to 11, the decoder maintains its advantage on simulated data with realistic noise including cross-talk and leakage, utilizing soft readouts and leakage information. After training on approximate synthetic data, the decoder adapts to the more complex, but unknown, underlying error distribution by training on a limited budget of experimental samples. Our work illustrates the ability of machine learning to go beyond human-designed algorithms by learning from data directly, highlighting machine learning as a strong contender for decoding in quantum computers.

Suggested Citation

  • Johannes Bausch & Andrew W. Senior & Francisco J. H. Heras & Thomas Edlich & Alex Davies & Michael Newman & Cody Jones & Kevin Satzinger & Murphy Yuezhen Niu & Sam Blackwell & George Holland & Dvir Ka, 2024. "Learning high-accuracy error decoding for quantum processors," Nature, Nature, vol. 635(8040), pages 834-840, November.
  • Handle: RePEc:nat:nature:v:635:y:2024:i:8040:d:10.1038_s41586-024-08148-8
    DOI: 10.1038/s41586-024-08148-8
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