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Correlation matrix tool for error diagnostics in QEC experiments

ORAL

Abstract

Identification and mitigation of nonconventional errors such as leakage and cross-talk in repetition and surface code experiments is essential to achieve exponential suppression of logical errors with increasing the code distance. In this talk, we introduce an error-diagnostic tool that allows us to characterize long-range as well as long-time errors on the error graph caused by, e.g., cross-talk or leakage to non-computational states. The probability p_ij of an error involving arbitrary nodes i and j of the error graph is extracted from correlation of the error detection events at these nodes. The matrix p_ij can be used to identify particular error mechanisms and their strengths. In addition, these probabilities can provide accurate edge weights for minimum-weight-perfect-matching decoders.

Presenters

  • Juan Atalaya

    Google - Venice, CA, University of California, Berkeley

Authors

  • Juan Atalaya

    Google - Venice, CA, University of California, Berkeley

  • Dvir Kafri

    Google - Venice, CA

  • Matthew McEwen

    Google - Santa Barbara, CA; University of California, Santa Barbara

  • Zijun Chen

    Google - Santa Barbara, CA, Google Quantum AI, Google Inc - Santa Barbara

  • Rami Barends

    Google - Santa Barbara, CA

  • Julian Kelly

    Google - Santa Barbara, CA

  • Yu Chen

    Google - Santa Barbara, CA

  • Vadim Smelyanskiy

    Google AI Quantum, Google Quantum AI, Google - Venice, CA, Google Inc - Santa Barbara

  • Alexander N. Korotkov

    Google - Santa Barbara, CA, Google - Venice, CA