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Machine learning enables completely automatic tuning of a quantum device faster than human experts

ORAL

Abstract

An unavoidable obstacle to creating large circuits with spin qubits is device variability. Due to this variability, bringing a spin qubit into operation conditions requires a large parameter space to be explored. This process is becoming intractable for humans as the complexity of quantum circuits grows. We present a statistical algorithm that utilises machine learning to navigate the entire parameter space. We demonstrate fully automated tuning of a double quantum dot device in under 70 minutes, faster than human experts. This approach also provides a quantitative measurement of device variability, from one device to another and after a thermal cycle. This is a key demonstration of the use of machine learning techniques to explore and optimise the parameter space of quantum devices and overcome the challenge of device variability.

Presenters

  • Dominic Lennon

    University of Oxford

Authors

  • Dominic Lennon

    University of Oxford

  • Hyungil Moon

    University of Oxford

  • James Kirkpatrick

    DeepMind

  • Nina van Esbroeck

    University of Oxford

  • Leon Camenzind

    Physics, University of Basel, Department of Physics, University of Basel, University of Basel

  • Liuqi Yu

    Department of Physics, University of Basel, University of Basel, LPS at the University of Maryland, College Park, University of Maryland, College Park

  • Florian Vigneau

    University of Oxford

  • Dominik Zumbuhl

    University of Basel, Physics, University of Basel, Department of Physics, University of Basel

  • Andrew Briggs

    University of Oxford

  • Michael Osborne

    University of Oxford

  • Dino Sejdinovic

    University of Oxford

  • Edward Laird

    Department of Physics, Lancaster University

  • Natalia Ares

    University of Oxford