Machine learning-enchanced quantum sensors for smart sensing

POSTER

Abstract

Characterising the time over which quantum coherence survives is critical for any implementation of quantum bits, memories and sensors. The usual method for determining a quantum system’s decoherence rate involves a suite of experiments probing the entire expected range of this parameter, and extracting the resulting estimation in post-processing. Here we present an adaptive multi-parameter Bayesian approach, based on a simple analytical update rule, to estimate the key decoherence timescales (T1, T2 and T2) and the corresponding decay exponent of a quantum system in real time, using information gained in preceding experiments. This approach reduces the time required to reach a given uncertainty by a factor up to an order of magnitude, depending on the specific experiment, compared to the standard protocol of curve fitting. A further speed-up of a factor ∼ 2 can be realised by performing our optimisation with respect to sensitivity as opposed to variance.

* This work is funded by the Engineering and Physical Sciences Research Council (EP/S000550/1, EP/V053779/1 and through the UK Quantum Technology Hub in Quantum Imaging EP/T00097X/1), the Leverhulme Trust (RPG-2019-388) and the European Commission (QuanTELCO, grant agreement No 862721). We also acknowledge the support provided by a Rank Prize 'Return to Research' grant. C. B. and A. F. are jointly supported by the 'Making Connections' Weizmann-UK program. G. W. M. is supported by the Royal Society (RGFEA180311 and UF160400), by the UK EPSRC (EP/V056778/1) and by the UK STFC (ST/W006561/1 and ST/S002227/1). G.W. M and J. S. are jointly supported by the EPSRC grant EP/T001062/1.

Publication: Arshad, M. J., Bekker, C., Haylock, B., Skrzypczak, K., White, D., Griffiths, B., ... & Bonato, C. (2022). Online adaptive estimation of decoherence timescales for a single qubit. arXiv preprint arXiv:2210.06103.

Presenters

  • Muhammad Junaid Arshad

    Heriot-Watt University

Authors

  • Muhammad Junaid Arshad

    Heriot-Watt University

  • Christiaan Bekker

    Heriot-Watt University

  • Ben Haylock

    Heriot-Watt University

  • Krzysztof Skrzypczak

    Heriot-Watt University

  • Daniel White

    Heriot-Watt University

  • Benjamin Griffiths

    University of Oxford

  • Joe Gore

    University of Warwick

  • Gavin Morley

    Univ of Warwick

  • Patrick Salter

    University of Oxford

  • Jason Smith

    University of Oxford

  • Inbar Zohar

    Weizmann Institute of Science

  • Amit Finkler

    Weizmann Institute of Science

  • Yoann Altmann

    Heriot-Watt University

  • Erik Gauger

    Heriot-Watt University

  • Cristian Bonato

    Heriot-Watt University, Edinburgh