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Unified approach to data-driven quantum error mitigation

ORAL

Abstract


Achieving near-term quantum advantage will require effective methods for mitigating hardware noise. Data-driven approaches to error mitigation are promising, with popular examples including zero-noise extrapolation (ZNE) and Clifford data regression (CDR). Here we propose a novel, scalable error mitigation method that conceptually unifies ZNE and CDR. Our approach, called variable-noise Clifford data regression (vnCDR), significantly outperforms these individual methods in numerical benchmarks. vnCDR generates training data first via near-Clifford circuits (which are classically simulable) and second by varying the noise levels in these circuits.
We test out new methods by employing a noise model obtained from IBM's Ourense quantum computer to benchmark our method. For the problem of estimating the energy of an 8-qubit Ising model system, vnCDR improves the absolute energy error by a factor of 33 over the unmitigated results and by factors 20 and 1.8 over ZNE and CDR, respectively. For the problem of correcting observables from random quantum circuits with 64 qubits, vnCDR improves the error by factors of 2.7 and 1.5 over ZNE and CDR, respectively.

Presenters

  • Andrew Arrasmith

    Los Alamos National Laboratory

Authors

  • Angus Lowe

    University of Waterloo

  • Max Hunter Gordon

    Autonomous Institute of Madrid

  • Piotr Czarnik

    Los Alamos National Laboratory

  • Andrew Arrasmith

    Los Alamos National Laboratory

  • Patrick Coles

    Los Alamos National Laboratory

  • Lukasz Cincio

    Los Alamos National Laboratory, T-Division, Los Alamos National Laboratory