Machine-learning tools for rapid control, calibration and characterization of QPUs and other quantum devices

ORAL

Abstract

The principal limiting factor in scale-up of quantum computers is not the number of qubits, but the entangling gate infidelity. Current QPU bring-up relies on a large number of tailored routines to extract individual model parameters (characterization), and the huge effort required inevitably this leads to incomplete characterization, partial insight into the sources of error, and threfore slow progress in improving gate fidelities.

To rectify the situation, we provide a new integrated open-source tool-set for Control, Calibration and Characterization (C3) [1]. We present a methodology to combine these tools to find a quantitatively accurate system model, high-fidelity gates and an approximate error budget.

In this talk I shall present the overall concept, and insights into future directions. Follow-up talks by Nicolas Wittler and Federico Roy will expand some of the details and walk through an example of C3 usage.

[1] Wittler, N., Roy, F., Pack, K. ... & Machnes, S. (2020). An integrated tool-set for Control, Calibration and Characterization of quantum devices applied to superconducting qubits. arXiv:2009.09866

Presenters

  • Shai Machnes

    Forschungszentrum Julich, Forschungszentrum Jülich

Authors

  • Nicolas Wittler

    Forschungszentrum Julich

  • Federico Roy

    IBM Zurich, IBM Research Zürich, IBM Research - Zurich

  • Kevin Pack

    Forschungszentrum Julich, Forschungszentrum Jülich

  • Max Werninghaus

    IBM Zurich, IBM Research Zürich, IBM Research - Zurich, IBM Quantum - IBM Research Zurich

  • Anurag Saha Roy

    Citizen scientist, Citizen Scientist, citizen scientist

  • Daniel Egger

    IBM Zurich, IBM Research Zürich, IBM Research - Zurich

  • Stefan Filipp

    IBM Zurich

  • Frank K Wilhelm

    Forschungszentrum Julich, Forschungszentrum Jülich

  • Shai Machnes

    Forschungszentrum Julich, Forschungszentrum Jülich