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Noise-Aware Qubit Allocation Techniques for NISQ Devices

ORAL

Abstract

With a growing diversity in devices, control systems, topologies, programming languages, and applications, computation in the NISQ era needs to be navigated through adaptable cloud-based software. In order to provide the highest fidelity results to users, it is essential that this software employs hardware-aware optimizations at all levels of the stack, both in the pre-processing and post-processing stages. We present our work in pre-processing error mitigation through variation-aware qubit allocation techniques for gate-based quantum computers, with a focus on superconducting platforms. We formulate a description of the “allocation problem” and propose several solutions: a deterministic algorithm for finding the optimal solution as well as a more scalable and flexible randomized heuristic approach. We will present and validate the implications of these different techniques on various NISQ devices.

Presenters

  • Will Finigan

    Harvard University; Aliro Technologies

Authors

  • Michael Cubeddu

    Harvard University; Aliro Technologies

  • Will Finigan

    Harvard University; Aliro Technologies

  • Vitali Vinokour

    Aliro Technologies

  • Prineha Narang

    SEAS, Harvard University, Harvard University, John A. Paulson School of Engineering and Applied Sciences, Harvard University, School of Engineering and Applied Sciences, Harvard University, Harvard John A. Paulson School of Engineering and Applied Sciences, Harvard University, Harvard University; Aliro Technologies