Machine Learning of Noise-Resilient Quantum Circuits

ORAL  · Invited

Abstract

Noise mitigation and reduction will be crucial for obtaining useful answers from near-term quantum computers. We present a general framework based on machine learning for reducing the impact of quantum hardware noise on quantum circuits. Our method, called noise-aware circuit learning (NACL), applies to circuits designed to compute a unitary transformation, prepare a set of quantum states, or estimate an observable of a many-qubit state. Given a task and a device model that captures information about the noise and connectivity of qubits in a device, NACL outputs an optimized circuit to accomplish this task in the presence of noise. It does so by minimizing a task-specific cost function over circuit depths and circuit structures. To demonstrate NACL, we construct circuits resilient to a fine-grained noise model derived from gate set tomography on a superconducting-circuit quantum device, for applications including quantum state overlap, quantum Fourier transform, and W-state preparation.

*The Research was supported by the LDRD program of LANL under project number 20180628ECR for the noise-free machine learning approach and project number 20190065DR for the machine learning approach in the presence of noise. PJC also acknowledges support from the LANL ASC Beyond Moore's Law project. This work was also supported by the US DOE, Office of Science, Office of Advanced Scientific Computing Research, under the Quantum Computing Application Teams program. Sandia National Labs is a multimission laboratory managed and operated by National Technology and Engineering Solutions of Sandia, LLC, a wholly owned subsidiary of Honeywell International, Inc., for the US DOE's National Nuclear Security Administration under contract DE-NA0003525. This work describes objective technical results and analysis. Any subjective views or opinions that might be expressed in this work do not necessarily represent the views of the US DOE or the US Government.

Publication: "Machine learning of noise-resilient quantum circuits", L. Cincio, K. Rudinger, M. Sarovar, P. J. Coles, PRX Quantum 2, 010324 (2021)

Presenters

  • Lukasz Cincio

    • Los Alamos National Laboratory

Authors

  • Lukasz Cincio

    • Los Alamos National Laboratory