Predicting many state properties with robust shallow circuit shadow tomography

ORAL

Abstract

Efficient prediction of many quantum state properties is crucial for quantum information processing. Through the use of randomized measurements and shallow circuits, classical shadow tomography emerges as a highly efficient, promising approach compatible with near-term quantum processors. This work presents the Robust Shallow Shadow (RSS) method, designed to operate effectively mitigate correlated noise, and provides a theoretical analysis of RSS behavior within the shallow-circuit region. We further illustrate the efficacy of RSS by demonstrating its performance using superconducting quantum processors.

Presenters

  • Hong-Ye Hu

    • Harvard University
    • Harvard University, Department of Physics

Authors

  • Hong-Ye Hu

    • Harvard University
    • Harvard University, Department of Physics
  • Andi Gu

    • Harvard University
  • Swarnadeep Majumder

    • Worcester Polytechnic Institute
    • IBM Quantum
  • Hang Ren

    • University of California, Berkeley
  • Yipei Zhang

    • University of California, Berkeley
  • Derek S Wang

    • IBM Quantum, IBM T.J. Watson Research Center
    • IBM Quantum
  • Zlatko K Minev

    • IBM Quantum
    • IBM
  • Yizhuang You

    • Harvard University
  • Alireza Seif

    • IBM Quantum
    • University of Chicago
  • Susanne F Yelin

    • Harvard University