Benchmarking hardware experiments for the quantum relax-and-round algorithm against classical combinatorial solvers

ORAL

Abstract

Achieving high-quality solutions faster than classical solvers on computationally hard problems is a challenge for quantum optimization to deliver utility. Using a superconducting quantum computer, we experimentally investigate the performance of a hybrid quantum-classical algorithm inspired by semidefinite programming approaches for solving the maximum cut problem on 3-regular graphs up to several thousand variables. We attain an average performance of 99% over a random ensemble of thousands of problem instances. We describe how we benchmark the quantum solver against similarly high-performing classical heuristics, including the Gurobi optimizer, simulated annealing, and the Burer-Monteiro algorithm, and show that the quantum solver on large-scale problems is competitive against Gurobi. We explore multiple leads to close the gap against the two other solvers and discuss prospects for a practical quantum speedup.

*This work is supported by the Defense Advanced Research Projects Agency (DARPA) under Agreement No. HR00112090058 and IAA 8839, Annex 114. Authors also acknowledge support under NASA Academic Mission Services under contract No. NNA16BD14C. This research used resources of the National Energy Research Scientific Computing Center, a DOE Office of Science User Facility supported by the Office of Science of the U.S. Department of Energy under Contract No. DE-AC02- 05CH11231 using NERSC awards DDR-ERCAP0024427 and ASCR-ERCAP0028951.

Publication: arXiv:2404.17579

Presenters

  • Bhuvanesh Sundar

    • Rigetti Computing

Authors

  • Bhuvanesh Sundar

    • Rigetti Computing
  • Maxime Dupont

    • Rigetti Computing
  • Bram Evert

    • Rigetti Computing
  • David E Bernal Neira

    • Davidson School of Chemical Engineering, Purdue University, West Lafayette, IN, USA
    • Purdue University
  • Zedong Peng

    • Purdue University
  • Stephen Jeffrey

    • Rigetti Computing
  • Mark J Hodson

    • Rigetti Computing