APS Logo

Hardware-Efficient Quantum Optimization Layered Algorithms and Experiments

ORAL

Abstract

Quantum optimization algorithms, such as QAOA, that implement parametrized stochastic optimization solvers attempt to identify low-energy solutions of Ising systems by exploiting available quantum effects in noisy-intermediate scale machines. Engineering a well-performing parametrized quantum optimization circuit is indeed an exercise in balancing the trade-off between expressivity and implementation complexity. We show that, for MaxCut QAOA circuits defined on native hardware topology (Rigetti’s Aspen Quantum Processors), error-mitigation techniques recover simulated features of the noiseless theory. Moreover, we explore a design space for QAOA-like ansatze that perform well in theory as well as in hardware for fully-connected problems [1]. We also discuss how efficient coherence and entanglement detection methods that could be coupled with quantum optimization experiments require only linear overhead in benchmarking time [2].

Publication: [1] LaRose, Ryan, Eleanor Rieffel, and Davide Venturelli. "Mixer-Phaser Ansatze for Quantum Optimization with Hard Constraints." arXiv preprint arXiv:2107.06651 (2021).<br>[2] Alam, M. Sohaib, Filip A. Wudarski, Matthew J. Reagor, James Sud, Shon Grabbe, Zhihui Wang, Mark Hodson, P. Aaron Lott, Eleanor G. Rieffel, and Davide Venturelli. "Practical Verification of Quantum Properties in Quantum Approximate Optimization Runs." arXiv preprint arXiv:2105.01639 (2021).

Presenters

  • Davide Venturelli

    NASA Ames Research Center, NASA Ames Research Center; USRA Research Institute for Advanced Computer Science (RIACS)

Authors

  • Davide Venturelli

    NASA Ames Research Center, NASA Ames Research Center; USRA Research Institute for Advanced Computer Science (RIACS)

  • M. Sohaib Alam

    NASA Ames Research Center

  • Matthew J Reagor

    Rigetti Quantum Computing

  • Bram Evert

    Rigetti Quantum Computing

  • Shon Grabbe

    NASA Ames Research Center

  • Benjamin P Hall

    Michigan State University

  • Mark Hodson

    Rigetti Quantum Computing

  • Ryan M LaRose

    Michigan State University

  • P. Aaron Lott

    NASA Ames Research Center

  • Eleanor G Rieffel

    NASA Ames Research Center, Quantum Artificial Intelligence Laboratory (QuAIL), NASA Ames Research Center, QuAIL, NASA

  • James Sud

    NASA Ames Research Center, NASA

  • Zhihui Wang

    NASA Ames Research Center

  • Filip A Wudarski

    NASA Ames Research Center, QuAIL, USRA, NASA