Adaptive variational algorithms for quantum Gibbs state preparation

ORAL

Abstract

The preparation of Gibbs states is an important task in quantum computation with applications in quantum simulation, quantum optimization, and quantum machine learning. However, many algorithms for preparing Gibbs states rely on quantum subroutines which are difficult to implement on near-term hardware. Here, we address this by (i) introducing an objective function that, unlike the free energy, is easily measured and (ii) using dynamically generated, problem-tailored ansatze. This allows for arbitrarily accurate Gibbs state preparation using low-depth circuits. To verify the effectiveness of our approach, we numerically demonstrate that our algorithm can prepare high-fidelity Gibbs states across a broad range of temperatures and for a variety of Hamiltonians.

*This work was supported by the Department of Energy Awards No. DE-SC0019199 and DE-SC0019318 and by the DOE Office of Science, National Quantum Information Science Research Centers, Co-design Center for Quantum Advantage (C2QA), contract number DE-SC0012704.

Publication: "Adaptive variational algorithms for quantum Gibbs state preparation," manuscript in preparation

Presenters

  • Ada Warren

    • Virginia Tech

Authors

  • Ada Warren

    • Virginia Tech
  • Linghua Zhu

    • Virginia Tech
  • Edwin Barnes

    • Virginia Tech
  • Sophia E Economou

    • Virginia Tech