Low depth mechanisms for quantum optimization

ORAL

Abstract

One of the major application areas of interest for both near-term and fault-tolerant quantum computers is the optimization of classical objective functions. In this work, we develop intuitive constructions for a large class of these algorithms based on connections to simple dynamics of quantum systems, quantum walks, and classical continuous relaxations. We focus on developing a language and tools connected with kinetic energy on a graph for understanding the physical mechanisms of success and failure to guide algorithmic improvement. Connections to classical methods of continuous extensions, homotopy methods, and iterated rounding suggest new directions for research in quantum optimization. Throughout, we unveil many pitfalls and mechanisms in quantum optimization using a physical perspective, which aim to spur the development of novel quantum optimization algorithms and refinements.

Presenters

  • Jarrod McClean

    • Google Quantum AI

Authors

  • Jarrod McClean

    • Google Quantum AI
  • Matthew Harrigan

    • Google Quantum AI
  • Masoud Mohseni

    • Google AI
    • Google
    • Google AI Quantum
    • Google Quantum AI
  • Nicholas Rubin

    • Google Quantum AI
    • Google Inc.
    • Google LLC
    • Google
  • Zhang Jiang

    • Google Inc - Santa Barbara
    • Google Quantum AI
    • Google Quantum AI, Mountain View, CA, USA
  • Sergio Boixo

    • Google Quantum AI
    • Google LLC
  • Vadim Smelyanskiy

    • Google AI Quantum
    • Google Quantum AI
    • Google - Venice, CA
    • Google Inc - Santa Barbara
  • Ryan Babbush

    • Google Quantum AI
    • Google LLC
  • Hartmut Neven

    • Google AI Quantum
    • Google Quantum AI
    • Google LLC
    • Google - Venice, CA