Learning Solution Curves in Feedback-Based Quantum Algorithms

ORAL

Abstract

There is increasing interest in utilizing parameterized quantum circuits for solving problems of interest. Recently, feedback-based quantum algorithms have been introduced as optimization-free frameworks for this, where quantum circuit parameters are established layer-by-layer using a deterministic, measurement-based feedback law. The resulting set of parameters corresponds to what we refer to as solution curve. In this talk, I explore the prospect of sidestepping the typical measurement-based protocol and instead learning these solution curves with neural networks. I will present results exploring the quality of the predictions of neural networks and discuss potential future directions.

*SNL is managed and operated by NTESS under DOE NNSA contract DE-NA0003525

Presenters

  • VICENTE PENA PEREZ

    • Arizona State University

Authors

  • VICENTE PENA PEREZ

    • Arizona State University
  • Matthew D Grace

    • Sandia National Laboratories
  • Alicia B Magann

    • Sandia National Laboratories