Adaptive shot allocation for fast convergence in variational quantum algorithms

ORAL

Abstract

Variational Quantum Algorithms (VQAs) are a promising approach for practical applications like chemistry and materials science on near-term quantum computers as they typically reduce quantum resource requirements. However, in order to implement VQAs, an efficient classical optimization strategy is required. Here we present a new stochastic gradient descent method using an adaptive number of shots at each step, called the global Coupled Adaptive Number of Shots (gCANS) method, which improves on prior art in both the number of iterations as well as the number of shots required. These improvements reduce both the time and money required to run VQAs on current cloud platforms. We analytically prove that in a convex setting gCANS achieves geometric convergence to the optimum. Further, we numerically investigate the performance of gCANS on some chemical configuration problems. We also consider finding the ground state for an Ising model with different numbers of spins to examine the scaling of the method. We find that for these problems, gCANS compares favorably to all of the other optimizers we consider.

*Research presented in this article was supported by the Laboratory Directed Research and Development (LDRD) program of Los Alamos National Laboratory (LANL) under project number 20200056DR. AG and AL acknowledge support from the U.S. Department of Energy (DOE) through a quantum computing program sponsored by the LANL Information Science & Technology Institute. PJC also acknowledges support from the LANL ASC Beyond Moore's Law project. AA was also initially supported by the LDRD program of LANL under project number 20190065DR.

Publication: https://arxiv.org/abs/2108.10434

Presenters

  • Andi Gu

    • University of California, Berkeley

Authors

  • Andi Gu

    • University of California, Berkeley
  • Angus Lowe

    • University of Waterloo
  • Pavel A Dub

    • Los Alamos Natl Lab
    • Los Alamos National Laboratory
  • Patrick J Coles

    • Los Alamos National Laboratory
  • Andrew T Arrasmith

    • Los Alamos National Laboratory