Programming and Tuning a Quantum Annealing Device to Solve Real World Problems

ORAL

Abstract

Solving real-world applications with quantum algorithms requires overcoming several challenges, ranging from translating the computational problem at hand to the quantum-machine language to tuning parameters of the quantum algorithm that have a significant impact on the performance of the device. In this talk, we discuss these challenges, strategies developed to enhance performance, and also a more efficient implementation of several applications. Although we will focus on applications of interest to NASA's Quantum Artificial Intelligence Laboratory, the methods and concepts presented here apply to a broader family of hard discrete optimization problems, including those that occur in many machine-learning algorithms.

Authors

  • Alejandro Perdomo-Ortiz

    NASA Ames Research Center

  • Bryan O'Gorman

    NASA Ames Research Center

  • Joseph Fluegemann

    NASA Ames Research Center

  • Vadim Smelyanskiy

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