A Predictive Approach for Selecting the Best Quantum Solver for an Optimization Problem
Deborah Volpe, Nils Quetschlich, Mariagrazia Graziano, Giovanna Turvani, Robert Wille

TL;DR
This paper introduces a machine learning-based method to predict the most suitable quantum solver for a given optimization problem, simplifying the solver selection process for non-experts and improving solution quality.
Contribution
It formulates quantum solver selection as a supervised classification problem and proposes strategies for parameter adjustment based on problem features.
Findings
Over 70% accuracy in selecting the best solver
Approximately 90% of cases include the top two candidate solvers
Demonstrates machine learning's potential in automating quantum solver selection
Abstract
Leveraging quantum computers for optimization problems holds promise across various application domains. Nevertheless, utilizing respective quantum computing solvers requires describing the optimization problem according to the Quadratic Unconstrained Binary Optimization (QUBO) formalism and selecting a proper solver for the application of interest with a reasonable setting. Both demand significant proficiency in quantum computing, QUBO formulation, and quantum solvers, a background that usually cannot be assumed by end users who are domain experts rather than quantum computing specialists. While tools aid in QUBO formulations, support for selecting the best-solving approach remains absent. This becomes even more challenging because selecting the best solver for a problem heavily depends on the problem itself. In this work, we are accepting this challenge and propose a predictive…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture
