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Comparing three generations of D-Wave quantum annealers for minor embedded combinatorial optimization problems

Elijah Pelofske

2025Quantum Science and Technology17 citationsDOIOpen Access PDF

Abstract

Abstract Quantum annealing (QA) is a novel type of analog computation that aims to use quantum mechanical fluctuations to search for optimal solutions of Ising problems. QA in the transverse Ising model, implemented on D-Wave quantum processing units, are available as cloud computing resources. In this study we report concise benchmarks across three generations of D-Wave quantum annealers, consisting of four different devices, for the NP-hard discrete combinatorial optimization problems unweighted maximum clique and unweighted maximum cut on random graphs. The Ising, or equivalently quadratic unconstrained binary optimization, formulation of these problems do not require auxiliary variables for order reduction, and their overall structure and weights are not highly variable, which makes these problems simple test cases to understand the sampling capability of current D-Wave quantum annealers. All-to-all minor embeddings of size 52, with relatively uniform chain lengths, are used for a direct comparison across the Chimera, Pegasus, and Zephyr device topologies. A grid-search over annealing times and the minor embedding chain strengths is performed in order to determine the level of reasonable performance for each device and problem type. Experiment metrics that are reported are approximation ratios for non-broken chain samples, chain break proportions, and time-to-solution for the maximum clique problem instances. How fairly the quantum annealers sample optimal maximum cliques, for instances which contain multiple maximum cliques, is quantified using entropy of the measured ground state distributions. The newest generation of quantum annealing hardware, which has a Zephyr hardware connectivity, performed the best overall with respect to approximation ratios and chain break frequencies.

Topics & Concepts

Quantum annealingQuadratic unconstrained binary optimizationIsing modelSimulated annealingQuantumQuantum computerCliqueCombinatorial optimizationComputer scienceAlgorithmStatistical physicsMathematicsPhysicsCombinatoricsQuantum mechanicsQuantum Computing Algorithms and ArchitectureMachine Learning in Materials ScienceCloud Computing and Resource Management
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