Benchmarking the Operation of Quantum Heuristics and Ising Machines: Scoring Parameter Setting Strategies on Optimization Applications (2402.10255v1)
Abstract: We discuss guidelines for evaluating the performance of parameterized stochastic solvers for optimization problems, with particular attention to systems that employ novel hardware, such as digital quantum processors running variational algorithms, analog processors performing quantum annealing, or coherent Ising Machines. We illustrate through an example a benchmarking procedure grounded in the statistical analysis of the expectation of a given performance metric measured in a test environment. In particular, we discuss the necessity and cost of setting parameters that affect the algorithm's performance. The optimal value of these parameters could vary significantly between instances of the same target problem. We present an open-source software package that facilitates the design, evaluation, and visualization of practical parameter tuning strategies for complex use of the heterogeneous components of the solver. We examine in detail an example using parallel tempering and a simulator of a photonic Coherent Ising Machine computing and display the scoring of an illustrative baseline family of parameter-setting strategies that feature an exploration-exploitation trade-off.
- John Preskill. Quantum computing in the NISQ era and beyond. Quantum, 2:79, 2018.
- Highly reconfigurable oscillator-based Ising Machine through quasiperiodic modulation of coupling strength. Scientific Reports, 13(1):4005, 2023.
- A fully programmable 100-spin coherent Ising machine with all-to-all connections. Science, 354(6312):614–617, 2016.
- P-bits for probabilistic spin logic. Applied Physics Reviews, 6(1), 2019.
- Logically synthesized and hardware-accelerated restricted boltzmann machines for combinatorial optimization and integer factorization. Nature Electronics, 5(2):92–101, 2022.
- Physics-inspired heuristics for soft mimo detection in 5g new radio and beyond. In Proceedings of the 27th Annual International Conference on Mobile Computing and Networking, pages 42–55, 2021.
- Ising machines’ dynamics and regularization for near-optimal mimo detection. IEEE Transactions on Wireless Communications, 21(12):11080–11094, 2022.
- Maximillian A Perez. Transitioning quantum atomic technologies from the lab to the real world. In Quantum Photonics: Enabling Technologies, volume 11579, page 1157906. SPIE, 2020.
- Exploring the impact of graph locality for the resolution of the maximum-independent-set problem with neutral atom devices. Physical Review A, 108(5):052423, 2023.
- Hardness of the maximum-independent-set problem on unit-disk graphs and prospects for quantum speedups. Physical Review Research, 5(4):043277, 2023.
- Evidence for the utility of quantum computing before fault tolerance. Nature, 618(7965):500–505, 2023.
- Design and execution of quantum circuits using tens of superconducting qubits and thousands of gates for dense ising optimization problems. arXiv preprint arXiv:2308.12423, 2023.
- Observation of topological phenomena in a programmable lattice of 1,800 qubits. Nature, 560(7719):456–460, August 2018.
- Carleton James Coffrin. On the emerging potential of quantum annealing hardware for combinatorial optimization. Technical report, Los Alamos National Laboratory (LANL), Los Alamos, NM (United States), 2023.
- Ising Machines as Hardware Solvers of Combinatorial Optimization Problems. Nature Reviews Physics, 4(6):363–379, June 2022.
- A copositive framework for analysis of hybrid ising-classical algorithms. arXiv preprint arXiv:2207.13630, 2022.
- Quantum-enhanced greedy combinatorial optimization solver. Science Advances, 9(45):eadi0487, 2023.
- Catherine C McGeoch. Benchmarking D-wave quantum annealing systems: some challenges. In Electro-Optical and Infrared Systems: Technology and Applications XII; and Quantum Information Science and Technology, volume 9648, pages 264–273. SPIE, 2015.
- Scott Aaronson. Quantum computing motte-and-baileys, 2019. https://scottaaronson.blog/?p=4447.
- John R Rice. The algorithm selection problem. In Advances in computers, volume 15, pages 65–118. Elsevier, 1976.
- Benchmarking optimization software with performance profiles. Mathematical programming, 91(2):201–213, 2002.
- A note on performance profiles for benchmarking software. ACM Transactions on Mathematical Software (TOMS), 43(2):1–5, 2016.
- Benchmarking in optimization: Best practice and open issues, 2020.
- PAVER 2.0: an open source environment for automated performance analysis of benchmarking data. Journal of Global Optimization, 59:259–275, 2014.
- Benchopt: Reproducible, efficient and collaborative optimization benchmarks. Advances in Neural Information Processing Systems, 35:25404–25421, 2022.
- Benchmarking contemporary deep learning hardware and frameworks: A survey of qualitative metrics. In 2019 IEEE First International Conference on Cognitive Machine Intelligence (CogMI), pages 148–155. IEEE, 2019.
- Hyperopt: Distributed asynchronous hyper-parameter optimization. Astrophysics Source Code Library, pages ascl–2205, 2022.
- Benchmarking a quantum annealing processor with the time-to-target metric, 2015.
- Sampling frequency thresholds for the quantum advantage of the quantum approximate optimization algorithm. npj Quantum Information, 9(1):73, 2023.
- Application-motivated, holistic benchmarking of a full quantum computing stack. Quantum, 5:415, 2021.
- Stochastic Benchmark: toolkit for performance evaluation and parameter tuning of stochastic parameterized stochastic optimization solvers, September 2023.
- Stochastic optimization: a review. International Statistical Review, 70(3):315–349, 2002.
- Pseudo-boolean optimization. Discrete applied mathematics, 123(1-3):155–225, 2002.
- Cim-Optimizer: A Simulator of the Coherent Ising Machine, October 2022. https://github.com/mcmahon-lab/cim-optimizer.
- PySA: Fast Simulated Annealing in Native Python, 2023. https://github.com/nasa/pysa.
- Coherent Ising machine based on degenerate optical parametric oscillators. Physical Review A, 88(6):063853, 2013.
- Scaling Advantage of Chaotic Amplitude Control for High-Performance Combinatorial Optimization. Communications Physics, 4(1):1–10, December 2021.
- Coherent ising machines with optical error correction circuits. Advanced Quantum Technologies, 4(11):2100077, 2021.
- Accelerating continuous variable coherent ising machines via momentum. arXiv preprint arXiv:2401.12135, 2024.
- Exchange Monte Carlo method and application to spin glass simulations. Journal of the Physical Society of Japan, 65(6):1604–1608, 1996.
- Optimization by Simulated Annealing. Science, 220(4598):671–680, May 1983.
- Efficient Cluster Algorithm for Spin Glasses in Any Space Dimension. Physical Review Letters, 115(7):077201, August 2015.
- A Deceptive Step towards Quantum Speedup Detection. Quantum Science and Technology, 3(4):04LT01, July 2018.
- Wishart Planted Ensemble: A Tunably Rugged Pairwise Ising Model with a First-Order Phase Transition. Physical Review E, 101(5):052102, May 2020.
- Chook–a comprehensive suite for generating binary optimization problems with planted solutions, 2020.
Paper Prompts
Sign up for free to create and run prompts on this paper using GPT-5.
Top Community Prompts
Collections
Sign up for free to add this paper to one or more collections.