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Enhancing Optimization Techniques with Quantum-Inspired Generative Models (Part 1)

ORAL

Abstract

Large-scale integer combinatorial problems represent some of the most commonly occurring optimization problems in industrial settings. Quantum-inspired optimizers based on tensor networks can find unique optimization routes that may solve these problems faster than traditional approaches. In this work, we utilize such a quantum-inspired optimizer to enhance traditional optimization methods and analyze performance on a BMW plant optimization problem. Specifically, we investigate optimizer performance under basic data encodings and parameterizations. We also explore a subspace of the hyperparameters for the quantum-inspired optimizer and show that a maximum performance can be achieved as compared to other hyperparameter configurations. Finally, we compile these datasets to show the limits of quantum-inspired improvement of traditional optimization methods in cases of little problem-knowledge.

Presenters

  • William P Banner

    Massachusetts Institute of Technology MIT

Authors

  • William P Banner

    Massachusetts Institute of Technology MIT

  • Shima Bab Hadiashar

    Zapata Computing Inc.

  • Grzegorz Mazur

    Department of Computational Methods in Chemistry, Jagiellonian University, Zapata Computing Inc.

  • Tim Menke

    Atlantic Quantum Corporation

  • Marcin Ziolkowski

    BMW Group Information Technology Research Center

  • Jeffrey A Grover

    Massachusetts Institute of Technology MIT, Massachusetts Institute of Technology (MIT), Massachusetts Institute of Technology

  • Jhonathan Romero

    Zapata Computing Inc

  • William D Oliver

    Massachusetts Institute of Technology MIT, Massachusetts Institute of Technology (MIT), MIT Lincoln Laboratory, Massachusetts Institute of Technology (MIT), Massachusetts Institute of Technology, Massachusetts Institute of Technology, MIT Lincoln Laboratory