Enhancing the Scalability of Classical Surrogates for Real-World Quantum Machine Learning Applications
Philip Anton Hernicht, Alona Sakhnenko, Corey O'Meara, Giorgio Cortiana, Jeanette Miriam Lorenz

TL;DR
This paper introduces a scalable classical surrogate method for quantum machine learning models, reducing computational costs and enabling practical deployment and testing of quantum solutions in real-world industrial applications.
Contribution
The authors propose an efficient pipeline for generating classical surrogates from quantum models, significantly lowering resource requirements compared to previous methods.
Findings
Method achieves high accuracy on energy demand forecasting
Computational resources scale linearly, not exponentially
Effective on real quantum hardware and simulations
Abstract
Quantum machine learning (QML) presents potential for early industrial adoption, yet limited access to quantum hardware remains a significant bottleneck for deployment of QML solutions. This work explores the use of classical surrogates to bypass this restriction, which is a technique that allows to build a lightweight classical representation of a (trained) quantum model, enabling to perform inference on entirely classical devices. We reveal prohibiting high computational demand associated with previously proposed methods for generating classical surrogates from quantum models, and propose an alternative pipeline enabling generation of classical surrogates at a larger scale than was previously possible. Previous methods required at least a high-performance computing (HPC) system for quantum models of below industrial scale (ca. 20 qubits), which raises questions about its practicality.…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Quantum Mechanics and Applications
