Off-line quantum-advantage feature extraction for industrial production
Carlos Flores-Garrigos, Gabriel D. Alvarado Barrios, Qi Zhang, Anton Simen, Enrique Solano

TL;DR
This paper presents a framework for quantum feature extraction in industrial settings, using small data subsamples to train classical surrogates that replicate quantum patterns at scale.
Contribution
It introduces quantum feature surrogates, enabling scalable quantum-inspired data representations without requiring quantum hardware for every sample.
Findings
Quantum feature surrogates reduce processing costs significantly.
Classical models can learn quantum-induced patterns effectively.
The approach enables quantum advantages in industrial data processing.
Abstract
Quantum computing is no longer a lab curiosity for academic research. Industrial processors exceeding 100 qubits are commercially accessible and, for the first time, can extract information from data in ways that classical algorithms struggle to match. The most direct way to monetize this capability for industrial production today is quantum feature extraction: turning raw business data (images, customer records, molecules, or sensor readings) into richer representations that outperform standard machine learning models. There is one obstacle, however, that stands between today's demonstrations and tomorrow's production systems: every sample of data costs a quantum computing execution. For a company with millions of customers, satellite images, or transactions per month, processing every sample on quantum hardware is simply not viable. This work introduces quantum feature surrogates, a…
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