Experimental quantum memristor
Michele Spagnolo, Joshua Morris, Simone Piacentini, Michael, Antesberger, Francesco Massa, Francesco Ceccarelli, Andrea Crespi, Roberto, Osellame, Philip Walther

TL;DR
This paper introduces and experimentally demonstrates a novel quantum-optical memristor based on integrated photonics, which could advance quantum neural networks and neuromorphic computing by providing a practical quantum memory element.
Contribution
The paper presents the first experimental realization of a quantum-optical memristor using integrated photonics, enabling non-unitary operations for quantum neural network applications.
Findings
Demonstrated memristive behavior in a quantum-optical device
Simulated quantum reservoir computing with potential advantages over classical systems
Showed practical potential for quantum neuromorphic architectures
Abstract
Quantum computer technology harnesses the features of quantum physics for revolutionizing information processing and computing. As such, quantum computers use physical quantum gates that process information unitarily, even though the final computing steps might be measurement-based or non-unitary. The applications of quantum computers cover diverse areas, reaching from well-known quantum algorithms to quantum machine learning and quantum neural networks. The last of these is of particular interest by belonging to the promising field of artificial intelligence. However, quantum neural networks are technologically challenging as the underlying computation requires non-unitary operations for mimicking the behavior of neurons. A landmark development for classical neural networks was the realization of memory-resistors, or "memristors". These are passive circuit elements that keep a memory…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Advanced Memory and Neural Computing · Neural dynamics and brain function
