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Quantum memristors for neuromorphic quantum machine learning
Published 25 Dec 2024 in quant-ph and cs.NE | (2412.18979v1)
Abstract: Quantum machine learning may permit to realize more efficient machine learning calculations with near-term quantum devices. Among the diverse quantum machine learning paradigms which are currently being considered, quantum memristors are promising as a way of combining, in the same quantum hardware, a unitary evolution with the nonlinearity provided by the measurement and feedforward. Thus, an efficient way of deploying neuromorphic quantum computing for quantum machine learning may be enabled.
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