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All-Photonic Artificial Neural Network Processor Via Nonlinear Optics

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Abstract

We propose an all-photonic architecture to accelerate linear matrix processing by encoding information in the amplitudes of frequency states. Our design is unique in providing a unitary, reversible mode of computation at high speeds.

© 2022 The Author(s)

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