3.8 Proceedings Paper

Machine learning for photonics: from computing to communication

Publisher

IEEE
DOI: 10.1109/SUM57928.2023.10224400

Keywords

NN models; matrix multipliers; equalization

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This article reviews two specific applications of neural networks in photonics: learning direct models for optical matrix multipliers and inverse modeling for short-reach fiber communication systems.
Neural networks are effective tools for learning direct and inverse models. Here, we review two specific applications of neural networks to photonics: (i) learning accurate direct models for optical matrix multipliers and (ii) inverse modeling for short-reach fiber communication systems, enabling signal equalization.

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