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Programmable Photonic Neural Networks for advanced Machine Learning tasks

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Abstract

Photonics holds the promise of reshaping Machine Learning and High-Performance Computing hardware landscape, stripping it of unnecessary signal conversion overhead, complying with strict power dissipation envelopes while unlocking unrivaled compute and bandwidth capacity.

© 2023 The Author(s)

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