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Building Multi-functional Meta-optic Systems through Deep Learning

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Abstract

We develop a deep learning framework for the design of large-scale, multi-layered, multi-functional meta-optic systems. We demonstrate designed examples of a dual-functional beam generator, an all-optical second-order differentiator, and a space-polarization-wavelength multiplexed hologram.

© 2021 The Author(s)

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