Machine learning enhances light–Matter interactions in dielectric nanostructures

A paper published in Advanced Photonics “Enhanced light–matter interactions in dielectric nanostructures via machine-learning approach,” suggests that machine-learning techniques can be used to enhance metasurfaces, optimizing them for nonlinear optics and optomechanics. The discovery has promising possibilities for the development of a wide range of photonic devices and applications including those involved in optical sensing, optoacoustic vibrations, and narrowband filtering.


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Source: Phys.org