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flohrian | 7 years ago

from the paper:

"[...] learnable network parameter that is iteratively adjusted during the training process of the diffractive network, using an error back-propagation method. After this numerical training phase implemented in a computer, the D^2NN design is fixed and the transmission/reflection coefficients of the neurons of all the layers are determined. This D^2NN design, once physically fabricated using e.g., 3D-printing, 3lithography, etc., can then perform, at the speed of light propagation, the specific task that it is trained for, using only optical diffraction and passive optical components/layers, creating an efficient and fast way of implementing machine learning tasks."

discuss

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andrewjrangel|7 years ago

So the optical component is only the end result model of the NN? It isn't learning using the optics?

dekhn|7 years ago

Only indirectly. the physical device only does feedforward so they had to train it using tensorflow on a conventional device.

dqpb|7 years ago

Which is unfortunate, since learning is the compute intensive part