Ian A. D. Williamson, Tyler W. Hughes, M. Minkov, S. Fan
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Recurrent Machine Learning and Computing with Nonlinear Optical Waves
We demonstrate that optical time-dynamics are equivalent to a recurrent neural network and that they can be trained for high-performance on complex classification tasks, paving the way for passive analog machine learning processors.