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| Massively parallel implementation of nonlinear functions using an optical processorBy: ucla ita Nonlinear operations underpin nearly all modern information- UCLA researchers established theoretical and empirical proofs that these diffractive processors act as universal nonlinear function approximators—capable of realizing any arbitrary set of bandlimited nonlinear functions, including multi-variate and complex-valued functions that are all-optically cascadable. They also reported the successful approximation of typical nonlinear activation functions commonly used in digital neural networks, including sigmoid, tanh, ReLU (rectified linear unit), and softplus functions. The researchers further demonstrated, through numerical simulations, the parallel computation of one million distinct nonlinear functions, accurately executed at wavelength-scale spatial density at the output plane of an optimized, static diffractive optical processor. They also reported an experimental validation of their architecture using a compact optical setup comprising a spatial light modulator and an image sensor, which successfully learned and executed tens of distinct nonlinear functions simultaneously. The study's framework is scalable to much larger systems by leveraging high-end image sensors with hundreds of megapixels to potentially compute hundreds of millions of nonlinear functions – all in parallel. Such a capability could advance ultrafast analog computing, neuromorphic photonics, and high-throughput optical signal processing—achieved without nonlinear optical materials or electronic post-processing. The authors of this work are Dr. Md Sadman Sakib Rahman, Yuhang Li, Xilin Yang, Dr. Shiqi Chen, and Professor Aydogan Ozcan, all at the UCLA Samueli School of Engineering. This research was supported by the US Department of Energy Office of Basic Energy Sciences, Materials Sciences and Engineering Division. Dr. Ozcan is also an Associate Director of the California NanoSystems Institute (CNSI). Link: https://elight.springeropen.com/ End
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