English

Massively parallel and universal approximation of nonlinear functions using diffractive processors

Optics 2025-11-10 v1 Neural and Evolutionary Computing Applied Physics

Abstract

Nonlinear computation is essential for a wide range of information processing tasks, yet implementing nonlinear functions using optical systems remains a challenge due to the weak and power-intensive nature of optical nonlinearities. Overcoming this limitation without relying on nonlinear optical materials could unlock unprecedented opportunities for ultrafast and parallel optical computing systems. Here, we demonstrate that large-scale nonlinear computation can be performed using linear optics through optimized diffractive processors composed of passive phase-only surfaces. In this framework, the input variables of nonlinear functions are encoded into the phase of an optical wavefront, e.g., via a spatial light modulator (SLM), and transformed by an optimized diffractive structure with spatially varying point-spread functions to yield output intensities that approximate a large set of unique nonlinear functions, all in parallel. We provide proof establishing that this architecture serves as a universal function approximator for an arbitrary set of bandlimited nonlinear functions, also covering multi-variate and complex-valued functions. We also numerically demonstrate the parallel computation of one million distinct nonlinear functions, accurately executed at wavelength-scale spatial density at the output of a diffractive optical processor. Furthermore, we experimentally validated this framework using in situ optical learning and approximated 35 unique nonlinear functions in a single shot using a compact setup consisting of an SLM and an image sensor. These results establish diffractive optical processors as a scalable platform for massively parallel universal nonlinear function approximation, paving the way for new capabilities in analog optical computing based on linear materials.

Keywords

Cite

@article{arxiv.2507.08253,
  title  = {Massively parallel and universal approximation of nonlinear functions using diffractive processors},
  author = {Md Sadman Sakib Rahman and Yuhang Li and Xilin Yang and Shiqi Chen and Aydogan Ozcan},
  journal= {arXiv preprint arXiv:2507.08253},
  year   = {2025}
}

Comments

28 Pages, 7 Figures

R2 v1 2026-07-01T03:55:54.066Z