LECS
Laboratory for Emerging Computing Systems
Concordia University · Montréal
Journal

Design of a Reconfigurable Activation Function for All-Optical Neural Networks

Oceane Destras, S. L. Beux, F. Magalhães, G. Nicolescu
IEEE International New Circuits and Systems Conference · 2024 · DOI: 10.1109/NewCAS58973.2024.10666337
Silicon photonic interconnectsReconfigurable architecturesNeuromorphic architectures
IEEE International New Circuits and Systems Conference 2024 Oceane Destras, S. L. Beux, F. Magalhães, G. Nicolescu
Abstract

Photonic integrated circuits present a promising avenue for the integration of Deep Neural Networks (DNNs), offering solutions to the speed and power consumption constraints inherent to their electronic counterparts. Notably, research showcasing the ability of photonic integrated circuits to realize matrix multiplications - a crucial operation in DNNs - at the speed of light has drawn much attention to the field of optical neural networks (ONNs). One of the challenges of designing fully optical DNNs is the photonic integration of the activation function, a nonlinear function. Optical nonlinear responses often deviate in shape from traditional DNN activation functions. A pivotal requirement for standardizing ONN architectures without sacrificing flexibility is the development of a fully tunable optical activation function. Presently, reconfigurable optical activation functions exhibit limitations in reproducing diverse functions, constraining the potential of photonic DNNs. In this article, we propose an architecture leveraging Mach-Zehnder interferometers and saturable absorbers to execute a range of activation functions, including ReLU, sigmoid, and tanh.

Citation

If you build on this work, please cite the paper using the entry below. The BibTeX can be copied to clipboard with the button at the top of this page.

@article{oceane2024793331c622ce744b8aa74b5acdb482b98f60e3e2,
  title  = {Design of a Reconfigurable Activation Function for All-Optical Neural Networks},
  author = {Oceane Destras and S. L. Beux and F. Magalhães and G. Nicolescu},
  journal = {IEEE International New Circuits and Systems Conference},
  year   = {2024},
  doi    = {10.1109/NewCAS58973.2024.10666337}
}

Acknowledgements

This work was supported in part by the Natural Sciences and Engineering Research Council of Canada (NSERC) Discovery Grants programme and by the Fonds de recherche du Québec — Nature et technologies (FRQNT).