Nanophotonics (May 2022)

All-optical ultrafast ReLU function for energy-efficient nanophotonic deep learning

  • Li Gordon H.Y.,
  • Sekine Ryoto,
  • Nehra Rajveer,
  • Gray Robert M.,
  • Ledezma Luis,
  • Guo Qiushi,
  • Marandi Alireza

DOI
https://doi.org/10.1515/nanoph-2022-0137
Journal volume & issue
Vol. 12, no. 5
pp. 847 – 855

Abstract

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In recent years, the computational demands of deep learning applications have necessitated the introduction of energy-efficient hardware accelerators. Optical neural networks are a promising option; however, thus far they have been largely limited by the lack of energy-efficient nonlinear optical functions. Here, we experimentally demonstrate an all-optical Rectified Linear Unit (ReLU), which is the most widely used nonlinear activation function for deep learning, using a periodically-poled thin-film lithium niobate nanophotonic waveguide and achieve ultra-low energies in the regime of femtojoules per activation with near-instantaneous operation. Our results provide a clear and practical path towards truly all-optical, energy-efficient nanophotonic deep learning.

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