Integrated photonic FFT for photonic tensor operations towards efficient and high-speed neural networks

Author:

Ahmed Moustafa1,Al-Hadeethi Yas1,Bakry Ahmed1,Dalir Hamed2,Sorger Volker J.3

Affiliation:

1. Department of Physics, Faculty of Science, King Abdulaziz University, 21589, Jeddah, Saudi Arabia

2. Omega Optics, Inc. 8500 Shoal Creek Blvd., 78757, Austin, Texas, USA

3. Department of Electrical and Computer Engineering, George Washington University, 20052, Washington, D.C., USA

Abstract

AbstractThe technologically-relevant task of feature extraction from data performed in deep-learning systems is routinely accomplished as repeated fast Fourier transforms (FFT) electronically in prevalent domain-specific architectures such as in graphics processing units (GPU). However, electronics systems are limited with respect to power dissipation and delay, due to wire-charging challenges related to interconnect capacitance. Here we present a silicon photonics-based architecture for convolutional neural networks that harnesses the phase property of light to perform FFTs efficiently by executing the convolution as a multiplication in the Fourier-domain. The algorithmic executing time is determined by the time-of-flight of the signal through this photonic reconfigurable passive FFT ‘filter’ circuit and is on the order of 10’s of picosecond short. A sensitivity analysis shows that this optical processor must be thermally phase stabilized corresponding to a few degrees. Furthermore, we find that for a small sample number, the obtainable number of convolutions per {time, power, and chip area) outperforms GPUs by about two orders of magnitude. Lastly, we show that, conceptually, the optical FFT and convolution-processing performance is indeed directly linked to optoelectronic device-level, and improvements in plasmonics, metamaterials or nanophotonics are fueling next generation densely interconnected intelligent photonic circuits with relevance for edge-computing 5G networks by processing tensor operations optically.

Funder

Research and Development Office (RDO) at the Ministry of Education, Kingdom of Saudi Arabia

Publisher

Walter de Gruyter GmbH

Subject

Electrical and Electronic Engineering,Atomic and Molecular Physics, and Optics,Electronic, Optical and Magnetic Materials,Biotechnology

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