• Advanced Photonics
  • Vol. 5, Issue 1, 016004 (2023)
George Giamougiannis1、*, Apostolos Tsakyridis1, Miltiadis Moralis-Pegios1, George Mourgias-Alexandris1, Angelina R. Totovic1, George Dabos1, Manos Kirtas1, Nikolaos Passalis1, Anastasios Tefas1, Dimitrios Kalavrouziotis2, Dimitris Syrivelis2, Paraskevas Bakopoulos2, Elad Mentovich3, David Lazovsky4, and Nikos Pleros1
Author Affiliations
  • 1Aristotle University of Thessaloniki, Department of Informatics, Thessaloniki, Greece
  • 2NVIDIA, Athens, Greece
  • 3NVIDIA, Yokneam, Israel
  • 4Celestial AI, Santa Clara, California, United States
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    DOI: 10.1117/1.AP.5.1.016004 Cite this Article Set citation alerts
    George Giamougiannis, Apostolos Tsakyridis, Miltiadis Moralis-Pegios, George Mourgias-Alexandris, Angelina R. Totovic, George Dabos, Manos Kirtas, Nikolaos Passalis, Anastasios Tefas, Dimitrios Kalavrouziotis, Dimitris Syrivelis, Paraskevas Bakopoulos, Elad Mentovich, David Lazovsky, Nikos Pleros. Neuromorphic silicon photonics with 50 GHz tiled matrix multiplication for deep-learning applications[J]. Advanced Photonics, 2023, 5(1): 016004 Copy Citation Text show less

    Abstract

    The explosive volume growth of deep-learning (DL) applications has triggered an era in computing, with neuromorphic photonic platforms promising to merge ultra-high speed and energy efficiency credentials with the brain-inspired computing primitives. The transfer of deep neural networks (DNNs) onto silicon photonic (SiPho) architectures requires, however, an analog computing engine that can perform tiled matrix multiplication (TMM) at line rate to support DL applications with a large number of trainable parameters, similar to the approach followed by state-of-the-art electronic graphics processing units. Herein, we demonstrate an analog SiPho computing engine that relies on a coherent architecture and can perform optical TMM at the record-high speed of 50 GHz. Its potential to support DL applications, where the number of trainable parameters exceeds the available hardware dimensions, is highlighted through a photonic DNN that can reliably detect distributed denial-of-service attacks within a data center with a Cohen’s kappa score-based accuracy of 0.636.
    Supplementary Materials
    George Giamougiannis, Apostolos Tsakyridis, Miltiadis Moralis-Pegios, George Mourgias-Alexandris, Angelina R. Totovic, George Dabos, Manos Kirtas, Nikolaos Passalis, Anastasios Tefas, Dimitrios Kalavrouziotis, Dimitris Syrivelis, Paraskevas Bakopoulos, Elad Mentovich, David Lazovsky, Nikos Pleros. Neuromorphic silicon photonics with 50 GHz tiled matrix multiplication for deep-learning applications[J]. Advanced Photonics, 2023, 5(1): 016004
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