Coherent Photonic neuromorphic computing for high-speed Deep Learning applications (Invited)

被引:2
|
作者
Moralis-Pegios, Miltiadis [1 ,2 ]
Mourgias-Alexandris, George [1 ,2 ]
Tsakyridis, Apostolos [1 ,2 ]
Giamougiannis, George [1 ,2 ]
Totovic, Angelina [1 ,2 ]
Dabos, George [1 ,2 ]
Pleros, Nikos [1 ,2 ]
机构
[1] Aristotle Univ Thessaloniki, Dept Informat, Thessaloniki, Greece
[2] Aristotle Univ Thessaloniki, Ctr Interdisciplinary Res & Innovat, Thessaloniki, Greece
来源
OPTICAL INTERCONNECTS XXII | 2022年 / 12007卷
关键词
Neuromorphic photonics; photonic integrated circuits; neural networks; optical computing; artificial intelligence;
D O I
10.1117/12.2606041
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
The emergence of demanding machine learning and AI workloads in modern computational systems and Data Centers (DC) has fueled a drive towards custom hardware, designed to accelerate Multiply-Accumulate (MAC) operations. In this context, neuromorphic photonics have recently attracted attention as a promising technological candidate, that can transfer photonics low-power, high bandwidth credentials in neuromorphic hardware implementations. However, the deployment of such systems necessitates progress in both the underlying constituent building blocks as well as the development of deep learning training models that can take into account the physical properties of the employed photonic components and compensate for their non-ideal performance. Herein, we present an overview of our progress in photonic neuromorphic computing based on coherent layouts, that exploits the phase of the light traversing the photonic circuitry both for sign representation and matrix manipulation. Our approach breaks-through the direct trade-off of insertion loss and modulation bandwidth of State-Of-The-Art coherent architectures and allows high-speed operation in reasonable energy envelopes. We present a silicon-integrated coherent linear neuron (COLN) that relies on electro-absorption modulators (EAM) both for its on-chip data generation and weighting, demonstrating a record-high 32 GMAC/sec/axon compute linerate and an experimentally obtained accuracy of 95.91% in the MNIST classification task. Moreover, we present our progress on component specific neuromorphic circuitry training, considering both the photonic link thermal noise and its channel response. Finally, we present our roadmap on scaling our architecture using a novel optical crossbar design towards a 32x32 layout that can offer >32 GMAC/sec/axon computational power in similar to 0.09 pJ/MAC.
引用
收藏
页数:6
相关论文
共 50 条
  • [1] Progress and Prospects of Photonic Neuromorphic Computing (Invited)
    Xiang Shuiying
    Song Ziwei
    Gao Shuang
    Han Yanan
    Zhang Yahui
    Guo Xingaing
    Hao Yue
    ACTA PHOTONICA SINICA, 2021, 50 (10)
  • [2] High-speed photonic neuromorphic computing using recurrent optical spectrum slicing neural networks
    Kostas Sozos
    Adonis Bogris
    Peter Bienstman
    George Sarantoglou
    Stavros Deligiannidis
    Charis Mesaritakis
    Communications Engineering, 1 (1):
  • [3] Hybrid photonic integrated circuits for neuromorphic computing [Invited]
    Xu, Rongyang
    Taheriniya, Shabnam
    Ovvyan, Anna P.
    Bankwitz, Julian Rasmus
    McRae, Liam
    Jung, Erik
    Brueckerhoff-Plueckelmann, Frank
    Bente, Ivonne
    Lenzini, Francesco
    Bhaskaran, Harish
    Pernice, Wolfram H. P.
    OPTICAL MATERIALS EXPRESS, 2023, 13 (12) : 3553 - 3606
  • [4] Photonic analog signal processing and neuromorphic computing [Invited]
    James Garofolo
    Ben Wu
    ChineseOpticsLetters, 2024, 22 (03) : 128 - 141
  • [5] Photonic analog signal processing and neuromorphic computing [Invited]
    Garofolo, James
    Wu, Ben
    CHINESE OPTICS LETTERS, 2024, 22 (03)
  • [6] Neuromorphic Computing Advances Deep-Learning Applications
    Palmer, Chris
    ENGINEERING, 2020, 6 (08) : 854 - 856
  • [7] Neuromorphic Silicon Photonics and Hardware-Aware Deep Learning for High-Speed Inference
    Moralis-Pegios, Miltiadis
    Mourgias-Alexandris, George
    Tsakyridis, Apostolos
    Giamougiannis, George
    Totovic, Angelina
    Dabos, George
    Passalis, Nikolaos
    Kirtas, Manos
    Rutirawut, T.
    Gardes, F. Y.
    Tefas, Anastasios
    Pleros, Nikos
    JOURNAL OF LIGHTWAVE TECHNOLOGY, 2022, 40 (10) : 3243 - 3254
  • [8] Noise-resilient and high-speed deep learning with coherent silicon photonics
    Mourgias-Alexandris, G.
    Moralis-Pegios, M.
    Tsakyridis, A.
    Simos, S.
    Dabos, G.
    Totovic, A.
    Passalis, N.
    Kirtas, M.
    Rutirawut, T.
    Gardes, F. Y.
    Tefas, A.
    Pleros, N.
    NATURE COMMUNICATIONS, 2022, 13 (01)
  • [9] Noise-resilient and high-speed deep learning with coherent silicon photonics
    G. Mourgias-Alexandris
    M. Moralis-Pegios
    A. Tsakyridis
    S. Simos
    G. Dabos
    A. Totovic
    N. Passalis
    M. Kirtas
    T. Rutirawut
    F. Y. Gardes
    A. Tefas
    N. Pleros
    Nature Communications, 13
  • [10] Silicon photonic integration for high-speed applications
    Liu, Ansheng
    Liao, Ling
    Rubin, Doron
    Basak, Juthika
    Chetrit, Yoel
    Nguyen, Hat
    Kim, D. W.
    Barkai, Assia
    Jones, Richard
    Elek, Nomi
    Cohen, Rami
    Izhaky, Nahum
    Paniccia, Mario
    SILICON PHOTONICS III, 2008, 6898