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11 TOPS photonic convolutional accelerator for optical neural networks

journal contribution
posted on 2024-11-02, 16:58 authored by Xingyuan Xu, Mengxi Tan, Bill Corcoran, Jiayang Wu, Andreas Boes, Giang Thach NguyenGiang Thach Nguyen, Sai Chu, Brent Little, Damien Hicks, Roberto Morandotti, Arnan MitchellArnan Mitchell, David Moss
Convolutional neural networks, inspired by biological visual cortex systems, are a powerful category of artificial neural networks that can extract the hierarchical features of raw data to provide greatly reduced parametric complexity and to enhance the accuracy of prediction. They are of great interest for machine learning tasks such as computer vision, speech recognition, playing board games and medical diagnosis . Optical neural networks offer the promise of dramatically accelerating computing speed using the broad optical bandwidths available. Here we demonstrate a universal optical vector convolutional accelerator operating at more than ten TOPS (trillions (10 ) of operations per second, or tera-ops per second), generating convolutions of images with 250,000 pixels—sufficiently large for facial image recognition. We use the same hardware to sequentially form an optical convolutional neural network with ten output neurons, achieving successful recognition of handwritten digit images at 88 per cent accuracy. Our results are based on simultaneously interleaving temporal, wavelength and spatial dimensions enabled by an integrated microcomb source. This approach is scalable and trainable to much more complex networks for demanding applications such as autonomous vehicles and real-time video recognition. 1–7 12

Funding

CMOS compatible nonlinear photonic integrated circuits

Australian Research Council

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Low-energy electro-photonics: novel materials, devices and systems

Australian Research Council

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Rainbows on demand: coherent comb sources on a photonic chip

Australian Research Council

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History

Related Materials

  1. 1.
    DOI - Is published in 10.1038/s41586-020-03063-0
  2. 2.
    ISSN - Is published in 00280836

Journal

Nature

Volume

589

Issue

7840

Start page

44

End page

51

Total pages

8

Publisher

Springer

Place published

United Kingdom

Language

English

Copyright

© 2020 The Author(s), under exclusive licence to Springer Nature Limited.

Former Identifier

2006107122

Esploro creation date

2021-06-01

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