Literature DB >> 33542343

Freely scalable and reconfigurable optical hardware for deep learning.

Liane Bernstein1, Alexander Sludds2, Ryan Hamerly3,4, Vivienne Sze3, Joel Emer5,6, Dirk Englund7.   

Abstract

As deep neural network (DNN) models grow ever-larger, they can achieve higher accuracy and solve more complex problems. This trend has been enabled by an increase in available compute power; however, efforts to continue to scale electronic processors are impeded by the costs of communication, thermal management, power delivery and clocking. To improve scalability, we propose a digital optical neural network (DONN) with intralayer optical interconnects and reconfigurable input values. The path-length-independence of optical energy consumption enables information locality between a transmitter and a large number of arbitrarily arranged receivers, which allows greater flexibility in architecture design to circumvent scaling limitations. In a proof-of-concept experiment, we demonstrate optical multicast in the classification of 500 MNIST images with a 3-layer, fully-connected network. We also analyze the energy consumption of the DONN and find that digital optical data transfer is beneficial over electronics when the spacing of computational units is on the order of [Formula: see text]m.

Entities:  

Year:  2021        PMID: 33542343     DOI: 10.1038/s41598-021-82543-3

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  7 in total

1.  Optical matrix-matrix multiplier based on outer product decomposition.

Authors:  R A Athale; W C Collins
Journal:  Appl Opt       Date:  1982-06-15       Impact factor: 1.980

2.  Frequency-multiplexed and pipelined iterative optical systolic array processors.

Authors:  D Casasent; J Jackson; C P Neuman
Journal:  Appl Opt       Date:  1983-01-01       Impact factor: 1.980

3.  Optical matrix-matrix multiplication method demonstrated by the use of a multifocus hololens.

Authors:  Y Z Liang; H K Liu
Journal:  Opt Lett       Date:  1984-08-01       Impact factor: 3.776

4.  All-optical machine learning using diffractive deep neural networks.

Authors:  Xing Lin; Yair Rivenson; Nezih T Yardimci; Muhammed Veli; Yi Luo; Mona Jarrahi; Aydogan Ozcan
Journal:  Science       Date:  2018-07-26       Impact factor: 47.728

5.  High-accuracy optical convolution unit architecture for convolutional neural networks by cascaded acousto-optical modulator arrays.

Authors:  Shaofu Xu; Jing Wang; Rui Wang; Jiangping Chen; Weiwen Zou
Journal:  Opt Express       Date:  2019-07-08       Impact factor: 3.894

6.  Dermatologist-level classification of skin cancer with deep neural networks.

Authors:  Andre Esteva; Brett Kuprel; Roberto A Novoa; Justin Ko; Susan M Swetter; Helen M Blau; Sebastian Thrun
Journal:  Nature       Date:  2017-01-25       Impact factor: 49.962

7.  Human-level control through deep reinforcement learning.

Authors:  Volodymyr Mnih; Koray Kavukcuoglu; David Silver; Andrei A Rusu; Joel Veness; Marc G Bellemare; Alex Graves; Martin Riedmiller; Andreas K Fidjeland; Georg Ostrovski; Stig Petersen; Charles Beattie; Amir Sadik; Ioannis Antonoglou; Helen King; Dharshan Kumaran; Daan Wierstra; Shane Legg; Demis Hassabis
Journal:  Nature       Date:  2015-02-26       Impact factor: 49.962

  7 in total
  2 in total

1.  An optical neural network using less than 1 photon per multiplication.

Authors:  Tianyu Wang; Shi-Yuan Ma; Logan G Wright; Tatsuhiro Onodera; Brian C Richard; Peter L McMahon
Journal:  Nat Commun       Date:  2022-01-10       Impact factor: 14.919

2.  Harnessing optoelectronic noises in a photonic generative network.

Authors:  Changming Wu; Xiaoxuan Yang; Heshan Yu; Ruoming Peng; Ichiro Takeuchi; Yiran Chen; Mo Li
Journal:  Sci Adv       Date:  2022-01-21       Impact factor: 14.136

  2 in total

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