High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification
Reservoir computing, originally referred to as an echo state network or a liquid state machine, is a brain-inspired paradigm for processing temporal information. It involves learning a “read-out” interpretation for nonlinear transients developed by high-dimensional dynamics when the latter is excite...
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Series: | Physical Review X |
Online Access: | http://doi.org/10.1103/PhysRevX.7.011015 |
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doaj-2fba3c6d12de412ca034d2d4143f04d22020-11-24T23:40:51ZengAmerican Physical SocietyPhysical Review X2160-33082017-02-017101101510.1103/PhysRevX.7.011015High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second ClassificationLaurent LargerAntonio Baylón-FuentesRomain MartinenghiVladimir S. UdaltsovYanne K. ChemboMaxime JacquotReservoir computing, originally referred to as an echo state network or a liquid state machine, is a brain-inspired paradigm for processing temporal information. It involves learning a “read-out” interpretation for nonlinear transients developed by high-dimensional dynamics when the latter is excited by the information signal to be processed. This novel computational paradigm is derived from recurrent neural network and machine learning techniques. It has recently been implemented in photonic hardware for a dynamical system, which opens the path to ultrafast brain-inspired computing. We report on a novel implementation involving an electro-optic phase-delay dynamics designed with off-the-shelf optoelectronic telecom devices, thus providing the targeted wide bandwidth. Computational efficiency is demonstrated experimentally with speech-recognition tasks. State-of-the-art speed performances reach one million words per second, with very low word error rate. Additionally, to record speed processing, our investigations have revealed computing-efficiency improvements through yet-unexplored temporal-information-processing techniques, such as simultaneous multisample injection and pitched sampling at the read-out compared to information “write-in”.http://doi.org/10.1103/PhysRevX.7.011015 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Laurent Larger Antonio Baylón-Fuentes Romain Martinenghi Vladimir S. Udaltsov Yanne K. Chembo Maxime Jacquot |
spellingShingle |
Laurent Larger Antonio Baylón-Fuentes Romain Martinenghi Vladimir S. Udaltsov Yanne K. Chembo Maxime Jacquot High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification Physical Review X |
author_facet |
Laurent Larger Antonio Baylón-Fuentes Romain Martinenghi Vladimir S. Udaltsov Yanne K. Chembo Maxime Jacquot |
author_sort |
Laurent Larger |
title |
High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification |
title_short |
High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification |
title_full |
High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification |
title_fullStr |
High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification |
title_full_unstemmed |
High-Speed Photonic Reservoir Computing Using a Time-Delay-Based Architecture: Million Words per Second Classification |
title_sort |
high-speed photonic reservoir computing using a time-delay-based architecture: million words per second classification |
publisher |
American Physical Society |
series |
Physical Review X |
issn |
2160-3308 |
publishDate |
2017-02-01 |
description |
Reservoir computing, originally referred to as an echo state network or a liquid state machine, is a brain-inspired paradigm for processing temporal information. It involves learning a “read-out” interpretation for nonlinear transients developed by high-dimensional dynamics when the latter is excited by the information signal to be processed. This novel computational paradigm is derived from recurrent neural network and machine learning techniques. It has recently been implemented in photonic hardware for a dynamical system, which opens the path to ultrafast brain-inspired computing. We report on a novel implementation involving an electro-optic phase-delay dynamics designed with off-the-shelf optoelectronic telecom devices, thus providing the targeted wide bandwidth. Computational efficiency is demonstrated experimentally with speech-recognition tasks. State-of-the-art speed performances reach one million words per second, with very low word error rate. Additionally, to record speed processing, our investigations have revealed computing-efficiency improvements through yet-unexplored temporal-information-processing techniques, such as simultaneous multisample injection and pitched sampling at the read-out compared to information “write-in”. |
url |
http://doi.org/10.1103/PhysRevX.7.011015 |
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