Roadmap on material-function mapping for photonic-electronic hybrid neural networks

The state-of-the-art hardware in artificial neural networks is still affected by the same capacitive challenges known from electronic integrated circuits. Unlike other emerging electronic technologies, photonics provides low-delay interconnectivity suitable for node-distributed non-von Neumann archi...

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Main Authors: Mario Miscuglio, Gina C. Adam, Duygu Kuzum, Volker J. Sorger
Format: Article
Language:English
Published: AIP Publishing LLC 2019-10-01
Series:APL Materials
Online Access:http://dx.doi.org/10.1063/1.5109689
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author Mario Miscuglio
Gina C. Adam
Duygu Kuzum
Volker J. Sorger
author_facet Mario Miscuglio
Gina C. Adam
Duygu Kuzum
Volker J. Sorger
author_sort Mario Miscuglio
collection DOAJ
description The state-of-the-art hardware in artificial neural networks is still affected by the same capacitive challenges known from electronic integrated circuits. Unlike other emerging electronic technologies, photonics provides low-delay interconnectivity suitable for node-distributed non-von Neumann architectures, relying on dense node-to-node communication. Here, we provide a roadmap to pave the way for emerging hybridized photonic-electronic neural networks by taking a detailed look into a single node perceptron. We discuss how it can be realized in hybrid photonic-electronic heterogeneous technologies. Furthermore, we assess that electro-optic devices based on phase change or strong carrier dispersive effects could provide a viable path for both the perceptron “weights” and the nonlinear activation function in trained neural networks, while simultaneously being foundry process-near materials. This study also assesses the advantages of using nonlinear optical materials as efficient and instantaneous activation functions. We finally identify several challenges that, if solved, could accelerate the adoption of such heterogeneous integration strategies of emerging memory materials into integrated photonics platforms for near real-time responsive neural networks.
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spelling doaj.art-11814cf33036497fba97a9c0750b08042022-12-21T18:22:41ZengAIP Publishing LLCAPL Materials2166-532X2019-10-01710100903100903-1310.1063/1.5109689Roadmap on material-function mapping for photonic-electronic hybrid neural networksMario Miscuglio0Gina C. Adam1Duygu Kuzum2Volker J. Sorger3George Washington University, 800 22nd Street NW, Washington, DC 20052, USAGeorge Washington University, 800 22nd Street NW, Washington, DC 20052, USAUniversity of California, San Diego, Lo Jolla, California 92093, USAGeorge Washington University, 800 22nd Street NW, Washington, DC 20052, USAThe state-of-the-art hardware in artificial neural networks is still affected by the same capacitive challenges known from electronic integrated circuits. Unlike other emerging electronic technologies, photonics provides low-delay interconnectivity suitable for node-distributed non-von Neumann architectures, relying on dense node-to-node communication. Here, we provide a roadmap to pave the way for emerging hybridized photonic-electronic neural networks by taking a detailed look into a single node perceptron. We discuss how it can be realized in hybrid photonic-electronic heterogeneous technologies. Furthermore, we assess that electro-optic devices based on phase change or strong carrier dispersive effects could provide a viable path for both the perceptron “weights” and the nonlinear activation function in trained neural networks, while simultaneously being foundry process-near materials. This study also assesses the advantages of using nonlinear optical materials as efficient and instantaneous activation functions. We finally identify several challenges that, if solved, could accelerate the adoption of such heterogeneous integration strategies of emerging memory materials into integrated photonics platforms for near real-time responsive neural networks.http://dx.doi.org/10.1063/1.5109689
spellingShingle Mario Miscuglio
Gina C. Adam
Duygu Kuzum
Volker J. Sorger
Roadmap on material-function mapping for photonic-electronic hybrid neural networks
APL Materials
title Roadmap on material-function mapping for photonic-electronic hybrid neural networks
title_full Roadmap on material-function mapping for photonic-electronic hybrid neural networks
title_fullStr Roadmap on material-function mapping for photonic-electronic hybrid neural networks
title_full_unstemmed Roadmap on material-function mapping for photonic-electronic hybrid neural networks
title_short Roadmap on material-function mapping for photonic-electronic hybrid neural networks
title_sort roadmap on material function mapping for photonic electronic hybrid neural networks
url http://dx.doi.org/10.1063/1.5109689
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