Nonlinear optical feature generator for machine learning

Author:

Yildirim Mustafa1ORCID,Oguz Ilker1ORCID,Kaufmann Fabian2ORCID,Escalé Marc Reig3ORCID,Grange Rachel2ORCID,Psaltis Demetri4ORCID,Moser Christophe1ORCID

Affiliation:

1. Laboratory of Applied Photonics Devices, Ecole Polytechnique Fédérale de Lausanne (EPFL) 1 , Lausanne, Switzerland

2. Optical Nanomaterial Group, Institute for Quantum Electronics, Department of Physics, ETH Zurich 2 , Zurich, Switzerland

3. Versics AG 3 , Auguste-Piccard-Hof 1, HPT building, 8093 Zurich, Switzerland

4. Optics Laboratory, Ecole Polytechnique Fédérale de Lausanne (EPFL) 4 , Lausanne, Switzerland

Abstract

Modern machine learning models use an ever-increasing number of parameters to train (175 × 109 parameters for GPT-3) with large datasets to achieve better performance. Optical computing has been rediscovered as a potential solution for large-scale data processing, taking advantage of linear optical accelerators that perform operations at lower power consumption. However, to achieve efficient computing with light, it remains a challenge to create and control nonlinearity optically rather than electronically. In this study, a reservoir computing approach (RC) is investigated using a 14-mm waveguide in LiNbO3 on an insulator as an optical processor to validate the benefit of optical nonlinearity. Data are encoded on the spectrum of a femtosecond pulse, which is launched into the waveguide. The output of the waveguide is a nonlinear transform of the input, enabled by optical nonlinearities. We show experimentally that a simple digital linear classifier using the output spectrum of the waveguide increases the classification accuracy of several databases by ∼10% compared to untransformed data. In comparison, a digital neural network (NN) with tens of thousands of parameters was required to achieve similar accuracy. With the ability to reduce the number of parameters by a factor of at least 20, an integrated optical RC approach can attain a performance on a par with a digital NN.

Funder

Horizon 2020 Framework Program

Swiss National Science Foundation

Swiss National Science Foundation - Sinergia

Publisher

AIP Publishing

Subject

Computer Networks and Communications,Atomic and Molecular Physics, and Optics

Reference36 articles.

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