An optically accelerated extreme learning machine using hot atomic vapors
Machine learning is becoming a widely used technique with a impressive growth due to the diversity of problem of societal interest where it can offer practical solutions. This increase of applications and required resources start to become limited by present day hardware technologies. Indeed, novel...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
06.09.2024
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Subjects | |
Online Access | Get full text |
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Summary: | Machine learning is becoming a widely used technique with a impressive growth
due to the diversity of problem of societal interest where it can offer
practical solutions. This increase of applications and required resources start
to become limited by present day hardware technologies. Indeed, novel machine
learning subjects such as large language models or high resolution image
recognition raise the question of large computing time and energy cost of the
required computation. In this context, optical platforms have been designed for
several years with the goal of developing more efficient hardware for machine
learning. Among different explored platforms, optical free-space propagation
offers various advantages: parallelism, low energy cost and computational
speed. Here, we present a new design combining the strong and tunable nonlinear
properties of a light beam propagating through a hot atomic vapor with an
Extreme Learning Machine model. We numerically and experimentally demonstrate
the enhancement of the training using such free-space nonlinear propagation on
a MNIST image classification task. We point out different experimental
hyperparameters that can be further optimized to improve the accuracy of the
platform. |
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DOI: | 10.48550/arxiv.2409.04312 |