Model-free front-to-end training of a large high performance laser neural network
Anas Skalli, Satoshi Sunada, Mirko Goldmann, Marcin Gebski, Stephan, Reitzenstein, James A. Lott, Tomasz Czyszanowski, Daniel Brunner

TL;DR
This paper demonstrates a fully autonomous optical neural network using a multimode VCSEL, optimized with novel algorithms, achieving high accuracy and efficiency on the MNIST dataset with limited hardware resources.
Contribution
It introduces a scalable, high-performance, fully autonomous optical neural network with new hardware-compatible training algorithms and benchmarks their effectiveness.
Findings
Achieved high accuracy on MNIST with an optical neural network.
Developed and tested multiple optimization algorithms for in-situ training.
Demonstrated scalability and efficiency in hardware-constrained environments.
Abstract
Artificial neural networks (ANNs), have become ubiquitous and revolutionized many applications ranging from computer vision to medical diagnoses. However, they offer a fundamentally connectionist and distributed approach to computing, in stark contrast to classical computers that use the von Neumann architecture. This distinction has sparked renewed interest in developing unconventional hardware to support more efficient implementations of ANNs, rather than merely emulating them on traditional systems. Photonics stands out as a particularly promising platform, providing scalability, high speed, energy efficiency, and the ability for parallel information processing. However, fully realized autonomous optical neural networks (ONNs) with in-situ learning capabilities are still rare. In this work, we demonstrate a fully autonomous and parallel ONN using a multimode vertical cavity surface…
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Taxonomy
TopicsNeural Networks and Reservoir Computing · Semiconductor Lasers and Optical Devices · Photonic and Optical Devices
