Reinforcement Learning in a large scale photonic Recurrent Neural Network

November 14, 2017 ยท Declared Dead ยท ๐Ÿ› Optica

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Authors Julian Bueno, Sheler Maktoobi, Luc Froehly, Ingo Fischer, Maxime Jacquot, Laurent Larger, Daniel Brunner arXiv ID 1711.05133 Category cs.NE: Neural & Evolutionary Cross-listed physics.optics Citations 310 Venue Optica Last Checked 2 months ago
Abstract
Photonic Neural Network implementations have been gaining considerable attention as a potentially disruptive future technology. Demonstrating learning in large scale neural networks is essential to establish photonic machine learning substrates as viable information processing systems. Realizing photonic Neural Networks with numerous nonlinear nodes in a fully parallel and efficient learning hardware was lacking so far. We demonstrate a network of up to 2500 diffractively coupled photonic nodes, forming a large scale Recurrent Neural Network. Using a Digital Micro Mirror Device, we realize reinforcement learning. Our scheme is fully parallel, and the passive weights maximize energy efficiency and bandwidth. The computational output efficiently converges and we achieve very good performance.
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