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Ingo Fischer

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Instituto de Física Interdisciplinar y Sistemas Complejos, IFISC

Experimental demonstration of bandwidth enhancement in photonic time delay reservoir computing

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Jan 11, 2023
Irene Estebanez, Apostolos Argyris, Ingo Fischer

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Learning unseen coexisting attractors

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Jul 28, 2022
Daniel J. Gauthier, Ingo Fischer, André Röhm

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Inferring untrained complex dynamics of delay systems using an adapted echo state network

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Nov 05, 2021
Mirko Goldmann, Claudio R. Mirasso, Ingo Fischer, Miguel C. Soriano

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Model-free inference of unseen attractors: Reconstructing phase space features from a single noisy trajectory using reservoir computing

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Aug 06, 2021
André Röhm, Daniel J. Gauthier, Ingo Fischer

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56 GBaud PAM-4 100 km Transmission System with Photonic Processing Schemes

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May 17, 2021
Irene Estébanez, Shi Li, Janek Schwind, Ingo Fischer, Stephan Pachnicke, Apostolos Argyris

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Deep Learning with a Single Neuron: Folding a Deep Neural Network in Time using Feedback-Modulated Delay Loops

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Nov 19, 2020
Florian Stelzer, André Röhm, Raul Vicente, Ingo Fischer, Serhiy Yanchuk

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Reinforcement Learning in a large scale photonic Recurrent Neural Network

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Nov 15, 2017
Julian Bueno, Sheler Maktoobi, Luc Froehly, Ingo Fischer, Maxime Jacquot, Laurent Larger, Daniel Brunner

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Photonic Delay Systems as Machine Learning Implementations

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Jan 12, 2015
Michiel Hermans, Miguel Soriano, Joni Dambre, Peter Bienstman, Ingo Fischer

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