Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of dynamical regimes. We use this richness to implement reservoir computing, a processing concept in machine learning. In this paper we demonstrate the proof of principle on an electronic system, however the approach is readily transferable to photonics, promising fast and computationally efficient all-optical processing. Using only one single node with delayed feedback instead of an entire network of nodes, we succeed in obtaining state-of-the-art results on benchmarks such as spoken digit recognition and system identification
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Reservoir computing is a recently introduced, highly efficient bio-inspired approach for processing ...
Tutor: Pere Colet.In the current thesis we experimentally study the dynamics of complex photonic sys...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
International audienceMany information processing challenges are difficult to solve with traditional...
Today, except for mathematical operations, our brain functions much faster and more efficient than a...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
International audienceWe review a novel paradigm that has emerged in analogue neuromorphic optical c...
Photonic implementations of reservoir computing (RC) have been receiving considerable attention due ...
Nonlinear photonic delay systems present interesting implementation platforms for machine learning m...
Currently, multiple photonic reservoir computing systems show great promise for providing a practica...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...
We study the role of the system response time in the computational capacity of delay-based reservoir...
Driven by the remarkable breakthroughs during the past decade, photonics neural networks have experi...
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Reservoir computing is a recently introduced, highly efficient bio-inspired approach for processing ...
Tutor: Pere Colet.In the current thesis we experimentally study the dynamics of complex photonic sys...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
International audienceMany information processing challenges are difficult to solve with traditional...
Today, except for mathematical operations, our brain functions much faster and more efficient than a...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
International audienceWe review a novel paradigm that has emerged in analogue neuromorphic optical c...
Photonic implementations of reservoir computing (RC) have been receiving considerable attention due ...
Nonlinear photonic delay systems present interesting implementation platforms for machine learning m...
Currently, multiple photonic reservoir computing systems show great promise for providing a practica...
Reservoir computing is a recent approach from the fields of machine learning and artificial neural n...
We study the role of the system response time in the computational capacity of delay-based reservoir...
Driven by the remarkable breakthroughs during the past decade, photonics neural networks have experi...
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Reservoir computing is a recently introduced, highly efficient bio-inspired approach for processing ...
Tutor: Pere Colet.In the current thesis we experimentally study the dynamics of complex photonic sys...