Neural networks are currently implemented on digital Von Neumann machines, which do not fully leverage their intrinsic parallelism. We demonstrate how to use a novel class of reconfigurable dynamical systems for analogue information processing, mitigating this problem. Our generic hardware platform for dynamic, analogue computing consists of a reciprocal linear dynamical system with nonlinear feedback. Thanks to reciprocity, a ubiquitous property of many physical phenomena like the propagation of light and sound, the error backpropagation-a crucial step for tuning such systems towards a specific task-can happen in hardware. This can potentially speed up the optimization process significantly, offering important benefits for the scalability ...
International audienceWe report on the experimental demonstration of a hybrid optoelectronic neuromo...
The human brain has the capability to organize the neurons (experience-adapted connections) to perfo...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
Machine learning algorithms, and more in par-ticular neural networks, arguably experience a revoluti...
Nonlinear photonic delay systems present interesting implementation platforms for machine learning m...
For many challenging problems where the mathematical description is not explicitly defined, artifici...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Reservoir Computing (RC) is a currently emerging new brain-inspired computational paradigm, which ap...
Delay-coupled optoelectronic systems form promising candidates to act as powerful information proces...
Delay-coupled electro-optical systems have received much attention for their dynamical properties an...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
Nowadays most of computers are still based on concepts developed more than 60 years ago by Alan Turi...
The interplay between randomness and optimization has always been a major theme in the design of neu...
International audienceWe report on the experimental demonstration of a hybrid optoelectronic neuromo...
The human brain has the capability to organize the neurons (experience-adapted connections) to perfo...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
Machine learning algorithms, and more in par-ticular neural networks, arguably experience a revoluti...
Nonlinear photonic delay systems present interesting implementation platforms for machine learning m...
For many challenging problems where the mathematical description is not explicitly defined, artifici...
This work addresses neural and analog computation on reconfigurable mixed-signal platforms. Many eng...
Reservoir Computing (RC) is a currently emerging new brain-inspired computational paradigm, which ap...
Delay-coupled optoelectronic systems form promising candidates to act as powerful information proces...
Delay-coupled electro-optical systems have received much attention for their dynamical properties an...
AbstractUseful computation can be performed by systematically exploiting the phenomenology of nonlin...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
Nowadays most of computers are still based on concepts developed more than 60 years ago by Alan Turi...
The interplay between randomness and optimization has always been a major theme in the design of neu...
International audienceWe report on the experimental demonstration of a hybrid optoelectronic neuromo...
The human brain has the capability to organize the neurons (experience-adapted connections) to perfo...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...