Since recent years artificial intelligence and more particularly neural networks play a major role in our technological societies.Nevertheless, neural networks still remain emulated by traditional computers, resulting in challenging problems such as parallelization, energy efficiency and potentially speed.A change of paradigm is desirable but implementing neural networks in hardware is a non-trivial challenge.One promising avenue is optical neural networks, potentially avoiding parallelization bottlenecks.We experimentally implemented the first system where nodes and connections are implemented in parallel hardware, and we exploit our novel system for unique experiments.The electro-optical neural network is composed of up to 961 neurons.Con...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
Since recent years artificial intelligence and more particularly neural networks play a major role i...
Depuis ces dernières années, l'intelligence artificielle et plus particulièrement les réseaux de neu...
Depuis ces dernières années, l'intelligence artificielle et plus particulièrement les réseaux de neu...
Photonic networks with high performance can be considered as substrates for future computing systems...
Photonic networks with high performance can be considered as substrates for future computing systems...
Photonic networks with high performance can be considered as substrates for future computing systems...
Les réseaux photoniques à haute performance peuvent être considérés comme des supports pour les futu...
The explosive growth of computation and energy cost of artificial intelligence has spurred strong in...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
Since recent years artificial intelligence and more particularly neural networks play a major role i...
Depuis ces dernières années, l'intelligence artificielle et plus particulièrement les réseaux de neu...
Depuis ces dernières années, l'intelligence artificielle et plus particulièrement les réseaux de neu...
Photonic networks with high performance can be considered as substrates for future computing systems...
Photonic networks with high performance can be considered as substrates for future computing systems...
Photonic networks with high performance can be considered as substrates for future computing systems...
Les réseaux photoniques à haute performance peuvent être considérés comme des supports pour les futu...
The explosive growth of computation and energy cost of artificial intelligence has spurred strong in...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
Photonic neural network implementation has been gaining considerable attention as a potentially disr...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
The generalization performance of deep neural networks comes from their ability to learn, which requ...
The generalization performance of deep neural networks comes from their ability to learn, which requ...