International audienceDifferent neural network models have been proposed to design efficient associative memories like Hopfield networks, Boltzmann machines or Cogent confabulation. Compared to the classical models, Encoded Neural Network (ENN) is a recently introduced formalism with a proven higher efficiency. This model has been improved through different contributions like Clone-based ENN (CbNNs) or Sparse ENNs (S-ENNs) which enhance either the capacity of the original ENN or its retrieving performances. However, only very few works explored its hardware implementation for embedded applications.In this paper, we introduce a clone-based sparse neural network model (SC-ENN), that gathers the enhancements of the existing approaches in a sin...
This thesis presents a few methods to accelerate the inference of Deep Neural Networks that are lar...
Recently, sparse training methods have started to be established as a de facto approach for training...
International audienceA variety of algorithms, store content in such a way that it can be later retr...
International audienceDifferent neural network models have been proposed to design efficient associa...
International audienceIn this paper, we introduce a neural network model named Clone based Neural Ne...
International audienceAssociative memories are alternatives to indexed memories that when implemente...
International audienceAssociative memories retrieve stored information given partial or erroneous in...
Deep Neural Networks (DNNs) have achieved unprecedented success in various applications like autonom...
For a number of years, artificial neural networks have been used for a variety of applications to au...
International audienceAssociative memories retrieve stored information given partial or erroneous in...
Deep learning techniques have been gaining prominence in the research world in the past years, howev...
International audienceArtificial neural networks are used in various domains like computer science a...
Artificial neural networks (ANNs) have emerged as hot topics in the research community. Despite the ...
This thesis presents a few methods to accelerate the inference of Deep Neural Networks that are lar...
Recently, sparse training methods have started to be established as a de facto approach for training...
International audienceA variety of algorithms, store content in such a way that it can be later retr...
International audienceDifferent neural network models have been proposed to design efficient associa...
International audienceIn this paper, we introduce a neural network model named Clone based Neural Ne...
International audienceAssociative memories are alternatives to indexed memories that when implemente...
International audienceAssociative memories retrieve stored information given partial or erroneous in...
Deep Neural Networks (DNNs) have achieved unprecedented success in various applications like autonom...
For a number of years, artificial neural networks have been used for a variety of applications to au...
International audienceAssociative memories retrieve stored information given partial or erroneous in...
Deep learning techniques have been gaining prominence in the research world in the past years, howev...
International audienceArtificial neural networks are used in various domains like computer science a...
Artificial neural networks (ANNs) have emerged as hot topics in the research community. Despite the ...
This thesis presents a few methods to accelerate the inference of Deep Neural Networks that are lar...
Recently, sparse training methods have started to be established as a de facto approach for training...
International audienceA variety of algorithms, store content in such a way that it can be later retr...