International audienceClique-based neural networks implement low- complexity functions working with a reduced connectivity be- tween neurons. Thus, they address very specific applications operating with a very low energy budget. This paper proposes a flexible and iterative neural architecture able to implement multiple types of clique-based neural networks of up to 3968 neurons. The circuit has been integrated in a ST 65-nm CMOS ASIC and validated in the context of ECG classification. The network core reacts in 83ns to a stimulation and occupies a 0.21mm 2 silicon area
Recently, artificial intelligence (AI) systems gain an increasing popularity and their development i...
Two alternative ways are presented for creating dedicated neural hardware realization based on pulse...
Hardware implementations of spiking neural networks offer promising solutions for a wide set of task...
International audienceClique-based neural networks implement low- complexity functions working with ...
International audienceClique-based neural networks are less complex than commonly used neural networ...
International audienceClique-based neural networks are less complex than commonly used neural networ...
International audienceEncoded Neural Networks (ENN) associate lowcomplexity algorithm with a storage...
International audienceAs Moore's law reaches its end, traditional computing technology based on the ...
International audienceEncoded Neural Networks (ENNs) associate lowcomplexity algorithm with a storag...
International audienceBody area sensor networks hold the promise of more efficient and cheaper medic...
Conventional techniques of off-chip processing for wearable devices cause high hardware resource usa...
Indiveri G, Chicca E. A VLSI neuromorphic device for implementing spike-based neural networks. Prese...
To realize a large-scale Spiking Neural Network (SNN) on hardware for mobile applications, area and ...
Abstract—Hardware implementations of spiking neural net-works offer promising solutions for a wide s...
Neuromorphic computing has become an emerging field in wide range of applications. Its challenge lie...
Recently, artificial intelligence (AI) systems gain an increasing popularity and their development i...
Two alternative ways are presented for creating dedicated neural hardware realization based on pulse...
Hardware implementations of spiking neural networks offer promising solutions for a wide set of task...
International audienceClique-based neural networks implement low- complexity functions working with ...
International audienceClique-based neural networks are less complex than commonly used neural networ...
International audienceClique-based neural networks are less complex than commonly used neural networ...
International audienceEncoded Neural Networks (ENN) associate lowcomplexity algorithm with a storage...
International audienceAs Moore's law reaches its end, traditional computing technology based on the ...
International audienceEncoded Neural Networks (ENNs) associate lowcomplexity algorithm with a storag...
International audienceBody area sensor networks hold the promise of more efficient and cheaper medic...
Conventional techniques of off-chip processing for wearable devices cause high hardware resource usa...
Indiveri G, Chicca E. A VLSI neuromorphic device for implementing spike-based neural networks. Prese...
To realize a large-scale Spiking Neural Network (SNN) on hardware for mobile applications, area and ...
Abstract—Hardware implementations of spiking neural net-works offer promising solutions for a wide s...
Neuromorphic computing has become an emerging field in wide range of applications. Its challenge lie...
Recently, artificial intelligence (AI) systems gain an increasing popularity and their development i...
Two alternative ways are presented for creating dedicated neural hardware realization based on pulse...
Hardware implementations of spiking neural networks offer promising solutions for a wide set of task...