The basic processing units in brain are neurons and synapses that are interconnected in a complex pattern and show many surprised information processing capabilities. The researchers attempt to mimic this efficiency and build artificial neural systems in hardware device to emulate the key information processing principles of the brain. However, the neural network hardware system has a challenge of interconnecting neurons and synapses efficiently. An efficient, low-cost routing architecture (ELRA) is proposed in this paper to provide a communication infrastructure for the hardware spiking neuron networks (SNN). A dynamic traffic arbitration strategy is employed in ELRA, where the traffic status weights of input ports are calculated in real-t...
This thesis presents a design to route the spikes in a cognitive computing project called Systems of...
This paper evaluates a self-organizing routing protocol for ad hoc network, called the neuron routin...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
The basic processing units in brain are neurons and synapses that are interconnected in a complex p...
A novel low cost interconnected architecture (LCIA) is proposed in this paper, which is an efficient...
Spiking Neural Network (SNN) is the most recent computa tional model that can emulate the behaviors ...
One of the challenges of neuromorphic computing is efficiently routing spikes from neurons to their ...
Simulating large spiking neural networks (SNN) with a high level ofrealism in a field programmable g...
Abstract—Progress in VLSI technologies is enabling the inte-gration of large numbers of spiking neur...
With the continuous development of deep learning, the scientific community continues to propose new ...
A reconfigurable network architecture applied to spik-ing neural networks is presented. For hardware...
Power density constraints and processor reliability concerns are causing energy efficient processor ...
Neural networks have shown promise as new computation tools for solving constrained optimization pro...
Abstract—SpiNNaker is a hardware-based massively-parallel real-time universal neural network simulat...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
This thesis presents a design to route the spikes in a cognitive computing project called Systems of...
This paper evaluates a self-organizing routing protocol for ad hoc network, called the neuron routin...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
The basic processing units in brain are neurons and synapses that are interconnected in a complex p...
A novel low cost interconnected architecture (LCIA) is proposed in this paper, which is an efficient...
Spiking Neural Network (SNN) is the most recent computa tional model that can emulate the behaviors ...
One of the challenges of neuromorphic computing is efficiently routing spikes from neurons to their ...
Simulating large spiking neural networks (SNN) with a high level ofrealism in a field programmable g...
Abstract—Progress in VLSI technologies is enabling the inte-gration of large numbers of spiking neur...
With the continuous development of deep learning, the scientific community continues to propose new ...
A reconfigurable network architecture applied to spik-ing neural networks is presented. For hardware...
Power density constraints and processor reliability concerns are causing energy efficient processor ...
Neural networks have shown promise as new computation tools for solving constrained optimization pro...
Abstract—SpiNNaker is a hardware-based massively-parallel real-time universal neural network simulat...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
This thesis presents a design to route the spikes in a cognitive computing project called Systems of...
This paper evaluates a self-organizing routing protocol for ad hoc network, called the neuron routin...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...