In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Network on parallel neuromorphic platforms. This methodology improves scalability/reliability of Spiking Neural Network (SNN) simulations on many-core and densely interconnected platforms. SNNs mimic brain activity by emulating spikes sent between neuron populations. Many-core platforms are emerging computing targets that aim to achieve real-time SNN simulations. Neurons are mapped to parallel cores, and spikes are sent in the form of packets over the on-chip and off-chip network. However, the activity of neuron populations is heterogeneous and complex. Thus, achieving an efficient exploitation of platform resources is a challenge that often af...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
In this paper, we evaluate a partitioning and placement technique for mapping concurrent application...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
In this paper, we propose a methodology for efficiently mapping concurrent applications over a globa...
In this paper, we propose a methodology for efficiently mapping concurrent applications over a globa...
In this poster, we present a top-down methodology aimed at evaluating the scalability of Spiking Neu...
none4noIn this paper, we propose a methodology for efficiently mapping concurrent applications over ...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
In this paper, we evaluate a partitioning and placement technique for mapping concurrent application...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper we present a top-down methodology aimed at evaluating the scalability of Spiking Neura...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
In this paper, we propose a methodology for efficiently mapping concurrent applications over a globa...
In this paper, we propose a methodology for efficiently mapping concurrent applications over a globa...
In this poster, we present a top-down methodology aimed at evaluating the scalability of Spiking Neu...
none4noIn this paper, we propose a methodology for efficiently mapping concurrent applications over ...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
In this paper, we evaluate a partitioning and placement technique for mapping concurrent application...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...