Neuromorphic hardware, the new generation of non-von Neumann computing system, implements spiking neurons and synapses to spiking neural network (SNN)-based applications. The energy-efficient property makes the neuromorphic hardware suitable for power-constrained environments where sensors and edge nodes of the internet of things (IoT) work. The mapping of SNNs onto neuromorphic hardware is challenging because a non-optimized mapping may result in a high network-on-chip (NoC) latency and energy consumption. In this paper, we propose NeuMap, a simple and fast toolchain, to map SNNs onto the multicore neuromorphic hardware. NeuMap first obtains the communication patterns of an SNN by calculation that simplifies the mapping process. Then, NeuM...
To realize a large-scale Spiking Neural Network (SNN) on hardware for mobile applications, area and ...
Despite the highly promising advances in Machine Learning (ML) and Deep Learning (DL) in recent year...
The nowadays' availability of neural networks designed on power-efficient neuromorphic computing arc...
Neuromorphic processors, the new generation of brain-inspired non-von Neumann computing systems, are...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
none4noIn this paper, we propose a methodology for efficiently mapping concurrent applications over ...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
Driven by the massive application of Internet of Things (IoT), embedded system and Cyber Physical Sy...
It is believed that neuromorphic hardware will accelerate neuroscience research and enable the next ...
Neuromorphic computing utilizes spiking neural networks (SNNs) to offer power/energy-efficient solut...
Neuromorphic computing tries to model in hardware the biological brain which is adept at operating i...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
International audienceInspired from the brain, neuromorphic computing would be the right alternative...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...
To realize a large-scale Spiking Neural Network (SNN) on hardware for mobile applications, area and ...
Despite the highly promising advances in Machine Learning (ML) and Deep Learning (DL) in recent year...
The nowadays' availability of neural networks designed on power-efficient neuromorphic computing arc...
Neuromorphic processors, the new generation of brain-inspired non-von Neumann computing systems, are...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
none4noIn this paper, we propose a methodology for efficiently mapping concurrent applications over ...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
Driven by the massive application of Internet of Things (IoT), embedded system and Cyber Physical Sy...
It is believed that neuromorphic hardware will accelerate neuroscience research and enable the next ...
Neuromorphic computing utilizes spiking neural networks (SNNs) to offer power/energy-efficient solut...
Neuromorphic computing tries to model in hardware the biological brain which is adept at operating i...
In this paper, we present a methodology for effi-ciently mapping neural networks over a neuromorphic...
International audienceInspired from the brain, neuromorphic computing would be the right alternative...
The capabilities of natural neural systems have inspired new generations of machine learning algorit...
To realize a large-scale Spiking Neural Network (SNN) on hardware for mobile applications, area and ...
Despite the highly promising advances in Machine Learning (ML) and Deep Learning (DL) in recent year...
The nowadays' availability of neural networks designed on power-efficient neuromorphic computing arc...