We present an efficient and scalable partitioning method for mapping large-scale neural network models with locally dense and globally sparse connectivity onto reconfigurable neuromorphic hardware. Scalability in computational efficiency, i.e., amount of time spent in actual computation, remains a huge challenge in very large networks. Most partitioning algorithms also struggle to address the scalability in network workloads in finding a globally optimal partition and efficiently mapping onto hardware. As communication is regarded as the most energy and time-consuming part of such distributed processing, the partitioning framework is optimized for compute-balanced, memory-efficient parallel processing targeting low-latency execution and den...
As recent neural networks are being improved to be more accurate, their model's size is exponentiall...
After theory and experimentation, modelling and simulation is regarded as the third pillar of scienc...
In recent years, neural networks have seen increased interest from both the cognitive computing and ...
Neuromorphic computing aims to emulate the highly adaptive and efficient processing of the biologica...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
This chapter is a white paper describing a platform for scaled-up neuromorphic systems to ‘human bra...
Recent advances in the development of data structures to represent spiking neuron network models ena...
Abstract—Progress in VLSI technologies is enabling the inte-gration of large numbers of spiking neur...
State-of-the-art software tools for neuronal network simulations scale to the largest computing syst...
Biological neuronal networks models can be investigated with the NEST simulator (Gewaltig and Diesma...
The development of high-performance simulation software is crucial for studying the brain connectome...
In this paper, we evaluate a partitioning and placement technique for mapping concurrent application...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Thanks to their non-volatile and multi-bit properties, memristors have been extensively used as syna...
With the emergence of new high performance computation technology in the last decade, the simulation...
As recent neural networks are being improved to be more accurate, their model's size is exponentiall...
After theory and experimentation, modelling and simulation is regarded as the third pillar of scienc...
In recent years, neural networks have seen increased interest from both the cognitive computing and ...
Neuromorphic computing aims to emulate the highly adaptive and efficient processing of the biologica...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
This chapter is a white paper describing a platform for scaled-up neuromorphic systems to ‘human bra...
Recent advances in the development of data structures to represent spiking neuron network models ena...
Abstract—Progress in VLSI technologies is enabling the inte-gration of large numbers of spiking neur...
State-of-the-art software tools for neuronal network simulations scale to the largest computing syst...
Biological neuronal networks models can be investigated with the NEST simulator (Gewaltig and Diesma...
The development of high-performance simulation software is crucial for studying the brain connectome...
In this paper, we evaluate a partitioning and placement technique for mapping concurrent application...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Thanks to their non-volatile and multi-bit properties, memristors have been extensively used as syna...
With the emergence of new high performance computation technology in the last decade, the simulation...
As recent neural networks are being improved to be more accurate, their model's size is exponentiall...
After theory and experimentation, modelling and simulation is regarded as the third pillar of scienc...
In recent years, neural networks have seen increased interest from both the cognitive computing and ...