Multicore neuromorphic platforms come with a custom library for efficient development of neural network simulations. While these architectures are mainly focused on realtime biological network simulation using detailed neuron models, their application to a wider range of computational tasks is increasing. The reason is their effective support for parallel computation characterised by an intensive communication among processing nodes and their inherent energy efficiency. However, to unlock the full potential of these architectures for a wide range of applications, a library support for a more general computational model has to be developed. This work focuses on the implementation of a standard MPI interface for parallel programming of neurom...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
Multicore neuromorphic platforms come with a custom library for efficient development of neural netw...
SpiNNaker is a neuromorphic globally asynchronous locally synchronous (GALS)multi-core architecture ...
Neuroscience is witnessing increasing knowledge about the anatomy and electrophysiological propertie...
NEURON along with other systems simulators is increasingly being used to simulate neural systems whe...
At present there is a strong interest in the research community to develop large scale implementatio...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
The design of a new high-performance computing platform to model biological neural networks requires...
At present there is a strong interest in the research community to develop large scale implementatio...
In the recent year of artificial intelligence and spintronics memory device technology advancement, ...
Accelerated mixed-signal neuromorphic hardware presents a promising approach to overcome run time an...
Neuromorphic architectures are emerging not only for real-time simulation of brain-scale biological ...
SpiNNaker is a neuromorphic hardware platform, especially designed for the simulation of Spiking Neu...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...
Multicore neuromorphic platforms come with a custom library for efficient development of neural netw...
SpiNNaker is a neuromorphic globally asynchronous locally synchronous (GALS)multi-core architecture ...
Neuroscience is witnessing increasing knowledge about the anatomy and electrophysiological propertie...
NEURON along with other systems simulators is increasingly being used to simulate neural systems whe...
At present there is a strong interest in the research community to develop large scale implementatio...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
The design of a new high-performance computing platform to model biological neural networks requires...
At present there is a strong interest in the research community to develop large scale implementatio...
In the recent year of artificial intelligence and spintronics memory device technology advancement, ...
Accelerated mixed-signal neuromorphic hardware presents a promising approach to overcome run time an...
Neuromorphic architectures are emerging not only for real-time simulation of brain-scale biological ...
SpiNNaker is a neuromorphic hardware platform, especially designed for the simulation of Spiking Neu...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
In this paper we present a new Partitioning and Placement methodology able to maps Spiking Neural Ne...