Abstract—Configuring a million-core parallel system at boot time is a difficult process when the system has neither spe-cialised hardware support for the configuration process nor a preconfigured default state that puts it in operating condition. SpiNNaker is a parallel Chip Multiprocessor (CMP) system for neural network (NN) simulation. Where most large CMP systems feature a sideband network to complete the boot process, SpiNNaker has a single homogeneous network interconnect for both application inter-processor communications and system control functions such as boot load and run-time user-system interaction. This network improves fault tolerance and makes it easier to support dynamic run-time reconfiguration, however, it requires a boot ...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract. Large-scale neural simulation virtually necessitates dedicated hardware with on-chip learn...
Abstract Neural networks present a fundamentally different model of computation from the conventiona...
Abstract — The SpiNNaker massively parallel GALS system has been designed to support large-scale sim...
Abstract. The SpiNNaker Chip-multiprocessor (CMP) system is a novel SoC architecture, designed speci...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract. The SpiNNaker massively parallel Chip-multiprocessor (CMP) system1 is a novel SoC architec...
Abstract — Neural networks present a fundamentally different model of computation from conventional ...
Neuromorphic architectures are emerging not only for real-time simulation of brain-scale biological ...
SpiNNaker (Spiking Neural Network Architecture) is a specialized computing engine, intended for real...
Abstract—The modelling of large systems of spiking neurons is computationally very demanding in term...
The design of a new high-performance computing platform to model biological neural networks requires...
In this paper, we present a new network protocol and methodology to enhance the configuration phase ...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract. Large-scale neural simulation virtually necessitates dedicated hardware with on-chip learn...
Abstract Neural networks present a fundamentally different model of computation from the conventiona...
Abstract — The SpiNNaker massively parallel GALS system has been designed to support large-scale sim...
Abstract. The SpiNNaker Chip-multiprocessor (CMP) system is a novel SoC architecture, designed speci...
Abstract — SpiNNaker is a massively-parallel neuromorphic computing architecture designed to model v...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract. The SpiNNaker massively parallel Chip-multiprocessor (CMP) system1 is a novel SoC architec...
Abstract — Neural networks present a fundamentally different model of computation from conventional ...
Neuromorphic architectures are emerging not only for real-time simulation of brain-scale biological ...
SpiNNaker (Spiking Neural Network Architecture) is a specialized computing engine, intended for real...
Abstract—The modelling of large systems of spiking neurons is computationally very demanding in term...
The design of a new high-performance computing platform to model biological neural networks requires...
In this paper, we present a new network protocol and methodology to enhance the configuration phase ...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract—This paper presents the algorithm and software developed for parallel simulation of spiking...
Abstract. Large-scale neural simulation virtually necessitates dedicated hardware with on-chip learn...