This work presents sPyNNaker 4.0.0, the latest version of the software package for simulating PyNN-defined spiking neural networks (SNNs) on the SpiNNaker neuromorphic platform. Operations underpinning realtime SNN execution are presented, including an event-based operating system facilitating efficient time-driven neuron state updates and pipelined event-driven spike processing. Preprocessing, realtime execution, and neuron/synapse model implementations are discussed, all in the context of a simple example SNN. Simulation results are demonstrated, together with performance profiling providing insights into how software interacts with the underlying hardware to achieve realtime execution. System performance is shown to be within a factor of...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
In this paper, we present a new network protocol and methodology to enhance the configuration phase ...
SpiNNaker is a neuromorphic hardware devised to simulate SNNs effectively.This paper examines how th...
This work presents sPyNNaker 4.0.0, the latest version of the software package for simulating PyNN-d...
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...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
The SpiNNaker chip is a multi-core processor optimized for neuromorphic applications. Many SpiNNaker...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
SpiNNaker (Spiking Neural Network Architecture) is a specialized computing engine, intended for real...
Abstract — Neural networks present a fundamentally different model of computation from conventional ...
SpiNNaker is a massively parallel distributed architecture primarily focused on real time simulation...
The digital neuromorphic hardware SpiNNaker has been developed with the aim of enabling large-scale ...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
In this paper, we present a new network protocol and methodology to enhance the configuration phase ...
SpiNNaker is a neuromorphic hardware devised to simulate SNNs effectively.This paper examines how th...
This work presents sPyNNaker 4.0.0, the latest version of the software package for simulating PyNN-d...
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...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
The SpiNNaker chip is a multi-core processor optimized for neuromorphic applications. Many SpiNNaker...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
SpiNNaker (Spiking Neural Network Architecture) is a specialized computing engine, intended for real...
Abstract — Neural networks present a fundamentally different model of computation from conventional ...
SpiNNaker is a massively parallel distributed architecture primarily focused on real time simulation...
The digital neuromorphic hardware SpiNNaker has been developed with the aim of enabling large-scale ...
The modelling of large systems of spiking neurons is computationally very demanding in terms of proc...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
In this paper, we present a new network protocol and methodology to enhance the configuration phase ...
SpiNNaker is a neuromorphic hardware devised to simulate SNNs effectively.This paper examines how th...