Spiking neural networks are viable alternatives to classical neural networks for edge processing in low-power embedded and IoT devices. To reap their benefits, neuromorphic network accelerators that tend to support deep networks still have to expend great effort in fetching synaptic states from a large remote memory. Since local computation in these networks is event-driven, memory becomes the major part of the system’s energy consumption. In this paper, we explore various opportunities of data reuse that can help mitigate the redundant traffic for retrieval of neuron meta-data and post-synaptic weights. We describe CyNAPSE, a baseline neural processing unit and its accompanying software simulation as a general template for exploration on v...
Spiking Neural Networks (SNNs) have high potential to process information efficiently with binary sp...
abstract: Hardware implementation of deep neural networks is earning significant importance nowadays...
Spiking recurrent neural networks (RNNs) are a promising tool for solving a wide variety of complex ...
Spiking neural networks are increasingly becoming popular as low-power alternatives to deep learning...
The energy efficiency of neuromorphic hardware is greatly affected by the energy of storing, accessi...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Spiking neural networks (SNNs) have achieved orders of magnitude improvement in terms of energy cons...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Driven by the massive application of Internet of Things (IoT), embedded system and Cyber Physical Sy...
In recent years the field of neuromorphic low-power systems gained significant momentum, spurring br...
Neuromorphic hardware, the new generation of non-von Neumann computing system, implements spiking ne...
Neuromorphic processors, the new generation of brain-inspired non-von Neumann computing systems, are...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
International audienceAbstract Neuromorphic computation using Spiking Neural Networks (SNN) is pro-p...
Spiking Neural Networks (SNNs) have high potential to process information efficiently with binary sp...
abstract: Hardware implementation of deep neural networks is earning significant importance nowadays...
Spiking recurrent neural networks (RNNs) are a promising tool for solving a wide variety of complex ...
Spiking neural networks are increasingly becoming popular as low-power alternatives to deep learning...
The energy efficiency of neuromorphic hardware is greatly affected by the energy of storing, accessi...
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network...
Spiking neural networks (SNNs) have achieved orders of magnitude improvement in terms of energy cons...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Simulation is a third pillar next to experiment and theory in the study of complex dynamic systems s...
Driven by the massive application of Internet of Things (IoT), embedded system and Cyber Physical Sy...
In recent years the field of neuromorphic low-power systems gained significant momentum, spurring br...
Neuromorphic hardware, the new generation of non-von Neumann computing system, implements spiking ne...
Neuromorphic processors, the new generation of brain-inspired non-von Neumann computing systems, are...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
International audienceAbstract Neuromorphic computation using Spiking Neural Networks (SNN) is pro-p...
Spiking Neural Networks (SNNs) have high potential to process information efficiently with binary sp...
abstract: Hardware implementation of deep neural networks is earning significant importance nowadays...
Spiking recurrent neural networks (RNNs) are a promising tool for solving a wide variety of complex ...