Abstract—We design and implement a key building block of a scalable neuromorphic architecture capable of running spiking neural networks in compact and low-power hardware. Our innovation is a configurable neurosynaptic core that combines 256 integrate-and-fire neurons, 1024 input axons, and 1024x256 synapses in 4.2mm2 of silicon using a 45nm SOI process. We are able to achieve ultra-low energy consumption 1) at the circuit-level by using an asynchronous design where circuits only switch while performing neural updates; 2) at the core-level by implementing a 256 neural fanout in a single operation using a crossbar memory; and 3) at the architecture-level by restricting core-to-core communication to spike events, which occur relatively sparse...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
One of the most promising approaches to overcome the end of Moore's law is neuromorphic computing. I...
Despite the great strides neuroscience has made in recent decades, the underlying principles of brai...
Neuromorphic computing tries to model in hardware the biological brain which is adept at operating i...
Abstract—We implement a digital neuron in silicon using delay-insensitive asynchronous circuits. Our...
In this work we model and implement detailed and large- scale neural and synaptic dynamics in silico...
Mixed-signal neuromorphic processors have brain-like organization and device physics optimized for e...
Despite the great strides neuroscience has made in recent decades, the underlying principles of brai...
Neuromorphic cognitive computing offers a bio-inspired means to approach the natural intelligence of...
The sustainability of ever more sophisticated artificial intelligence relies on the continual develo...
The Neural Engineering Framework (NEF) is a tool that is capable of synthesising large-scale cogniti...
Spiking Neural Networks (SNNs) have high potential to process information efficiently with binary sp...
Developing mixed-signal analog-digital neuromorphic circuits in advanced scaled processes poses sign...
Neuromorphic computing is a recent and growing field of research. Its conceptual attractiveness is d...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
One of the most promising approaches to overcome the end of Moore's law is neuromorphic computing. I...
Despite the great strides neuroscience has made in recent decades, the underlying principles of brai...
Neuromorphic computing tries to model in hardware the biological brain which is adept at operating i...
Abstract—We implement a digital neuron in silicon using delay-insensitive asynchronous circuits. Our...
In this work we model and implement detailed and large- scale neural and synaptic dynamics in silico...
Mixed-signal neuromorphic processors have brain-like organization and device physics optimized for e...
Despite the great strides neuroscience has made in recent decades, the underlying principles of brai...
Neuromorphic cognitive computing offers a bio-inspired means to approach the natural intelligence of...
The sustainability of ever more sophisticated artificial intelligence relies on the continual develo...
The Neural Engineering Framework (NEF) is a tool that is capable of synthesising large-scale cogniti...
Spiking Neural Networks (SNNs) have high potential to process information efficiently with binary sp...
Developing mixed-signal analog-digital neuromorphic circuits in advanced scaled processes poses sign...
Neuromorphic computing is a recent and growing field of research. Its conceptual attractiveness is d...
Compared to modern supercomputers, which consume roughly 10^6 W of power, the human brain requires o...
This paper presents a digital silicon neuronal network which simulates the nerve system in creatures...
One of the most promising approaches to overcome the end of Moore's law is neuromorphic computing. I...
Despite the great strides neuroscience has made in recent decades, the underlying principles of brai...