Stöckel A. Design space exploration of associative memories using spiking neurons with respect to neuromorphic hardware implementations. Bielefeld: Universität Bielefeld; 2016.Artificial neural networks are well-established models for key functions of biological brains, such as low-level sensory processing and memory. In particular, networks of artificial spiking neurons emulate the time dynamics, high parallelisation and asynchronicity of their biological counterparts. Large scale hardware simulators for such networks – _neuromorphic_ computers – are developed as part of the Human Brain Project, with the ultimate goal to gain insights regarding the neural foundations of cognitive processes. In this thesis, we focus on one key cognitive fu...
Artificial Intelligence (AI) is an exciting technology that flourished in this century. One of the g...
Real-time large-scale simulation of biological systems is a challenging task due to nonlinear functi...
Michael Schmuker, Thomas Pfeil, and Martin Paul Nawrot, ‘A neuromorphic network for generic multivar...
Stöckel A, Jenzen C, Thies M, Rückert U. Binary Associative Memories as a Benchmark for Spiking Neur...
The gap between brains and computers regarding both their cognitive capability and power efficiency ...
This thesis explores how some neuromorphic engineering approaches can be used to speed up computatio...
According to Moore’s law the number of transistors per square inch double every two years. Scaling d...
This dissertation proposes ways to address current limitations of neuromorphic computing to create e...
Indiveri G, Chicca E, Douglas RJ. Artificial cognitive systems: From VLSI networks of spiking neuron...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
Human society is now facing grand challenges to satisfy the growing demand for computing power, at t...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
International audienceAbstract Neuromorphic computation using Spiking Neural Networks (SNN) is pro-p...
Spiking neural networks can solve complex tasks in an event-based processing strategy, inspired by t...
We are interested in self-organization and adaptation in intelligent systems that are robustly coupl...
Artificial Intelligence (AI) is an exciting technology that flourished in this century. One of the g...
Real-time large-scale simulation of biological systems is a challenging task due to nonlinear functi...
Michael Schmuker, Thomas Pfeil, and Martin Paul Nawrot, ‘A neuromorphic network for generic multivar...
Stöckel A, Jenzen C, Thies M, Rückert U. Binary Associative Memories as a Benchmark for Spiking Neur...
The gap between brains and computers regarding both their cognitive capability and power efficiency ...
This thesis explores how some neuromorphic engineering approaches can be used to speed up computatio...
According to Moore’s law the number of transistors per square inch double every two years. Scaling d...
This dissertation proposes ways to address current limitations of neuromorphic computing to create e...
Indiveri G, Chicca E, Douglas RJ. Artificial cognitive systems: From VLSI networks of spiking neuron...
eISSN 1648-9144Background and Aim: Simulations of computational models of brain activity are computa...
Human society is now facing grand challenges to satisfy the growing demand for computing power, at t...
International audienceMachine learning is yielding unprecedented interest in research and industry, ...
International audienceAbstract Neuromorphic computation using Spiking Neural Networks (SNN) is pro-p...
Spiking neural networks can solve complex tasks in an event-based processing strategy, inspired by t...
We are interested in self-organization and adaptation in intelligent systems that are robustly coupl...
Artificial Intelligence (AI) is an exciting technology that flourished in this century. One of the g...
Real-time large-scale simulation of biological systems is a challenging task due to nonlinear functi...
Michael Schmuker, Thomas Pfeil, and Martin Paul Nawrot, ‘A neuromorphic network for generic multivar...