Hyperparameters and learning algorithms for neuromorphic hardware are usually chosen by hand to suit a particular task. In contrast, networks of neurons in the brain were optimized through extensive evolutionary and developmental processes to work well on a range of computing and learning tasks. Occasionally this process has been emulated through genetic algorithms, but these require themselves hand-design of their details and tend to provide a limited range of improvements. We employ instead other powerful gradient-free optimization tools, such as cross-entropy methods and evolutionary strategies, in order to port the function of biological optimization processes to neuromorphic hardware. As an example, we show these optimization algorithm...
Highly efficient performance-resources trade-off of the biological brain is a motivation for researc...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Neuromorphic systems promise a novel alternative to the standard von-Neumann architectures that are ...
Hyperparameters and learning algorithms for neuromorphic hardware are usually chosen by hand to suit...
The simulation of biological neural networks (BNN) is essential to neuroscience. The complexity of t...
Neuromorphic devices represent an attempt to mimic aspects of the brain's architecture and dynamics ...
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
The success of deep networks and recent industry involvement in brain-inspired computing is igniting...
The human brain efficiently processes information by analog integration of inputs and digital, binar...
Embedded, continual learning for autonomous and adaptive behavior is a key application of neuromorph...
Neuromorphic engineering attempts to understand the computational properties of neural processing sy...
Artificial neural networks (ANNs) are typically confined to accomplishing pre-defined tasks by learn...
Driven by the massive application of Internet of Things (IoT), embedded system and Cyber Physical Sy...
Neuromorphic computing is a computing field that takes inspiration from the biological and physical ...
Copyright © 2016 Diamond, Nowotny and Schmuker. This is an open-access article distributed under the...
Highly efficient performance-resources trade-off of the biological brain is a motivation for researc...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Neuromorphic systems promise a novel alternative to the standard von-Neumann architectures that are ...
Hyperparameters and learning algorithms for neuromorphic hardware are usually chosen by hand to suit...
The simulation of biological neural networks (BNN) is essential to neuroscience. The complexity of t...
Neuromorphic devices represent an attempt to mimic aspects of the brain's architecture and dynamics ...
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
The success of deep networks and recent industry involvement in brain-inspired computing is igniting...
The human brain efficiently processes information by analog integration of inputs and digital, binar...
Embedded, continual learning for autonomous and adaptive behavior is a key application of neuromorph...
Neuromorphic engineering attempts to understand the computational properties of neural processing sy...
Artificial neural networks (ANNs) are typically confined to accomplishing pre-defined tasks by learn...
Driven by the massive application of Internet of Things (IoT), embedded system and Cyber Physical Sy...
Neuromorphic computing is a computing field that takes inspiration from the biological and physical ...
Copyright © 2016 Diamond, Nowotny and Schmuker. This is an open-access article distributed under the...
Highly efficient performance-resources trade-off of the biological brain is a motivation for researc...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
Neuromorphic systems promise a novel alternative to the standard von-Neumann architectures that are ...