Unconventional computing explores multi-scale platforms connecting molecular-scale devices into networks for the development of scalable neuromorphic architectures, often based on new materials and components with new functionalities. We review some work investigating the functionalities of locally connected networks of different types of switching elements as computational substrates. In particular, we discuss reservoir computing with networks of nonlinear nanoscale components. In usual neuromorphic paradigms, the network synaptic weights are adjusted as a result of a training/learning process. In reservoir computing, the non-linear network acts as a dynamical system mixing and spreading the input signals over a large state space, and only...
Acting as artificial synapses, two‐terminal memristive devices are considered fundamental building b...
International audienceBesides being at the core of novel ultra-high density low-power non-volatile m...
The proliferation of machine learning algorithms in everyday applications such as image recognition ...
Neuromorphic computing aims at the realization of intelligent systems able to process information si...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
The past decade has seen a sharp rise in the development and manufacture of different hardware frame...
The emergent dynamical behaviors of biological neuronal networks and other natural, complex systems ...
In the new era of cognitive computing, systems will be able to learn and interact with the environme...
The hardware implementation of the reservoir computing paradigm represents a key aspect for taking i...
Resistive switches are a class of emerging nanoelectronics devices that exhibit a wide variety of sw...
Emerging memcapacitive nanoscale devices have the potential to perform computations in new ways. In ...
Networks of nanowires are currently being explored for a range of applications in brain-like (or neu...
Efforts to emulate the formidable information processing capabilities of the brain through neuromorp...
Efforts to emulate the formidable information processing capabilities of the brain through neuromorp...
The invention of the internet began the age of information as well as exponentially increased the nu...
Acting as artificial synapses, two‐terminal memristive devices are considered fundamental building b...
International audienceBesides being at the core of novel ultra-high density low-power non-volatile m...
The proliferation of machine learning algorithms in everyday applications such as image recognition ...
Neuromorphic computing aims at the realization of intelligent systems able to process information si...
Neuromorphic engineering is the research field dedicated to the study and design of brain-inspired h...
The past decade has seen a sharp rise in the development and manufacture of different hardware frame...
The emergent dynamical behaviors of biological neuronal networks and other natural, complex systems ...
In the new era of cognitive computing, systems will be able to learn and interact with the environme...
The hardware implementation of the reservoir computing paradigm represents a key aspect for taking i...
Resistive switches are a class of emerging nanoelectronics devices that exhibit a wide variety of sw...
Emerging memcapacitive nanoscale devices have the potential to perform computations in new ways. In ...
Networks of nanowires are currently being explored for a range of applications in brain-like (or neu...
Efforts to emulate the formidable information processing capabilities of the brain through neuromorp...
Efforts to emulate the formidable information processing capabilities of the brain through neuromorp...
The invention of the internet began the age of information as well as exponentially increased the nu...
Acting as artificial synapses, two‐terminal memristive devices are considered fundamental building b...
International audienceBesides being at the core of novel ultra-high density low-power non-volatile m...
The proliferation of machine learning algorithms in everyday applications such as image recognition ...