International audienceNovel computing architectures based on resistive switching memories (also known as memristors or RRAMs) have been shown to be promising approaches for tackling the energy inefficiency of deep learning and spiking neural networks. However, resistive switch technology is immature and suffers from numerous imperfections, which are often considered limitations on implementations of artificial neural networks. Nevertheless, a reasonable amount of variability can be harnessed to implement efficient probabilistic or approximate computing. This approach turns out to improve robustness, decrease overfitting and reduce energy consumption for specific applications, such as Bayesian and spiking neural networks. Thus, certain non-i...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Abstract Biological neural networks outperform current computer technology in terms of power consump...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Abstract Biological neural networks outperform current computer technology in terms of power consump...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
In-memory computing (IMC) refers to non-von Neumann architectures where data are processed in situ w...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Abstract Biological neural networks outperform current computer technology in terms of power consump...