International audienceMemristors enable the computation of matrix-vector multiplications (MVM) in memory and, therefore, show great potential in highly increasing the energy efficiency of deep neural network (DNN) inference accelerators. However, computations in memristors suffer from hardware non-idealities and are subject to different sources of noise that may negatively impact system performance. In this work, we theoretically analyze the mean squared error of DNNs that use memristor crossbars to compute MVM. We take into account both the quantization noise, due to the necessity of reducing the DNN model size, and the programming noise, stemming from the variability during the programming of the memristance value. Simulations on pretrain...
Artificial neural networks are notoriously power- and time-consuming when implemented on conventiona...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...
International audienceMemristors enable the computation of matrix-vector multiplications (MVM) in me...
International audienceThis paper considers Deep Neural Network (DNN) linear-nonlinear computations i...
Memristor based hardware development has recently received increased attention in academia and indus...
Modern neuromorphic deep learning techniques, as well as unsupervised techniques like the locally co...
In this Chapter, we review the recent progress on resistance drift mitigation techniques for resisti...
Deep neural networks (DNNs) have achieved unprecedented capabilities in tasks such as analysis and r...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Memristive devices arranged in cross-bar architectures have shown great promise to facilitate the ac...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Modern Artificial Neural Network(ANN) is a kind of nonlinear statistical data modeling tool, which c...
Artificial neural networks are notoriously power- and time-consuming when implemented on conventiona...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...
International audienceMemristors enable the computation of matrix-vector multiplications (MVM) in me...
International audienceThis paper considers Deep Neural Network (DNN) linear-nonlinear computations i...
Memristor based hardware development has recently received increased attention in academia and indus...
Modern neuromorphic deep learning techniques, as well as unsupervised techniques like the locally co...
In this Chapter, we review the recent progress on resistance drift mitigation techniques for resisti...
Deep neural networks (DNNs) have achieved unprecedented capabilities in tasks such as analysis and r...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Data-intensive computing operations, such as training neural networks, are essential but energy-inte...
Memristive devices arranged in cross-bar architectures have shown great promise to facilitate the ac...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Modern Artificial Neural Network(ANN) is a kind of nonlinear statistical data modeling tool, which c...
Artificial neural networks are notoriously power- and time-consuming when implemented on conventiona...
Recent years have seen a rapid rise of artificial neural networks being employed in a number of cogn...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...