Deep Neural Networks (DNN) are widely used in edge AI. But the complex perception and decision-making demand the overlarge computation and make the DNN architecture very sophisticated. Memristors have multilevel resistance property that enables faster in-memory DNN computation to remove the bottleneck caused by the von Neumann architecture and CMOS technology. However, the Stuck-At-Fault (SAF) defect of memristor generated from immature fabrication and heavy device utilization makes the memristor-based edge AI commercially unavailable. To mitigate this problem, an Adaptive Mapping Method (AMM) is proposed in this project. Based on the analysis for the VGG8 model with CIFAR10 dataset, the experiment results show that the AMM is efficient in ...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...
Memristor based hardware development has recently received increased attention in academia and indus...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
In this work, the effect of randomly distributed stuck-at faults (SAFs) in memristive crosspoint arr...
International audienceThis paper considers Deep Neural Network (DNN) linear-nonlinear computations i...
Memristor-based neuromorphic computing systems address the memory-wall issue in von Neumann architec...
Artificial Intelligence has found many applications in the last decade due to increased computing po...
Control algorithms are used in almost all mechanical and electrical systems for controlling movement...
Artificial intelligence (AI) technology like deep learning is powering our daily life in many areas ...
In this study, a circuit technique and training algorithm that minimizes the effect of stuck-at-faul...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
Abstract. Neural networks with memristive memory for weights have been proposed as an energy-efficie...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...
Memristor based hardware development has recently received increased attention in academia and indus...
Analog switching memristive devices can be used as part of the acceleration block of Neural Network...
In this work, the effect of randomly distributed stuck-at faults (SAFs) in memristive crosspoint arr...
International audienceThis paper considers Deep Neural Network (DNN) linear-nonlinear computations i...
Memristor-based neuromorphic computing systems address the memory-wall issue in von Neumann architec...
Artificial Intelligence has found many applications in the last decade due to increased computing po...
Control algorithms are used in almost all mechanical and electrical systems for controlling movement...
Artificial intelligence (AI) technology like deep learning is powering our daily life in many areas ...
In this study, a circuit technique and training algorithm that minimizes the effect of stuck-at-faul...
Power density constraint and device reliability issues are driving energy efficient, fault tolerant ...
Abstract. Neural networks with memristive memory for weights have been proposed as an energy-efficie...
Memristive devices have shown great promise to facilitate the acceleration and improve the power eff...
Analogue in-memory computing and brain-inspired computing based on the emerging memory technology ...
International audienceIn recent years, artificial intelligence has reached significant milestones wi...
Designing reliable and energy-efficient memristor-based artificial neural networks remains a challen...