International audienceDeep Neural Networks (DNNs) are increasingly used in safety critical autonomous systems. We present MOZART+, a DNN accelerator architecture which provides fault detection and fault tolerance. MOZART+ is a systolic architecture based on the Output Stationary (OS) data-flow, as it is a data-flow that inherently limits fault propagation. In addition, MOZART+ achieves fault detection with on-line functional testing of the Processing Elements (PEs). Faulty PEs are swiftly taken off-line with minimal classification impact. We show how to handle the case of layers with a small number of neurons. The implementation of our approach on Squeezenet results in a loss of accuracy of less than 3% in the presence of a single faulty PE...
Deep Neural Networks (DNNs) are nowadays widely used in low-cost accelerators, characterized by limi...
Applications leveraging on new computing paradigms, such as brain-inspired computing, are currently ...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
International audienceDeep Neural Networks (DNNs) are increasingly used in safety critical autonomou...
International audienceDeep Neural Networks (DNNs) show promising performance in several application ...
7 pages, 6 figuresDeep Neural Networks (DNNs) enable a wide series of technological advancements, ra...
International audienceDeep Neural Networks (DNNs) show promising performance in several application ...
Deep Neural Networks (DNNs) enable a wide series of technological advancements, ranging from clinica...
The recent success of deep neural networks (DNNs) in challenging perception tasks makes them a power...
The resurgence of machine learning in various applications and it's inherent compute-intensive natur...
In recent years, Deep Neural Networks have been increasingly adopted by a wide range of applications...
Neural networks are increasingly used in mission critical systems such as those used in autonomous v...
Emergence of Deep Neural Networks (DNN) has led to a proliferation of artificial intelligence appli...
The use of neural networks in critical applications necessitates that they continue to perform their...
The paper develops a methodology for the online built-in self-testing of deep neural network (DNN) a...
Deep Neural Networks (DNNs) are nowadays widely used in low-cost accelerators, characterized by limi...
Applications leveraging on new computing paradigms, such as brain-inspired computing, are currently ...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
International audienceDeep Neural Networks (DNNs) are increasingly used in safety critical autonomou...
International audienceDeep Neural Networks (DNNs) show promising performance in several application ...
7 pages, 6 figuresDeep Neural Networks (DNNs) enable a wide series of technological advancements, ra...
International audienceDeep Neural Networks (DNNs) show promising performance in several application ...
Deep Neural Networks (DNNs) enable a wide series of technological advancements, ranging from clinica...
The recent success of deep neural networks (DNNs) in challenging perception tasks makes them a power...
The resurgence of machine learning in various applications and it's inherent compute-intensive natur...
In recent years, Deep Neural Networks have been increasingly adopted by a wide range of applications...
Neural networks are increasingly used in mission critical systems such as those used in autonomous v...
Emergence of Deep Neural Networks (DNN) has led to a proliferation of artificial intelligence appli...
The use of neural networks in critical applications necessitates that they continue to perform their...
The paper develops a methodology for the online built-in self-testing of deep neural network (DNN) a...
Deep Neural Networks (DNNs) are nowadays widely used in low-cost accelerators, characterized by limi...
Applications leveraging on new computing paradigms, such as brain-inspired computing, are currently ...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...