In this article, we investigate the reliability of Google’s coral tensor processing units (TPUs) to both high-energy atmospheric neutrons (at ChipIR) and thermal neutrons from a pulsed source [at equipment materials and mechanics analyzer (EMMA)] and from a reactor [at Thermal and Epithermal Neutron Irradiation Station (TENIS)]. We report data obtained with an overall fluence of 3.41×1012n/cm2 for atmospheric neutrons (equivalent to more than 30 million years of natural irradiation) and of 7.55×1012n/cm2 for thermal neutrons. We evaluate the behavior of TPUs executing elementary operations with increasing input sizes (standard convolutions or depthwise convolutions) as well as eight convolutional neural networks (CNNs) configurations (singl...
We present a novel neutron detector based on an ultra-thin 3D silicon sensor with a sensitive volume...
We present the development of neutron-tagging techniques in Super-Kamiokande IV using a neural netwo...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
In this article, we investigate the reliability of Google’s coral tensor processing units (TPUs) to ...
International audienceWe characterize the fault models for Deep Neural Networks (DNNs) in GPUs expos...
International audienceThe reliability evaluation of Deep Neural Networks (DNNs) executed on Graphic ...
Paper accepted on 28th IEEE IOLTS 2022International audienceRISC-V architectures have gained importa...
This thesis is a "proof-of-principle" study which aims to assess the feasibility of ALPIDE as a neut...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
In the CORTEX project, methods to simulate neutron flux oscillations were enhanced and machine-learn...
This work was financed in part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - ...
This paper provides an experimental study of the single-event upset (SEU) susceptibility against the...
Deep neural network (DNN) models are being deployed in safety-critical embedded devices for object i...
We present a novel neutron detector based on an ultra-thin 3D silicon sensor with a sensitive volume...
We present the development of neutron-tagging techniques in Super-Kamiokande IV using a neural netwo...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
In this article, we investigate the reliability of Google’s coral tensor processing units (TPUs) to ...
International audienceWe characterize the fault models for Deep Neural Networks (DNNs) in GPUs expos...
International audienceThe reliability evaluation of Deep Neural Networks (DNNs) executed on Graphic ...
Paper accepted on 28th IEEE IOLTS 2022International audienceRISC-V architectures have gained importa...
This thesis is a "proof-of-principle" study which aims to assess the feasibility of ALPIDE as a neut...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
In the CORTEX project, methods to simulate neutron flux oscillations were enhanced and machine-learn...
This work was financed in part by the Coordenação de Aperfeiçoamento de Pessoal de Nível Superior - ...
This paper provides an experimental study of the single-event upset (SEU) susceptibility against the...
Deep neural network (DNN) models are being deployed in safety-critical embedded devices for object i...
We present a novel neutron detector based on an ultra-thin 3D silicon sensor with a sensitive volume...
We present the development of neutron-tagging techniques in Super-Kamiokande IV using a neural netwo...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...