Predicting the performance of Artificial Neural Networks (ANNs) on embedded multi-core platforms is tedious. Concurrent accesses to shared resources are hard to model due to congestion effects on the shared communication medium, which affect the performance of the application. Most approaches focus therefore on evaluation through systematic implementation and testing or through the building of analytical models, which tend to lack of accuracy when targeting a wide range of architectures of varying complexity. In this paper we present a hybrid modeling environment to enable fast yet accurate timing prediction for fully-connected ANNs deployed on multi-core platforms. The modeling flow is based on the integration of an analytical computation ...
Performability of an interconnection system depends upon the failure characteristics of its compon...
International audienceFast yet accurate performance and timing prediction of complex parallel data f...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...
International audiencePredicting the performance of Artificial Neural Networks(ANNs) on embedded mul...
National audiencePredicting the performance of Artificial NeuralNetworks (ANNs) on embedded multi-co...
International audienceWhen deploying Artificial Neural Networks (ANNs) onto multi-core embedded plat...
Evaluation of performance for complex applications such as Artificial Intelligence (AI) algorithms a...
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
National audienceEvaluation of performance for complex applicationssuch as Artificial Intelligence (...
Abstract. We present an estimation methodology, accurately predicting the execution time for a given...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Deep neural networks have revolutionized multiple fields within computer science. It is important to...
Performability of an interconnection system depends upon the failure characteristics of its compon...
International audienceFast yet accurate performance and timing prediction of complex parallel data f...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...
International audiencePredicting the performance of Artificial Neural Networks(ANNs) on embedded mul...
National audiencePredicting the performance of Artificial NeuralNetworks (ANNs) on embedded multi-co...
International audienceWhen deploying Artificial Neural Networks (ANNs) onto multi-core embedded plat...
Evaluation of performance for complex applications such as Artificial Intelligence (AI) algorithms a...
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
National audienceEvaluation of performance for complex applicationssuch as Artificial Intelligence (...
Abstract. We present an estimation methodology, accurately predicting the execution time for a given...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Deep neural networks have revolutionized multiple fields within computer science. It is important to...
Performability of an interconnection system depends upon the failure characteristics of its compon...
International audienceFast yet accurate performance and timing prediction of complex parallel data f...
In recent years, machine learning applications are progressing on mobile systems for enhanced user ...