Evaluation of performance for complex applications such as Artificial Intelligence (AI) algorithms and more specifically neural networks on Multi-Processor Systems on a Chip (MPSoC) is tedious. Finding an optimized partitioning of the application while predicting accurately the latency induced by communication bus congestion, is hard using traditional analysis methods. This document presents a performance prediction workflow based on SystemC simulation models for timing prediction of neural networks on MPSoC
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
International audienceApplication mapping in multicore embedded systems plays a central role in thei...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Evaluation of performance for complex applications such as Artificial Intelligence (AI) algorithms a...
National audienceEvaluation of performance for complex applicationssuch as Artificial Intelligence (...
National audiencePredicting the performance of Artificial NeuralNetworks (ANNs) on embedded multi-co...
International audiencePredicting the performance of Artificial Neural Networks(ANNs) on embedded mul...
Predicting the performance of Artificial Neural Networks (ANNs) on embedded multi-core platforms is ...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
International audienceWhen deploying Artificial Neural Networks (ANNs) onto multi-core embedded plat...
International audienceFast yet accurate performance and timing prediction of complexparallel data fl...
As technology scaling down allows multiple processing components to be integrated on a single chip, ...
Abstract. We present an estimation methodology, accurately predicting the execution time for a given...
International audienceFast yet accurate performance and timing prediction of complex parallel data f...
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
International audienceApplication mapping in multicore embedded systems plays a central role in thei...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Evaluation of performance for complex applications such as Artificial Intelligence (AI) algorithms a...
National audienceEvaluation of performance for complex applicationssuch as Artificial Intelligence (...
National audiencePredicting the performance of Artificial NeuralNetworks (ANNs) on embedded multi-co...
International audiencePredicting the performance of Artificial Neural Networks(ANNs) on embedded mul...
Predicting the performance of Artificial Neural Networks (ANNs) on embedded multi-core platforms is ...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
International audienceWhen deploying Artificial Neural Networks (ANNs) onto multi-core embedded plat...
International audienceFast yet accurate performance and timing prediction of complexparallel data fl...
As technology scaling down allows multiple processing components to be integrated on a single chip, ...
Abstract. We present an estimation methodology, accurately predicting the execution time for a given...
International audienceFast yet accurate performance and timing prediction of complex parallel data f...
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
International audienceApplication mapping in multicore embedded systems plays a central role in thei...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...