AbstractA performance modeling method is presented to predict the execution time of a parallel Monte Carlo (MC) radiative transfer simulation code for ocean color applications. The execution time of MC simulations is predicted using a multi-layer perceptron (MLP) neural network regression model trained with past execution time measurements in different execution environments and simulation cases. On the basis of the MLP performance model, a complementary job-environment mapping algorithm enables an efficient utilization of available high-performance computing resources minimizing the total execution time of the simulation jobs distributed in multiple environments
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
A new generic approach to improve computational efficiency of certain processes in numerical environ...
Artificial radiance sets are used as inputs to Multi-layer Perceptron and k NearestNeighbour algorit...
The authors are grateful to Dr. Giuseppe Zibordi (E.C. Joint Research Centre, Italy) for his support...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
The Geo-Info project aims to provide Geoscience experts with software toolkits tailored for selected...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
Grid Computing clusters a wide variety of geographically distributed resources. As a result it can b...
This work aims to predict the execution time of k-Wave ultrasound simulations on supercomputers base...
A machine learning framework based on a multi-layer perceptron (MLP) algorithm was established and a...
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
Optical (atmospheric) turbulence (Cn2) is a highly stochastic process that can apply many adverse ef...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Liquid metal reflux receivers (LMRRs) have been designed to serve as the interface between the solar...
National audienceEvaluation of performance for complex applicationssuch as Artificial Intelligence (...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
A new generic approach to improve computational efficiency of certain processes in numerical environ...
Artificial radiance sets are used as inputs to Multi-layer Perceptron and k NearestNeighbour algorit...
The authors are grateful to Dr. Giuseppe Zibordi (E.C. Joint Research Centre, Italy) for his support...
. A performance prediction method is presented for indicating the performance range of MIMD parallel...
The Geo-Info project aims to provide Geoscience experts with software toolkits tailored for selected...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
Grid Computing clusters a wide variety of geographically distributed resources. As a result it can b...
This work aims to predict the execution time of k-Wave ultrasound simulations on supercomputers base...
A machine learning framework based on a multi-layer perceptron (MLP) algorithm was established and a...
Early evaluation of Neural Networks (NN) deployments on multi-core platforms is necessary to find de...
Optical (atmospheric) turbulence (Cn2) is a highly stochastic process that can apply many adverse ef...
Accurately modeling and predicting performance for large-scale applications becomes increasingly dif...
Liquid metal reflux receivers (LMRRs) have been designed to serve as the interface between the solar...
National audienceEvaluation of performance for complex applicationssuch as Artificial Intelligence (...
A new approach based on a synergetic combination of statistical/machine learning and deterministic m...
A new generic approach to improve computational efficiency of certain processes in numerical environ...
Artificial radiance sets are used as inputs to Multi-layer Perceptron and k NearestNeighbour algorit...