International audienceGlobal sensitivity analysis is an important step for analyzing and validating numerical simulations. One classical approach consists in computing statistics on the outputs from well-chosen multiple simulation runs. Simulation results are stored to disk and statistics are computed postmortem. Even if supercomputers enable to run large studies, scientists are constrained to run low resolution simulations with a limited number of probes to keep the amount of intermediate storage manageable. In this paper we propose a file avoiding, adaptive, fault tolerant and elastic framework that enables high resolution global sensitivity analysis at large scale. Our approach combines iterative statistics and in transit processing to c...
Complex computer codes are widely used in science and engineering to model physical phenomena. Furth...
Variance-based global sensitivity analysis (e.g., the Sobol' sensitivity index) can be used to ident...
Dynamical earth and environmental systems models are typically computationally intensive and highly ...
International audienceGlobal sensitivity analysis is an important step for analyzing and validating ...
The classical approach for quantiles computation requires availability of the full sample before ran...
International audienceGlobal sensitivity analysis is used to quantify the influence of uncertain inp...
International audienceOn propose une méthode efficace d'analyse de sensibilité de modèles de simulat...
© Author(s) 2018. Global sensitivity analysis (GSA) is a powerful approach in identifying which inpu...
In this paper, a framework for conducting Sensitivity Analysis (SA) on large and complex simulation ...
Global sensitivity analysis often accompanies computer modeling to understand what are the importan...
Experiments are conducted to draw inferences about an entire ensemble based on a selected number of ...
High Performance Computing (HPC) is useful in a range of scientific applications, from running compu...
Sobol indices are a widespread quantitative measure for variance-based global sensitivity analysis, ...
This chapter makes a review, in a complete methodological framework, of various global sensitivity a...
Quantitative models support investigators in several risk analysis applications. The calculation of ...
Complex computer codes are widely used in science and engineering to model physical phenomena. Furth...
Variance-based global sensitivity analysis (e.g., the Sobol' sensitivity index) can be used to ident...
Dynamical earth and environmental systems models are typically computationally intensive and highly ...
International audienceGlobal sensitivity analysis is an important step for analyzing and validating ...
The classical approach for quantiles computation requires availability of the full sample before ran...
International audienceGlobal sensitivity analysis is used to quantify the influence of uncertain inp...
International audienceOn propose une méthode efficace d'analyse de sensibilité de modèles de simulat...
© Author(s) 2018. Global sensitivity analysis (GSA) is a powerful approach in identifying which inpu...
In this paper, a framework for conducting Sensitivity Analysis (SA) on large and complex simulation ...
Global sensitivity analysis often accompanies computer modeling to understand what are the importan...
Experiments are conducted to draw inferences about an entire ensemble based on a selected number of ...
High Performance Computing (HPC) is useful in a range of scientific applications, from running compu...
Sobol indices are a widespread quantitative measure for variance-based global sensitivity analysis, ...
This chapter makes a review, in a complete methodological framework, of various global sensitivity a...
Quantitative models support investigators in several risk analysis applications. The calculation of ...
Complex computer codes are widely used in science and engineering to model physical phenomena. Furth...
Variance-based global sensitivity analysis (e.g., the Sobol' sensitivity index) can be used to ident...
Dynamical earth and environmental systems models are typically computationally intensive and highly ...