The classical approach for quantiles computation requires availability of the full sample before ranking it. In uncertainty quantification of numerical simulation models, this approach is not suitable at exascale as large ensembles of simulation runs would need to gather a prohibitively large amount of data. This problem is solved thanks to an on-the-fly and iterative approach based on the Robbins-Monro algorithm. This approach relies on Melissa, a file avoiding, adaptive, fault-tolerant and elastic framework. On a validation case producing 11 TB of data, which consists in 3000 fluid dynamics parallel simulations on a 6M cell mesh, it allows on-line computation of spatio-temporal maps of percentiles
International audienceThe combination of high-performance computing towards Exascale power and numer...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Numerical simulations are ubiquitous in science and engineering. Machine learning for science invest...
The classical approach for quantiles computation requires availability of the full sample before ran...
In uncertainty quantification of a numerical simulation model output, the classical approach for qua...
International audienceIn situ processing proposes to reduce storage needs and I/O traffic by process...
International audienceGlobal sensitivity analysis is an important step for analyzing and validating ...
Computing Ensembles occurs frequently in the simulation of complex flows to increase forecasting ski...
Simulation results are often limited to mean values, even though this provides very limited infor- m...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
International audienceNumerical simulations of industrial and geophysical fluid flows cannot usually...
We present new algorithms for computing approximate quantiles of large datasets in a single pass. Th...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...
With the fast development of computing power over the last few decades, simulation models become inc...
Contrary to deterministic models, the execution of stochastic models depends on the realization of r...
International audienceThe combination of high-performance computing towards Exascale power and numer...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Numerical simulations are ubiquitous in science and engineering. Machine learning for science invest...
The classical approach for quantiles computation requires availability of the full sample before ran...
In uncertainty quantification of a numerical simulation model output, the classical approach for qua...
International audienceIn situ processing proposes to reduce storage needs and I/O traffic by process...
International audienceGlobal sensitivity analysis is an important step for analyzing and validating ...
Computing Ensembles occurs frequently in the simulation of complex flows to increase forecasting ski...
Simulation results are often limited to mean values, even though this provides very limited infor- m...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
International audienceNumerical simulations of industrial and geophysical fluid flows cannot usually...
We present new algorithms for computing approximate quantiles of large datasets in a single pass. Th...
In a recent paper [MRL98], we had described a general framework for single pass approximate quantile...
With the fast development of computing power over the last few decades, simulation models become inc...
Contrary to deterministic models, the execution of stochastic models depends on the realization of r...
International audienceThe combination of high-performance computing towards Exascale power and numer...
Numerical models of complex real-world phenomena often necessitate High Performance Computing (HPC)....
Numerical simulations are ubiquitous in science and engineering. Machine learning for science invest...