AbstractIn this paper we present the results of a parallelization strategy to reduce the execution time for applying Monte Carlo simulation with a large number of realizations obtained using a groundwater flow and transport model. We develop a script in Python using mpi4py, in order to execute GWMC and related programs in parallel, applying the MPI library. Our approach is to calculate the initial inputs for each realization, and run groups of these realizations in separate processors and afterwards to calculate the mean vector and the covariance matrix of them. This strategy was applied to the study of a simplified aquifer in a rectangular domain of a single layer. We report the results of speedup and efficiency for 1000, 2000 and 4000 rea...
This paper describes a parallel implementation of the direct simulation Monte Carlo method. Runtime...
If a stochastic model is used to describe uncertainties, the physical system may be described by a s...
This paper shows how a high level matrix programming language may be used to perform Monte Carlo sim...
Solute transport modeling resolves advection, dispersion, and chemical reactions in groundwater syst...
The objectives of this research are (1) to parallelize a suite of multiregion groundwater flow and s...
In molecular simulations performed by Markov Chain Monte Carlo (typically employing the Metropolis c...
AbstractPowerful numerical codes for modeling complex coupled processes of physics and chemistry hav...
This study reports on two strategies for accelerating posterior inference of a highly parameterized ...
This study presents a novel strategy for accelerating posterior exploration of highly parameterized ...
This work presents two software components aimed to relieve the costs of accessing high-performance ...
In recent years, parallel processing has become widely available to researchers. It can be applied i...
Abstract — Most Monte Carlo simulations can be parallelized, or at least easily distributed. However...
AbstractIn this paper, we present parallel solvers for large linear systems arising from the finite-...
The Markov Chain Monte Carlo (MCMC) method is a statistical almost experimental approach to computin...
In this paper we present parallel solvers for large linear systems arising from the finite--element ...
This paper describes a parallel implementation of the direct simulation Monte Carlo method. Runtime...
If a stochastic model is used to describe uncertainties, the physical system may be described by a s...
This paper shows how a high level matrix programming language may be used to perform Monte Carlo sim...
Solute transport modeling resolves advection, dispersion, and chemical reactions in groundwater syst...
The objectives of this research are (1) to parallelize a suite of multiregion groundwater flow and s...
In molecular simulations performed by Markov Chain Monte Carlo (typically employing the Metropolis c...
AbstractPowerful numerical codes for modeling complex coupled processes of physics and chemistry hav...
This study reports on two strategies for accelerating posterior inference of a highly parameterized ...
This study presents a novel strategy for accelerating posterior exploration of highly parameterized ...
This work presents two software components aimed to relieve the costs of accessing high-performance ...
In recent years, parallel processing has become widely available to researchers. It can be applied i...
Abstract — Most Monte Carlo simulations can be parallelized, or at least easily distributed. However...
AbstractIn this paper, we present parallel solvers for large linear systems arising from the finite-...
The Markov Chain Monte Carlo (MCMC) method is a statistical almost experimental approach to computin...
In this paper we present parallel solvers for large linear systems arising from the finite--element ...
This paper describes a parallel implementation of the direct simulation Monte Carlo method. Runtime...
If a stochastic model is used to describe uncertainties, the physical system may be described by a s...
This paper shows how a high level matrix programming language may be used to perform Monte Carlo sim...