International audienceDue to its simplicity and good statistical results, the Monte Carlo (MC) method is the most commonly technique used for uncertainty quantification. However, its computational cost is significant, and, in many cases, prohibitive. Fortunately, the MC algorithm can be can be parallelized, which may allows its use in complex simulations. In this sprit, this work presents a methodology for the parallelization of MC method in a cloud computing setting. The methodology is illustrated on a stochastic problem of structural dynamics, and the simulation results show good accuracy for low-order statistics. Also, this methodology shows a good performance in terms of processing-time and storage space usage
Quantify uncertainty and sensitivities in your existing computational models with the “monaco” libra...
Abstract—Applications employed in the financial services industry to capture and estimate a variety ...
A comprehensive Bayesian probabilistic framework is developed for quantifying and calibrating the un...
International audienceThe Monte Carlo (MC) method is the most common technique used for uncertainty ...
High performance computing is a key technology to solve large-scale real-world simulation problems o...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
Copyright © 2015 Inderscience Enterprises Ltd. We propose a Monte Carlo simulation as a service (MCS...
The necessity of dealing with uncertainties is growing in many different fields of science and engin...
The ability to provision resources on the fly and their pay-as-you-go nature has made cloud computin...
Monte Carlo methods are crucial when dealing with advanced problems in Bayesian inference. Indeed, c...
Limitations imposed by the traditional practice in financial institutions of running price and risk ...
The stochastic modelling of biological systems, coupled with Monte Carlo simulation of models, is an...
Abstract—Cloud computing has been widely used by compu-tational scientists and engineers as a means ...
Since the efficiency and speed of computing has increased significantly in the last decades, in sili...
Quantify uncertainty and sensitivities in your existing computational models with the “monaco” libra...
Abstract—Applications employed in the financial services industry to capture and estimate a variety ...
A comprehensive Bayesian probabilistic framework is developed for quantifying and calibrating the un...
International audienceThe Monte Carlo (MC) method is the most common technique used for uncertainty ...
High performance computing is a key technology to solve large-scale real-world simulation problems o...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
Copyright © 2015 Inderscience Enterprises Ltd. We propose a Monte Carlo simulation as a service (MCS...
The necessity of dealing with uncertainties is growing in many different fields of science and engin...
The ability to provision resources on the fly and their pay-as-you-go nature has made cloud computin...
Monte Carlo methods are crucial when dealing with advanced problems in Bayesian inference. Indeed, c...
Limitations imposed by the traditional practice in financial institutions of running price and risk ...
The stochastic modelling of biological systems, coupled with Monte Carlo simulation of models, is an...
Abstract—Cloud computing has been widely used by compu-tational scientists and engineers as a means ...
Since the efficiency and speed of computing has increased significantly in the last decades, in sili...
Quantify uncertainty and sensitivities in your existing computational models with the “monaco” libra...
Abstract—Applications employed in the financial services industry to capture and estimate a variety ...
A comprehensive Bayesian probabilistic framework is developed for quantifying and calibrating the un...