International audienceRandom number generation is a key element of stochastic simulations. It has been widely studied for sequential applications purposes, enabling us to reliably use pseudo-random numbers in this case. Unfortunately, we cannot be so enthusiastic when dealing with parallel stochastic simulations. Many applications still neglect random stream parallelization, leading to potentially biased results. Particular parallel execution platforms, such as Graphics Processing Units (GPUs), add their constraints to those of Pseudo-Random Number Generators (PRNGs) used in parallel. It results in a situation where potential biases can be combined to performance drops when parallelization of random streams has not been carried out rigorous...
The future of high-performance computing is aligning itself towards the efficient use of highly para...
Distributed stochastic simulations has become a popular tool for evaluating and testing complex sto...
In this article Re present background, rationale, and a description of the Scalable Parallel Random ...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
International audienceParallel stochastic simulations tend to exploit more and more computing power ...
International audienceStochastic simulations are often sensitive to the source of randomness that ch...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
International audienceStochastic simulations are often sensitive to the randomness source that chara...
International audienceThere is an increasing interest in the distribution of parallel random number ...
The race to computing power increases every day in the simulation community. A few years ago, scient...
A signi cant problem faced by scienti c investigation of complex modern systems is that credible sim...
Monte Carlo simulations have become a common practice to evaluate a proposed statistical procedure, ...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
This work considers the deployment of pseudo-random number generators (PRNGs) on graphics processing...
International audienceWe provide a review of the state of the art on the design and implementation o...
The future of high-performance computing is aligning itself towards the efficient use of highly para...
Distributed stochastic simulations has become a popular tool for evaluating and testing complex sto...
In this article Re present background, rationale, and a description of the Scalable Parallel Random ...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
International audienceParallel stochastic simulations tend to exploit more and more computing power ...
International audienceStochastic simulations are often sensitive to the source of randomness that ch...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
International audienceStochastic simulations are often sensitive to the randomness source that chara...
International audienceThere is an increasing interest in the distribution of parallel random number ...
The race to computing power increases every day in the simulation community. A few years ago, scient...
A signi cant problem faced by scienti c investigation of complex modern systems is that credible sim...
Monte Carlo simulations have become a common practice to evaluate a proposed statistical procedure, ...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
This work considers the deployment of pseudo-random number generators (PRNGs) on graphics processing...
International audienceWe provide a review of the state of the art on the design and implementation o...
The future of high-performance computing is aligning itself towards the efficient use of highly para...
Distributed stochastic simulations has become a popular tool for evaluating and testing complex sto...
In this article Re present background, rationale, and a description of the Scalable Parallel Random ...