The race to computing power increases every day in the simulation community. A few years ago, scientists have started to harness the computing power of Graphics Processing Units (GPUs) to parallelize their simulations. As with any parallel architecture, not only the simulation model implementation has to be ported to the new parallel platform, but all the tools must be reimplemented as well. In the particular case of stochastic simulations, one of the major element of the implementation is the pseudorandom numbers source. Employing pseudorandom numbers in parallel applications is not a straightforward task, and it has to be done with caution in order not to introduce biases in the results of the simulation. This problematic has been studied...
International audienceStochastic simulations are often sensitive to the randomness source that chara...
Abstract EFFICIENT RANDOM NUMBER GENERATION FOR FERMI CLASS GPUs by NIRODHA ABEYWARDANA JAN 2012 Adv...
The implementation of Monte Carlo simulation on the CUDA Fortran requires a fast random number gener...
The race to computing power increases every day in the simulation community. A few years ago, scient...
Version 3 is the same as version 2 but only the resulting PDF was uploaded, to avoid this bug: http:...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
International audienceStochastic simulations are often sensitive to the source of randomness that ch...
International audienceThere is an increasing interest in the distribution of parallel random number ...
International audienceParallel stochastic simulations tend to exploit more and more computing power ...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
The future of high-performance computing is aligning itself towards the efficient use of highly para...
High-performance streams of (pseudo) random numbers are crucial for the efficient implementation of ...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
International audienceWe examine the requirements and the available methods and software to provide ...
International audienceStochastic simulations are often sensitive to the randomness source that chara...
Abstract EFFICIENT RANDOM NUMBER GENERATION FOR FERMI CLASS GPUs by NIRODHA ABEYWARDANA JAN 2012 Adv...
The implementation of Monte Carlo simulation on the CUDA Fortran requires a fast random number gener...
The race to computing power increases every day in the simulation community. A few years ago, scient...
Version 3 is the same as version 2 but only the resulting PDF was uploaded, to avoid this bug: http:...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
International audienceStochastic simulations are often sensitive to the source of randomness that ch...
International audienceThere is an increasing interest in the distribution of parallel random number ...
International audienceParallel stochastic simulations tend to exploit more and more computing power ...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
The future of high-performance computing is aligning itself towards the efficient use of highly para...
High-performance streams of (pseudo) random numbers are crucial for the efficient implementation of ...
Monte Carlo methods rely on sequences of random numbers to obtain solutions to many problems in scie...
International audienceWe examine the requirements and the available methods and software to provide ...
International audienceStochastic simulations are often sensitive to the randomness source that chara...
Abstract EFFICIENT RANDOM NUMBER GENERATION FOR FERMI CLASS GPUs by NIRODHA ABEYWARDANA JAN 2012 Adv...
The implementation of Monte Carlo simulation on the CUDA Fortran requires a fast random number gener...