The widespread usage of random graphs has been highlighted in the context of database applications for several years. This because such data structures turn out to be very useful in a large family of database applications ranging from simulation to sampling, from analysis of complex networks to study of randomized algorithms, and so forth. Amongst others, Erd\u151s\u2013R\ue9nyi \u393v,p\u393v,p is the most popular model to obtain and manipulate random graphs. Unfortunately, it has been demonstrated that classical algorithms for generating Erd\u151s\u2013R\ue9nyi based random graphs do not scale well in large instances and, in addition to this, fail to make use of the parallel processing capabilities of modern hardware. Inspired by this m...
This article presents parallel algorithms for component decomposition of graph structures on general...
A good random number generator is essential for many graphics applications. As more such application...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
Random Graphs evolved as a major tool for modelling the complex net works. Random Graphs have wide r...
10.1016/j.jpdc.2012.09.010Journal of Parallel and Distributed Computing733303-316JPDC
The future of high-performance computing is aligning itself towards the efficient use of highly para...
The implementation of Monte Carlo simulation on the CUDA Fortran requires a fast random number gener...
Abstract EFFICIENT RANDOM NUMBER GENERATION FOR FERMI CLASS GPUs by NIRODHA ABEYWARDANA JAN 2012 Adv...
International audienceParallel stochastic simulations tend to exploit more and more computing power ...
A novel parallel algorithm is presented for generating random scale-free networks using the preferen...
Abstract. Random networks are widely used for modeling and analyz-ing complex processes. Many mathem...
Greedy graph matching provides us with a fast way to coarsen a graph during graph partitioning. Dire...
Abstract—Random networks are widely used for modeling and analyzing complex processes. Many mathemat...
Machine learning algorithms are frequently applied in data mining applications. Many of the tasks in...
Modern Graphics Processing Units (GPUs) provide high computation power at low costs and have been de...
This article presents parallel algorithms for component decomposition of graph structures on general...
A good random number generator is essential for many graphics applications. As more such application...
International audienceRandom number generation is a key element of stochastic simulations. It has be...
Random Graphs evolved as a major tool for modelling the complex net works. Random Graphs have wide r...
10.1016/j.jpdc.2012.09.010Journal of Parallel and Distributed Computing733303-316JPDC
The future of high-performance computing is aligning itself towards the efficient use of highly para...
The implementation of Monte Carlo simulation on the CUDA Fortran requires a fast random number gener...
Abstract EFFICIENT RANDOM NUMBER GENERATION FOR FERMI CLASS GPUs by NIRODHA ABEYWARDANA JAN 2012 Adv...
International audienceParallel stochastic simulations tend to exploit more and more computing power ...
A novel parallel algorithm is presented for generating random scale-free networks using the preferen...
Abstract. Random networks are widely used for modeling and analyz-ing complex processes. Many mathem...
Greedy graph matching provides us with a fast way to coarsen a graph during graph partitioning. Dire...
Abstract—Random networks are widely used for modeling and analyzing complex processes. Many mathemat...
Machine learning algorithms are frequently applied in data mining applications. Many of the tasks in...
Modern Graphics Processing Units (GPUs) provide high computation power at low costs and have been de...
This article presents parallel algorithms for component decomposition of graph structures on general...
A good random number generator is essential for many graphics applications. As more such application...
International audienceRandom number generation is a key element of stochastic simulations. It has be...