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Statistical analysis of network data and evolution on GPUs: High-performance statistical computing
Author(s) -
Thomas Thorne,
Michael P. H. Stumpf
Publication year - 2012
Publication title -
nature precedings
Language(s) - English
Resource type - Journals
ISSN - 1756-0357
DOI - 10.1038/npre.2012.6874.1
Subject(s) - computer science , context (archaeology) , range (aeronautics) , theoretical computer science , percolation (cognitive psychology) , distributed computing , parallel computing , paleontology , materials science , composite material , biology , neuroscience
Network analysis typically involves as set of repetitive tasks that are particularly amenable to poor-man's parallelization. This is therefore an ideal application are for GPU architectures, which help to alleviate the tedium inherent to statistically sound analysis of network data. Here we will illustrate the use of GPUs in a range of applications, which include percolation processes on networks, the evolution of protein-protein interaction networks, and the fusion of different types of biomedical and disease data in the context of molecular interaction networks. We will pay particular attention to the numerical performance of different routines that are frequently invoked in network analysis problems. We conclude with a review over recent developments in the generation of random numbers that address the specific requirements posed by GPUs and high-performance computing needs

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