The computational demands of multivariate clustering grow rapidly, and therefore processing large data sets, like those found in flow cytometry data, is very time consuming on a single CPU. Fortunately these techniques lend themselves naturally to large scale parallel processing. To address the computational demands, graphics processing units, specifically NVIDIA\u27s CUDA framework and Tesla architecture, were investigated as a low-cost, high performance solution to a number of clustering algorithms. C-means and Expectation Maximization with Gaussian mixture models were implemented using the CUDA framework. The algorithm implementations use a hybrid of CUDA, OpenMP, and MPI to scale to many GPUs on multiple nodes in a high performance com...
The analysis of biological networks has become a major challenge due to the recent development of hi...
Abstract Detecting epistasis, such as 2-SNP interac-tions, in Genome-Wide Association Studies (GWAS)...
We investigate multi-level parallelism on GPU clusters with MPI-CUDA and hybrid MPI-OpenMP-CUDA para...
The computational demands of multivariate clustering grow rapidly, and therefore processing large da...
Like many modern techniques for scientific analysis, flow cytometry produces massive amounts of data...
Hierarchical clustering algorithms are common tools for simplifying, exploring and analyzing dataset...
Like many modern techniques for scientific analysis, flow cytom-etry produces massive amounts of dat...
Markov clustering is becoming a key algorithm within bioinformatics for determining clusters in netw...
Hierarchical clustering is a common tool for simplification, exploration, and analysis of datasets i...
The k-means algorithm is widely used for clustering, compressing, and summarizing vector data. We pr...
Modern graphics processing units (GPUs) with many-core architectures have emerged as general-purpose...
Clustering approaches are widely used methodologies to analyse large data sets. The K-means algorith...
The purpose of this paper is to describe the key points of the implementation of clustering algorith...
The introduction and rise of General Purpose Graphics Computing has significantly impacted parallel ...
During the last few years, GPUs have evolved from simple devices for the display signal preparation ...
The analysis of biological networks has become a major challenge due to the recent development of hi...
Abstract Detecting epistasis, such as 2-SNP interac-tions, in Genome-Wide Association Studies (GWAS)...
We investigate multi-level parallelism on GPU clusters with MPI-CUDA and hybrid MPI-OpenMP-CUDA para...
The computational demands of multivariate clustering grow rapidly, and therefore processing large da...
Like many modern techniques for scientific analysis, flow cytometry produces massive amounts of data...
Hierarchical clustering algorithms are common tools for simplifying, exploring and analyzing dataset...
Like many modern techniques for scientific analysis, flow cytom-etry produces massive amounts of dat...
Markov clustering is becoming a key algorithm within bioinformatics for determining clusters in netw...
Hierarchical clustering is a common tool for simplification, exploration, and analysis of datasets i...
The k-means algorithm is widely used for clustering, compressing, and summarizing vector data. We pr...
Modern graphics processing units (GPUs) with many-core architectures have emerged as general-purpose...
Clustering approaches are widely used methodologies to analyse large data sets. The K-means algorith...
The purpose of this paper is to describe the key points of the implementation of clustering algorith...
The introduction and rise of General Purpose Graphics Computing has significantly impacted parallel ...
During the last few years, GPUs have evolved from simple devices for the display signal preparation ...
The analysis of biological networks has become a major challenge due to the recent development of hi...
Abstract Detecting epistasis, such as 2-SNP interac-tions, in Genome-Wide Association Studies (GWAS)...
We investigate multi-level parallelism on GPU clusters with MPI-CUDA and hybrid MPI-OpenMP-CUDA para...