Markov clustering (MCL) is becoming a key algorithm within bioinformatics for determining clusters in networks. However, with increasing vast amount of data on biological networks, performance and scalability issues are becoming a critical limiting factor in applications. Meanwhile, GPU computing, which uses CUDA tool for implementing a massively parallel computing environment in the GPU card, is becoming a very powerful, efficient, and low-cost option to achieve substantial performance gains over CPU approaches. The use of on-chip memory on the GPU is efficiently lowering the latency time, thus, circumventing a major issue in other parallel computing environments, such as MPI. We introduce a very fast Markov clustering algorithm using CUDA...
Massively parallel DNA sequencing technologies have revolutionized genomics and molecular biology by...
Searching protein sequence database is a fundamental and often repeated task in computational biolog...
The integration of multi-dimensional datasets remains a key challenge in systems biology and genomic...
Markov clustering (MCL) is becoming a key algorithm within bioinformatics for determining clusters i...
Markov clustering is becoming a key algorithm within bioinformatics for determining clusters in netw...
Molecular Biology and Bioinformatics or Computational Biology have helped enrich each other and toge...
HipMCL is a high-performance distributed memory implementation of the popular Markov Cluster Algorit...
BackgroundHow can we obtain fast and high-quality clusters in genome scale bio-networks? Graph clust...
Empirical study of networks has enlightened our understanding of many application domains including ...
Biological networks capture structural or functional properties of relevant entities such as molecul...
The computational demands of multivariate clustering grow rapidly, and therefore processing large da...
BACKGROUND: The analysis of biological networks has become a major challenge due to the recent devel...
The biological datasets produced as a result of high-throughput genomic research such as specificall...
Background: The analysis of biological networks has become a major challenge due to the recent devel...
Background: The analysis of biological networks has become a major challenge due to the recent devel...
Massively parallel DNA sequencing technologies have revolutionized genomics and molecular biology by...
Searching protein sequence database is a fundamental and often repeated task in computational biolog...
The integration of multi-dimensional datasets remains a key challenge in systems biology and genomic...
Markov clustering (MCL) is becoming a key algorithm within bioinformatics for determining clusters i...
Markov clustering is becoming a key algorithm within bioinformatics for determining clusters in netw...
Molecular Biology and Bioinformatics or Computational Biology have helped enrich each other and toge...
HipMCL is a high-performance distributed memory implementation of the popular Markov Cluster Algorit...
BackgroundHow can we obtain fast and high-quality clusters in genome scale bio-networks? Graph clust...
Empirical study of networks has enlightened our understanding of many application domains including ...
Biological networks capture structural or functional properties of relevant entities such as molecul...
The computational demands of multivariate clustering grow rapidly, and therefore processing large da...
BACKGROUND: The analysis of biological networks has become a major challenge due to the recent devel...
The biological datasets produced as a result of high-throughput genomic research such as specificall...
Background: The analysis of biological networks has become a major challenge due to the recent devel...
Background: The analysis of biological networks has become a major challenge due to the recent devel...
Massively parallel DNA sequencing technologies have revolutionized genomics and molecular biology by...
Searching protein sequence database is a fundamental and often repeated task in computational biolog...
The integration of multi-dimensional datasets remains a key challenge in systems biology and genomic...