Abstract Background With the advent of high throughput genomics and high-resolution imaging techniques, there is a growing necessity in biology and medicine for parallel computing, and with the low cost of computing, it is now cost-effective for even small labs or individuals to build their own personal computation cluster. Methods Here we briefly describe how to use commodity hardware to build a low-cost, high-performance compute cluster, and provide an in-depth example and sample code for parallel execution of R jobs using MOSIX, a mature extension of the Linux kernel for parallel computing. A similar process can be used with other cluster platform software. Results As a statistical genetics example, we use our cluster to run a simulated ...
Bioinformatics and computational biology are driven by growing volumes of data in biological systems...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Certain bioinformatics research, such as sequence alignment, alternative splicing, protein function/...
Genomic data analysis in evolutionary biology is becoming so computationally intensive that analysis...
Motivation: High performance computing (HPC) clusters play a pivotal role in large-scale bioinformat...
Kary Ocaña,1 Daniel de Oliveira2 1National Laboratory of Scientific Computing, Petrópo...
International audienceBiotechnology progresses lead to an exponential growth of genomic data. This m...
This document surveys the computational strategies followed to parallelize the most used software in...
Background: R is the preferred tool for statistical analysis of many bioinformaticians due in part t...
Abstract Background R is the preferred tool for statistical analysis of many bioinformaticians due i...
Abstract. Studies of gene expression using high-density oligonucleotide microar-rays have become sta...
Abstract Background In recent years, the demand for computational power in computational biology has...
Markov clustering is becoming a key algorithm within bioinformatics for determining clusters in netw...
Markov clustering (MCL) is becoming a key algorithm within bioinformatics for determining clusters i...
A poster discussing the use of parallel processing techniques (Hadoop, mapreduce, ect.) in processin...
Bioinformatics and computational biology are driven by growing volumes of data in biological systems...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Certain bioinformatics research, such as sequence alignment, alternative splicing, protein function/...
Genomic data analysis in evolutionary biology is becoming so computationally intensive that analysis...
Motivation: High performance computing (HPC) clusters play a pivotal role in large-scale bioinformat...
Kary Ocaña,1 Daniel de Oliveira2 1National Laboratory of Scientific Computing, Petrópo...
International audienceBiotechnology progresses lead to an exponential growth of genomic data. This m...
This document surveys the computational strategies followed to parallelize the most used software in...
Background: R is the preferred tool for statistical analysis of many bioinformaticians due in part t...
Abstract Background R is the preferred tool for statistical analysis of many bioinformaticians due i...
Abstract. Studies of gene expression using high-density oligonucleotide microar-rays have become sta...
Abstract Background In recent years, the demand for computational power in computational biology has...
Markov clustering is becoming a key algorithm within bioinformatics for determining clusters in netw...
Markov clustering (MCL) is becoming a key algorithm within bioinformatics for determining clusters i...
A poster discussing the use of parallel processing techniques (Hadoop, mapreduce, ect.) in processin...
Bioinformatics and computational biology are driven by growing volumes of data in biological systems...
Currently, clustering applications use classical methods to partition a set of data (or objects) in ...
Certain bioinformatics research, such as sequence alignment, alternative splicing, protein function/...