The ever-increasing data production and availability in the field of bioinformatics demands a paradigm shift towards the utilization of novel solutions for efficient data storage and processing, such as the MapReduce data parallel programming model and the corresponding Apache Hadoop framework. Despite the evident potential of this model and existence of already available algorithms and applications, especially for batch processing of large data sets as in the Next Generation Sequencing analysis, bioinformatics MapReduce applications are yet to become widely adopted in the bioinformatics data analysis. We identify two prerequisites for their adaptation and utilization: (1) the ability to compose complex workflows from multiple bioinformatic...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Background: Explosive growth of next-generation sequencing data has resulted in ultra-large-scale da...
Background: A steep drop in the cost of next-generation sequencing during recent years has made the ...
The data-driven parallelization framework Hadoop MapReduce allows analysing large data sets in a sca...
The combination of the Hadoop MapReduce programming model and cloud computing allows biological scie...
Biology is evolving into a big data science, particularly with the new sequencing technologies which...
Abstract Background The MapReduce framework enables a scalable processing and analyzing of large dat...
For many years Apache Hadoop has been used as a synonym for processing data in the MapReduce fashion...
Recent advances in genome sequencing technologies have unleashed a flood of new data. As a result, t...
Huang L. Cloud-based Bioinformatics Framework for Next-Generation Sequencing Data. Bielefeld: Univer...
In the past 20 years, the Life Sciences have witnessed a paradigm shift in the way research is perfo...
Abstract Background Research in genetics has developed rapidly recently due to the aid of next gener...
AbstractWorkflows are becoming the new paradigm in bioinformatics. In general, bioinformatics proble...
Bioinformatics has a long history of software solutions developed on multi-core computing systems fo...
Bioinformatics has a long history of software solutions developed on multi-core computing systems fo...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Background: Explosive growth of next-generation sequencing data has resulted in ultra-large-scale da...
Background: A steep drop in the cost of next-generation sequencing during recent years has made the ...
The data-driven parallelization framework Hadoop MapReduce allows analysing large data sets in a sca...
The combination of the Hadoop MapReduce programming model and cloud computing allows biological scie...
Biology is evolving into a big data science, particularly with the new sequencing technologies which...
Abstract Background The MapReduce framework enables a scalable processing and analyzing of large dat...
For many years Apache Hadoop has been used as a synonym for processing data in the MapReduce fashion...
Recent advances in genome sequencing technologies have unleashed a flood of new data. As a result, t...
Huang L. Cloud-based Bioinformatics Framework for Next-Generation Sequencing Data. Bielefeld: Univer...
In the past 20 years, the Life Sciences have witnessed a paradigm shift in the way research is perfo...
Abstract Background Research in genetics has developed rapidly recently due to the aid of next gener...
AbstractWorkflows are becoming the new paradigm in bioinformatics. In general, bioinformatics proble...
Bioinformatics has a long history of software solutions developed on multi-core computing systems fo...
Bioinformatics has a long history of software solutions developed on multi-core computing systems fo...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Background: Explosive growth of next-generation sequencing data has resulted in ultra-large-scale da...
Background: A steep drop in the cost of next-generation sequencing during recent years has made the ...