As bioinformatics datasets grow ever larger, and analyses become increasingly complex, there is a need for data handling infrastructures to keep pace with developing technology. One solution is to apply Grid and Cloud technologies to address the computational requirements of analysing high throughput datasets. We present an approach for writing new, or wrapping existing applications, and a reference implementation of a framework, Microbase2.0, for executing those applications using Grid and Cloud technologies. We used Microbase2.0 to develop an automated Cloud-based bioinformatics workflow executing simultaneously on two different Amazon EC2 data centres and the Newcastle University Condor Grid. Several CPU years’ worth of computational wor...
BACKGROUND: Analyzing high throughput genomics data is a complex and compute intensive task, general...
Abstract The rapid advancements in recent years of high-throughput technologies in the life sciences...
Flow/Mass cytometry data analysis is essential in the study of diverse phenotypes and functions at t...
Recent advances in genome sequencing technologies have unleashed a flood of new data. As a result, t...
Bioinformatics is a developing interdisciplinary science which combines information technologies int...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Over the past 20 years, the rise of high-throughput methods in life science has enabled research lab...
In this paper we describe our experience in exploiting different cloud-based environments for an act...
[[abstract]]Interest on biotechnology has increased dramatically. With the completion of sequencing ...
Ever since high-throughput DNA sequencing became economically feasible, the amount of biological dat...
The increasing availability and decreasing cost of high-throughput sequencing has transformed academ...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
Data workflow systems (DWFSs) enable bioinformatics researchers to combine components for data acces...
The significant advancement in Next Generation Sequencing (NGS) have enabled the generation of sever...
Analyzing high throughput genomics data is a complex and compute intensive task, generally requiring...
BACKGROUND: Analyzing high throughput genomics data is a complex and compute intensive task, general...
Abstract The rapid advancements in recent years of high-throughput technologies in the life sciences...
Flow/Mass cytometry data analysis is essential in the study of diverse phenotypes and functions at t...
Recent advances in genome sequencing technologies have unleashed a flood of new data. As a result, t...
Bioinformatics is a developing interdisciplinary science which combines information technologies int...
The molecular systems biology community has to deal with an increasingly growing amount of data. A r...
Over the past 20 years, the rise of high-throughput methods in life science has enabled research lab...
In this paper we describe our experience in exploiting different cloud-based environments for an act...
[[abstract]]Interest on biotechnology has increased dramatically. With the completion of sequencing ...
Ever since high-throughput DNA sequencing became economically feasible, the amount of biological dat...
The increasing availability and decreasing cost of high-throughput sequencing has transformed academ...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
Data workflow systems (DWFSs) enable bioinformatics researchers to combine components for data acces...
The significant advancement in Next Generation Sequencing (NGS) have enabled the generation of sever...
Analyzing high throughput genomics data is a complex and compute intensive task, generally requiring...
BACKGROUND: Analyzing high throughput genomics data is a complex and compute intensive task, general...
Abstract The rapid advancements in recent years of high-throughput technologies in the life sciences...
Flow/Mass cytometry data analysis is essential in the study of diverse phenotypes and functions at t...