Data workflow systems (DWFSs) enable bioinformatics researchers to combine components for data access and data analytics, and to share the final data analytics approach with their collaborators. Increasingly, such systems have to cope with large-scale data, such as full genomes (about 200 GB each), public fact repositories (about 100 TB of data) and 3D imaging data at even larger scales. As moving the data becomes cumbersome, the DWFS needs to embed its processes into a cloud infrastructure, where the data are already hosted. As the standardized public data play an increasingly important role, the DWFS needs to comply with Semantic Web technologies. This advancement to DWFS would reduce overhead costs and accelerate the progress in bioinfor...
Information is key in producing knowledge. We undoubtedly live in time of massive information; parti...
BACKGROUND: Analyzing high throughput genomics data is a complex and compute intensive task, general...
As bioinformatics datasets grow ever larger, and analyses become increasingly complex, there is a ne...
Data workflow systems (DWFSs) enable bioinformatics researchers to combine components for data acces...
Bioinformatics is a developing interdisciplinary science which combines information technologies int...
The exponential increase of genomic data brought by the advent of the next or the third generation s...
Recently, research processes in Life sciences have evolved at a rapid pace. This evolution, mainly d...
Over the past 20 years, the rise of high-throughput methods in life science has enabled research lab...
High-throughput experiments enable researchers to explore complex multifactorial diseases through la...
High-throughput experiments enable researchers to explore complex multifactorial diseases through la...
Big data and complex analysis workflows (pipelines) are common issues in data driven science such as...
The changing landscape of genomics research and clinical practice has created a need for computation...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
Information integration and workflow technologies for data analysis have always been major fields of...
Information integration and workflow technologies for data analysis have always been major fields of...
Information is key in producing knowledge. We undoubtedly live in time of massive information; parti...
BACKGROUND: Analyzing high throughput genomics data is a complex and compute intensive task, general...
As bioinformatics datasets grow ever larger, and analyses become increasingly complex, there is a ne...
Data workflow systems (DWFSs) enable bioinformatics researchers to combine components for data acces...
Bioinformatics is a developing interdisciplinary science which combines information technologies int...
The exponential increase of genomic data brought by the advent of the next or the third generation s...
Recently, research processes in Life sciences have evolved at a rapid pace. This evolution, mainly d...
Over the past 20 years, the rise of high-throughput methods in life science has enabled research lab...
High-throughput experiments enable researchers to explore complex multifactorial diseases through la...
High-throughput experiments enable researchers to explore complex multifactorial diseases through la...
Big data and complex analysis workflows (pipelines) are common issues in data driven science such as...
The changing landscape of genomics research and clinical practice has created a need for computation...
Motivation: The rapid accumulation of both sequence and phenotype data generated by high-throughput ...
Information integration and workflow technologies for data analysis have always been major fields of...
Information integration and workflow technologies for data analysis have always been major fields of...
Information is key in producing knowledge. We undoubtedly live in time of massive information; parti...
BACKGROUND: Analyzing high throughput genomics data is a complex and compute intensive task, general...
As bioinformatics datasets grow ever larger, and analyses become increasingly complex, there is a ne...