6 research outputs found
scalable bioinformatics via workflow conversion
Background Reproducibility is one of the tenets of the scientific method.
Scientific experiments often comprise complex data flows, selection of
adequate parameters, and analysis and visualization of intermediate and end
results. Breaking down the complexity of such experiments into the joint
collaboration of small, repeatable, well defined tasks, each with well defined
inputs, parameters, and outputs, offers the immediate benefit of identifying
bottlenecks, pinpoint sections which could benefit from parallelization, among
others. Workflows rest upon the notion of splitting complex work into the
joint effort of several manageable tasks. There are several engines that give
users the ability to design and execute workflows. Each engine was created to
address certain problems of a specific community, therefore each one has its
advantages and shortcomings. Furthermore, not all features of all workflow
engines are royalty-free —an aspect that could potentially drive away members
of the scientific community. Results We have developed a set of tools that
enables the scientific community to benefit from workflow interoperability. We
developed a platform-free structured representation of parameters, inputs,
outputs of command-line tools in so-called Common Tool Descriptor documents.
We have also overcome the shortcomings and combined the features of two
royalty-free workflow engines with a substantial user community: the Konstanz
Information Miner, an engine which we see as a formidable workflow editor, and
the Grid and User Support Environment, a web-based framework able to interact
with several high-performance computing resources. We have thus created a free
and highly accessible way to design workflows on a desktop computer and
execute them on high-performance computing resources. Conclusions Our work
will not only reduce time spent on designing scientific workflows, but also
make executing workflows on remote high-performance computing resources more
accessible to technically inexperienced users. We strongly believe that our
efforts not only decrease the turnaround time to obtain scientific results but
also have a positive impact on reproducibility, thus elevating the quality of
obtained scientific results
From the desktop to the grid: scalable bioinformatics via workflow conversion
Background
Reproducibility is one of the tenets of the scientific method. Scientific experiments often comprise complex data flows, selection of adequate parameters, and analysis and visualization of intermediate and end results. Breaking down the complexity of such experiments into the joint collaboration of small, repeatable, well defined tasks, each with well defined inputs, parameters, and outputs, offers the immediate benefit of identifying bottlenecks, pinpoint sections which could benefit from parallelization, among others. Workflows rest upon the notion of splitting complex work into the joint effort of several manageable tasks.
There are several engines that give users the ability to design and execute workflows. Each engine was created to address certain problems of a specific community, therefore each one has its advantages and shortcomings. Furthermore, not all features of all workflow engines are royalty-free —an aspect that could potentially drive away members of the scientific community.
Results
We have developed a set of tools that enables the scientific community to benefit from workflow interoperability. We developed a platform-free structured representation of parameters, inputs, outputs of command-line tools in so-called Common Tool Descriptor documents. We have also overcome the shortcomings and combined the features of two royalty-free workflow engines with a substantial user community: the Konstanz Information Miner, an engine which we see as a formidable workflow editor, and the Grid and User Support Environment, a web-based framework able to interact with several high-performance computing resources. We have thus created a free and highly accessible way to design workflows on a desktop computer and execute them on high-performance computing resources.
Conclusions
Our work will not only reduce time spent on designing scientific workflows, but also make executing workflows on remote high-performance computing resources more accessible to technically inexperienced users. We strongly believe that our efforts not only decrease the turnaround time to obtain scientific results but also have a positive impact on reproducibility, thus elevating the quality of obtained scientific results
From the desktop to the grid: scalable bioinformatics via workflow conversion
BACKGROUND: Reproducibility is one of the tenets of the scientific method. Scientific experiments often comprise complex data flows, selection of adequate parameters, and analysis and visualization of intermediate and end results. Breaking down the complexity of such experiments into the joint collaboration of small, repeatable, well defined tasks, each with well defined inputs, parameters, and outputs, offers the immediate benefit of identifying bottlenecks, pinpoint sections which could benefit from parallelization, among others. Workflows rest upon the notion of splitting complex work into the joint effort of several manageable tasks. There are several engines that give users the ability to design and execute workflows. Each engine was created to address certain problems of a specific community, therefore each one has its advantages and shortcomings. Furthermore, not all features of all workflow engines are royalty-free —an aspect that could potentially drive away members of the scientific community. RESULTS: We have developed a set of tools that enables the scientific community to benefit from workflow interoperability. We developed a platform-free structured representation of parameters, inputs, outputs of command-line tools in so-called Common Tool Descriptor documents. We have also overcome the shortcomings and combined the features of two royalty-free workflow engines with a substantial user community: the Konstanz Information Miner, an engine which we see as a formidable workflow editor, and the Grid and User Support Environment, a web-based framework able to interact with several high-performance computing resources. We have thus created a free and highly accessible way to design workflows on a desktop computer and execute them on high-performance computing resources. CONCLUSIONS: Our work will not only reduce time spent on designing scientific workflows, but also make executing workflows on remote high-performance computing resources more accessible to technically inexperienced users. We strongly believe that our efforts not only decrease the turnaround time to obtain scientific results but also have a positive impact on reproducibility, thus elevating the quality of obtained scientific results