Over the last two decades, scientific workflow management systems (SWfMS) have emerged as a means to facilitate the design, execution, and monitoring of reusable scientific data processing pipelines. At the same time, the amounts of data generated in various areas of science outpaced enhance-ments in computational power and storage capabilities. This is especially true for the life sciences, where new technolo-gies increased the sequencing throughput from kilobytes to terabytes per day. This trend requires current SWfMS to adapt: Native support for parallel workflow execution must be provided to increase performance; dynamically scalable “pay-per-use ” compute infrastructures have to be integrated to diminish hardware costs; adaptive schedu...
A simple yet powerful programming tool enabling in silico experimentation, end-to-end data managemen...
The analysis of next-generation sequencing (NGS) data requires complex computational workf...
International audienceThis special issue and our editorial celebrate 10 years of progress with data-...
International audienceNowadays, more and more computer-based scientific experiments need to handle m...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
The wide availability of high-performance computing systems, Grids and Clouds, allowed scientists an...
In the last decade we witnessed an immense evolution of the computing infrastructures in terms of p...
With the rapid rise in computing technology the complexity of scientific processes has also increase...
Scientific workflows are a cornerstone of modern scientific computing, and they have underpinned som...
International audienceThe current solutions for the parallel execution of scientific workflows are a...
Workflows have recently emerged as a paradigm for representing and managing complex distributed scie...
There is emerging interest in many scientific disciplines to deal with “dynamic” data, arising from ...
Scientific exploration demands heavy usage of computational resources for large-scale and deep analy...
International audienceThis year is special for the WORKS series as this corresponds to the tenth iss...
Modern scientific collaborations have opened up the opportunity to solve complex problems that requi...
A simple yet powerful programming tool enabling in silico experimentation, end-to-end data managemen...
The analysis of next-generation sequencing (NGS) data requires complex computational workf...
International audienceThis special issue and our editorial celebrate 10 years of progress with data-...
International audienceNowadays, more and more computer-based scientific experiments need to handle m...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
The wide availability of high-performance computing systems, Grids and Clouds, allowed scientists an...
In the last decade we witnessed an immense evolution of the computing infrastructures in terms of p...
With the rapid rise in computing technology the complexity of scientific processes has also increase...
Scientific workflows are a cornerstone of modern scientific computing, and they have underpinned som...
International audienceThe current solutions for the parallel execution of scientific workflows are a...
Workflows have recently emerged as a paradigm for representing and managing complex distributed scie...
There is emerging interest in many scientific disciplines to deal with “dynamic” data, arising from ...
Scientific exploration demands heavy usage of computational resources for large-scale and deep analy...
International audienceThis year is special for the WORKS series as this corresponds to the tenth iss...
Modern scientific collaborations have opened up the opportunity to solve complex problems that requi...
A simple yet powerful programming tool enabling in silico experimentation, end-to-end data managemen...
The analysis of next-generation sequencing (NGS) data requires complex computational workf...
International audienceThis special issue and our editorial celebrate 10 years of progress with data-...