Modern scientific collaborations have opened up the opportunity to solve complex problems that require both multidisciplinary expertise and large-scale computational experiments. These experiments typically consist of a sequence of processing steps that need to be executed on selected computing platforms. Execution poses a challenge, however, due to (1) the complexity and diversity of applications, (2) the diversity of analysis goals, (3) the heterogeneity of computing platforms, and (4) the volume and distribution of data. A common strategy to make these in silico experiments more manageable is to model them as workflows and to use a workflow management system to organize their execution. This article looks at the overall challenge posed b...
In recent years, a number of scientific workflow management systems (SWFMSs) have been developed to ...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
Scientific workflows require the coordination of data processing activities, resulting in executions...
Workflows have been used traditionally as a mean to describe and implement the computing usually par...
International audienceThis special issue and our editorial celebrate 10 years of progress with data-...
Scientific workflows are a cornerstone of modern scientific computing, and they have underpinned som...
Scientific workflows have been used almost universally across scientific domains, and have underpinn...
The wide availability of high-performance computing systems, Grids and Clouds, allowed scientists an...
Workflows have recently emerged as a paradigm for representing and managing complex distributed scie...
Workflow technologies are emerging as the dominant approach to coordinate groups of distributed serv...
An in-silico experiment can be naturally specified as a workflow of activities implementing the data...
Scientific workflow management systems are primarily used by scientists to design workflows that und...
In the field of computational science and engineering, workflows often entail the application of var...
Scientific workflows have become integral tools in broad scientific computing use cases. Science dis...
Scientific workflows are typically used to automate the processing, analysis and management of scien...
In recent years, a number of scientific workflow management systems (SWFMSs) have been developed to ...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
Scientific workflows require the coordination of data processing activities, resulting in executions...
Workflows have been used traditionally as a mean to describe and implement the computing usually par...
International audienceThis special issue and our editorial celebrate 10 years of progress with data-...
Scientific workflows are a cornerstone of modern scientific computing, and they have underpinned som...
Scientific workflows have been used almost universally across scientific domains, and have underpinn...
The wide availability of high-performance computing systems, Grids and Clouds, allowed scientists an...
Workflows have recently emerged as a paradigm for representing and managing complex distributed scie...
Workflow technologies are emerging as the dominant approach to coordinate groups of distributed serv...
An in-silico experiment can be naturally specified as a workflow of activities implementing the data...
Scientific workflow management systems are primarily used by scientists to design workflows that und...
In the field of computational science and engineering, workflows often entail the application of var...
Scientific workflows have become integral tools in broad scientific computing use cases. Science dis...
Scientific workflows are typically used to automate the processing, analysis and management of scien...
In recent years, a number of scientific workflow management systems (SWFMSs) have been developed to ...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
Scientific workflows require the coordination of data processing activities, resulting in executions...