Scientific workflows are commonly used to model and execute large-scale scientific experiments. They represent key resources for scientists and are enacted and managed by Scientific Workflow Management Systems (SWfMS). Each SWfMS has its particular approach to execute workflows and to capture and manage their provenance data. Due to the large scale of experiments, it may be unviable to analyze provenance data only after the end of the execution. A single experiment may demand weeks to run, even in high performance computing environments. Thus scientists need to monitor the experiment during its execution, and this can be done through provenance data. Runtime provenance analysis allows for scientists to monitor workflow execution and to take...
Abstract: Workflows are increasingly used in science to manage complex computations and data proces...
Background: The automation of data analysis in the form of scientific workflows has become a widely ...
Abstract — Workflow systems have become increasingly popu-lar for managing experiments where many bi...
Integrated provenance support promises to be a chief advantage of scientific workflow systems over s...
International audienceComputational Science and Engineering (CSE) projects are typically developed b...
This paper presents an extension to the W3C PROV1 provenance model, aimed at representing process st...
Workflow provenance is a crucial part of a workflow system as it enables data lineage analysis, erro...
Scientific workflows and their supporting systems are becoming increasingly popular for compute-inte...
International audienceSHARP is a Linked Data approach for harmonizing cross-workflow provenance. In ...
Apache Taverna is a scientific workflow system for combining web services and local tools. Taverna r...
Many scientists are using workflows to systematically design and run computational experiments. Once...
The automated tracking and storage of provenance information promises to be a major advantage of sci...
Scientific workflows have recently emerged as a new paradigm for representing and managing complex d...
International audiencePROV has been adopted by a number of workflow systems for encoding the traces ...
Abstract: Workflows are increasingly used in science to manage complex computations and data proces...
Background: The automation of data analysis in the form of scientific workflows has become a widely ...
Abstract — Workflow systems have become increasingly popu-lar for managing experiments where many bi...
Integrated provenance support promises to be a chief advantage of scientific workflow systems over s...
International audienceComputational Science and Engineering (CSE) projects are typically developed b...
This paper presents an extension to the W3C PROV1 provenance model, aimed at representing process st...
Workflow provenance is a crucial part of a workflow system as it enables data lineage analysis, erro...
Scientific workflows and their supporting systems are becoming increasingly popular for compute-inte...
International audienceSHARP is a Linked Data approach for harmonizing cross-workflow provenance. In ...
Apache Taverna is a scientific workflow system for combining web services and local tools. Taverna r...
Many scientists are using workflows to systematically design and run computational experiments. Once...
The automated tracking and storage of provenance information promises to be a major advantage of sci...
Scientific workflows have recently emerged as a new paradigm for representing and managing complex d...
International audiencePROV has been adopted by a number of workflow systems for encoding the traces ...
Abstract: Workflows are increasingly used in science to manage complex computations and data proces...
Background: The automation of data analysis in the form of scientific workflows has become a widely ...
Abstract — Workflow systems have become increasingly popu-lar for managing experiments where many bi...