Authors
Khalid Belhajjame, Jun Zhao, Daniel Garijo, Matthew Gamble, Kristina Hettne, Raul Palma, Eleni Mina, Oscar Corcho, José Manuel Gómez-Pérez, Sean Bechhofer, Graham Klyne, Carole Goble
Publication date
2015/5/1
Journal
Journal of Web Semantics
Volume
32
Pages
16-42
Publisher
Elsevier
Description
Scientific workflows are a popular mechanism for specifying and automating data-driven in silico experiments. A significant aspect of their value lies in their potential to be reused. Once shared, workflows become useful building blocks that can be combined or modified for developing new experiments. However, previous studies have shown that storing workflow specifications alone is not sufficient to ensure that they can be successfully reused, without being able to understand what the workflows aim to achieve or to re-enact them. To gain an understanding of the workflow, and how it may be used and repurposed for their needs, scientists require access to additional resources such as annotations describing the workflow, datasets used and produced by the workflow, and provenance traces recording workflow executions.
In this article, we present a novel approach to the preservation of scientific workflows through …
Total citations
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Scholar articles
K Belhajjame, J Zhao, D Garijo, M Gamble, K Hettne… - Journal of Web Semantics, 2015