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Refurbishing Legacy Biological Workflows SPROUTS Case Study

机译:翻新旧版生物工作流程SPROUTS案例研究

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Scientific discovery relies on an experimental framework that corroborates hypotheses with experiments that are complex reproducible processes generating and transforming large datasets. The methods, implicit in the process, capture the semantics of the data, thus they are responsible for the generation of scientific information and discovery of scientific knowledge. Scientific workflows provide the semantics needed to wrap scientific data from their capture, analysis, publication, and archival. By annotating data with the processes that produce them, the scientist no longer manages data but information and allows their meaningful interpretation and integration. Any change to a scientific workflow may impact significantly the quality of the data produced,  their semantics, their future analysis, use, integration, and distribution, as well as the performance of the execution. Yet, scientific workflows are typically transformed over time, updated with new versions of the tools that compose them, extended to new functionality, and composed. In this paper we discuss the various impacts of workflow transformation and illustrate  them with a case study on the  Structural Prediction for pRotein fOlding UTility System (SPROUTS) Workflow.
机译:科学发现依赖于一个实验框架,该框架通过复杂的可重复过程生成和转换大型数据集的实验来证实假设。过程中隐含的方法捕获了数据的语义,因此它们负责科学信息的生成和科学知识的发现。科学工作流提供了从其捕获,分析,发布和归档中包装科学数据所需的语义。通过用产生数据的过程注释数据,科学家不再管理数据,而是管理信息,并进行有意义的解释和集成。科学工作流程的任何更改都可能严重影响所生成数据的质量,其语义,它们的未来分析,使用,集成和分发以及执行性能。但是,科学工作流程通常会随着时间的推移而发生变化,使用组成它们的工具的新版本进行更新,扩展为新功能并组成。在本文中,我们讨论了工作流程转换的各种影响,并以pRotein支持的UTility System(SPROUTS)工作流程的结构预测为例进行了说明。

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