蛋白质可压缩性实验中来源的记录与利用

Paul T. Groth, S. Miles, W. Fang, Sylvia C. Wong, K. Zauner, L. Moreau
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引用次数: 91

摘要

非常大规模的计算现在正成为进行科学研究的常规方法。在这种情况下,“来源系统”被视为相当于科学家在计算机实验中的日志:来源捕获了导致某些结果的过程的文档。使用蛋白质可压缩性分析应用程序,我们为来源系统导出了一组通用用例。为了支持这些,我们解决以下基本问题:什么是来源?如何记录?对网格执行的性能影响是什么?推理的表现是什么?在这样做的过程中,我们定义了一个与技术无关的起源概念,它捕获组件之间的交互、内部组件信息和交互分组,从而允许我们分析和推理科学过程的执行。为了在异构应用程序中支持持久的来源,我们引入了一个单独的来源存储,其中来源文档可以独立于用于运行应用程序的技术进行存储、归档和查询。通过一系列的实际测试,我们评估了这种溯源系统对性能的影响。总之,我们证明了原型系统的来源记录开销保持在执行时间的10%以下,并且我们证明了记录的信息成功地以高性能的方式支持我们的用例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recording and using provenance in a protein compressibility experiment
Very large scale computations are now becoming routinely used as a methodology to undertake scientific research. In this context, 'provenance systems' are regarded as the equivalent of the scientist's logbook for in silico experimentation: provenance captures the documentation of the process that led to some result. Using a protein compressibility analysis application, we derive a set of generic use cases for a provenance system. In order to support these, we address the following fundamental questions: what is provenance? How to record it? What is the performance impact for grid execution? What is the performance of reasoning? In doing so, we define a technology-independent notion of provenance that captures interactions between components, internal component information and grouping of interactions, so as to allow us to analyze and reason about the execution of scientific processes. In order to support persistent provenance in heterogeneous applications, we introduce a separate provenance store, in which provenance documentation can be stored, archived and queried independently of the technology used to run the application. Through a series of practical tests, we evaluate the performance impact of such a provenance system. In summary, we demonstrate that provenance recording overhead of our prototype system remains under 10% of execution time, and we show that the recorded information successfully supports our use cases in a performant manner.
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