在临床试验中支持并行R代码:基于网格的方法

D. Wegener, T. Sengstag, S. Sfakianakis, S. Rüping
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引用次数: 3

摘要

在本文中,我们描述了ACGT GridR环境的扩展,该扩展允许R脚本中的循环并行化,以考虑它们在计算网格上的分布式执行。ACGT GridR服务由一个组件扩展,该组件使用一组类似预处理器的指令来组织和分发计算。将并行化指令用作特殊的R注释,为用户提供了通过更改预先存在的代码来加速冗长计算的可能性。GridR服务及其扩展是作为ACGT平台的组成部分开发的,其目的之一是促进涉及大型数据集的临床试验的数据挖掘。在ACGT中,GridR脚本在专门开发的工作流环境的框架中执行,本文也简要概述了这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supporting Parallel R Code in Clinical Trials: A Grid-Based Approach
In this paper, we describe an extension to the ACGT GridR environment which allows the parallelization of loops in R scripts in view of their distributed execution on a computational grid. The ACGT GridR service is extended by a component that uses a set of preprocessor-like directives to organize and distribute calculations. The use of parallelization directives as special R comments provides users with the potential to accelerate lengthy calculations with changes to preexisting code. The GridR service and its extension are developed as components of the ACGT platform, one aim of which is to facilitate the data mining of clinical trials involving large datasets. In ACGT, GridR scripts are executed in the framework of a specifically developed workflow environment, which is also briefly outlined in the present article.
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