基于网格的新闻语料库索引

B. Hughes, S. Venugopal, R. Buyya
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引用次数: 13

摘要

在本文中,我们报告了在自然语言处理领域,特别是在信息提取领域中使用计算网格来为信息检索任务创建查询索引的经验。鉴于大型语料库在自然语言处理领域的流行,计算网格为该领域的研究人员提供了重要的实用工具,这些研究人员正在达到计算效率的界限。我们利用自然语言处理中普遍存在的分段数据源与网格领域的并行化模型之间的亲和力。这里报告的实验是一个大规模的新闻专线语料库索引任务,其目标是有效地创建整个语料库的可查询索引。通过并行化索引任务并在澳大利亚计算网格上执行它,我们观察到在单个计算节点上进行相同实验的总体性能提高了2.26倍。除了报告原始性能影响之外,我们还反映了在实验执行过程中发现的一些有趣的点,并提出了网格中间件的一些新需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grid-based indexing of a newswire corpus
In this paper we report experience in the use of computational grids in the domain of natural language processing, particularly in the area of information extraction, to create query indices for information retrieval tasks. Given the prevalence of large corpora in the natural language processing domain, computational grids offer significant utility to researchers in the domain who are reaching the bounds of computational efficiency. We leverage the affinities between the segmented data sources prevalent in natural language processing and the parallelisation model from the grid domain. The experiment reported here is a large-scale newswire corpus indexing task, with the goal to efficiently create a queryable index of the entire corpus. By parallelising the indexing task and executing it on an Australian computational grid, we observe overall performance improvement of a 2.26x speedup over the same experiment on a single computational node. In addition to reporting the raw performance impact, we reflect on a number of interesting points discovered during the execution of the experiments and propose a number of new requirements for grid middleware.
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