基于磁盘搜索的小项分布

Andrew Kane, Frank Wm. Tompa
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引用次数: 0

摘要

基于磁盘的搜索系统在一台或多台机器上的多个磁盘上分布大型索引,其中文档通常随机分配给磁盘,以实现负载平衡。然而,随机分布降低了高效索引压缩所需的聚类。使用GOV2数据集,我们演示了各种排序技术对索引压缩的影响,然后量化了各种文档分发方法对压缩和负载平衡的影响。我们通过使用两种标准方法(文档和术语分布)以及混合方法(小术语分布)模拟基于磁盘的搜索系统,在10个磁盘上扩展10xGOV2索引,从而探索运行时性能。我们发现小周期分布具有最佳性能,特别是在存在列表缓存的情况下,并且认为这种很少被讨论的分布方法可以在许多实际安装中提高基于磁盘的搜索性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Small-Term Distribution for Disk-Based Search
A disk-based search system distributes a large index across multiple disks on one or more machines, where documents are typically assigned to disks at random in order to achieve load balancing. However, random distribution degrades clustering, which is required for efficient index compression. Using the GOV2 dataset, we demonstrate the effect of various ordering techniques on index compression, and then quantify the effect of various document distribution approaches on compression and load balancing. We explore runtime performance by simulating a disk-based search system for a scaled-out 10xGOV2 index over ten disks using two standard approaches, document and term distribution, as well as a hybrid approach: small-term distribution. We find that small-term distribution has the best performance, especially in the presence of list caching, and argue that this rarely discussed distribution approach can improve disk-based search performance for many real-world installations.
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