优化HDFS中海量电子系谱的存储

Yin Zhang, Weili Han, Wei Wang, Chang Lei
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引用次数: 12

摘要

得益于对生产、加工、储存、运输和销售阶段过程的可靠跟踪,电子谱系系统成为物联网的一项重要技术。在电子系谱系统中,将生成、存储和检索XML格式的小型但数量庞大的电子系谱。不幸的是,很少有人研究电子谱系系统中这些以小型XML文件形式存在的大量电子谱系的存储。因此,我们尝试利用Hadoop来解决海量电子谱系的存储问题,通过优化在HDFS中存储和访问海量小XML文件。首先,将同一信封中所有相关的小XML文件合并到一个较大的文件中,以减少NameNode中的元数据占用。其次,采用预取机制和合并机制,提高小XML文件的访问效率。最后,我们实现了一个原型来评估与原始HDFS的有效性和效率。结果表明,优化后的方法能够将namenode的内存消耗减少高达50%,将存储性能提高高达91%,并将Hadoop中的访问速度提高高达88%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing the storage of massive electronic pedigrees in HDFS
Benefiting from trustworthily tracking of the processes in the production, processing, storage, transportation and sale phases, an electronic pedigree system becomes an important technology of the Internet of Things. In an electronic pedigree system, small-sized but huge volume of electronic pedigrees in the XML format will be generated, stored, and retrieved. Unfortunately, study of these massive electronic pedigrees' storage in an electronic pedigree system, which is in the form of small XML files, is rarely concerned. We, therefore, try to leverage Hadoop to solve the storage problem of massive electronic pedigrees, by the optimization of storing and accessing massive small XML files in HDFS. First, all correlated small XML files of the same envelope are merged into a larger file to reduce the metadata occupation at NameNode. Second, a prefetching mechanism and a remerging mechanism are used to improve the efficiency of accessing small XML files. Finally, we implement a prototype to evaluate the effectiveness and efficiency comparing with the origin HDFS. The results show that the optimized approach is able to reduce the memory consumption of NameNodes by up to 50%, improve performance of storing by up to 91%, and accelerate accessing by up to 88% in Hadoop.
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