利用hadoop框架,使用Mapreduce, Hive和Pig开发重复检测和分析

Priyanka Sethi, Prakash Kumar
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引用次数: 4

摘要

在这个物联网时代,迅猛增长的海量数据继续呈指数级增长。随着数字数据集的洪流在数据中心持续增长,重点需要转移到存储数据缩减方法上,这也与NoSQL数据库有关,因为传统的结构化存储系统在提供所需的存储、吞吐量和计算能力需求方面不断面临挑战,这些需求是捕获、存储、管理和分析海量数据所必需的。因此,重复数据删除系统在磁盘上保留冗余数据的单个副本以节省磁盘空间,但如果我们有意保留某些副本并需要一厢情愿地删除该怎么办呢?本文利用Hadoop框架设计并开发了一个复制检测系统,该系统可以在文件级本身和传输之前检测相同数据的多个副本。此后,各种数据集被调优以获得更好的性能,并使用MapReduce、Hive和Pig进行分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging hadoop framework to develop duplication detector and analysis using Mapreduce, Hive and Pig
The burgeoning volume of torrential data continues to grow exponentially in this very age of the Internet of Things. As this torrent of digital datasets continue to outgrow in datacenters, the focus needs to be shifted to stored data reduction methods and that too pertaining to NoSQL databases as traditional structured storage systems continuously tend to face challenges in providing the required storage, throughputs and computational power requirements necessary to capture, store, manage and analyze the deluge of data. Deduplication systems, thus designed, retain a single copy of redundant data on disk to save disk space, but what if we want to keep certain copies intentionally and need wishful elimination. This paper leverages Hadoop framework to design and develop a duplication detection system that detects multiple copies of the same data right at the file level itself and that too before transmission. Thereafter, various datasets are tuned for better performance and analysed using MapReduce, Hive and Pig.
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