A similarity clustering-based deduplication strategy in cloud storage systems

Saiqin Long, Zhetao Li, Zihao Liu, Qingyong Deng, Sangyoon Oh, N. Komuro
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引用次数: 3

Abstract

Deduplication is a data redundancy elimination technique, designed to save system storage resources by reducing redundant data in cloud storage systems. With the development of cloud computing technology, deduplication has been increasingly applied to cloud data centers. However, traditional technologies face great challenges in big data deduplication to properly weigh the two conflicting goals of deduplication throughput and high duplicate elimination ratio. This paper proposes a similarity clustering-based deduplication strategy (named SCDS), which aims to delete more duplicate data without significantly increasing system overhead. The main idea of SCDS is to narrow the query range of fingerprint index by data partitioning and similarity clustering algorithms. In the data preprocessing stage, SCDS uses data partitioning algorithm to classify similar data together. In the data deletion stage, the similarity clustering algorithm is used to divide the similar data fingerprint superblock into the same cluster. Repetitive fingerprints are detected in the same cluster to speed up the retrieval of duplicate fingerprints. Experiments show that the deduplication ratio of SCDS is better than some existing similarity deduplication algorithms, but the overhead is only slightly higher than some high throughput but low deduplication ratio methods.
云存储系统中基于相似性聚类的重复数据删除策略
重复数据删除是一种数据冗余消除技术,通过减少云存储系统中的冗余数据,节省系统存储资源。随着云计算技术的发展,重复数据删除在云数据中心的应用越来越广泛。然而,在大数据重复数据删除中,传统技术如何权衡重复数据删除吞吐量和高重复消除率这两个相互冲突的目标,面临着巨大的挑战。本文提出了一种基于相似聚类的重复数据删除策略(SCDS),该策略的目的是在不显著增加系统开销的情况下删除更多的重复数据。SCDS的主要思想是通过数据划分和相似聚类算法来缩小指纹索引的查询范围。在数据预处理阶段,SCDS使用数据划分算法对相似的数据进行分类。在数据删除阶段,采用相似聚类算法将相似数据指纹超级块划分到同一聚类中。在同一聚类中检测重复指纹,以加快重复指纹的检索速度。实验表明,SCDS的重复数据删除率优于现有的一些相似重复数据删除算法,但开销仅略高于一些高吞吐量、低重复数据删除率的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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