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MUSE: A Multi-Tierd and SLA-Driven Deduplication Framework for Cloud Storage Systems

机译:MUSE:用于云存储系统的多层和SLA驱动的重复数据删除框架

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For cloud storage service vendors, balancing the client-perceived IO performance and the self-perceived space cost is always one of the standing challenges. When applying deduplication techniques for the cloud storage systems, the demand for optimizing such tradeoff becomes more pressing. Enabling deduplication decreases the storage space cost, whereas the IO performance will be somewhat affected due to extra processing overhead and data fragmentation. In this article, we address this challenge by proposing MUSE, a MUti-tiered and SLA-drivEn deduplication framework for cloud storage systems. First, we propose a novel notation of Dedup-SLA (deduplication-oriented service level agreement). With different levels of quantified performance/space-cost combinations, the Dedup-SLA serves as a refined service quality protocol between service vendor and customer. Second, MUSE adopts multi-tiered deduplication that orchestrates several combinational forms of deduplication into multiple tiers with varied "deduplication strength". Third, we implement a mechanism called dynamic deduplication regulation (DDR) to adjust the deduplication behavior during runtime. MUSE's deduplication behavior is periodically switched between tiers according to the predefined Dedup-SLA and instant system status. We conduct comprehensive experiments to compare MUSE with several other types of deduplication schemes. The results demonstrate that MUSE significantly optimizes the IO-performance/space-cost balance compared to other schemes, hence delivering higher deduplication service quality for deduplication-enabled cloud storage systems.
机译:对于云存储服务供应商,平衡客户端感知的IO性能,自我感知的空间成本始终是校长之一。在为云存储系统应用重复数据删除技术时,优化这种权衡的需求变得更加紧迫。启用重复数据删除会降低存储空间成本,而IO性能将在额外的处理开销和数据碎片的情况下存在稍微影响。在本文中,我们通过提出Muse,Muti-Diered和SLA驱动的重复数据删除框架来解决这一挑战云存储系统。首先,我们提出了一种新的DEDUP-SLA(以重复数据删除的服务级别协议)表示新颖的符号。具有不同级别的量化性能/空间成本组合,DEDUP-SLA用作服务供应商和客户之间的精致服务质量协议。其次,Muse采用多层重复数据删除,使多种组合形式的重复数据删除成多个层,具有各种“重复数据删除强度”。第三,我们实现了一种称为动态重复数据删除调节(DDR)的机制来调整运行时期间的重复数据删除行为。 Muse的重复数据删除行为根据预定义的Dedup-SLA和即时系统状态定期切换到层之间。我们进行全面的实验,以比较Muse与其他几种类型的重复数据删除方案。结果表明,与其他方案相比,缪斯显着优化了IO - 性能/空间成本平衡,因此为支持重复数据删除的云存储系统提供了更高的重复数据删除服务质量。

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