重复数据删除的自适应管道

Jingwei Ma, Bin Zhao, G. Wang, X. Liu
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引用次数: 6

摘要

重复数据删除技术已成为数据存储领域的研究热点之一。已经提出了许多减少重复数据删除引起的磁盘I/O的方法。研究了一些加速重复数据删除子任务计算的方法。但是,计算子任务的顺序会显著影响整体重复数据删除吞吐量,因为计算子任务在不同顺序和不同数据集上的工作负载和并发性差异很大。提出了一种用于重复数据删除计算子任务的自适应流水线模型。它同时考虑了数据类型和硬件平台。该算法以数据流的压缩比和重复比、不同处理单元上的压缩速度和指纹识别速度为参数,确定流水线各阶段(计算子任务)的最优顺序,并将各阶段分配给处理速度最快的处理单元。也就是说,“自适应”既指数据自适应,也指硬件自适应。实验结果表明,与普通的固定管道相比,自适应管道的重复数据删除吞吐量提高了50%以上,这意味着它适用于现代异构多核系统上各种数据类型的同时重复数据删除。
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Adaptive pipeline for deduplication
Deduplication has become one of the hottest topics in the field of data storage. Quite a few methods towards reducing disk I/O caused by deduplication have been proposed. Some methods also have been studied to accelerate computational sub-tasks in deduplication. However, the order of computational sub-tasks can affect overall deduplication throughput significantly, because computational sub-tasks exhibit quite different workload and concurrency in different orders and with different data sets. This paper proposes an adaptive pipelining model for the computational sub-tasks in deduplication. It takes both data type and hardware platform into account. Taking the compression ratio and the duplicate ratio of the data stream, and the compression speed and the fingerprinting speed on different processing units as parameters, it determines the optimal order of the pipeline stages (computational sub-tasks) and assigns each stage to the processing unit which processes it fastest. That is, “adaptive” refers to both data adaptive and hardware adaptive. Experimental results show that the adaptive pipeline improves the deduplication throughput up to 50% compared with the plain fixed pipeline, which implies that it is suitable for simultaneous deduplication of various data types on modern heterogeneous multi-core systems.
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