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首页> 外文期刊>Parallel and Distributed Systems, IEEE Transactions on >Scale-RS: An Efficient Scaling Scheme for RS-Coded Storage Clusters
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Scale-RS: An Efficient Scaling Scheme for RS-Coded Storage Clusters

机译:Scale-RS:RS编码存储集群的高效扩展方案

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摘要

It is indispensable to scale erasure-coded storage clusters to meet requirements of increased storage capacity and I/O performance. In this study, we propose an efficient scaling scheme for Reed-Solomon-coded storage clusters called Scale-RS, which has three salient features. First, Scale-RS achieves uniform data distribution by equally placing data blocks among old and new chunks using a transposed data layout. Second, Scale-RS minimizes data movement incurred in the procedures of data redistribution and parity update. Scale-RS not only reaches the lower bound of data migration traffic by transferring necessary data blocks from old data chunks to new chunks, but it also reduces update traffic via generating parity difference blocks from data blocks stored in an individual data chunk. Third, Scale-RS improves the I/O performance of scaled storage clusters in terms of read parallelism and write throughput. We implement Scale-RS along with two alternative scaling schemes in a Reed-Solomon-coded storage cluster, on which real-world I/O traces are replayed. Experimental results demonstrate that Scale-RS achieves the highest read performance among the three scaling schemes after data redistribution. When it comes to scaling from six data chunks to nine, Scale-RS can outperform the other two scaling schemes in terms of aggregate write throughput by a factor of 2.85 and 3.05 under online filling and offline filling, respectively. We also show that user response time is slightly enlarged during data redistribution due to bandwidth competition between migration and user I/Os.
机译:扩展擦除编码存储集群以满足增加存储容量和I / O性能的需求是必不可少的。在这项研究中,我们为Reed-Solomon编码的存储集群Scale-RS提出了一种有效的扩展方案,该方案具有三个显着特征。首先,Scale-RS通过使用转置的数据布局在旧块和新块之间均等地放置数据块来实现均匀的数据分发。其次,Scale-RS最大限度地减少了数据重新分发和奇偶校验更新过程中引起的数据移动。 Scale-RS不仅通过将必要的数据块从旧数据块传输到新块来达到数据迁移流量的下限,而且还通过从存储在单个数据块中的数据块生成奇偶校验差异块来减少更新流量。第三,Scale-RS在读取并行性和写入吞吐量方面提高了扩展存储集群的I / O性能。我们在Reed-Solomon编码的存储集群中实现Scale-RS以及两个替代的缩放方案,在该集群上重播真实的I / O跟踪。实验结果表明,Scale-RS在数据重新分配后实现了三种缩放方案中最高的读取性能。当从六个数据块扩展到九个数据块时,在在线填充和脱机填充下,Scale-RS的总写吞吐量可以分别比其他两个扩展方案高2.85和3.05倍。我们还显示,由于迁移和用户I / O之间的带宽竞争,在数据重新分发期间,用户响应时间会稍微延长。

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