大规模存储系统分布式恢复评估

Qin Xin, E. L. Miller, T. Schwarz
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引用次数: 93

摘要

由数千个磁盘驱动器组成的存储集群现在被用于大容量和高吞吐量。但由于存储节点数量的增加,其可靠性远不如小型存储系统。RAID技术不再足以保证此类系统所需的高数据可靠性,因为随着磁盘容量的增加,磁盘重建时间也会延长。我们提出了快速恢复机制(FARM),这是一种利用多余磁盘容量并减少数据恢复时间的分布式恢复方法。FARM与复制和擦除编码冗余方案协同工作,可以显著降低大型存储系统中数据丢失的概率。通过模拟磁盘故障下的系统行为,我们研究了影响系统可靠性、性能和成本的基本因素,例如故障检测、用于恢复的磁盘带宽使用、磁盘空间利用、磁盘驱动器替换和系统规模。我们的结果显示了FARM对系统可靠性的改善,并展示了各种因素对系统可靠性的影响。使用我们的技术,系统设计人员将能够以比以前更低的成本更好地构建可靠性更高的多拍字节存储系统。
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Evaluation of distributed recovery in large-scale storage systems
Storage clusters consisting of thousands of disk drives are now being used both for their large capacity and high throughput. However, their reliability is far worse than that of smaller storage systems due to the increased number of storage nodes. RAID technology is no longer sufficient to guarantee the necessary high data reliability for such systems, because disk rebuild time lengthens as disk capacity grows. We present fast recovery mechanism (FARM), a distributed recovery approach that exploits excess disk capacity and reduces data recovery time. FARM works in concert with replication and erasure-coding redundancy schemes to dramatically lower the probability of data loss in large-scale storage systems. We have examined essential factors that influence system reliability, performance, and costs, such as failure detections, disk bandwidth usage for recovery, disk space utilization, disk drive replacement, and system scales, by simulating system behavior under disk failures. Our results show the reliability improvement from FARM and demonstrate the impacts of various factors on system reliability. Using our techniques, system designers will be better able to build multipetabyte storage systems with much higher reliability at lower cost than previously possible.
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