DARE: Adaptive Data Replication for Efficient Cluster Scheduling

Cristina L. Abad, Yi Lu, R. Campbell
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引用次数: 169

Abstract

Placing data as close as possible to computation is a common practice of data intensive systems, commonly referred to as the data locality problem. By analyzing existing production systems, we confirm the benefit of data locality and find that data have different popularity and varying correlation of accesses. We propose DARE, a distributed adaptive data replication algorithm that aids the scheduler to achieve better data locality. DARE solves two problems, how many replicas to allocate for each file and where to place them, using probabilistic sampling and a competitive aging algorithm independently at each node. It takes advantage of existing remote data accesses in the system and incurs no extra network usage. Using two mixed workload traces from Face book, we show that DARE improves data locality by more than 7 times with the FIFO scheduler in Hadoop and achieves more than 85% data locality for the FAIR scheduler with delay scheduling. Turnaround time and job slowdown are reduced by 19% and 25\%, respectively.
DARE:用于高效集群调度的自适应数据复制
将数据放置在尽可能靠近计算的地方是数据密集型系统的一种常见做法,通常称为数据局部性问题。通过对现有生产系统的分析,我们证实了数据局部性的好处,并发现数据具有不同的流行度和不同的访问相关性。我们提出了一种分布式自适应数据复制算法DARE,它可以帮助调度器实现更好的数据局域性。DARE在每个节点分别使用概率抽样和竞争老化算法,解决了两个问题,即为每个文件分配多少副本以及将副本放置在何处。它利用了系统中现有的远程数据访问,并且不会导致额外的网络使用。使用来自facebook的两个混合工作负载跟踪,我们表明DARE使用Hadoop中的FIFO调度器将数据局部性提高了7倍以上,并且使用延迟调度的FAIR调度器实现了85%以上的数据局部性。周转时间和工作速度分别减少了19%和25%。
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