On Efficient Hierarchical Storage for Big Data Processing

K. Krish, Bharti Wadhwa, M. S. Iqbal, M. Mustafa Rafique, Ali R. Butt
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引用次数: 26

Abstract

A promising trend in storage management for big data frameworks, such as Hadoop and Spark, is the emergence of heterogeneous and hybrid storage systems that employ different types of storage devices, e.g. SSDs, RAMDisks, etc., alongside traditional HDDs. However, scheduling data accesses or requests to an appropriate storage device is non-trivial and depends on several factors such as data locality, device performance, and application compute and storage resources utilization. To this end, we present DUX, an application-attuned dynamic data management system for data processing frameworks, which aims to improve overall application I/O throughput by efficiently using SSDs only for workloads that are expected to benefit from them rather than the extant approach of storing a fraction of the overall workloads in SSDs. The novelty of DUX lies in profiling application performance on SSDs and HDDs, analyzing the resulting I/O behavior, and considering the available SSDs at runtime to dynamically place data in an appropriate storage tier. Evaluation of DUX with trace-driven simulations using synthetic Facebook workloads shows that even when using 5.5× fewer SSDs compared to a SSD-only solution, DUX incurs only a small (5%) performance overhead, and thus offers an affordable and efficient storage tier management.
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面向大数据处理的高效分层存储研究
在大数据框架(如Hadoop和Spark)的存储管理中,一个有希望的趋势是异构和混合存储系统的出现,这些存储系统使用不同类型的存储设备,例如ssd, RAMDisks等,以及传统的hdd。然而,将数据访问或请求调度到适当的存储设备并非易事,它取决于几个因素,例如数据位置、设备性能、应用程序计算和存储资源利用率。为此,我们提出了DUX,这是一个针对数据处理框架的应用程序调优的动态数据管理系统,其目的是通过有效地将ssd仅用于预期从中受益的工作负载,而不是现有的将一小部分工作负载存储在ssd中的方法,来提高应用程序的整体I/O吞吐量。DUX的新颖之处在于分析ssd和hdd上的应用程序性能,分析产生的I/O行为,并在运行时考虑可用的ssd以动态地将数据放置在适当的存储层中。使用合成Facebook工作负载的跟踪驱动模拟对DUX进行的评估表明,即使与仅使用ssd的解决方案相比,使用5.5倍的ssd, DUX也只会产生很小的(5%)性能开销,因此提供了负担得起的高效存储层管理。
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