Accelerating I/O Performance of Big Data Analytics on HPC Clusters through RDMA-Based Key-Value Store

Nusrat S. Islam, D. Shankar, Xiaoyi Lu, Md. Wasi-ur-Rahman, D. Panda
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引用次数: 27

Abstract

Hadoop Distributed File System (HDFS) is the underlying storage engine of many Big Data processing frameworks such as Hadoop MapReduce, HBase, Hive, and Spark. Even though HDFS is well-known for its scalability and reliability, the requirement of large amount of local storage space makes HDFS deployment challenging on HPC clusters. Moreover, HPC clusters usually have large installation of parallel file system like Lustre. In this study, we propose a novel design to integrate HDFS with Lustre through a high performance key-value store. We design a burst buffer system using RDMA-based Mem cached and present three schemes to integrate HDFS with Lustre through this buffer layer, considering different aspects of I/O, data-locality, and fault-tolerance. Our proposed schemes can ensure performance improvement for Big Data applications on HPC clusters. At the same time, they lead to reduced local storage requirement. Performance evaluations show that, our design can improve the write performance of Test DFSIO by up to 2.6x over HDFS and 1.5x over Lustre. The gain in read throughput is up to 8x. Sort execution time is reduced by up to 28% over Lustre and 19% over HDFS. Our design can also significantly benefit I/O-intensive workloads compared to both HDFS and Lustre.
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基于rdma的键值存储加速HPC集群大数据分析I/O性能
HDFS (Hadoop Distributed File System)是许多大数据处理框架(如Hadoop MapReduce、HBase、Hive、Spark)的底层存储引擎。尽管HDFS以其可扩展性和可靠性而闻名,但对大量本地存储空间的需求使得HDFS在HPC集群上的部署具有挑战性。此外,HPC集群通常安装大量的并行文件系统,如Lustre。在这项研究中,我们提出了一种新的设计,通过高性能的键值存储将HDFS与Lustre集成在一起。我们使用基于rdma的Mem缓存设计了一个突发缓冲系统,并提出了三种方案通过该缓冲层将HDFS与Lustre集成,考虑了I/O,数据局域性和容错的不同方面。我们提出的方案可以确保高性能计算集群上大数据应用的性能提升。同时,它们减少了本地存储需求。性能评估表明,我们的设计可以将Test DFSIO的写性能比HDFS提高2.6倍,比Lustre提高1.5倍。读吞吐量的增益高达8倍。排序执行时间比Lustre减少了28%,比HDFS减少了19%。与HDFS和Lustre相比,我们的设计还可以显著改善I/ o密集型工作负载。
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