An Efficient Topology Refining Scheme for Apache Flink

Muhammad Hanif, Choonhwa Lee
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引用次数: 2

Abstract

In the past decade, there has been a boom in the volume of data and in the popularity of cloud applications with industry and academia keenly interested in big data analytics, streaming application, and social networking applications. This led to the emergence of real-time distributed stream processing systems such as Flink, Storm, Dataflow, and Samza. These systems process complex queries on streaming data sets to be distributed across multiple worker nodes in a cluster. Few of them provide adequate supports to adapt the topologies of stream processing tasks to changing input workload. We present an intelligent and efficient topology adjustment scheme which allow Flink framework to refine its topology on the basis of incoming workload. It is designed to increase the overall performance by making the refining of topology robust according to incoming workload streams on the fly, while maintaining SLA constraints. Apache Flink distributed processing engine is used as testbed in the paper. Our preliminary results indicate that the proposed system outperforms the existing default framework.
一种高效的Apache Flink拓扑优化方案
在过去的十年中,数据量激增,云应用的普及,工业界和学术界对大数据分析、流媒体应用和社交网络应用非常感兴趣。这导致了实时分布式流处理系统的出现,如Flink、Storm、Dataflow和Samza。这些系统处理对流数据集的复杂查询,这些数据集将分布在集群中的多个工作节点上。它们中很少提供足够的支持,以使流处理任务的拓扑适应不断变化的输入工作负载。我们提出了一种智能高效的拓扑调整方案,使Flink框架能够根据传入的工作负载对其拓扑进行优化。它的设计目的是在保持SLA约束的同时,根据传入的工作负载流对拓扑进行健壮的细化,从而提高整体性能。本文采用Apache Flink分布式处理引擎作为测试平台。我们的初步结果表明,所提出的系统优于现有的默认框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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