Experimental Study on the Performance and Resource Utilization of Data Streaming Frameworks

Subarna Chatterjee, C. Morin
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引用次数: 12

Abstract

With the advent of the Internet of Things (IoT), data stream processing have gained increased attention due to the ever-increasing need to process heterogeneous and voluminous data streams. This work addresses the problem of selecting a correct stream processing framework for a given application to be executed within a specific physical infrastructure. For this purpose, we focus on a thorough comparative analysis of three data stream processing platforms – Apache Flink, Apache Storm, and Twitter Heron (the enhanced version of Apache Storm), that are chosen based on their potential to process both streams and batches in real-time. The goal of the work is to enlighten the cloud-clients and the cloud-providers with the knowledge of the choice of the resource-efficient and requirement-adaptive streaming platform for a given application so that they can plan during allocation or assignment of Virtual Machines for application execution. For the comparative performance analysis of the chosen platforms, we have experimented using 8-node clusters on Grid5000 experimentation testbed and have selected a wide variety of applications ranging from a conventional benchmark to sensor-based IoT application and statistical batch processing application. In addition to the various performance metrics related to the elasticity and resource usage of the platforms, this work presents a comparative study of the “green-ness” of the streaming platforms by analyzing their power consumption – one of the first attempts of its kind. The obtained results are thoroughly analyzed to illustrate the functional behavior of these platforms under different computing scenarios.
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数据流框架性能与资源利用的实验研究
随着物联网(IoT)的出现,由于处理异构和大量数据流的需求不断增加,数据流处理受到越来越多的关注。这项工作解决了为在特定物理基础设施中执行的给定应用程序选择正确的流处理框架的问题。为此,我们重点对三个数据流处理平台——Apache Flink、Apache Storm和Twitter Heron (Apache Storm的增强版本)——进行了全面的比较分析,这些平台是基于它们实时处理流和批处理的潜力而选择的。这项工作的目标是让云客户端和云提供商了解如何为给定的应用程序选择资源高效和需求自适应的流平台,以便他们可以在分配或分配应用程序执行的虚拟机期间进行计划。为了比较所选平台的性能分析,我们在Grid5000实验测试台上使用8节点集群进行了实验,并选择了从传统基准到基于传感器的物联网应用和统计批处理应用的各种应用。除了与平台的弹性和资源使用相关的各种性能指标外,这项工作还通过分析其功耗对流媒体平台的“绿色”进行了比较研究——这是同类研究的首次尝试之一。对得到的结果进行了深入的分析,以说明这些平台在不同计算场景下的功能行为。
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