实时流处理引擎的比较

Devesh Kumar Lal, U. Suman
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引用次数: 6

摘要

实时流处理引擎是为不同的特定用例而开发的,其中包含各种领域,如物联网、金融、广告、电信、医疗保健等。这些流处理引擎基于分布式处理模型,其中处理无界数据流。数据流的语义是在对整个数据集进行完全扫描后确定的,这给实时数据流处理带来了不便,不能一次性处理整个数据流。窗口机制用于处理预定义拓扑中的数据流,具有固定数量的操作,如连接、聚合、过滤等。本文与现有的流处理引擎进行了比较研究。这种比较为选择合适的流处理引擎提供了指导。讨论了一种改进的主从流处理模型,以减少延迟,提高可伸缩性和容错性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards comparison of real time stream processing engines
The real time stream processing engines are developed for different specific use cases, which incorporates various domains such as, IOT, finance, advertisement, telecommunications, healthcare etc. These stream processing engines are based on distributed processing models, where unbounded data streams are processed. Semantics of data stream is determined after complete scanning of whole data sets, which becomes inconvenient in real time stream processing to process entire data stream at once. Windowing mechanisms are used for processing data stream in a predefine topology with fixed number of operations such as, join, aggregate, filter etc. In this paper, a comparative study is performed with existing stream processing engines. This comparison provides a direction for choosing an appropriate stream processing engine. A modified master-slave model for stream processing is discussed for reducing latency, improving scalability and fault tolerance.
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