AJIRA: A Lightweight Distributed Middleware for MapReduce and Stream Processing

J. Urbani, Alessandro Margara, C. Jacobs, Spyros Voulgaris, H. Bal
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引用次数: 27

Abstract

Currently, MapReduce is the most popular programming model for large-scale data processing and this motivated the research community to improve its efficiency either with new extensions, algorithmic optimizations, or hardware. In this paper we address two main limitations of MapReduce: one relates to the model's limited expressiveness, which prevents the implementation of complex programs that require multiple steps or iterations. The other relates to the efficiency of its most popular implementations (e.g., Hadoop), which provide good resource utilization only for massive volumes of input, operating sub optimally for smaller or rapidly changing input. To address these limitations, we present AJIRA, a new middleware designed for efficient and generic data processing. At a conceptual level, AJIRA replaces the traditional map/reduce primitives by generic operators that can be dynamically allocated, allowing the execution of more complex batch and stream processing jobs. At a more technical level, AJIRA adopts a distributed, multi-threaded architecture that strives at minimizing overhead for non-critical functionality. These characteristics allow AJIRA to be used as a single programming model for both batch and stream processing. To this end, we evaluated its performance against Hadoop, Spark, Esper, and Storm, which are state of the art systems for both batch and stream processing. Our evaluation shows that AJIRA is competitive in a wide range of scenarios both in terms of processing time and scalability, making it an ideal choice where flexibility, extensibility, and the processing of both large and dynamic data with a single programming model are either desirable or even mandatory requirements.
AJIRA:用于MapReduce和流处理的轻量级分布式中间件
目前,MapReduce是用于大规模数据处理的最流行的编程模型,这促使研究社区通过新的扩展、算法优化或硬件来提高其效率。在本文中,我们解决了MapReduce的两个主要限制:一个与模型有限的表达性有关,它阻止了需要多个步骤或迭代的复杂程序的实现。另一个与它最流行的实现(例如Hadoop)的效率有关,它只能为大量输入提供良好的资源利用率,而对于较小或快速变化的输入则不太理想。为了解决这些限制,我们提出了AJIRA,这是一种为高效和通用数据处理而设计的新中间件。在概念层面上,AJIRA用可以动态分配的通用操作符取代了传统的map/reduce原语,从而允许执行更复杂的批处理和流处理作业。在更技术性的层面上,AJIRA采用分布式多线程体系结构,力求将非关键功能的开销降至最低。这些特性使得AJIRA可以作为批处理和流处理的单一编程模型使用。为此,我们将其性能与Hadoop、Spark、Esper和Storm进行了比较,这些系统都是批处理和流处理的先进系统。我们的评估表明,AJIRA在处理时间和可伸缩性方面在广泛的场景中都具有竞争力,使其成为理想的选择,其中灵活性、可扩展性以及使用单个编程模型处理大型和动态数据是理想的要求,甚至是强制性的要求。
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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