基于Hibench基准的Hadoop和Spark的比较研究

Yassir Samadi, M. Zbakh, C. Tadonki
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引用次数: 34

摘要

由于社交网站等新技术、新设备和新通信手段的出现,导致每年甚至每天产生的数据量都在显著增加,大数据目前是世界各地公司和科学家的热门话题。此外,传统的算法和技术在处理、分析和存储如此庞大的数据方面效率低下。因此,要解决这个问题,需要大数据框架。在本文中,我们提出并讨论了两种流行的大数据框架之间的性能比较。Hadoop和Spark,用于在大型集群上以并行和分布式模式高效地处理大量数据。Hibench基准测试套件用于根据执行时间、吞吐量和加速等标准比较这两个框架的性能。实验结果表明,在处理海量数据时,Spark比Hadoop更高效。然而,spark需要更高的内存分配,因为它将进程加载到内存中并将它们保存在缓存中一段时间,就像标准数据库一样。因此,选择取决于性能水平和内存约束。
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Comparative study between Hadoop and Spark based on Hibench benchmarks
Big Data is currently a hot topic for companies and scientists around the world, due to the emergence of new technologies, devices and communication means like social network sites, which led to a noticeable increase of the amount of data produced every year, even every day. In addition, traditional algorithms and technologies are inefficient to process, analyze and store this vast amount of data. So, to solve this problem, Big Data frameworks are needed. In this paper, we present and discuss a performance comparison between two popular Big Data frameworks. Hadoop and Spark, which are used to efficiently process vast amount of data in parallel and distributed mode on a large clusters. Hibench benchmark suite is used to compare the performance of these two frameworks based on the criteria as execution time, throughput and speedup. Our experimental results show that Spark is more efficient than Hadoop to deal with large amount of data. However, spark requires higher memory allocation, since it loads processes into memory and keeps them in caches for a while, just like standard databases. So the choice depends on performance level and memory constraints.
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