Amdahl's Law in Big Data Analytics: Alive and Kicking in TPCx-BB (BigBench)

Daniel Richins, Tahrina Ahmed, R. Clapp, V. Reddi
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引用次数: 12

Abstract

Big data, specifically data analytics, is responsible for driving many of consumers' most common online activities, including shopping, web searches, and interactions on social media. In this paper, we present the first (micro)architectural investigation of a new industry-standard, open source benchmark suite directed at big data analytics applications—TPCx-BB (BigBench). Where previous work has usually studied benchmarks which oversimplify big data analytics, our study of BigBench reveals that there is immense diversity among applications, owing to their varied data types, computational paradigms, and analyses. In our analysis, we also make an important discovery generally restricting processor performance in big data. Contrary to conventional wisdom that big data applications lend themselves naturally to parallelism, we discover that they lack sufficient thread-level parallelism (TLP) to fully utilize all cores. In other words, they are constrained by Amdahl's law. While TLP may be limited by various factors, ultimately we find that single-thread performance is as relevant in scale-out workloads as it is in more classical applications. To this end we present core packing: a software and hardware solution that could provide as much as 20% execution speedup for some big data analytics applications.
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Amdahl定律在大数据分析中的应用:TPCx-BB (BigBench)
大数据,特别是数据分析,负责驱动消费者的许多最常见的在线活动,包括购物、网络搜索和社交媒体上的互动。在本文中,我们提出了针对大数据分析应用程序的新行业标准、开源基准套件tpcx - bb (BigBench)的第一个(微观)架构调查。以前的工作通常是研究过度简化大数据分析的基准,而我们对BigBench的研究表明,由于数据类型、计算范式和分析的不同,应用程序之间存在巨大的多样性。在我们的分析中,我们还发现了在大数据中普遍限制处理器性能的一个重要问题。与传统观点相反,我们发现大数据应用程序缺乏足够的线程级并行性(TLP)来充分利用所有核心。换句话说,它们受到阿姆达尔定律的约束。虽然TLP可能受到各种因素的限制,但最终我们发现单线程性能在横向扩展工作负载中与在更经典的应用程序中一样重要。为此,我们提出了核心打包:一个软硬件解决方案,可以为一些大数据分析应用程序提供高达20%的执行加速。
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