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System and architecture level characterization of big data applications on big and little core server architectures

机译:大小核心服务器体系结构上大数据应用程序的系统和体系结构级别表征

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Emerging Big Data applications require a significant amount of server computational power. Big data analytics applications rely heavily on specific deep machine learning and data mining algorithms, and exhibit high computational intensity, memory intensity, I/O intensity and control intensity. Big data applications require computing resources that can efficiently scale to manage massive amounts of diverse data. However, the rapid growth in the data yields challenges to process data efficiently using current server architectures such as big Xeon cores. Furthermore, physical design constraints, such as power and density, have become the dominant limiting factor for scaling out servers. Therefore recent work advocates the use of low-power embedded cores in servers such as little Atom to address these challenges. In this work, through methodical investigation of power and performance measurements, and comprehensive system level and micro-architectural analysis, we characterize emerging big data applications on big Xeon and little Atom-based server architecture. The characterization results across a wide range of real-world big data applications and various software stacks demonstrate how the choice of big vs little core-based server for energy-efficiency is significantly influenced by the size of data, performance constraints, and presence of accelerator. Furthermore, the microarchitecture-level analysis highlights where improvement is needed in big and little cores microarchitecture.
机译:新兴的大数据应用程序需要大量的服务器计算能力。大数据分析应用程序严重依赖于特定的深度机器学习和数据挖掘算法,并且具有很高的计算强度,内存强度,I / O强度和控制强度。大数据应用程序需要能够有效扩展以管理大量不同数据的计算资源。但是,数据的快速增长带来了挑战,需要使用诸如大型Xeon内核之类的当前服务器体系结构有效地处理数据。此外,诸如功率和密度之类的物理设计约束已成为扩展服务器规模的主要限制因素。因此,最近的工作提倡在服务器(如Little Atom)中使用低功耗嵌入式内核来应对这些挑战。在这项工作中,通过对功率和性能测量进行系统的研究,并进行全面的系统级和微体系结构分析,我们对大型Xeon和基于Atom的小型服务器体系结构上的新兴大数据应用程序进行了表征。各种现实世界大数据应用程序和各种软件堆栈的表征结果表明,数据大小,性能约束和加速器的存在如何显着影响选择大型或小型基于内核的服务器以提高能效。此外,微体系结构级别的分析突出显示了在大小核心微体系结构中需要改进的地方。

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