首页> 外文期刊>ACM transactions on computer systems >Mobile Processors for Energy-Efficient Web Search
【24h】

Mobile Processors for Energy-Efficient Web Search

机译:用于节能Web搜索的移动处理器

获取原文
获取原文并翻译 | 示例
           

摘要

As cloud and utility computing spreads, computer architects must ensure continued capability growth for the data centers that comprise the cloud. Given megawatt scale power budgets, increasing data center capability requires increasing computing hardware energy efficiency. To increase the data center's capability for work, the work done per Joule must increase. We pursue this efficiency even as the nature of data center applications evolves. Unlike traditional enterprise workloads, which are typically memory or I/O bound, big data computation and analytics exhibit greater compute intensity. This article examines the efficiency of mobile processors as a means for data center capability. In particular, we compare and contrast the performance and efficiency of the Microsoft Bing search engine executing on the mobile-class Atom processor and the server-class Xeon processor. Bing implements statistical machine learning to dynamically rank pages, producing sophisticated search results but also increasing computational intensity. While mobile processors are energy-efficient, they exact a price for that efficiency. The Atom is 5x more energy-efficient than the Xeon when comparing queries per Joule. However, search queries on Atom encounter higher latencies, different page results, and diminished robustness for complex queries. Despite these challenges, quality-of-service is maintained for most, common queries. Moreover, as different computational phases of the search engine encounter different bottlenecks, we describe implications for future architectural enhancements, application tuning, and system architectures. After optimizing the Atom server platform, a large share of power and cost go toward processor capability. With optimized Atoms, more servers can fit in a given data center power budget. For a data center with 15MW critical load, Atom-based servers increase capability by 3.2 x for Bing.
机译:随着云计算和公用计算的普及,计算机架构师必须确保组成云的数据中心的能力持续增长。给定兆瓦级的功率预算,增加数据中心功能需要提高计算硬件的能效。为了提高数据中心的工作能力,必须增加每焦耳完成的工作量。即使数据中心应用程序的性质不断发展,我们也追求这种效率。与通常受内存或I / O约束的传统企业工作负载不同,大数据计算和分析显示出更高的计算强度。本文研究了移动处理器作为数据中心功能的一种手段的效率。特别是,我们比较并对比了在移动级Atom处理器和服务器级Xeon处理器上执行的Microsoft Bing搜索引擎的性能和效率。 Bing实施统计机器学习来动态排名页面,产生复杂的搜索结果,但同时也增加了计算强度。尽管移动处理器具有高能效,但它们为此付出了高昂的代价。当比较每焦耳的查询量时,Atom的能源效率是Xeon的5倍。但是,在Atom上进行的搜索查询会遇到较高的延迟,不同的页面结果,并且会降低复杂查询的健壮性。尽管存在这些挑战,但大多数常见查询仍保持服务质量。此外,由于搜索引擎的不同计算阶段遇到了不同的瓶颈,因此我们描述了未来架构增强,应用程序调整和系统架构的含义。优化Atom服务器平台后,处理器的功能和成本将占很大一部分。借助优化的Atom,可以在给定的数据中心电源预算中容纳更多服务器。对于具有15MW临界负载的数据中心,基于Atom的服务器将Bing的功能提高了3.2倍。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号