首页> 外文会议>International Conference on Collaboration Technologies and Systems >Nebula: Distributed edge cloud for data-intensive computing
【24h】

Nebula: Distributed edge cloud for data-intensive computing

机译:Nebula:用于数据密集型计算的分布式边缘云

获取原文

摘要

Today, centralized data-centers or clouds have become the de-facto platform for data-intensive computing in the commercial, and increasingly, scientific domains. This is because clouds such as Amazon AWS and Microsoft Azure offer large amounts of monetized co-located computation and storage well suited to typical processing tasks such as batch analytics. However, many Big Data applications rely on data that is geographically distributed, and is not collocated with the centralized computational resources provided by clouds. Examples of such applications include analysis of user data such as blogs, video feeds taken from geographically separated cameras, monitoring and log analysis of server and content distribution network (CDN) logs, and scientific data collected from distributed instruments and sensors. Such applications lead to a number of challenges for efficient data analytics in today's cloud platforms. First, in many applications, data is both large and widely distributed and data upload may constitute a non-trivial portion of the execution time. Second, centralized cloud resources present a single point of failure and network partitions between the data sources and the cloud can also lead to service disruptions. Third, the cost to transport, store, and process data may be outside of the budget of the small-scale application designer or end-user.
机译:如今,集中式数据中心或云已经成为商业领域以及越来越多的科学领域中用于数据密集型计算的实际平台。这是因为诸如Amazon AWS和Microsoft Azure之类的云提供了大量货币化的托管托管计算和存储,非常适合诸如批处理分析之类的典型处理任务。但是,许多大数据应用程序都依赖于地理上分散的数据,并且这些数据与云提供的集中式计算资源没有并置。此类应用程序的示例包括对用户数据(例如博客)的分析,从地理上分开的摄像头获取的视频馈送,对服务器和内容分发网络(CDN)日志的监视和日志分析,以及从分布式仪器和传感器收集的科学数据。在当今的云平台中,此类应用程序为高效的数据分析带来了许多挑战。首先,在许多应用程序中,数据既庞大又分布广泛,并且数据上载可能构成执行时间的重要部分。其次,集中式云资源呈现出单点故障,数据源与云之间的网络分区也可能导致服务中断。第三,传输,存储和处理数据的成本可能超出了小型应用程序设计者或最终用户的预算。

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