首页> 外文会议>IEEE International Conference on Cloud Computing >A Toolset for Detecting Containerized Application's Dependencies in CaaS Clouds
【24h】

A Toolset for Detecting Containerized Application's Dependencies in CaaS Clouds

机译:在CaaS云中检测容器化应用程序依赖性的工具集

获取原文

摘要

There has been a dramatic increase in the popularity of Container as a Service (CaaS) clouds. The CaaS multi-tier applications could be optimized by using network topology, link or server load knowledge to choose the best endpoints to run in CaaS cloud. However, it is difficult to apply those optimizations to the public datacenter shared by multi-tenants. This is because of the opacity between the tenants and the datacenter providers: Providers have no insight into tenant's container workloads and dependencies, while tenants have no clue about the underlying network topology, link, and load. As a result, containers might be booted at wrong physical nodes that lead to performance degradation due to bi-section bandwidth bottleneck or co-located container interference. We propose 'DocMan', a toolset that adopts a black-box approach to discover container ensembles and collect information about intra-ensemble container interactions. It uses a combination of techniques such as distance identification and hierarchical clustering. The experimental results demonstrate that DocMan enables optimized containers placement to reduce the stress on bi-section bandwidth of the datacenter's network. The method can detect container ensembles at low cost and with 92% accuracy and significantly improve performance for multi-tier applications under the best of circumstances.
机译:容器即服务(CaaS)云的普及已经有了显着的增长。通过使用网络拓扑,链接或服务器负载知识来选择最佳端点以在CaaS云中运行,可以优化CaaS多层应用程序。但是,很难将这些优化应用于多租户共享的公共数据中心。这是由于租户与数据中心提供程序之间的不透明性:提供程序不了解租户的容器工作负载和依赖性,而租户不了解底层网络拓扑,链接和负载。结果,容器可能会在错误的物理节点上启动,这会由于两部分带宽瓶颈或共处一地的容器干扰而导致性能下降。我们建议使用“ DocMan”工具集,该工具集采用黑盒方法来发现容器集合并收集有关集合内容器交互的信息。它结合了诸如距离识别和层次聚类的技术。实验结果表明,DocMan支持优化的容器放置,以减轻数据中心网络双向带宽的压力。该方法可以低成本,92%的精度检测容器组件,并在最佳情况下显着提高多层应用程序的性能。

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