【24h】

QoS lake: Challenges, design and technologies

机译:QoS湖:挑战,设计和技术

获取原文
获取原文并翻译 | 示例

摘要

QoS evaluation based on their historical data not only helps in getting more accurate QoS, but also helps in making future QoS prediction, recommendation and knowledge discovery. [1] designed a generic QaaS (Quality as a service) model in the same line as PaaS and SaaS, where users can provide QoS attributes as inputs and the model returns services satisfying the user's QoS. It uses historical data to evaluate accurate QoS. Storing and evaluating QoS based on historical data and managing QoS for all services on the internet is challenging. This paper proposed a QoS lake in the same line of Data Lake for implementing QaaS model using big data technologies like Hadoop, Spark, and Yarn etc. The QoS Lake is a very large repository that stores all logs generated from services and its evaluated QoS data in its original context for all services on internet. The log data are processed to evaluate QoS either in batch or real time. QoS Lake is integrated with cutting-edge analytics, automation, orchestration and machine intelligence tools and languages which are used for future prediction, recommendation and knowledge discovery. QoS Lake has four loosely coupled layers namely; Ingestion layer, data layer, Analysis layer and Visualization layer. The challenges and advantages of the data lake are also discussed. The paper also presented the technologies available today to realize each layer and functionalities of the QoS Lake.
机译:基于其历史数据的QoS评估不仅有助于获得更准确的QoS,而且还有助于进行将来的QoS预测,推荐和知识发现。 [1]在PaaS和SaaS的同一行中设计了一个通用的QaaS(质量即服务)模型,其中用户可以提供QoS属性作为输入,并且该模型返回满足用户QoS的服务。它使用历史数据来评估准确的QoS。基于历史数据存储和评估QoS以及管理Internet上所有服务的QoS是一项挑战。本文在Data Lake的同一行中提出了一个QoS Lake,用于使用Hadoop,Spark和Yarn等大数据技术来实现QaaS模型。QoS Lake是一个非常大的存储库,用于存储从服务生成的所有日志及其评估的QoS数据在互联网上所有服务的原始上下文中。处理日志数据以批量或实时方式评估QoS。 QoS Lake与最先进的分析,自动化,编排和机器智能工具以及语言集成在一起,可用于将来的预测,推荐和知识发现。 QoS Lake具有四个松散耦合层:摄取层,数据层,分析层和可视化层。还讨论了数据湖的挑战和优势。本文还介绍了当今可用于实现QoS Lake的每个层和功能的技术。

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