首页> 外文会议>International Conference on Parallel Processing >SLA-Based Resource Scheduling for Big Data Analytics as a Service in Cloud Computing Environments
【24h】

SLA-Based Resource Scheduling for Big Data Analytics as a Service in Cloud Computing Environments

机译:基于SLA的大数据分析作为云计算环境中服务的资源调度

获取原文

摘要

Data analytics plays a significant role in gaining insight of big data that can benefit in decision making and problem solving for various application domains such as science, engineering, and commerce. Cloud computing is a suitable platform for Big Data Analytic Applications (BDAAs) that can greatly reduce application cost by elastically provisioning resources based on user requirements and in a pay as you go model. BDAAs are typically catered for specific domains and are usually expensive. Moreover, it is difficult to provision resources for BDAAs with fluctuating resource requirements and reduce the resource cost. As a result, BDAAs are mostly used by large enterprises. Therefore, it is necessary to have a general Analytics as a Service (AaaS) platform that can provision BDAAs to users in various domains as consumable services in an easy to use way and at lower price. To support the AaaS platform, our research focuses on efficiently scheduling Cloud resources for BDAAs to satisfy Quality of Service (QoS) requirements of budget and deadline for data analytic requests and maximize profit for the AaaS platform. We propose an admission control and resource scheduling algorithm, which not only satisfies QoS requirements of requests as guaranteed in Service Level Agreements (SLAs), but also increases the profit for AaaS providers by offering a cost-effective resource scheduling solution. We propose the architecture and models for the AaaS platform and conduct experiments to evaluate the proposed algorithm. Results show the efficiency of the algorithm in SLA guarantee, profit enhancement, and cost saving.
机译:数据分析中扮演着越来越能够在决策和解决问题的各种应用领域,如科学,工程和商业受益大数据的洞察力显著的作用。云计算是大数据分析应用软件(BDAAs),可以通过你去模型弹性调配根据用户的要求和付费资源大大降低应用成本合适的平台。 BDAAs通常照顾的特定域和通常昂贵的。此外,也很难对BDAAs提供资源与波动的资源需求和降低资源成本。其结果是,BDAAs大多被大型企业。因此,有必要有一个大致的分析即服务(AAAS)的平台,可以提供BDAAs在各个领域为消费的服务用户在一个易于使用的方式和更低的价格。为了支持美国科学促进会的平台,我们的研究主要集中在有效地调度云资源BDAAs以服务满足质量(QoS)的预算和期限进行数据分析要求和利润最大化为美国科学促进会平台的要求。我们建议的接纳控制和资源调度算法,有保证的服务级别协议(SLA),不仅满足QoS请求的要求,还通过提供具有成本效益的资源调度解决方案增加了美国科学促进会提供的利润。我们建议的架构和模型,美国科学促进会的平台和进行实验的算法评估。结果表明:在SLA保证,利润提升和成本节约了算法的效率。

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