A Cooperative Approach for Distributed Task Execution in Autonomic Clouds

M. Amoretti, Alberto Lluch-Lafuente, Stefano Sebastio
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引用次数: 17

Abstract

Virtualization and distributed computing are two key pillars that guarantee scalability of applications deployed in the Cloud. In Autonomous Cooperative Cloud-based Platforms, autonomous computing nodes cooperate to offer a PaaS Cloud for the deployment of user applications. Each node must allocate the necessary resources for applications to be executed with certain QoS guarantees. If the QoS of an application cannot be guaranteed a node has mainly two options: to allocate more resources (if it is possible) or to rely on the collaboration of other nodes. Making a decision is not trivial since it involves many factors (e.g. the cost of setting up virtual machines, migrating applications, discovering collaborators). In this paper we present a model of such scenarios and experimental results validating the convenience of cooperative strategies over selfish ones, where nodes do not help each other. We describe the architecture of the platform of autonomous clouds and the main features of the model, which has been implemented and evaluated in the DEUS discrete-event simulator. From the experimental evaluation, based on workload data from the Google Cloud Backend, we can conclude that (modulo our assumptions and simplifications) the performance of a volunteer cloud can be compared to that of a Google Cluster.
自主云中分布式任务执行的协作方法
虚拟化和分布式计算是保证部署在云中的应用程序的可伸缩性的两个关键支柱。在基于云的自治协作平台中,自治计算节点相互协作,为用户应用程序的部署提供一个PaaS云。每个节点必须为应用程序分配必要的资源,以执行某些QoS保证。如果不能保证应用程序的QoS,节点主要有两种选择:分配更多的资源(如果可能的话)或依赖其他节点的协作。做出一个决定并不容易,因为它涉及许多因素(例如,设置虚拟机的成本、迁移应用程序的成本、发现协作者的成本)。在本文中,我们提出了这样一个场景的模型和实验结果,验证了合作策略比自私策略的便利性,其中节点不互相帮助。我们描述了自主云平台的体系结构和模型的主要特征,并在DEUS离散事件模拟器中实现和评估了该模型。从实验评估中,基于来自Google Cloud Backend的工作负载数据,我们可以得出结论(对我们的假设和简化进行模化),志愿者云的性能可以与Google Cluster的性能进行比较。
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