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IaaS Cloud Availability Planning using Models and Genetic Algorithms

机译:使用模型和遗传算法的IaaS云可用性规划

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One of the main goals of cloud customers is to improve the availability levels of their applications. Thus, Cloud Providers usually offer Service Level Agreements (SLAs) to meet the availability requirements of the customers. However, setting up reasonable availability SLAs is a challenging task due to the cloud environment complexity. High availability is also a challenge for small private cloud environments, which nowadays have to provide a high availability platform for the hosted applications. In this paper, we propose an approach to support the design of Infrastructure-as-a-Service (IaaS) Cloud architectures aiming at the desired levels of system availability. Our fundamental architecture considers the main four components of virtualized environments: Front-End, Physical Machines, Virtual Machines and sStorage Area Network. We designed an availability model for IaaS architectures based on these components and used it as input for our genetic algorithm (RENATA). RENATA output suggests redundancy schemes to achieve classes of target availability, from managed environments (with 99% of availability) to ultra-availability environments (with 99.99999% of availability). Our results also include the Capacity Oriented Availability of each redundancy scheme. We also present a failure and repair injection experiment to support the verification of model correctness.
机译:云客户的主要目标之一是提高其应用程序的可用性级别。因此,云提供商通常会提供服务级别协议(SLA),以满足客户的可用性要求。但是,由于云环境的复杂性,设置合理的可用性SLA是一项艰巨的任务。对于小型私有云环境而言,高可用性也是一个挑战,如今小型私有云环境必须为托管应用程序提供高可用性平台。在本文中,我们针对目标系统可用性的期望水平,提出了一种支持基础架构即服务(IaaS)云架构设计的方法。我们的基本体系结构考虑了虚拟化环境的主要四个组成部分:前端,物理机,虚拟机和sStorage Area Network。我们基于这些组件设计了IaaS架构的可用性模型,并将其用作我们的遗传算法(RENATA)的输入。 RENATA的输出建议采用冗余方案来实现目标可用性级别,从受管环境(具有99%的可用性)到超可用性环境(具有99.99999%的可用性)。我们的结果还包括每个冗余方案的面向容量的可用性。我们还提出了故障和修复注入实验,以支持对模型正确性的验证。

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