基于覆盖率的云适应指标

Y. Magid, Rachel Tzoref, Marcel Zalmanovici
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引用次数: 3

摘要

这项工作引入了新的基于组合覆盖的度量,用于决定自动化云基础设施的适应。我们的方法利用组合测试引擎,传统上用于开发阶段的测试,以测量生产中系统的负载行为。我们确定在运行时测量的负载行为与在测试期间观察到的负载行为有多大差异。我们进一步估计了在系统当前配置中遇到未经测试的行为所涉及的风险,以及在使用迁移和向外扩展等可能的适应操作过渡到新的云配置时所涉及的风险。基于我们的风险评估,云适应引擎可能因此决定一个适应操作,以便将系统转换为具有较小关联风险的配置。我们的工作是处理自动化云基础设施适配的更大项目的一部分。我们介绍了自动化适应的总体方法,以及我们基于覆盖率的风险评估指标和计算它们的算法。我们在一个示例设置上演示我们的度量,该示例设置由两个具有多个实例的子组件组成,包括一个电话应用程序的典型安装。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Coverage-based metrics for cloud adaptation
This work introduces novel combinatorial coverage based metrics for deciding upon automated Cloud infrastructure adaptation. Our approach utilizes a Combinatorial Testing engine, traditionally used for testing at the development phase, in order to measure the load behavior of a system in production. We determine how much the measured load behavior at runtime differs from the one observed during testing. We further estimate the involved risk of encountering untested behavior in the current configuration of the system as well as when transitioning to a new Cloud configuration using possible adaptation actions such as migration and scale-out. Based on our risk assessment, a Cloud adaptation engine may consequently decide on an adaptation action in order to transform the system to a configuration with a lesser associated risk. Our work is part of a larger project that deals with automated Cloud infrastructure adaptation. We introduce the overall approach for automated adaptation, as well as our coverage-based metrics for risk assessment and the algorithms to calculate them. We demonstrate our metrics on an example setting consisting of two sub-components with multiple instances, comprising a typical installation of a telephony application.
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