SLA analytics for adaptive service provisioning in the cloud

Obinna Anya, Heiko Ludwig, Mohamed Mohamed, S. Tata
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引用次数: 2

Abstract

Service level agreements (SLAs) are considered not only a central tool for managing QoS compliance, but also a differentiating factor between service implementations. In today's application environments with fast instrumentation deployment cycles in hybrid Cloud platforms, managing QoS compliance poses tremendous challenges, including how to deliver solutions that live up to promised QoS properties and preemptively identify provisioning risks before they lead to violations. Current approaches are usually reactive, i.e. the application infrastructure reacts to changes in QoS metrics, with a huge focus on compliance enforcement after violations have occurred. Cloud service provisioning demands a proactive approach to QoS management, with support for robust predictive scaling of service capacity based on multiple metrics, including business goals as well as infrastructure-level and QoS metrics. This paper presents an approach for adaptive service provisioning in the Cloud based on QoS analytics. A major contribution of the approach is the development of an analytics engine for predictive elasticity management of Cloud service provisioning that integrates in-depth mining of SLA compliance history with knowledge of business context, e.g. workload variability, a customer's business goals, application performance, and service operational context. In this work-in-progress report, we describe the proposed framework and discuss possible implementation and deployment scenarios.
用于云中的自适应服务供应的SLA分析
服务水平协议(sla)不仅被认为是管理QoS遵从性的中心工具,而且也是服务实现之间的一个区别因素。在混合云平台中仪表部署周期快速的当今应用程序环境中,管理QoS合规性带来了巨大的挑战,包括如何交付符合承诺的QoS属性的解决方案,以及如何在导致违规之前先发制人地识别供应风险。当前的方法通常是被动的,即应用程序基础设施对QoS指标的变化做出反应,并在发生违规后大量关注合规执行。云服务供应需要一种主动的QoS管理方法,支持基于多个指标(包括业务目标以及基础设施级别和QoS指标)的服务容量的强大预测扩展。提出了一种基于QoS分析的云服务自适应配置方法。该方法的一个主要贡献是为云服务供应的预测弹性管理开发了一个分析引擎,该引擎集成了SLA遵从性历史的深度挖掘和业务上下文的知识,例如工作负载可变性、客户的业务目标、应用程序性能和服务操作上下文。在这个正在进行的报告中,我们描述了提议的框架,并讨论了可能的实现和部署场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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