首页> 外文会议>ACM/IFIP/USENIX International Middleware Conference; 20061127-1201; Melbourne(AU) >Model Driven Provisioning: Bridging the Gap Between Declarative Object Models and Procedural Provisioning Tools
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Model Driven Provisioning: Bridging the Gap Between Declarative Object Models and Procedural Provisioning Tools

机译:模型驱动的配置:弥合声明性对象模型和过程配置工具之间的差距

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摘要

Today's enterprise data centers support thousands of mission-critical business applications composed of multiple distributed heterogeneous components. Application components exhibit complex dependencies on the configuration of multiple data center network, middleware, and related application resources. Applications are also associated with extended life-cycles, migrating from development to testing, staging and production environments, with frequent roll-backs. Maintaining end-to-end data center operational integrity and quality requires careful planning of (1) application deployment design, (2) resource selection, (3) provisioning operation selection, parameterization and ordering, and (4) provisioning operation execution. Current data center management products are focused on workflow-based automation of the deployment processes. Workflows are of limited value because they hard-code many aspects of the process, and are thus sensitive to topology changes. An emerging and promising class of model-based tools is providing new methods for designing detailed deployment topologies based on a set of requirements and constraints. In this paper we describe an approach to bridging the gap between generated "desired state" models and the elemental procedural provisioning operations supported by data center resources. In our approach, we represent the current and desired state of the data center using object models. We use AI planning to automatically generate workflows that bring the data center from its current state to the desired state. We discuss our optimizations to Partial Order Planning algorithms for the provisioning domain. We validated our approach by developing and integrating a prototype with a state of the art provisioning product. We also present initial results of a performance study.
机译:当今的企业数据中心支持由多个分布式异构组件组成的数千个关键任务业务应用程序。应用程序组件对多个数据中心网络,中间件和相关应用程序资源的配置表现出复杂的依赖性。应用程序还与延长的生命周期相关联,这些生命周期从开发迁移到测试,过渡和生产环境,并且回滚频繁。维护端到端数据中心的操作完整性和质量需要仔细计划以下各项:(1)应用程序部署设计,(2)资源选择,(3)设置操作选择,参数化和排序以及(4)设置操作执行。当前的数据中心管理产品专注于基于工作流程的部署流程自动化。工作流的价值有限,因为它们对过程的许多方面进行了硬编码,因此对拓扑变化很敏感。新兴且有希望的一类基于模型的工具正在提供新方法,用于根据一组需求和约束设计详细的部署拓扑。在本文中,我们描述了一种弥合生成的“期望状态”模型与数据中心资源支持的基本过程供应操作之间的差距的方法。在我们的方法中,我们使用对象模型表示数据中心的当前状态和期望状态。我们使用AI规划来自动生成将数据中心从当前状态转换到所需状态的工作流。我们讨论了针对供应域的部分订单计划算法的优化。我们通过开发原型并将其与最新的预配置产品集成来验证了我们的方法。我们还介绍了性能研究的初步结果。

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