Bringing planning to autonomic applications with ABLE

B. Srivastava, J. P. Bigus, D. Schlosnagle
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引用次数: 25

Abstract

Planning has received tremendous interest as a research area within AI over the last three decades but it has not been applied commercially as widely as its other AI counterparts like learning or data mining. The reasons are many: the utility of planning in business applications was unclear, the planners used to work best in small domains and there was no general purpose planning and execution infrastructure widely available. Much has changed lately. Compelling applications have emerged, e.g., computing systems have become so complex that the IT industry recognizes the necessity of deliberative methods to make these systems self-configuring, self-healing, self-optimizing and self-protecting. Planning has seen an upsurge in the last decade with new planners that are orders of magnitude faster than before and are able to scale this performance to complex domains, e.g., those with metric and temporal constraints. However, planning and execution infrastructure is still tightly tied to a specific application which can have its own idiosyncrasies. In this paper, we fill the infrastructural gap by providing a domain independent planning and execution environment that is implemented in the ABLE agent building toolkit, and demonstrate its ability to solve practical business applications. The planning-enabled ABLE is publicly available and is being used to solve a variety of planning applications in IBM including the self-management/autonomic computing scenarios.
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使用ABLE为自主应用程序带来计划
在过去的三十年里,规划作为人工智能的一个研究领域受到了极大的关注,但它在商业上的应用并不像学习或数据挖掘等其他人工智能领域那样广泛。原因有很多:计划在业务应用程序中的效用是不明确的,计划者过去在小领域中工作得最好,并且没有广泛可用的通用计划和执行基础设施。最近发生了很多变化。引人注目的应用已经出现,例如,计算系统已经变得如此复杂,以至于IT行业认识到需要深思熟虑的方法来使这些系统自我配置、自我修复、自我优化和自我保护。在过去的十年中,规划出现了激增,新的规划者的速度比以前快了几个数量级,并且能够将这种性能扩展到复杂的领域,例如,那些有度量和时间限制的领域。然而,计划和执行基础设施仍然与特定的应用程序紧密联系在一起,这些应用程序可能具有自己的特性。在本文中,我们通过提供在ABLE代理构建工具包中实现的独立于领域的规划和执行环境来填补基础设施的空白,并展示了其解决实际业务应用的能力。支持计划的ABLE是公开可用的,用于解决IBM中的各种计划应用程序,包括自我管理/自主计算场景。
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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Utility functions in autonomic systems A framework for constraint-based development and autonomic management of distributed applications Bringing planning to autonomic applications with ABLE Assessing the robustness of self-managing computer systems under highly variable workloads Automatic relationship discovery in self-managing database systems
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