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Forecasting Unstable Policy Enforcement

机译:预测不稳定的政策执行

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摘要

Policy-based network management (PBNM) is a promising but not yet delivering discipline aimed at automating network management decisions based on expert knowledge and strategic business objectives. One of the issues scarcely addressed in PBNM is the stability of the managed system as the result of the dynamic interaction between the "natural" network behaviour and the autonomous management decision making. Yet this issue is central to the design of a self-management networking system comprised of autonomous entities making decisions driven by policies with often unknown consequences. Decisions made by one entity may change the context and configuration of other autonomous entities which may in turn react changing the context and configuration of the first entity triggering an unbounded chain of re-configuration actions. It is possible to model obligation policies and their constraints with finite state transducers (FST). It is also possible to learn patterns of recurrent behaviour using Bayesian networks (BN), a structurally similar kind of graph. The method presented in this paper analytically composes both finite state machines to derive predictions of the consequences of enforcing a given policy improving system stability.
机译:基于政策的网络管理(PBNM)是一个有希望的,但尚未提供纪律,旨在根据专家知识和战略业务目标自动化网络管理决策。由于“自然”网络行为与自主管理决策之间的动态交互,PBNM几乎不足的问题是受管系统的稳定性。然而,这个问题是一个由自主实体组成的自主管理网络系统的设计核心,使得由策略驱动的决策,通常是未知的后果。由一个实体作出的决定可以改变其他自治实体的上下文和配置,其可以反应改变第一实体的上下文和配置触发无限性的重新配置动作。可以使用有限状态传感器(FST)来模拟义务策略及其约束。还可以使用贝叶斯网络(BN),在结构上类似的图形学习经常性行为模式。本文呈现的方法分析了有限状态机,可以推导出对执行给定的政策提高系统稳定性的后果的预测。

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