Cody Kinneer, R. V. Tonder, D. Garlan, Claire Le Goues
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引用次数: 6
摘要
计划重用是一种很有前途的方法,它使自*系统能够有效地适应意外的变化,例如在意外变化之后使用随机搜索来发展现有的适应策略。理想的自我计划器应该能够重用适应策略的集合,但由于评估开销,这是具有挑战性的。为了有效地重用,保留表应该(a)可能推广到未来的情况,以及(b)具有成本效益的评估。在这项工作中,我们提出了一种受混沌工程启发的方法,用于生成多种可重用的适应策略集,并探索了两种基于克隆检测和句法转换的分析方法,用于构建随机搜索自规划器中可能适合重用的适应策略库。在受Amazon Web Services启发的模拟系统上对所提出的方法进行的评估表明,规划效率提高了20%,并揭示了规划及时性和最优性的权衡。
Building Reusable Repertoires for Stochastic Self-* Planners
Plan reuse is a promising approach for enabling self-* systems to effectively adapt to unexpected changes, such as evolving existing adaptation strategies after an unexpected change using stochastic search. An ideal self-* planner should be able to reuse repertoires of adaptation strategies, but this is challenging due to the evaluation overhead. For effective reuse, a repertoire should be both (a) likely to generalize to future situations, and (b) cost effective to evaluate. In this work, we present an approach inspired by chaos engineering for generating a diverse set of adaptation strategies to reuse, and we explore two analysis approaches based on clone detection and syntactic transformation for constructing repertoires of adaptation strategies that are likely to be amenable to reuse in stochastic search self-*planners. An evaluation of the proposed approaches on a simulated system inspired by Amazon Web Services shows planning effectiveness improved by up to 20% and reveals tradeoffs in planning timeliness and optimality.