改进大型动态架构中效用驱动的自修复的可扩展性和奖励

Sona Ghahremani, H. Giese, T. Vogel
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引用次数: 8

摘要

自我适应可以通过多种方式实现。基于规则的方法规定了在系统或环境满足某些条件时要执行的调整。它们会产生可伸缩的解决方案,但往往只带来令人满意的适应性决策。相比之下,效用驱动的方法通过使用通常代价高昂的优化来确定最优决策,这种优化通常不适用于大型问题。我们提出了一种基于规则和效用驱动的适应方案,实现了两个方向的利益,使适应决策是最优的,而计算规模通过避免昂贵的优化。我们将这种自适应方案用于大型软件系统的基于架构的自修复。为此,我们根据定义了自修复必须解决的问题的模式,为此类系统的大型动态体系结构定义了实用程序。此外,我们使用基于模式的自适应规则来解决这些问题。使用基于模式的方案来定义实用程序和自适应规则,使我们能够计算每个规则应用程序对总体实用程序的影响,并实现实用程序驱动的增量和高效的自修复。除了正式分析所提出方案的计算工作量和最优性外,我们还通过比较实验,以静态基于规则的方法为基准和使用约束求解器的效用驱动方法,全面展示了其在奖励方面的可扩展性和最优性。这些实验基于从真实故障日志中导出的不同故障概况。我们还研究了不同的故障特征对可扩展性和奖励的影响,以评估不同方法的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Scalability and Reward of Utility-Driven Self-Healing for Large Dynamic Architectures
Self-adaptation can be realized in various ways. Rule-based approaches prescribe the adaptation to be executed if the system or environment satisfies certain conditions. They result in scalable solutions but often with merely satisfying adaptation decisions. In contrast, utility-driven approaches determine optimal decisions by using an often costly optimization, which typically does not scale for large problems. We propose a rule-based and utility-driven adaptation scheme that achieves the benefits of both directions such that the adaptation decisions are optimal, whereas the computation scales by avoiding an expensive optimization. We use this adaptation scheme for architecture-based self-healing of large software systems. For this purpose, we define the utility for large dynamic architectures of such systems based on patterns that define issues the self-healing must address. Moreover, we use pattern-based adaptation rules to resolve these issues. Using a pattern-based scheme to define the utility and adaptation rules allows us to compute the impact of each rule application on the overall utility and to realize an incremental and efficient utility-driven self-healing. In addition to formally analyzing the computational effort and optimality of the proposed scheme, we thoroughly demonstrate its scalability and optimality in terms of reward in comparative experiments with a static rule-based approach as a baseline and a utility-driven approach using a constraint solver. These experiments are based on different failure profiles derived from real-world failure logs. We also investigate the impact of different failure profile characteristics on the scalability and reward to evaluate the robustness of the different approaches.
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