Inferring Software Component Interaction Dependencies for Adaptation Support

N. Esfahani, E. Yuan, Kyle R. Canavera, S. Malek
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引用次数: 22

Abstract

A self-managing software system should be able to monitor and analyze its runtime behavior and make adaptation decisions accordingly to meet certain desirable objectives. Traditional software adaptation techniques and recent “models@runtime” approaches usually require an a priori model for a system’s dynamic behavior. Oftentimes the model is difficult to define and labor-intensive to maintain, and tends to get out of date due to adaptation and architecture decay. We propose an alternative approach that does not require defining the system’s behavior model beforehand, but instead involves mining software component interactions from system execution traces to build a probabilistic usage model, which is in turn used to analyze, plan, and execute adaptations. In this article, we demonstrate how such an approach can be realized and effectively used to address a variety of adaptation concerns. In particular, we describe the details of one application of this approach for safely applying dynamic changes to a running software system without creating inconsistencies. We also provide an overview of two other applications of the approach, identifying potentially malicious (abnormal) behavior for self-protection, and improving deployment of software components in a distributed setting for performance self-optimization. Finally, we report on our experiments with engineering self-management features in an emergency deployment system using the proposed mining approach.
推断用于适配支持的软件组件交互依赖
自我管理的软件系统应该能够监视和分析其运行时行为,并做出相应的适应决策,以满足某些期望的目标。传统的软件适应技术和最近的“models@runtime”方法通常需要一个系统动态行为的先验模型。通常情况下,模型很难定义,维护起来也很费力,而且由于适应和体系结构的衰退,往往会过时。我们提出了一种替代方法,它不需要事先定义系统的行为模型,而是涉及从系统执行跟踪中挖掘软件组件交互,以构建一个概率使用模型,该模型反过来用于分析、计划和执行适应性。在本文中,我们将演示如何实现并有效地使用这种方法来解决各种适应问题。特别地,我们描述了该方法的一个应用程序的细节,该方法可以安全地将动态更改应用到正在运行的软件系统中,而不会产生不一致。我们还概述了该方法的另外两个应用程序,识别潜在的恶意(异常)行为以进行自我保护,并改进分布式设置中软件组件的部署,以实现性能自我优化。最后,我们报告了我们在一个紧急部署系统中使用所提出的挖掘方法进行工程自我管理特征的实验。
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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