通过动态分析确定隐式声明的自调优行为

Hamoun Ghanbari, Marin Litoiu
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引用次数: 11

摘要

自主计算编程模型通过引入“自主元素”的概念来明确地处理自我管理属性。然而,目前开发的大多数系统都没有采用自主的自管理编程范例。因此,当前的挑战是找到一种机制来识别使用非自治元素隐式声明的自调优行为和自调优参数,并将它们公开用于监视或分析框架。静态分析,虽然显示出良好的潜力,但它会导致许多误报。在本文中,我们提供了一种通过动态分析更准确地识别调谐参数的机制。
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Identifying implicitly declared self-tuning behavior through dynamic analysis
Autonomic computing programming models explicitly address self management properties by introducing the notion of “Autonomic Element. However, most of currently developed systems do not employ autonomic self-managing programming paradigms. Thus, a current challenge is to find mechanisms to identify the self-tuning behavior and self-tuning parameters which have implicitly been declared using non-autonomic elements, and to expose them for monitoring or to an analysis framework. Static analysis, although it shows a good potential, it results in many false positives. In this paper, we provide a mechanism to identify the tuning parameters more accurately through dynamic analysis.
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