基于自动机的核跟踪分析方法

G. Matni, M. Dagenais
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引用次数: 15

摘要

本文提出了一种基于自动机的方法来分析由操作系统内核产生的轨迹。我们确定了问题行为的典型模式列表,以便在跟踪中查找,并选择了适当的状态机语言来描述它们。然后将这些模式输入离线分析器,该分析器可以有效地同时检查它们的出现情况,甚至可以在几gb的痕迹中进行检查。检查器实现了相对于跟踪大小的线性性能。讨论了影响其性能的其他因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automata-based approach for kernel trace analysis
This paper presents an automata-based approach for analyzing traces generated by the kernel of an operating system. We identified a list of typical patterns of problematic behavior, to look for in a trace, and selected an appropriate state machine language to describe them. These patterns were then fed into an off-line analyzer which efficiently and simultaneously checks for their occurrences even in traces of several gigabytes. The checker achieves a linear performance with respect to the trace size. The remaining factors impacting its performance are discussed.
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