编码程序执行

S. Reiss, Manos Renieris
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引用次数: 244

摘要

动态分析是基于在程序运行时收集数据。然而,原始的轨迹往往过于庞大和非结构化,无法直接用于可视化和理解。我们分两个阶段解决这个问题:第一阶段选择数据的子集,然后对其进行压缩,而第二阶段对数据进行编码,试图推断其结构。我们的主要压缩/选择技术包括gprof风格的n深度调用序列、基于类的选择、基于时间间隔的压缩,以及将整个执行编码为有向无环图。我们的结构推理技术包括运行长度编码、上下文无关语法编码和有限状态自动机的构建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Encoding program executions
Dynamic analysis is based on collecting data as the program runs. However, raw traces tend to be too voluminous and too unstructured to be used directly for visualization and understanding. We address this problem in two phases: the first phase selects subsets of the data and then compacts it, while the second phase encodes the data in an attempt to infer its structure. Our major compaction/selection techniques include gprof-style N-depth call sequences, selection based on class, compaction based on time intervals, and encoding the whole execution as a directed acyclic graph. Our structure inference techniques include run-length encoding, context free grammar encoding, and the building of finite state automata.
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