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Exploratory Data Analysis of Fault Injection Campaigns

机译:故障注入运动的探索性数据分析

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摘要

Fault injection (FI) is an experimental methodology used in a wide range of scenarios for validating the fault resilience of applications, especially safety-critical ones. A sufficiently thoroughgoing evaluation produces a significant amount of data regarding the behavior of software components or entire systems in the presence of faults. The core questions that practitioners using fault injection face are 1) how to extract and represent information, 2) how to effectively analyze that data and how to utilize the gained knowledge to improve the FI process. Previous works addressing these questions relied mainly on ad hoc approaches. The current paper presents a modern view of these problems, preparing and executing the knowledge extraction by exploratory (big) data analysis, methods, and tools. A real use-case based on FI campaigns composed of thousands of fault injections into a virtualized system indicates the huge potential of the approach. The outcome is the discovery of an opportunity for a drastic speed-up of the FI process unrevealed by the traditional methodology.
机译:故障注射(FI)是一种在广泛情景中使用的实验方法,用于验证应用程序的故障恢复,尤其是安全关键的方案。足够彻底的评估产生关于在存在故障存在下的软件组件或整个系统的行为的大量数据。使用故障注入面的从业者的核心问题是1)如何提取和代表信息,2)如何有效地分析该数据以及如何利用所获得的知识来改进FI过程。以前的作品解决了这些问题主要依据临时方法。本文提出了探索性(大)数据分析,方法和工具的现代化这些问题的现代观点,准备和执行知识提取。基于FI活动的真正用例基于数千个故障注入到虚拟化系统中的FI运动表示方法的巨大潜力。结果是发现了通过传统方法毁坏的FI过程中急速加速的机会。

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