Learning from Metadata: A Fuzzy Token Matching Based Configuration File Discovery Approach

Discovery of configuration files is one of the prerequisite activities for a successful workload migration to the cloud. The complicated and super-sized file systems, the considerable variance of configuration files, and the multiple-presence of configuration items make configuration file discovery...

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Bibliographic Details
Published inIEEE ... International Conference on Cloud Computing pp. 405 - 412
Main Authors Wang, Han, Meng, Fan Jing, Zhuo, Xuejun, Yang, Lin, Li, Chang Sheng, Xu, Jing Min
Format Conference Proceeding Journal Article
LanguageEnglish
Published IEEE 01.06.2015
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ISSN2159-6182
2159-6190
DOI10.1109/CLOUD.2015.61

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Summary:Discovery of configuration files is one of the prerequisite activities for a successful workload migration to the cloud. The complicated and super-sized file systems, the considerable variance of configuration files, and the multiple-presence of configuration items make configuration file discovery very difficult. Traditional approaches usually highly rely on experts to compose software specific scripts or rules to discover configuration files, which is very expensive and labor-intensive. In this paper, we propose a novel learning based approach named MetaConf to convert configuration file discovery to a supervised file classification task using the file metadata as learning features such that it can be conducted automatically, efficiently, and independently of domain expertise. We report our evaluation with extensive and real-world case studies, and the experimental results validate that our approach is effective and it outperforms our baseline method.
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ISSN:2159-6182
2159-6190
DOI:10.1109/CLOUD.2015.61