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- Title
Fault Big Data Analysis Tool based on Deep Learning.
- Authors
Yoshinobu Tamura; Shigeru Yamada
- Abstract
Software managers can obtain useful information from many fault data sets recorded on bug tracking systems (BTS). However, it is difficult to find helpful measures for software reliability, maintainability, and performability, because the data collected on the BTS are mixed with qualitative and quantitative ones. This paper discusses the methods of reliability, maintainability, and performability assessment by deep learning for big data in terms of software faults. Specifically, we implement the reliability, maintainability, and performability analysis tool discussed in our method by using the latest programing technology. Moreover, we show several performance examples of the implemented application software by using the fault big data observed in the practical projects.
- Subjects
DEFECT tracking (Computer software development); SOFTWARE reliability; SOFTWARE maintenance; APPLICATION software; BIG data
- Publication
International Journal of Performability Engineering, 2019, Vol 15, Issue 5, p1289
- ISSN
0973-1318
- Publication type
Article
- DOI
10.23940/ijpe.19.05.p4.12891296