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Test Case Prioritization Using Deep Learning Hybrid Approach - Willam Loo at PNSQC 2022

Exhaustive testing and coverage are not the effective method to perform the validation in manual execution, automation and continuous integration and development environment. In the current mode of work, we encountered backlog of execution tasks up to three weeks instead of planned one week duration for completion. Therefore, this research will prioritize on test case prioritization which allows validation engineer and automation framework to execute the validation in operative manner.

To ensure the validation effectiveness of reducing redundancy of the test cases, a deep learning method and greedy approach on selecting the best combination of test cases which have complete validation coverage will be proposed. The reduction will impact significantly on the project cost in term of resource catered.

These results suggested that using hybrid approach will expedite the progress approximately 20%. From organization point of view, this proficiency results in cost saving and having quality products to consumer to use. - from test case prioritization perspective, audience will learn on how to implement test case redundancy method, for instance Greedy approach maximizing the test case coverage with the minimum number of test cases.
- expose the usage of the deep learn

Видео Test Case Prioritization Using Deep Learning Hybrid Approach - Willam Loo at PNSQC 2022 канала PNSQC
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Информация о видео
27 ноября 2023 г. 5:41:02
00:45:39
Яндекс.Метрика