AUTOMATION IN SOFTWARE TESTING: HOW CAN AI OPTIMIZE THE TESTING PROCESS?
DOI:
https://doi.org/10.55640/Keywords:
software testing, automated testing, artificial intelligence, optimization, error detection, test scenarios, software engineering efficiency.Abstract
This article is devoted to the issues of optimizing software testing automation through the use of artificial intelligence. It highlights the application of AI technologies in testing, particularly their advantages in rapid error detection, automatic generation of test scenarios, and resource-efficient process management. In addition, the article discusses the reduction of human factor influence, improvement of software product quality, and potential innovative approaches that can be applied in this field in the future. The findings show that AI-based testing systems serve as an important factor in enhancing the efficiency of software engineering.
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