Revolutionizing Test Case Generation: Integrating AI and Chat GPT for Enhanced Software Testing
Main Article Content
Abstract
Using artificial intelligence (AI) and language models like ChatGPT is changing how we test software. This paper looks at how AI and ChatGPT can solve these problems by automatically creating detailed test cases, quickly adapting to changes, and finding risky parts of the code. AI-driven testing makes regression testing more efficient, increases overall test coverage, and allows for continuous testing with self-healing features. By automating repetitive tasks and generating realistic test data, ChatGPT saves time and improves the accuracy and thoroughness of testing. This integration leads to faster software releases, better quality, and more reliable software. Through examples and real-world uses, the paper shows how AI can revolutionize test case generation and validation, making software testing more efficient, accurate, and scalable. By leveraging AI and ChatGPT, we can automate and enhance this process, leading to more efficient and accurate testing. Furthermore, the review highlights the benefits of this integration, such as reduced testing time, improved coverage of test scenarios, and the ability to quickly adapt to changes in the software. It also addresses potential challenges, including the need for high-quality training data and the importance of maintaining the security and privacy of the software being tested.
Downloads
Article Details

This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License.