ChatGPT, a conversational AI built on GPT-3.5, has gained widespread attention for its capabilities in generating natural language responses and code across multiple programming languages. This technology shows promise in the realm of test automation by generating test cases, writing code, and creating complex test automation pipelines, which can include CI/CD steps and integration with platforms like LambdaTest. The documented code provided by ChatGPT is close to runnable, although not perfect, allowing developers to refine and customize it as needed. While ChatGPT offers advantages such as resilience, security enhancements, and overcoming learning curves for testers, it is based on statistical patterns and may not fully understand underlying contexts, leading to potential inaccuracies or incomplete code. Despite these limitations, ChatGPT can accelerate debugging and provide a starting point for automation tasks. However, it is unlikely to replace testing teams entirely but can serve as a valuable tool in augmenting their capabilities. The future of testing with AI like ChatGPT depends on continuous improvement and adaptation to evolving technologies and user needs.