The future of software testing is evolving rapidly, with AI-powered tools promising to revolutionize the industry. However, despite the hype, AI still has limitations that QA professionals must address. These limitations include understanding requirements and nuances, generating test cases with complex state interactions, executing tests with timing and predictability challenges, and adapting to user behavior patterns. Additionally, AI struggles with human emotions, empathy, and contextual understanding, which are essential for creating inclusive and culturally relevant user experiences. While AI can automate processes and do tasks at scale, the creative leap of inventing and adapting testing approaches is a uniquely human superpower. To succeed in this new world, QA professionals must invest in skills that bridge the gap between AI capabilities and human expertise, and organizations need to rethink their ownership and accountability frameworks to leverage AI without exposing themselves to unnecessary risk.