Senior-level QA judgment including significant risk analysis, exploratory thinking, defect investigation, regression assessment, and release quality evaluation
Keen passion for AI and direct experience employing AI tools to boost analysis, investigation, documentation, testing, code insight, or routine workflows
Familiarity with Git workflows, pull requests, code reviews, CI/CD concepts, SDLC practices, and modern engineering collaboration
Ability to distinguish meaningful quality risks from low-value AI noise and challenge AI outputs critically
Strong communication skills with the ability to explain quality risks, AI findings, and improvement opportunities clearly to technical and non-technical collaborators
Comfortable working in ambiguous areas where processes, tooling, and success criteria are still being defined