What is ISTQB CT-Gen AI certification?
ISTQB CT-Gen AI certification is a specialized software testing certification focused on testing AI and Generative AI applications. It helps professionals understand AI testing concepts, prompt validation, risk analysis, data quality, and testing strategies for AI-powered systems.
Who Can Take the ISTQB CT-Gen AI Course?
ISTQB CT-Gen AI course is suitable for software testers, QA professionals, automation engineers, developers, test managers, and Agile team members interested in AI-driven testing. Candidates must have the ISTQB CTFL certification before taking the CT-GenAI exam.
Business Outcomes
Individuals who complete the ISTQB CT-Gen AI course will be able to:
- Understand Generative AI concepts and AI testing fundamentals
- Identify AI risks, biases, and quality challenges
- Design and execute test cases for Gen AI applications
- Contribute to effective AI testing strategies and workflows
Why Choose TM SQUARE?
TM SQAURE is world’s best organization which has delivered result orientated trainings on ISTQB Certified Tester – Testing with Generative AI (CT-Gen AI) Training to global participants and corporates.
We have delivered the The ISTQB Certified Tester – Testing with Generative AI (CT-Gen AI) program to over 15000+ professionals, focusing on practical, application-oriented learning. Our sessions are designed to be engaging, activity-based, and tailored to real-world challenges. With an average participant rating of 4.9/5, the program is consistently recognized for its clarity, relevance, and impact. Join this course to experience the expertise of our professional instructors and best experience of learning concepts.
TM SQUARE is a affiliated member of ISTQB and aligned with ISTQB standards and syllabus.
Course Overview
Generative AI brings new opportunities and risks to software testing, requiring testers to understand how AI systems behave, fail, and can be validated. This certification provides a structured introduction into testing applications that incorporate generative models, focusing on data quality, prompt reliability, model evaluation, and risk mitigation. It helps professionals understand the practical and ethical considerations of testing AI-driven systems.
Course Outline