The Copilot Era: How Generative AI Is Reshaping Quality Assurance Team Roles in 2025 and Beyond
AI is no longer some futuristic concept confined to academic labs or sci-fi films. It's now a practical, widely adopted tool integrated into everyday software development and quality assurance (QA) workflows. What began as experiments with machine learning has evolved into strategic applications of generative AI across the software lifecycle.
This whitepaper explores how GenAI is transforming QA practices, not by replacing engineers, but by augmenting their capabilities. It examines the practical applications, strategic shifts, and emerging responsibilities reshaping the QA discipline.
Table of Contents:
GenAI in Development: From Suggestion to Support
Where AI Supports QA Today
Early-Stage Use Cases Worth Watching
The Future QA Role: Strategic, Cross-Functional, and AI-Literate
How to Begin with AI in QA
Contributors: Felix Kortmann, CTO, Ignite by FORVIA HELLA; Maaret Pyhäjärvi, Director, Consulting, CGI; Peter Schneider,Principal, Product Management, Qt Group
Get DocumentOh, here is more
Embedded UI/UX Designers Market Research
Designers of embedded applications are using tools built for other purposes, which negatively impact...
Get DocumentInfosheet: Axivion and AI
AI-augmented, not AI-dependent: Axivion does not use AI for the analysis, thus making it suitable fo...
Get DocumentCoco Code Coverage — Product Overview [Document]
Most teams know their test coverage percentage. Far fewer know whether the code they haven't tested ...
Get DocumentExpert Insights: GUI Testing Best Practices for Qt-Built Interfaces
Many Qt teams initially rely on manual testing or general-purpose open-source tools such as Selenium...
Get Document