AI is transforming software testing in 2025—making it faster, smarter, and more reliable. For new QA professionals, AI-powered tools are shifting the role from repetitive test execution to strategic oversight. From auto-generating and self-healing test cases to predictive defect detection, AI enhances efficiency while reducing errors. But it also brings challenges like setup complexity, data security, and the need for critical validation. This starter guide breaks down the benefits, challenges, and types of AI testing tools, while highlighting how beginners can adapt their skills for career growth in the AI-driven QA landscape.
Articles Tagged as : Software QA
Top Software Testing Trends To Follow In 2023
Agile and DevOps Agile and DevOps have been two of the most popular development trends for the past few years, and they are expected to continue to play a major role in software testing in 2023 and beyond. Agile is a process of developing software in short, iterative...
16 Critical Software Practices for Performance-Based Management
Project Integrity 1. Adopt Continuous Program Risk Management Continuous program risk management is an important practice for ensuring successful software projects. It involves identifying and assessing risks, creating risk management plans, and monitoring progress...
Tag Cloud