Artificial Intelligence (AI) has transformed the world of technology, enabling systems to learn, adapt, and make decisions without explicit programming. From autonomous vehicles to medical diagnostics and flight control systems, AI promises unprecedented efficiency and capability. However, when it comes to safety-critical systems—where failure could result in injury, loss of life, or significant damage—the use of AI introduces profound challenges that go far beyond traditional software engineering. Unlike conventional software, which behaves predictably according to its programmed logic, AI is built on learning and training. Its decisions and outputs depend heavily on the data it has been trained on and the patterns it recognizes during runtime. This adaptive, data-driven behavior means that an AI system’s responses may vary with changing inputs or environments, often in ways that are not explicitly defined or foreseen by developers. While this flexibility is a strength in many applica...
If you’ve ever worked in software testing, you’ve probably dreamed of a world where the entire testing process — from writing test cases to verifying results — runs on autopilot. No late-night debugging, no endless regression cycles, no tedious manual scripts. Just a clean, smart, self-running system that ensures your software is flawless. Sounds like magic, right?  But as we edge closer to this dream with advances in AI, machine learning, and DevOps automation, a big question looms: Can we truly achieve complete automation  in software testing?  Let’s unpack this fascinating (and sometimes controversial) topic.