Machine Learning models âlearnâ kaise karte hain?
Today, ML is everywhere â recommendations, fraud detection, chatbots, automation. But hereâs the interesting part: Machine Learning doesnât work like traditional rule-based programming. We feed it data, it gradually improves over time⊠But what does âlearningâ actually mean for a machine? Some questions worth thinking about: Does the model simply memorize patterns? Or does it really understand anything? When it predicts wrong, how does it correct itself? Is its learning similar to the human brain â or completely different? Many people talk about âtraining a modelâ⊠but very few can explain how that learning process truly happens. Whatâs your take â how do you think ML models learn? Drop your thoughts below



