A way for computers to learn and improve from experience, like how humans get better at tasks through practice.
Machine learning is like teaching a computer to learn from examples rather than giving it strict rules to follow. Just as a child learns to recognize cats by seeing many different cats, machines can learn patterns from data to make decisions or predictions. This technology helps solve problems that are too complex to solve with traditional programming.
It's like teaching a child to recognize fruits. Instead of explaining every detail of what makes an apple, you show them many apples until they can identify one on their own. Similarly, machine learning systems learn by analyzing thousands of examples.
Think of it like becoming better at spotting fake emails. The more spam emails you see, the better you get at identifying suspicious patterns. Machine learning systems do this automatically by finding patterns in data.
It's like how you predict tomorrow's weather based on today's conditions and past experiences. Machine learning systems use past data to make educated guesses about future outcomes.
Like how a musician gets better with practice, machine learning systems improve their accuracy as they process more data. They learn from their mistakes and adjust their approach.