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Machine learning

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machine learning

Machine learning is a way to teach computers to find patterns and make predictions by learning from data, instead of following exact rules written by a programmer. A machine learning model adjusts internal settings during training so it can map inputs (like images or numbers) to useful outputs (like labels or forecasts). There are different approaches: some models learn from labeled examples, others discover structure on their own, and some learn by trial and error. Examples include systems that identify objects in photos, recommend movies, detect fraud, or predict health risks. It matters because machine learning can handle complex patterns and large datasets that are hard for humans to analyze, enabling new services and faster decisions. Good results depend on having quality data that represent the people or situations the model will encounter in real life. If the training data are biased or limited, the model can make unfair or inaccurate predictions, so careful testing and correction are necessary. Practical use also raises questions about transparency, because some powerful models are hard to interpret and explain. Used responsibly, machine learning can be a practical assistant that improves decision making across many fields while freeing people to focus on higher-level work.