What kind of problems lend themselves to machine learning?
Answer / Kapil Deol
Machine learning is particularly useful for problems that involve large amounts of data, complex relationships between variables, or tasks that are difficult to solve with traditional rule-based systems. Examples include image and speech recognition, recommendation systems, fraud detection, and predicting stock prices.
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