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Chapter 5 - Chepter5

Key components of machine learning:-

Data input: large,diverse datasets are required for training.

Algorithms: Mathematical methods that identify patterns.

Training: The process of optimiszing a model to identify patterns in data.

Generalization: The ability of a trained model to make accurate predictions on new, unseen Data.

Primary types of machine Learning ;

Supervised learning - Algorithms are trained on lebled data, meaning the input comes with the correct answer.

Unsupervised learning - Algorithms anlyze unlabeled data to find hidden structures or patterns.

Semi supervised learning - Uses a mix of labled and unlabeled data, typically a small amount of labled with a large amount of unlabeled.

Reinforcement lerning- Algorithms learn by interacting with an environment, receiving rewards for correct actions and penalties for wrong ones, common in robotics and gaming.

Common application -

Computer vision

Predictive Analytics

Natural language processing

Recommendation Engines

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