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Netflix AI Models | How Netflix uses AI ?

Netflix AI Models create a personalized and seamless streaming experience for its users.following are the List of Netflix AI Models:- Personalized Content Recommendations Content Discovery and Acquisition Dynamic Content Delivery Video and Audio Analysis A/B Testing for User Interface Quality Control and Content Curation Customer Service and Support Content Optimization and Thumbnails Predictive Analytics for…

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Bagging vs Boosting in machine learning

Comparison of bagging and boosting in machine learning Aspect Bagging Boosting Approach Parallel, independent base models Sequential, adaptive base models Training Independent training of models Sequential training of models Weighting of Instances All instances have equal weight Misclassified instances have higher weight Handling of Errors Reduces variance and overfitting Reduces bias and improves accuracy Model…

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