Professional Certificate in Building Connected Recommendation Systems
-- ViewingNowThe Professional Certificate in Building Connected Recommendation Systems is a comprehensive course designed to equip learners with the essential skills needed to develop and implement personalized recommendation systems. This program emphasizes the importance of data-driven decision-making and algorithmic thinking in the modern tech industry.
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⢠Introduction to Recommendation Systems: Fundamentals of recommendation systems, use cases, and benefits. Understanding various types of recommendation systems like collaborative filtering and content-based filtering.
⢠Data Analysis for Recommendation Systems: Data preprocessing, feature engineering, and data analysis techniques for recommendation systems.
⢠Machine Learning Algorithms for Recommendation Systems: Implementing and optimizing machine learning algorithms for recommendation systems, including regression, decision trees, and neural networks.
⢠Building Collaborative Filtering Models: Designing and implementing collaborative filtering algorithms, including user-based and item-based collaborative filtering.
⢠Content-Based Recommendation Systems: Building content-based recommendation systems using text analysis and natural language processing techniques.
⢠Evaluation Metrics for Recommendation Systems: Understanding and implementing evaluation metrics for recommendation systems, such as precision, recall, and F1 score.
⢠Building Hybrid Recommendation Systems: Combining collaborative filtering and content-based approaches to build hybrid recommendation systems.
⢠Recommendation System Scalability: Strategies for scaling recommendation systems, including distributed computing and caching techniques.
⢠Ethics and Bias in Recommendation Systems: Exploring ethical considerations and potential biases in recommendation systems and strategies for mitigating them.
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