Building Intelligent Recommender Systems is a course designed to help students gain the fundamentals of creating and managing systems that are able to recommend relevant options for users. It involves studying the different methods of recommendation, exploring data collection and analysis, developing machine learning models, and building web applications for users.
The course is intended for students who wish to learn about creating and managing recommender systems, such as software engineers, data scientists, data engineers, and product managers. It covers a wide range of topics, from recommendation algorithms and data processing strategies to web development and deployment strategies. In addition, it provides examples and tools such as movie, music, and book recommendation services to reinforce these concepts.
The course is divided into several modules, which include data mining, probabilistic modeling, natural language processing, and machine learning algorithms. By the end of the course, students will be able to create and manage their own personalized recommenders. The course also provides guidelines on how to evaluate and improve the accuracy and performance of recommender systems.
This is a Rare Course and it can be take up to 3 weeks to arrange the training.