This project-based course equips learners with the skills to design, develop, and implement a personalized book recommendation system using Python. Spanning two core modules, the course introduces foundational concepts of collaborative and content-based filtering and builds toward a functional hybrid model. Learners will begin by analyzing user data, constructing user-item interaction matrices, and evaluating baseline models. They will then apply advanced data handling techniques using libraries like Pandas and NumPy, and integrate multiple recommendation strategies into a single hybrid engine.



Project on Recommendation Engine - Advanced Book Recommender
This course is part of Mastering Recommendation Systems with Python Specialization

Instructor: EDUCBA
Access provided by Dnipro University of Technology
(25 reviews)
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6 assignments
July 2025
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There are 2 modules in this course
This module introduces learners to the core structure of a personalized book recommendation system. Starting with foundational project setup, it guides through the logic of accepting user input, handling book data, and establishing a baseline model for evaluation. The module also delves into the preprocessing steps required to make user and book data machine-readable by converting identifiers into indexed forms. Learners will develop an understanding of how to construct a user-item interaction matrix and prepare the data for more advanced recommendation algorithms in future modules.
What's included
7 videos3 assignments
This module guides learners through the technical implementation of a hybrid recommendation engine by combining collaborative filtering and content-based methods. It begins with foundational data processing using Python libraries like Pandas and NumPy, and progresses toward integrating both filtering approaches into a unified hybrid model. Learners will gain hands-on experience with similarity computation, function-based model construction, and performance refinement through blending multiple data signals.
What's included
4 videos3 assignments
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Reviewed on Sep 24, 2025
The advanced recommender system is taught comprehensively, making personalization and predictive modeling easy to understand. Fantastic balance of coding and explanation.
Reviewed on Aug 11, 2025
Well-designed project demonstrating advanced techniques to build an accurate and personalized book recommendation engine.
Reviewed on Aug 30, 2025
I truly enjoyed this course! The advanced recommender project pushed my limits, yet the instructor’s guidance ensured strong understanding. Now I can design real AI solutions.





