lsjsj92/recommender_system_with_Python
recommender system tutorial with Python
This project helps data scientists, machine learning engineers, and researchers understand and build various recommendation systems using Python. It provides practical code examples for different recommendation algorithms, taking in user activity or item descriptions and outputting personalized suggestions. The output could be movie recommendations, news articles, or books, demonstrating how to guide users to relevant content.
203 stars. No commits in the last 6 months.
Use this if you are a data scientist or machine learning engineer looking for Python implementations of recommendation algorithms, from traditional collaborative filtering to deep learning and LLM-based approaches.
Not ideal if you are an end-user looking for a ready-to-use recommendation system without any coding or model development.
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Jupyter Notebook
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Last pushed
Jun 03, 2024
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