HaSai666/rec_pangu
rec_pangu is a flexible open-source project for recommendation systems. It incorporates diverse AI models like ranking algorithms, sequence recall, multi-interest models, and graph-based techniques. Designed for both beginners and advanced users, it enables rapid construction of efficient, custom recommendation engines.
This project helps e-commerce managers, content strategists, and app developers improve how products, articles, or videos are suggested to users. By inputting historical user interaction data, it generates advanced recommendation models that personalize suggestions, helping users discover more relevant items and boosting engagement or sales. It's designed for anyone needing to quickly build or experiment with recommendation engines.
159 stars. No commits in the last 6 months. Available on PyPI.
Use this if you need to build a custom recommendation system for your products, content, or services and want to explore various state-of-the-art algorithms without starting from scratch.
Not ideal if you're looking for a simple plug-and-play solution without any need for customization or understanding of the underlying recommendation logic.
Stars
159
Forks
20
Language
Python
License
MIT
Category
Last pushed
Jul 26, 2023
Commits (30d)
0
Dependencies
9
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