recommenders
Recommender system tools
Provides best practices and examples for building recommendation systems using machine learning algorithms
Best Practices on Recommendation Systems
19k stars
276 watching
3k forks
Language: Python
last commit: 3 months ago
Linked from 4 awesome lists
aiartificial-intelligencedata-sciencedeep-learningjupyter-notebookkubernetesmachine-learningoperationalizationpythonrankingratingrecommendationrecommendation-algorithmrecommendation-enginerecommendation-systemrecommendertutorial
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