Best Practices on Recommendation Systems
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Updated
May 16, 2024 - Python
Best Practices on Recommendation Systems
A web app for ranking computer science departments according to their research output in selective venues, and for finding active faculty across a wide range of areas.
Learning to Rank in TensorFlow
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⭐Github Ranking⭐ Github stars and forks ranking list. Github Top100 stars list of different languages. Automatically update daily. | Github仓库排名,每日自动更新
⭐ Web frameworks for Go, most starred on GitHub
🕷️Github China/Global User Ranking, Global Warehouse Star Ranking (Github Action is automatically updated daily).
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allRank is a framework for training learning-to-rank neural models based on PyTorch.
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A low code Machine Learning personalized ranking service for articles, listings, search results, recommendations that boosts user engagement. A friendly Learn-to-Rank engine
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