DeepRec-AI/DeepRec
DeepRec is a high-performance recommendation deep learning framework based on TensorFlow. It is hosted in incubation in LF AI & Data Foundation.
DeepRec helps businesses build and deploy powerful recommendation systems at scale, similar to those used by large e-commerce or social media platforms. It takes your raw user interaction data and product information, processing it to generate highly relevant personalized recommendations for your customers. This tool is for machine learning engineers and data scientists responsible for developing and maintaining large-scale recommendation engines.
1,170 stars. No commits in the last 6 months.
Use this if you need to train and serve recommendation models with billions of samples and trillions of parameters for retail, media, advertising, or social network applications.
Not ideal if you are working with small datasets or do not require distributed, super-scale training and serving capabilities for recommendation models.
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1,170
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362
Language
C++
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Apache-2.0
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Last pushed
Jan 21, 2025
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