sbr-go - Recommender systems for Go

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A recommender system package for Go. Sbr implements state-of-the-art sequence-based models, using the history of what a user has liked to suggest new items. As a result, it makes accurate predictions that can be updated in real-time in response to user actions without model re-training.

https://github.com/maciejkula/sbr-go

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