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Approximate Nearest Neighbours for Recommender Systems

This post is about evaluating a couple of different approximate nearest neighbours libraries to speed up making recommendations made by matrix factorization models. In particular, the libraries I'm looking at are Annoy, NMSLib and Faiss.



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Approximate Nearest Neighbours for Recommender Systems

https://www.benfrederickson.com/approximate-nearest-neighbours-for-recommender-systems

This post is about evaluating a couple of different approximate nearest neighbours libraries to speed up making recommendations made by matrix factorization models. In particular, the libraries I'm looking at are Annoy, NMSLib and Faiss.



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https://www.benfrederickson.com/approximate-nearest-neighbours-for-recommender-systems

Approximate Nearest Neighbours for Recommender Systems

This post is about evaluating a couple of different approximate nearest neighbours libraries to speed up making recommendations made by matrix factorization models. In particular, the libraries I'm looking at are Annoy, NMSLib and Faiss.

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