Augmenting Netflix Search with In-Session Adapted Recommendations

06/05/2022
by   Moumita Bhattacharya, et al.
0

We motivate the need for recommendation systems that can cater to the members in-the-moment intent by leveraging their interactions from the current session. We provide an overview of an end-to-end in-session adaptive recommendations system in the context of Netflix Search. We discuss the challenges and potential solutions when developing such a system at production scale.

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