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Deep Neural Networks for YouTube Recommendations

Describes YouTube's deep learning recommendation system split into deep candidate generation and deep ranking stages.

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Deep Neural Networks for YouTube Recommendations

By Paul Covington, Jay K. Adams, Emre SarginACM Conference on Recommender Systems
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The paper describes YouTube's recommendation system, one of the largest-scale and most sophisticated industrial recommenders in existence, at a high level while focusing on the dramatic performance improvements brought by deep learning. It follows the classic two-stage information retrieval dichotomy: a deep candidate generation model first narrows the enormous corpus, and a separate deep ranking model then orders the candidates.

Beyond the architecture, the authors provide practical lessons and insights derived from designing, iterating on, and maintaining a massive recommendation system with enormous user-facing impact. Sharing these production insights mattered because it connected academic deep learning methods to the realities of deploying recommendations at YouTube scale.

Abstract

This paper describes YouTube's large-scale, sophisticated industrial recommendation system and the substantial performance gains brought by deep learning. Following the classic two-stage information retrieval structure, it details a deep candidate generation model and then a separate deep ranking model. The authors also share practical lessons and insights from designing, iterating on, and maintaining a massive recommendation system with enormous user-facing impact.

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recommender systemsdeep learningcandidate generationrankingYouTube
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