IRLGJul 7, 2019

Search-Based Serving Architecture of Embeddings-Based Recommendations

arXiv:1907.03336v1
Originality Incremental advance
AI Analysis

This addresses scalability and deployment challenges for large-scale recommender systems, though it is incremental as it builds on existing embedding techniques.

The paper tackles the problem of productizing embeddings-based recommendation systems for high-throughput, low-latency serving, proposing a search-based architecture that adapts to changing embeddings and serves tens of billions of recommendations daily.

Over the past 10 years, many recommendation techniques have been based on embedding users and items in latent vector spaces, where the inner product of a (user,item) pair of vectors represents the predicted affinity of the user to the item. A wealth of literature has focused on the various modeling approaches that result in embeddings, and has compared their quality metrics, learning complexity, etc. However, much less attention has been devoted to the issues surrounding productization of an embeddings-based high throughput, low latency recommender system. In particular, how the system might keep up with the changing embeddings as new models are learnt. This paper describes a reference architecture of a high-throughput, large scale recommendation service which leverages a search engine as its runtime core. We describe how the search index and the query builder adapt to changes in the embeddings, which often happen at a different cadence than index builds. We provide solutions for both id-based and feature-based embeddings, as well as for batch indexing and incremental indexing setups. The described system is at the core of a Web content discovery service that serves tens of billions recommendations per day in response to billions of user requests.

Foundations

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