An Industrial-Scale Sequential Recommender for LinkedIn Feed Ranking
About
LinkedIn Feed enables professionals worldwide to discover relevant content, build connections, and share knowledge at scale. We present Feed Sequential Recommender (Feed SR), a transformer-based sequential ranking model for LinkedIn Feed that replaces a DCNv2-based ranker and meets strict production constraints. We detail the modeling choices, training techniques, and serving optimizations that enable deployment at a scale of 1.2 billion members. Feed SR has been serving the majority of LinkedIn's Feed traffic for over three months and shows significant improvements in member engagement (+2.10% time spent, +3.52% like, comments, or reshares) in online A/B tests compared to the existing production model. We also describe our deployment experience with alternative sequential and LLM-based ranking architectures and why Feed SR provided the best combination of online metrics and production efficiency.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Feed Recommendation | LinkedIn Feed Overall Production Environment (Online A/B Test) | Time Spent Lift2.1 | 2 | |
| Feed Recommendation | LinkedIn Feed DAU Production Environment (Online A/B Test) | Time Spent2.38 | 1 | |
| Feed Recommendation | LinkedIn Feed MAU Production Environment (Online A/B Test) | Time Spent Lift0.82 | 1 |