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 LinkedIn scale. Feed-SR is currently the primary member experience on LinkedIn's Feed and shows significant improvements in member engagement (+2.10% time spent) 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 |