Meta Lattice: Model Space Redesign for Cost-Effective Industry-Scale Ads Recommendations
About
The rapidly evolving landscape of products, surfaces, policies, and regulations poses significant challenges for deploying state-of-the-art recommendation models at industry scale, primarily due to data fragmentation across domains and escalating infrastructure costs that hinder sustained quality improvements. To address this challenge, we propose Lattice, a recommendation framework centered around model space redesign that extends Multi-Domain, Multi-Objective (MDMO) learning beyond models and learning objectives. Lattice addresses these challenges through a comprehensive model space redesign that combines cross-domain knowledge sharing, data consolidation, model unification, distillation, and system optimizations to achieve significant improvements in both quality and cost-efficiency. Our deployment of Lattice at Meta has resulted in 10% revenue-driving top-line metrics gain, 11.5% user satisfaction improvement, 6% boost in conversion rate, with 20% capacity saving.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Click prediction | KuaiVideos (test) | AUC0.8861 | 30 | |
| Follow Prediction | KuaiVideo (test) | AUC79.97 | 12 | |
| Multi-task Recommendation | KuaiVideo (test) | Avg AUC0.8031 | 12 |