SOLARIS: Speculative Offloading of Latent-bAsed Representation for Inference Scaling
About
Recent advances in recommendation scaling laws have led to foundation models of unprecedented complexity. While these models offer superior performance, their computational demands make real-time serving impractical, often forcing practitioners to rely on knowledge distillation-compromising serving quality for efficiency. To address this challenge, we present SOLARIS (Speculative Offloading of Latent-bAsed Representation for Inference Scaling), a novel framework inspired by speculative decoding. SOLARIS proactively precomputes user-item interaction embeddings by predicting which user-item pairs are likely to appear in future requests, and asynchronously generating their foundation model representations ahead of time. This approach decouples the costly foundation model inference from the latency-critical serving path, enabling real-time knowledge transfer from models previously considered too expensive for online use. Deployed across Meta's advertising system serving billions of daily requests, SOLARIS achieves 0.67% revenue-driving top-line metrics gain, demonstrating its effectiveness at scale.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| CTR Prediction | Meta Facebook Feed (production live traffic) | Relative BCE Loss Reduction9 | 1 | |
| CTR Prediction | Meta Facebook Reels (production live traffic) | Relative BCE Loss Reduction8 | 1 | |
| CTR Prediction | Meta Instagram (production live traffic) | Relative BCE Loss Reduction5 | 1 | |
| CTR Prediction | Meta Instagram Link Click (production live traffic) | Relative BCE Loss Reduction5 | 1 | |
| CVR prediction | Meta Facebook Feed + Reels (production live traffic) | Relative BCE Loss Reduction (%)10 | 1 | |
| CVR prediction | Meta Offsite Conversion (production live traffic) | Relative BCE Loss Reduction5 | 1 |