Cost-Aware Contrastive Routing for LLMs
About
We study cost-aware routing for large language models across diverse and dynamic pools of models. Existing approaches often overlook prompt-specific context, rely on expensive model profiling, assume a fixed set of experts, or use inefficient trial-and-error strategies. We introduce Cost-Spectrum Contrastive Routing (CSCR), a lightweight framework that maps both prompts and models into a shared embedding space to enable fast, cost-sensitive selection. CSCR uses compact, fast-to-compute logit footprints for open-source models and perplexity fingerprints for black-box APIs. A contrastive encoder is trained to favor the cheapest accurate expert within adaptive cost bands. At inference time, routing reduces to a single k-NN lookup via a FAISS index, requiring no retraining when the expert pool changes and enabling microsecond latency. Across multiple benchmarks, CSCR consistently outperforms baselines, improving the accuracy-cost tradeoff by up to 25%, while generalizing robustly to unseen LLMs and out-of-distribution prompts.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| LLM Routing | RouterBench | QNC1.66 | 14 | |
| Retrieval | embedllm | Communication Volume (Bytes)2.90e+5 | 6 | |
| LLM Routing | embedllm | AUDC53.9 | 6 | |
| LLM Routing | Mix-Instruct | AUDC0.048 | 6 |