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Scalable Prompt Routing via Fine-Grained Latent Task Discovery

About

Prompt routing dynamically selects the most appropriate large language model from a pool of candidates for each query, optimizing performance while managing costs. As model pools scale to include dozens of frontier models with narrow performance gaps, existing approaches face significant challenges: manually defined task taxonomies cannot capture fine-grained capability distinctions, while monolithic routers struggle to differentiate subtle differences across diverse tasks. We propose a two-stage routing architecture that addresses these limitations through automated fine-grained task discovery and task-aware quality estimation. Our first stage employs graph-based clustering to discover latent task types and trains a classifier to assign prompts to discovered tasks. The second stage uses a mixture-of-experts architecture with task-specific prediction heads for specialized quality estimates. At inference, we aggregate predictions from both stages to balance task-level stability with prompt-specific adaptability. Evaluated on 10 benchmarks with 11 frontier models, our method consistently outperforms existing baselines and surpasses the strongest individual model while incurring less than half its cost.

Yunyi Zhang, Soji Adeshina, Sheng Guan, Ashwin Ganesh, Zhen Han, Vassilis N. Ioannidis, Huzefa Rangwala, George Karypis• 2026

Related benchmarks

TaskDatasetResultRank
Multi-task Language UnderstandingMMLU
Accuracy93.4
321
Question AnsweringTriviaQA
EM24.9
182
Code GenerationHumanEval
Pass@168.4
171
Open-domain Question AnsweringNatural Questions (NQ)
Exact Match (EM)59
74
Commonsense ReasoningCommonsenseQA (CSQA)
Accuracy83.3
56
Science Question AnsweringARC
ARC Accuracy98.8
46
Mathematical Problem SolvingMATH
Accuracy93.8
32
CodingMBPP
Pass@1 Accuracy90
30
Aggregate performance evaluationAggregate 10-Benchmark Suite
Average Score79.9
29
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