Pricing Online LLM Services with Data-Calibrated Stackelberg Routing Game
Abstract
The proliferation of Large Language Models (LLMs) has established LLM routing as a standard service delivery mechanism, where users select models based on cost, Quality of Service (QoS), among other things. However, optimal pricing in LLM routing platforms requires precise modeling for dynamic service markets, and solving this problem in real time at scale is computationally intractable. In this paper, we propose , a novel practical and scalable solution for real-time dynamic pricing in competitive LLM routing. models the service market as a Stackelberg game, where providers set prices and users select services based on multiple criteria. To capture real-world market dynamics, we incorporate both objective factors (~cost, QoS) and subjective user preferences into the model. For scalability, we employ a deep aggregation network to learn provider abstraction that preserve user-side equilibrium behavior across pricing strategies. Moreover, offers interpretability by explaining its pricing decisions. Empirical evaluation on real-world data shows that achieves over 95\% of the optimal profit while only requiring less than 5\% of the optimal solution's computation time.
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