Computational Arbitrage in AI Model Markets

arXiv cs.AI / 3/25/2026

💬 OpinionSignals & Early TrendsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper studies how an arbitrageur can allocate inference budgets across competing AI model providers to undercut market pricing while still delivering verifiable, budget-feasible solutions.
  • Using a case study on SWE-bench GitHub issue resolution with GPT-5 mini and DeepSeek v3.2, the authors show that simple arbitrage strategies can yield net profit margins up to 40% in a verifiable setting.
  • The study finds that robust arbitrage strategies can remain profitable across different domains, indicating the approach is not limited to a single benchmark.
  • It also analyzes how model distillation can create additional arbitrage opportunities, potentially shifting revenue away from the original “teacher” model.
  • The paper argues that multiple arbitrageurs can drive down consumer prices and reduce market segmentation, potentially enabling smaller providers to enter sooner by capturing revenue earlier.

Abstract

Consider a market of competing model providers selling query access to models with varying costs and capabilities. Customers submit problem instances and are willing to pay up to a budget for a verifiable solution. An arbitrageur efficiently allocates inference budget across providers to undercut the market, thus creating a competitive offering with no model-development risk. In this work, we initiate the study of arbitrage in AI model markets, empirically demonstrating the viability of arbitrage and illustrating its economic consequences. We conduct an in-depth case study of SWE-bench GitHub issue resolution using two representative models, GPT-5 mini and DeepSeek v3.2. In this verifiable domain, simple arbitrage strategies generate net profit margins of up to 40%. Robust arbitrage strategies that generalize across different domains remain profitable. Distillation further creates strong arbitrage opportunities, potentially at the expense of the teacher model's revenue. Multiple competing arbitrageurs drive down consumer prices, reducing the marginal revenue of model providers. At the same time, arbitrage reduces market segmentation and facilitates market entry for smaller model providers by enabling earlier revenue capture. Our results suggest that arbitrage can be a powerful force in AI model markets with implications for model development, distillation, and deployment.