Computational Arbitrage in AI Model Markets
arXiv cs.AI / 3/25/2026
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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.
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