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Analysis

This paper addresses a critical problem in AI deployment: the gap between model capabilities and practical deployment considerations (cost, compliance, user utility). It proposes a framework, ML Compass, to bridge this gap by considering a systems-level view and treating model selection as constrained optimization. The framework's novelty lies in its ability to incorporate various factors and provide deployment-aware recommendations, which is crucial for real-world applications. The case studies further validate the framework's practical value.
Reference

ML Compass produces recommendations -- and deployment-aware leaderboards based on predicted deployment value under constraints -- that can differ materially from capability-only rankings, and clarifies how trade-offs between capability, cost, and safety shape optimal model choice.