ML Compass: Navigating Capability, Cost, and Compliance Trade-offs in AI Model Deployment
Vassilis Digalakis Jr, Ramayya Krishnan, Gonzalo Martin Fernandez, Agni Orfanoudaki

TL;DR
ML Compass is a framework that helps organizations select AI models by balancing capability, cost, and compliance, providing deployment-aware recommendations that go beyond capability leaderboards.
Contribution
We introduce ML Compass, a novel systems-level framework that models AI model selection as constrained optimization over capability-cost frontiers, integrating application outcomes and regulatory constraints.
Findings
Framework effectively bridges capability and deployment decisions.
Case studies show recommendations differ from capability-only rankings.
Quantifies impact of budget, regulation, and progress on model selection.
Abstract
We study how organizations should select among competing AI models when user utility, deployment costs, and compliance requirements jointly matter. Widely used capability leaderboards do not translate directly into deployment decisions, creating a capability -- deployment gap; to bridge it, we take a systems-level view in which model choice is tied to application outcomes, operating constraints, and a capability-cost frontier. We develop ML Compass, a framework that treats model selection as constrained optimization over this frontier. On the theory side, we characterize optimal model configurations under a parametric frontier and show a three-regime structure in optimal internal measures: some dimensions are pinned at compliance minima, some saturate at maximum levels, and the remainder take interior values governed by frontier curvature. We derive comparative statics that quantify how…
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Taxonomy
TopicsEthics and Social Impacts of AI · Artificial Intelligence in Healthcare and Education · Persona Design and Applications
