The rapid proliferation of “AI governance” solutions has created a structural conflation between compliance instrumentation and runtime enforcement. Many contemporary systems embed explainability artifacts, monitoring dashboards, drift detection, and cryptographic signing into development pipelines—improving audit readiness and regulatory traceability. However, these systems frequently do not enforce policy at the point of execution. This paper introduces a formal doctrinal framework that distinguishes: • Evidence-routing compliance systems (observability architectures that document and monitor AI behavior), and• Authorization governance substrates (runtime enforcement architectures that prevent unauthorized actions before execution). The paper formalizes the distinction along five architectural axes—enforcement locus, signature semantics, failure behavior, bypass resistance, and override governance—and introduces a six-criterion Enforcement Test Protocol that yields a binary classification: authorization governance present or absent. Through a running example in automated loan decisioning and analysis under the EU AI Act, GDPR Article 22, and U.S. federal AI safety frameworks, the paper demonstrates that documentation volume does not equal enforceability. Systems that log, sign, and monitor may still fail open when governance conditions fail. The central thesis is architectural and testable: Governance without enforceability is advisory. The paper concludes with an integration doctrine: observability and authorization are complementary layers. Audit instrumentation improves traceability; authorization substrates prevent harm. Neither substitutes for the other. This working paper contributes a publicly usable evaluation protocol intended for enterprise buyers, regulators, auditors, and researchers seeking clear criteria for distinguishing monitoring-based governance claims from true enforcement architectures.
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Edward Meyman
Ferro (United States)
Ferghana Polytechnical Institute
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Edward Meyman (Mon,) studied this question.
www.synapsesocial.com/papers/6996a80aecb39a600b3ee546 — DOI: https://doi.org/10.5281/zenodo.18663864
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