Independent AI systems are increasingly used by third parties to generate decision-relevant descriptions of enterprises in contexts including investment screening, procurement qualification, regulatory assessment, and reputational evaluation. These representations are produced outside the control of the enterprises being described and, by default, leave no durable or authoritative record. This paper identifies and analyzes a structural governance failure mode arising from this condition: the absence of contemporaneous evidence capable of documenting what external AI systems represented about an enterprise at a specific point in time. When scrutiny later arises—whether through board review, litigation, audit, or regulatory inquiry—organizations are frequently unable to reconstruct the representations relied upon by external actors or to evidence how leadership responded at the time. The paper does not argue that enterprises have a general duty to monitor or correct external AI outputs, nor does it focus on AI accuracy as a primary risk. Instead, it examines the evidentiary consequences of non-reconstructable AI-mediated representations once review becomes retrospective. Drawing on structured observation across multiple AI models, decision-adjacent query classes, and time-separated executions, the paper documents key properties of external AI representations, including temporal variance, context sensitivity, and practical non-reproducibility. It then situates these properties within established governance, audit, and dispute-resolution frameworks. Finally, the paper describes an architectural response class focused on evidence preservation rather than behavioral control, outlining how contemporaneous recording of external AI representations may address the identified evidentiary gap without expanding legal duties or creating continuous monitoring obligations.
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Tim de Rosen
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Tim de Rosen (Sat,) studied this question.
www.synapsesocial.com/papers/6980ff37c1c9540dea812104 — DOI: https://doi.org/10.5281/zenodo.18443706