The article does not assess model accuracy, internal system design, or causality. Instead, it examines AI incidents as post-event accountability failures driven by missing or non-inspectable evidence. Through sector-agnostic walkthroughs spanning finance, healthcare, and public administration, it demonstrates a recurring governance failure mode: once scrutiny occurs, the absence of contemporaneous, interaction-specific records converts uncertainty into institutional exposure regardless of technical intent or system quality.