This technical note examines LLM hallucination as a pipeline-level grounding problem rather than only a model-level failure.It argues that hallucination should not be understood simply as “the model making something up,” but as unsupported contentpresented as factual and allowed to pass through a broader AI pipeline.The note distinguishes hallucination from related AI error types such as fabricated sources, unsupported claims, misattribution,provenance errors, context drift, outdated information, retrieval failures, reasoning errors, and validation failures. It proposestwo synthesized analytical tables: one for understanding when different AI error types become hallucination, and another foridentifying whether and how such errors can be detected before release.The discussion then shifts from generated output to released output, emphasizing that reliable AI systems require grounding,validation, provenance checks, quality gates, fail-closed mechanisms, remediation loops, and human-in-the-loop review.Drawing on emerging industry practices such as contextual grounding, automated reasoning, groundedness detection,programmable guardrails, and source-based validation, the note argues that the future of trustworthy AI lies not only in largermodels, but in grounded, governed, and domain-aware AI architectures.
Nermin Sökmen (Sun,) studied this question.