Addressing the Trust Deficit: Strategies for Mitigating AI Hallucinations
As Large Language Models become central to enterprise workflows, the persistent issue of 'hallucinations'—plausible but false outputs—remains a critical barrier to adoption. This briefing explores the technical roots of AI inaccuracy and the emerging frameworks, such as Retrieval-Augmented Generation, designed to anchor models in verifiable facts.