Standard language models have a fixed knowledge cutoff and know nothing about your internal documents, product catalogue, or customer data. RAG solves this. It lets you build AI applications that are grounded in your actual data, which means more accurate, more relevant, and less prone to the hallucinations that make generic AI tools unreliable for business-critical tasks. For marketing teams, RAG is what makes the difference between an AI that gives you generic advice and one that can reference your brand guidelines, past campaign data, and product specs.