Skip to main content

    RAG

    RAG retrieves relevant documents first, then generates answers. For sites, structured and retrievable content increases your chance to be used in RAG systems.

    Definition

    RAG (Retrieval-Augmented Generation) retrieves relevant passages from documents or databases and then uses a model to generate an answer. To be useful in RAG, your content should be structured (headings, paragraphs, FAQs), machine-readable (knowledge.json/schema), and discoverable via stable URLs and sitemaps.

    Why it matters

    • RAG is a common architecture for AI search and assistants
    • Retrievable, citable content is more likely to be used
    • Extends SEO discovery into AI retrieval and citation

    How to implement

    • Use clear structure (H2/H3, FAQs, definitions) for chunking
    • Publish machine-readable assets (knowledge.json, schema)
    • Keep URLs stable, canonicals correct, and list them in sitemaps

    FAQ

    Common questions about this term.

    Back to glossary