Tue. Apr 7th, 2026

Engineering for the Answer Engine: GEO for RAG-Friendly Web Apps (TalentHacked.com Case Study)


LLMs are becoming a discovery layer. Users ask a question, the model synthesizes an answer, and then it may cite a few sources. That shifts the goal from “rank and win a click” to “be the most useful, extractable, verifiable source in the retrieval set.”

For TalentHacked.com (UK Global Talent Visa platform), this is a solvable engineering problem: ship content that a headless retriever can fetch, chunk, embed, and cite.

By uttu

Related Post

Leave a Reply

Your email address will not be published. Required fields are marked *