A summary of all the discussions around AI search

If you’ve been too busy to dive into all the discussion around the new search paradigm, here are quick summaries and pointers from which you can work 👇

📌 AI builds answers by combining passages from multiple sources.
Write in modular blocks that are independently useful.

📌One query often triggers multiple related prompts.
Use tools like People Also Ask and AlsoAsked to surface longer-form questions and match your content to intent.

📌Search systems split content into passages and store them individually.
Structure your writing so each section delivers on a specific idea.

📌Text is converted into vectors that capture its meaning.
You can test semantic similarity using the OpenAI Embeddings API to see how your content aligns with target queries.

📌Similarity is measured by how close those vectors are to the query.
Well-phrased examples and direct answers increase the chances of retrieval.

📌Search results shift depending on who’s searching.
Writing for specific personas makes your content more likely to be surfaced.

📌Traditional SEO tools focus on different scoring systems.
Explore tools like Vectara, Haystack, or LlamaIndex to test retrieval using AI-native methods.

📌AI systems chunk text by token count.
Use clean formatting, consistent flow, and focused paragraphs to support chunk-level retrieval.

These are some of the working ideas behind modern search systems. Some are already influencing visibility. Others are early-stage observations waiting to be tested.

The only way to know what works is to test it.

What did I miss?