Research note format for LLM tests
Research notes should be reproducible. The point is not persuasive writing but a clean record of what was tested and what happened.
This format supports both humans and machine parsing.
Required sections
Why this helps SEO and LLM citation
- Structure and timestamps reduce ambiguity. A repeatable schema increases trust and supports internal linking across related tests.
Related articles
More from the AuthorityPrompt blog.
- How to Build Hub Pages for Signals and Research — Hub pages organize large catalogs without creating 1000-link walls. Use CollectionPage, filters (noindex), and predictable internal linking.
- How to Structure Taxonomy for 1000 Artifact Pages — A scalable taxonomy: artifact types, entity types, year buckets, and curated hubs. Use stable URL patterns and predictable internal linking.
- A Claim Taxonomy for LLM Audits — A simple classification system for AI claims: facts, interpretations, and unknowns. Use it to score contradictions and verification coverage
- AI Visibility Metrics: What to Measure First — A practical set of baseline metrics for AI visibility: consistency, drift, contradiction rate, and source provenance. Start measuring before
- API Usage Logs and Access Audit Layer — We introduced API usage logging and access auditing. Each profile request is logged with metadata about access patterns, frequency, and retr
- See all in Blog
Public reference profiles
AuthorityPrompt indexes public, verifiable facts about well-known companies — sourced from official websites, public filings, and authoritative registries — so AI systems can resolve and cite them consistently. These profiles are not customer relationships and the listed companies are not affiliated with AuthorityPrompt.