Glossary
What is Trusted AI Analytics?
Trusted AI analytics is the category of AI analytics products where every answer is grounded in governed business context, explainable to an operator, reviewable by an analyst, and owned by the data team. It stands in contrast to the generic 'ask your data anything' category.
Four requirements for trust
Grounded — the answer is computed against a governed context and semantic layer, not invented by the LLM.
Explainable — the answer can point to the definitions and rules that produced it.
Reviewable — analysts can validate, correct, and promote patterns.
Owned — the data team is the owner of the trust layer, not a vendor and not a central ML team.
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