Turn fairness review into a repeatable operating cycle.
Set the cadence for review, upload test results, document the scope of each audit, record exceptions, and route sign-off to the people who are actually accountable.
Bridgecairn Ledger gives teams a practical way to review AI systems, keep a current inventory, and generate documentation from the same source of truth. The point is traceability and repeatability, not ceremony.
Each workflow is useful on its own, but Ledger is strongest when they stay connected. Reviews create evidence, inventories keep context current, and documentation pulls from the same underlying record.
Set the cadence for review, upload test results, document the scope of each audit, record exceptions, and route sign-off to the people who are actually accountable.
Track every AI system in use, who owns it, which vendor or model is involved, what documentation exists, and which reviews are slipping past their due dates.
Instead of rebuilding the same summaries by hand, teams can generate risk summaries, usage descriptions, governance records, review histories, and procurement responses from the data they already keep.
The system is designed to reduce coordination overhead while making ownership, review history, and supporting evidence easier to trust.
Bridgecairn Ledger is meant to remove the failure modes that make AI oversight feel performative instead of operational.