auditimahud
Auditimahud is a framework for auditing complex automated decision systems, data pipelines, and governance processes to improve accountability, transparency, and safety. It combines systematic evidence collection, risk assessment, and independent verification to provide verifiable assessments of compliance with defined standards and policies. The framework is intended for use across public and private sectors where decisions are automated and data flows are extensive.
The term auditimahud emerged in the early 2020s in discussions of data governance and responsible AI as
Core components of auditimahud include: defined auditing standards and checklists; formal evidence artifacts such as data
The typical process involves planning the audit, gathering evidence, conducting reproducible tests and simulations, evaluating outcomes
Applications span government services, financial services, healthcare, and other sectors deploying automated decision systems. Benefits include
Related terms include auditability, explainable AI, algorithmic transparency, and data governance.