Episode 12 — Data Governance 101
Data governance establishes the rules and responsibilities for managing the information that powers AI systems. This episode defines data governance as encompassing quality, lineage, ownership, and security. Without strong governance, models risk producing unreliable, biased, or unsafe outputs. Learners explore how governance frameworks align with privacy requirements, ethical obligations, and compliance standards. Clear ownership ensures accountability for datasets, lineage tracks sources and transformations, and quality controls ensure completeness, accuracy, and consistency. Together, these practices reduce the risk of harmful or misleading results.
The episode expands with scenarios where governance failures have produced significant harms, such as biased datasets reinforcing discrimination in hiring or poor-quality healthcare data leading to inaccurate diagnostic tools. Learners are introduced to tools such as data catalogs, lineage-tracking platforms, and stewardship roles that make governance operational. Challenges are acknowledged, including organizational resistance, resource demands, and the complexity of managing data across large enterprises. However, strong governance creates measurable benefits: greater trust, smoother regulatory audits, and improved performance of AI systems. By adopting governance practices early in the lifecycle, organizations create the foundation for responsible and sustainable AI. Produced by BareMetalCyber.com, where you’ll find more cyber audio courses, books, and information to strengthen your certification path.
