Technical requirementsWhat is ML governance and why is it needed?The regulatory landscape around model risk managementCommon causes of ML model risksUnderstanding the ML governance frameworkUnderstanding ML bias and explainabilityBias detection and mitigationML explainability techniquesDesigning an ML platform for governanceData and model documentation Model inventoryModel monitoringChange management controlLineage and reproducibilityObservability and auditingSecurity and privacy-preserving MLHands-on lab – detecting bias, model explainability, and training privacy-preserving modelsOverview of the scenarioDetecting bias in the training datasetExplaining feature importance for the trained modelTraining privacy-preserving models