This course provides a structured, practitioner-focused approach to identifying, managing, and governing risks in AI systems across their lifecycle. It equips learners with the tools to move beyond model performance and address real-world concerns such as bias, model degradation, regulatory exposure, and operational accountability.
Learners begin by diagnosing bias in datasets and models, applying fairness metrics, and conducting audits that reveal hidden disparities across demographic groups. The course then advances to bias mitigation, where participants explore practical techniques across the model pipeline and learn to navigate trade-offs between fairness and performance.
The course expands into production environments, teaching how to design monitoring pipelines that detect data drift, concept drift, and performance degradation before they impact business outcomes. Learners connect these monitoring signals to structured risk evaluation frameworks, translating technical anomalies into enterprise risk language using scoring models, risk registers, and response strategies aligned with standards such as ISO 31000 and COSO ERM.
Finally, the course integrates AI systems into broader governance and compliance structures. Participants learn to map AI use cases to regulatory obligations (e.g., GDPR, EU AI Act), build compliance inventories, and design governance dashboards that support audit readiness and executive oversight.
By the end of the course, learners will be able to operationalize AI risk management, implement continuous monitoring, prioritize and respond to model risks, and align AI systems with organizational and regulatory expectations.
AI systems trained on biased data produce biased outcomes — and in regulated domains like credit, hiring, and healthcare, those outcomes carry legal and reputational consequences. This module equips you to move from awareness of bias to concrete action. You will learn how to detect and measure bias in datasets using statistical tests and group fairness metrics such as demographic parity and equalized odds, and how to make those findings visible through bias dashboards. You will then apply pre-processing and post-processing mitigation techniques and evaluate the trade-offs between fairness improvements, model performance, and regulatory compliance. By the end of this module, you will be able to identify, quantify, and mitigate bias in AI models while documenting your decisions for audit and governance review.
Inclus
11 vidéos2 lectures1 devoir
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11 vidéos•Total 38 minutes
Module Introduction•3 minutes
Welcome to Mitigate AI Risk and Ensure Ethical Operations•2 minutes
Spot the Satisfactory Scorecard That Isn't•4 minutes
Distinguish Sampling Bias from Label Bias•4 minutes
Run a Bias Audit from Scoping to Dashboard•5 minutes
Prioritize Your First Bias Audit for Maximum Impact•5 minutes
Spot the Stall Between Diagnosis and Action •3 minutes
Match Your Mitigation to the Bias You Actually Found •4 minutes
Apply Bias Mitigation from Diagnosis to Documented Decision •4 minutes
Prioritize Mitigation in Regulated Decision Systems •4 minutes
From Analysis to Monitoring•1 minute
2 lectures•Total 20 minutes
Syllabus•10 minutes
Summary: Uncovered Hidden Bias: Your Journey to Building Fair and Responsible AI•10 minutes
1 devoir•Total 10 minutes
Bias and Fairness Analysis in AI Models: Quiz•10 minutes
Monitor and Manage Model Risk
Module 2•1 heure à terminer
Détails du module
In this module, you focus on how AI systems are monitored and managed after deployment to ensure they remain reliable, compliant, and aligned with business objectives. You will learn how to build monitoring pipelines that detect data and concept drift, connect model behavior to business metrics, and trigger alerts based on defined risk thresholds. You will also examine how to evaluate and prioritize risks using structured scoring frameworks and integrate model issues into enterprise risk registers. By the end of this module, you will be able to design monitoring systems and translate model anomalies into actionable, governance-aligned risk responses.
Inclus
9 vidéos1 lecture1 devoir
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9 vidéos•Total 30 minutes
Module Introduction•2 minutes
Spot the Drift Before It Costs You•3 minutes
Distinguish Drift Types to Direct Your Response•3 minutes
Wire Your Model from Logging to Response•4 minutes
Monitor the Models That Can Hurt You Most•4 minutes
Spot the Risk That Dashboards Cannot Show You •3 minutes
Turn AI Anomalies into Enterprise Risk Language •4 minutes
Score Model Risks and Register Them for Enterprise Oversight •4 minutes
Put Your Highest-Stakes Model on the Enterprise Risk Register This Week •4 minutes
1 lecture•Total 10 minutes
Summary: Stay in Control: How You Mastered AI Model Risk•10 minutes
1 devoir•Total 10 minutes
Monitor and Manage Model Risk: Quiz•10 minutes
AI Governance Integration with Risk Management
Module 3•1 heure à terminer
Détails du module
In this module, you focus on integrating AI governance into enterprise risk and compliance systems that already guide business decisions. You will learn how to embed AI policies into established frameworks such as COSO and ISO 31000, ensuring that model risks are visible within risk registers, appetite statements, and control processes. You will also build structured compliance maps that connect AI systems to regulatory requirements like the EU AI Act and GDPR, and translate this information into executive dashboards using governance KPIs. By the end of this module, you will be able to align AI governance with enterprise risk processes and communicate compliance and risk posture to leadership with clarity.
Inclus
10 vidéos1 lecture1 devoir
Afficher les informations sur le contenu du module
10 vidéos•Total 32 minutes
Module Introduction•3 minutes
Spot the Governance Gap Hiding in Plain Sight•3 minutes
Connect AI Governance to the Risk Architecture You Already Have•4 minutes
Embed AI Risk into Your Enterprise Risk Framework•4 minutes
Govern Your Highest-Risk AI Systems First•4 minutes
Spot the Missing Map Between Your AI Systems and Your Obligations•3 minutes
Link Your AI Systems to the Rules That Bind Them•3 minutes
Start by Building Your AI Systems Inventory. •4 minutes
Prioritize Your Highest-Risk Systems First•3 minutes
End of Course•1 minute
1 lecture•Total 10 minutes
Summary: From Control to Confidence: How You Integrated AI Governance with Risk Management•10 minutes
1 devoir•Total 30 minutes
AI Governance Integration with Risk Management: Quiz•30 minutes
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