Pideya Learning Academy

AI Risk Governance in Banking and Insurance

Upcoming Schedules

  • Schedule

Date Venue Duration Fee (USD)
24 Feb - 28 Feb 2025 Live Online 5 Day 3250
10 Mar - 14 Mar 2025 Live Online 5 Day 3250
21 Apr - 25 Apr 2025 Live Online 5 Day 3250
09 Jun - 13 Jun 2025 Live Online 5 Day 3250
11 Aug - 15 Aug 2025 Live Online 5 Day 3250
15 Sep - 19 Sep 2025 Live Online 5 Day 3250
13 Oct - 17 Oct 2025 Live Online 5 Day 3250
24 Nov - 28 Nov 2025 Live Online 5 Day 3250

Course Overview

As the financial services landscape accelerates toward digital maturity, Artificial Intelligence (AI) has emerged as a transformative force within banking and insurance. Institutions are rapidly embedding AI into risk scoring, fraud detection, underwriting, customer service, and investment advisory functions. While these innovations deliver enhanced agility and decision intelligence, they also present complex governance challenges. The growing use of black-box models, evolving regulations, and ethical dilemmas now demand a strategic shift in how organizations manage AI-related risks.
Pideya Learning Academy introduces the AI Risk Governance in Banking and Insurance training program—a focused initiative designed to equip financial sector professionals with the expertise to govern AI adoption responsibly and align it with enterprise risk management, regulatory compliance, and ethical integrity. As financial institutions become data-driven, a proactive governance model becomes not just a regulatory requirement but a business imperative.
According to the World Economic Forum’s 2024 Financial Services Outlook, nearly 70% of financial institutions have integrated AI into their operations, yet only 35% have a defined AI governance framework. Furthermore, a Deloitte global survey indicates that 54% of BFSI executives express concern over AI’s regulatory uncertainty and its potential to increase exposure to legal and reputational risk. These statistics underscore the urgency for well-structured AI oversight models that balance innovation with responsible risk management.
This comprehensive course by Pideya Learning Academy bridges the critical knowledge gap between AI innovation and compliance imperatives. It offers a deep dive into global regulatory trends—such as the EU AI Act, U.S. AI Bill of Rights blueprint, and APAC-specific AI policies—and their implications for banking and insurance. Participants will explore the foundations of ethical AI, model risk management, explainability requirements, and how to navigate algorithmic bias and data transparency issues.
Learners will benefit from exposure to real-world scenarios that illustrate how governance failures have led to operational disruptions, legal disputes, and reputational damage. The course also emphasizes proactive AI audit preparation, third-party AI risk evaluation, and model validation frameworks, ensuring that organizations are not only compliant but resilient in the face of emerging technologies.
Throughout the program, participants will build a practical understanding of how to establish AI governance charters, develop risk mitigation controls, and align AI initiatives with broader enterprise values and ESG targets. By engaging in group dialogue, case study analysis, and structured frameworks, attendees will leave empowered to influence their organization’s AI governance strategy with confidence and foresight.
Key highlights woven into this training experience include:
Detailed insight into global AI regulatory ecosystems relevant to BFSI sectors.
Strategic frameworks for identifying, classifying, and mitigating AI-associated risks across data pipelines and operational systems.
Techniques to enhance AI explainability, trust, and transparency within internal governance structures.
Exposure to ethical dilemmas, bias detection methodologies, and model fairness controls.
Readiness strategies to meet internal audit and external supervisory expectations.
Approaches to integrating AI governance into enterprise risk and compliance programs.
Exploration of cross-border risk implications, vendor risk due diligence, and third-party AI tool assessments.
By the end of the training, participants will have the knowledge and tools to lead organizational change, embed responsible AI practices, and anticipate regulatory developments before they become business disruptors. The AI Risk Governance in Banking and Insurance course by Pideya Learning Academy is not just about compliance—it’s about empowering financial professionals to harness AI responsibly and sustainably for the future.

Key Takeaways:

  • Detailed insight into global AI regulatory ecosystems relevant to BFSI sectors.
  • Strategic frameworks for identifying, classifying, and mitigating AI-associated risks across data pipelines and operational systems.
  • Techniques to enhance AI explainability, trust, and transparency within internal governance structures.
  • Exposure to ethical dilemmas, bias detection methodologies, and model fairness controls.
  • Readiness strategies to meet internal audit and external supervisory expectations.
  • Approaches to integrating AI governance into enterprise risk and compliance programs.
  • Exploration of cross-border risk implications, vendor risk due diligence, and third-party AI tool assessments.
  • Detailed insight into global AI regulatory ecosystems relevant to BFSI sectors.
  • Strategic frameworks for identifying, classifying, and mitigating AI-associated risks across data pipelines and operational systems.
  • Techniques to enhance AI explainability, trust, and transparency within internal governance structures.
  • Exposure to ethical dilemmas, bias detection methodologies, and model fairness controls.
  • Readiness strategies to meet internal audit and external supervisory expectations.
  • Approaches to integrating AI governance into enterprise risk and compliance programs.
  • Exploration of cross-border risk implications, vendor risk due diligence, and third-party AI tool assessments.

Course Objectives

After completing this Pideya Learning Academy training, the participants will learn to:
Understand core concepts and strategic applications of Generative AI in BFSI.
Develop and apply AI-specific risk management frameworks aligned with regulatory expectations.
Identify emerging risks and uncertainties in financial technology environments.
Strengthen awareness of the intersection between digital transformation and compliance.
Analyze how AI is reshaping financial market operations and customer interactions.
Make informed decisions that align AI innovation with risk governance.
Evaluate the ethical, social, and legal dimensions of AI use in financial services.
Foster resilience and adaptability in AI-integrated financial systems.

Personal Benefits

Advance your career by mastering high-demand AI governance skills.
Gain strategic clarity on navigating AI-related risks and policy landscapes.
Enhance your credibility in managing compliance, ethics, and digital innovation.
Stay ahead of regulatory developments impacting your industry.
Become a trusted advisor on AI strategy and operational resilience.

Organisational Benefits

Strengthen enterprise compliance posture in the face of evolving AI regulations.
Mitigate reputational, operational, and legal risks related to AI deployments.
Build internal AI governance capabilities for future innovation.
Improve stakeholder confidence by ensuring responsible AI adoption.
Align AI projects with ESG and regulatory goals for long-term sustainability.

Who Should Attend

This course is ideally suited for:
Risk and compliance officers in banking and insurance.
Digital transformation leaders and chief data officers.
Governance, audit, and ethics professionals.
Legal and regulatory affairs personnel.
Technology and innovation managers in financial institutions.
Policy analysts and strategic advisors focused on fintech risk.

Course Outline

Module 1: Core Principles of Generative AI in Financial Systems
Introduction to Generative AI technologies Differentiating Generative AI from traditional AI approaches Applications across data synthesis, automation, and personalization Generative model architectures (GANs, Transformers, Diffusion models) AI maturity stages in financial institutions
Module 2: Strategic Potential of Generative AI in BFSI
Market-specific applications in Banking, Insurance, and Capital Markets Use cases in underwriting, risk assessment, and customer service Personalized financial product offerings Financial market simulations and predictive modeling Regulatory reporting automation
Module 3: Opportunity Mapping and Value Realization
Identifying AI-driven business transformation areas Quantifying value streams across financial workflows Aligning AI strategy with business outcomes AI-led process innovation in lending, fraud detection, and compliance Scaling AI capabilities across organizational silos
Module 4: Operational Use Cases and Strategic Deployments
Real-time use cases in customer onboarding and transaction monitoring Document summarization and intelligent contract analysis Virtual assistants for banking and insurance advisory AI-powered investment strategy generation Case analysis of successful deployments
Module 5: AI-Driven Cybersecurity Threat Landscape
Cyber vulnerabilities specific to Generative AI applications Threat modeling and attack surface analysis Synthetic data misuse and adversarial attacks AI-generated phishing and fraud threats Frameworks for assessing AI model robustness
Module 6: Advanced Risk Governance and Compliance Controls
Cybersecurity risk taxonomy for AI-integrated systems AI-specific controls in enterprise risk management (ERM) Risk prioritization matrices and heat maps Monitoring and auditing AI decision systems Integrating cybersecurity with data governance strategies
Module 7: Change Management and AI Integration Challenges
Organizational readiness and digital maturity models Legacy system interoperability with AI platforms Managing workforce transition and talent alignment Overcoming resistance to AI-driven decisioning Implementation frameworks and rollout strategies
Module 8: Regulatory and Legal Considerations in AI Deployment
Evolving AI governance and compliance obligations AI regulatory trends in the EU, US, UAE, and APAC Cross-border data flow implications and AI audits Regulatory sandboxing for AI innovation Aligning with financial supervisory authorities’ guidelines
Module 9: Case Study – Financial Cyber Risk Regulation in Singapore
Overview of MAS's Technology Risk Management Guidelines Cybersecurity Architecture Review (CARA) insights Lessons from Singapore’s AI governance model Mapping learnings to local regulatory landscapes AI supervisory frameworks for banks and insurers
Module 10: Ethical Deployment of Generative AI in Finance
AI ethics principles (transparency, accountability, fairness) Bias detection and mitigation in model training Responsible AI lifecycle management Ethical considerations in customer interactions Governance models for explainable AI in financial decisioning
Module 11: Financial Sector Disruption and Future Outlook
Impacts of Generative AI on financial services operating models AI-enabled innovation in decentralized finance (DeFi) Anticipated shifts in client engagement models Reimagining regulatory compliance with AI agents Emerging trends in AI-based financial instruments
Module 12: Building an AI Governance Framework
Governance roles and responsibilities for AI oversight Establishing AI oversight committees and review boards Model validation and continuous performance monitoring Audit trails and model documentation standards Collaboration between compliance, IT, and business teams

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