Certified Responsible AI Governance & Ethics (CRAGE)
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Course Overview
Who Should Attend
GRC (Governance, Risk & Compliance) Leaders, Risk Managers / Enterprise Risk Professionals; Compliance Officers / Regulatory Specialists, Data Privacy Officers (DPOs), Internal Auditors (IT / Technology)
Course Outline
Module 01: AI Foundations and Technology Ecosystem
- Explain the foundational principles, evolution, and core components of Arti?cial Intelligence
- Arti?cial Intelligence (AI)
- Bene?ts and Limitations of AI
- Evolution of AI
- What is Machine Learning?
- Machine Learning Algorithms
- Limitations of Machine Learning
- Neural Networks
- Layers, Nodes, and Weights in Neural Networks
- Deep Learning (DL)
- How DL Overcomes Limitations of ML
- Working of DL
- DL Algorithms
- Computer Vision
- Natural Language Processing (NLP)
- Why NLP is Important in AI
- How NLP Processes Human Language
- Processing Text for NLP Tasks
- Key NLP Tasks
- Sentiment Analysis in NLP
- Text Summarization in NLP
- Language Translation in NLP
- Challenges in NLP
- What is Generative AI?
- Traditional AI vs Generative AI
- Foundation Models of Generative AI
- Popular GenAI Tools
- Large Language Models (LLMs)
- Small vs. Large Language Models
- Key Terms for GenAI and Language Models
- Emerging Trends in AI
- Technological Advancements Driving AI
- The Road Ahead: Opportunities and Challenges
- Identify real-world applications of AI across industries and their transformative impact
- Understand the AI project lifecycle and the role of MLOps and DataOps in operationalizing AI solutions
- Data Operations (DataOps) in AI Technology Stack
- AI Development and Operations (MLOps) Lifecycle
- AI Project Lifecycle Phases and Gates
- Initiation and Concept Development
- Data Collection and Preparation
- Model Development and Experimentation
- Model Training, Validation, and Testing
- Deployment and Release Management
- Monitoring and Performance Tracking
- Maintenance and Model Retraining Schedules
- Retirement and Decommissioning Procedures
- Post-deployment Evaluation and Success Metrics
- Version Management and Rollback Procedures
- Integration of DataOps, MLOps, and DevSecOps in AI
- Describe the key layers, tools, and infrastructure that form the AI technology ecosystem
- AI Technology Stack
- Data Infrastructure and Pipelines
- Model Architectures and Algorithms
- Computing Resources and Infrastructure
- APIs and Integration Layers
- Monitoring and Observability Systems
- Version Control and Model Registries
- Cloud Computing and Infrastructure for AI Systems
- Edge vs. Cloud Deployment Considerations
- Data Science and Analytics as AI Enablers
- Scalability, Performance, and Computational Requirements
- Integration with Existing IT Systems and Legacy Infrastructure
- Module Summary
Module 02: AI Concerns, Ethical Principles, and Responsible AI
- Identify key concerns associated with AI and understand their implications
- Concerns, Challenges, and Implications with AI
- AI Concerns
- AI Ethical Concern: Bias and Discrimination
- AI Ethical Concern: Lack of Transparency
- AI Ethical Concern: Accountability and Responsibility
- AI Ethical Concern: Intellectual Property and Copyright Violations
- Ethical Concerns Introduced by GenAI
- Privacy and Security Concern: Privacy and Surveillance
- Real-world Privacy and Data Protection Implications
- Privacy and Security Concern: Phishing with AI-Generated Messages
- Privacy and Security Concern: Scamming through AI-Generated Deepfakes
- Societal Concern: Job Displacement
- Societal Concern: Mental Health Impact
- Societal Concern: Hallucinations
- Societal Concern: Misinformation
- Long-Term Concerns: Autonomous Weapons
- Long-Term Concerns: Emergence of AGI
- Explain the fundamental ethical principles that guide the responsible and fair development and use of AI systems
- Describe major global AI ethics standards and frameworks and understand how they inform ethical governance
- OECD
- UNESCO
- IEEE
- DoD AI Ethical Principles
Module 03: AI Strategy and Planning
- Explain the purpose and importance of AI strategy and planning in guiding responsible and value-driven AI adoption
- AI Strategy and Planning
- The Need for an AI Strategy
- AI Strategy and Planning Components
- Develop the ability to de?ne a clear AI vision and assess organizational readiness across data, technology, skills, and culture
- Setting an AI Vision
- Crafting and Communicating AI Vision
- Aligning AI With Business Goals
- Assessing Organizational Readiness
- Data Maturity Assessment
- ROI Assessment for AI
- AI Maturity Models and Organizational Readiness Assessment
- Learn to identify high-value AI opportunities and prioritize them using structured criteria to build an e?ective AI roadmap
- Building Use Cases for AI Investment
- Use Case Identi?cation and Prioritization
- Creating an AI Use-Case Portfolio
- Creating an AI Roadmap
- Understand how to modernize data ecosystems and AI infrastructure to support scalable, secure, and production-ready AI systems
- Technology Selection and Evaluation
- Technology Selection and Evaluation Criteria
- Building Data Strategy for AI
- Design, run, and evaluate AI pilots to validate feasibility, performance, business value, and associated risks
- Purpose of the Pilot Phase
- Steps in Pilot Development
- Pilot Evaluation Criteria
- Pilot Outcomes and Decision Making
Module 04: AI Governance and Frameworks
- Understand the concept, scope, purpose, and foundational need for AI governance within organizations
- What Is AI Governance?
- AI Governance Hierarchy?
- Why AI Governance is Needed
- Scope of AI Governance
- Traditional IT Governance vs. AI Governance
- Governance vs. Management vs. Compliance
- Understand how AI governance roles, committees, and operating structures collaborate to manage and oversee AI initiatives
- AI Governance Operating Model
- AI Governance Structure
- AI Governance Meeting Frequency
- Identify key governance roles across the AI lifecycle and understand their responsibilities in ensuring accountable AI operations
- Key AI Governance Roles
- Cross-Functional Collaboration Requirements
- Chain of Responsibility and Escalation
- Understand the policy framework and decision-making authority required to establish structured, controlled, and transparent AI governance
- Governance Policies
- Decision Rights Matrix
- De?ne AI Policy Goals and Objectives
- AI Policy Implementation Challenges
- AI Governance Policies
- Model Development Policies
- AI Usage Policies
- Bias Mitigation Policies
- AI Lifecycle Management Policies
- Policy on Ethics Review Boards and AI Audits
- Continuous Review and Adaptation of Policies
- Compare various AI governance models and understand how organizations choose and implement the right model for their ecosystem
- AI Governance Models
- Ethical AI Governance
- Best Practices for AI Governance Models
- Understand major global AI governance frameworks and their principles to guide responsible and trustworthy AI adoption
- OECD AI Principles for Governance
- EU AI Act for Governing AI
- The AIGA AI Governance Framework
- IEEE Global Initiative on Ethics of Autonomous and Intelligent Systems
- The Montreal Declaration of Responsible AI
- Choose a Governance Framework to Guide your Process
- Understand how governance is applied across the AI model lifecycle to ensure transparency, quality, and controlled evolution
- Model Lifecycle Governance
- Problem De?nition Governance
- Design Governance
- Data Preparation Governance
- Training Governance
- Evaluation Governance
- Deployment Governance
- Monitoring Governance
- Change Control Governance
- Retirement Governance
- Understand how managing AI assets ensures proper ownership, tracking, and governance across the AI lifecycle
- The Role of Asset Management in Governance
- AI Asset Management
- Governance for AI Assets
- Categories of AI Assets
- Key Elements of AI Asset Management
- AI Asset Inventory and Classi?cation
- Dataset Lifecycle Management
- Model Lifecycle Management
- Role of Model Cards in Asset Management
- Metadata and Lineage Tracking
- Performance Monitoring and Asset Health Tracking
- Documentation, Versioning, and Auditability
- Asset Versioning Best Practices
- Understand the role of documentation, transparency mechanisms, and stakeholder engagement in AI governance
- Importance of Documentation in AI Governance
- Governance Playbook
- Stakeholder Engagement
- Stakeholder Mapping
- Emphasize Training and Awareness for All Stakeholders
- Integrating Third-Party Oversight in AI Governance
- Understand the importance of human oversight in AI systems and how escalation, intervention, and review processes ensure trustworthy outcomes
- Human Oversight
- Human Oversight Escalation Framework
- Decision Intervention Protocols
- Human Review Checklists
- Sample Human Review Checklist
- Oversight Work?ows
- Identify key tools and platforms that support AI governance through model tracking, documentation, and work?ow automation
- Governance Tools
- Model Registry
- Experiment Tracking Tools
- Documentation Portals
- Governance Automation Tools
- Understand how organizations implement AI governance frameworks and integrate them with broader technology governance mechanisms
- Implementing AI Governance Frameworks
- Integrating AI Governance
- Integration of AI Governance with IoT, Blockchain, and 5G
- Integration of AI Governance with Other Technologies
- Recognize key challenges in AI governance and apply best practices to strengthen governance maturity and e?ectiveness
- Governance Challenges
- Governance Best practices
- Module Summary
Module 05: AI Regulatory Compliance
- Explain the purpose of AI regulatory compliance and understand its organizational bene?ts and challenges
- AI Compliance Management
- Bene?ts and Challenges of AI Compliance
- Components of an AI Compliance Program
- Describe major global and regional AI regulations, including their requirements, risk classi?cations, and data protection obligations
- EU AI Act and Regulatory Classi?cations
- U.S. Regulatory Frameworks and Guidelines
- Global Data Protection Regulations
- Emerging Regulatory Trends by Region
- Identify key AI compliance requirements across critical sectors such as healthcare, ?nance, justice, telecommunications, education, and transportation
- Need for Sector-Speci?c AI Regulations
- Healthcare AI Compliance
- Financial Services Compliance
- Criminal Justice System Compliance
- Telecommunications Compliance
- Education Sector Compliance
- Transportation/Autonomous Systems Compliance
- Understand how accountability, liability, and user rights shape legal duties and safeguard individuals in AI-driven systems
- Why Accountability, Liability, and Rights Matter
- Consumer Protection
- Algorithmic Accountability
- Intellectual Property Rights (IPR)
- Liability and Responsibility Frameworks
- Right to Explanation
- Explainability and Interpretability Requirements
- Explain operational compliance expectations, including record-keeping, reporting, contractual requirements, labor considerations, and incident response obligations
- Operational Compliance
- Employment and Labor Law Considerations
- Contractual Compliance Clauses
- Record-keeping Requirements
- Reporting and Noti?cation Procedures
- Legal Incident Response
- Whistleblower Protections
- Apply continuous compliance practices such as audits, monitoring, regulatory change management, and third-party veri?cation to maintain alignment with evolving AI regulations
- Compliance Assessment and Gap Analysis
- Maintain Audit Trails and Monitoring Systems
- Regulatory Change Management
- Compliance Training and Certi?cation
- Third-party Compliance Veri?cation
- Remediation and Corrective Actions
- AI Compliance Management Tools
- Evaluate legal risks across the AI lifecycle and understand mechanisms such as insurance, indemni?cation, and dispute resolution for e?ective risk mitigation
- Legal Risks Management
- Legal Risks in AI Lifecycle
- Role of Insurance in AI Risk Management
- Role of Indemni?cation in Legal Risk Management
- Best Practices for Implementing Insurance and Indemni?cation
- Dispute Resolution
- Litigation Preparedness
- Legal Holds and e-Discovery Readiness
- Best Practices for AI Legal Holds
- AI Legal Governance Strategies
- Module Summary
Module 06: AI Risk and Threat Management
- Identify and explain the key risks, threats, attacks, and vulnerabilities associated with AI systems
- Threat Landscape for AI Systems
- Common Vulnerabilities in AI Systems
- Adversarial Attacks
- Understand and apply core AI risk assessment techniques for identifying, analyzing, and prioritizing AI-related risks
- AI Risk Assessment
- Risk Identi?cation
- Key Techniques for Risk Identi?cation
- Risk Identi?cation Tools
- Role of KPIs and KRAs in AI Risk Identi?cation
- Failure Modes and E?ects Analysis (FMEA)
- Monte Carlo Simulation
- Bow-Tie Analysis
- Risk Assessment Tools
- Risk Scoring and Prioritization Methods
- Likelihood and Impact Matrix
- Quantitative vs. Qualitative Risk Analysis
- Establishing Risk Thresholds and Tolerance Levels
- Continuous Risk Monitoring Systems
- Data Drift Detection Techniques
- Model Performance Tracking
- Anomaly Detection Techniques
- Risk Dashboards
- Reporting
- Escalation Procedures
- Risk Communication Strategies
- Risk Escalation Best Practices
- Describe major AI risk management frameworks and principles used to guide safe, compliant, and responsible AI deployment
- AI Risk Management Frameworks
- NIST AI Risk Management Framework (AI RMF)
- AI Risk Frameworks: ISO/IEC 42001
- AI Risk Frameworks: ISO/IEC 23894
- OECD AI Principles for Risk Evaluation
- Explain how threat modeling and attack surface analysis support e?ective identi?cation and mitigation of AI-speci?c threats
- Threat Modeling
- Attack Surface Analysis
- Module Summary
Module 07: Third-Party AI Risk Management and Supply Chain Security
- Understand the importance of third-party AI risks and how vendor dependencies can impact business operations, security, compliance, and organizational accountability.
- Why Third-Party AI Risk Matters
- Key Risks in Vendor Relationships
- Organizational Responsibility for AI Systems
- Types of Third-Party AI Vendors
- Complex AI Supply Chains Increase Third-Party Risk
- Business Impact of Poor Vendor Risk Management
- Learn how to apply a structured TPRM framework to identify, assess, mitigate, and monitor risks associated with third-party AI vendors
- Third-Party AI Risk Management (TPRM)
- TPRM Framework
- TPRM Tools
- Understand regulatory obligations and legal responsibilities organizations must meet when procuring or deploying third-party AI systems
- Regulations A?ect Vendor Selection
- Organizations Obligations Under AI Regulations
- Vendor Compliance Alignment
- Legal Responsibility for Vendor AI Systems
- Learn the end-to-end procurement lifecycle for selecting, evaluating, contracting, and deploying AI vendor solutions
- Stages of AI Procurement
- Executive Role in Procurements
- Key Questions Before Choosing a Vendor
- Criteria for Shortlisting Vendors
- Develop the ability to evaluate vendor maturity, trustworthiness, technical capabilities, and risk posture through comprehensive due-diligence processes
- Vendor Due Diligence
- Building a Comprehensive Vendor Inventory
- Vendor Role Mapping
- Risk Pro?ling and Categorization
- Evaluate Vendor Maturity to Mitigate AI Risks
- Areas to Examine in Due Diligence
- Technical Evaluation of Vendor AI
- Data Handling Evaluation
- Responsible AI and Ethics Evaluation
- Legal and IP Evaluation
- Vendor Performance Tracking Using KPIs and KRIs
- KRAs and KPIs Best Practices
- Red Flags Requiring Caution
- Supplier Due Diligence Best Practices
- Understand how to create e?ective AI vendor contracts that include appropriate clauses for data rights, security, AI-speci?c risks, SLAs, and liability allocation
- Contracts in AI Vendor Relationships
- Data Rights and Control Clauses
- Security and Privacy Clauses
- AI-Speci?c Risk Clauses
- High-Risk Use Case Clauses
- Drafting SLAs and SLOs
- Best Practices for Drafting SLAs and SLOs
- Best Practices for AI Vendor Contracts
- Liability Allocation and Risk Sharing in AI Contracts
- Best Practices for Liability Allocation and Risk Sharing
- Learn how to continuously monitor AI vendors through KPIs, KRIs, audits, assurance activities, and structured lifecycle oversight mechanisms
- Monitoring and Lifecycle Oversight in AI Vendor Risk Management
- Continuous Monitoring Expectations
- Executive Reporting Dashboard Items
- Ongoing Review Requirements
- Assurance Requirements
- Independent Validation and Testing for Vendor Assurance
- Best Practices for Vendor Assurance and Independent Validation
- Incident Response Expectations
- Responsible Offboarding and Exit Strategy
- Vendor Renewal Decision-Making
- Integration of Compliance, Performance, and Risk in Vendor Renewal
- Aligning Vendor Oversight with Enterprise Risk
- Analyze real-world AI vendor failures to understand common gaps in governance, oversight, contracts, and risk monitoring
- Case Study: Vendor Misused Customer Data
- Case Study: Biased Hiring Algorithm
- Case Study: Hallucinated Financial Analysis
- Executive Scenario Challenge
- Module Summary
Module 08: AI Security Architecture and Controls
- Understand the core principles of AI security architecture and how they ensure the protection and resilience of AI systems throughout their lifecycle
- AI Security Architecture
- Why Security Architecture Matters in AI
- AI Security Architecture Principles
- Traditional Security V/s AI Security Architecture
- Components of AI Security Architecture
- Governance Practices for AI Security Architecture
- Secure Software Development Lifecycles (SDLC)
- Threat Modeling for AI Systems
- AI Threat Modeling Frameworks
- Threat Modeling Use Cases
- Zero Trust Security
- Infrastructure Hardening
- Model Training
- Inference Controls
- Continuous Testing
- Monitoring, Detection and Response
- Best Practices in AI Security Architecture
- Explore various frameworks used in AI security architecture, including their role in securing AI models, data, and infrastructure
- AI Security Architecture Frameworks
- Cloud Security Alliance (CSA) AI Security Framework
- Arti?cial Intelligence Controls Matrix (AICM) Framework
- OWASP AI Security Top Ten
- Learn the critical design considerations for building secure AI architectures that e?ectively address potential vulnerabilities and threats
- Secure Design Patterns for AI
- Designing Defense-in-Depth Strategies for AI
- Designing Layered Approach for Secure AI Systems
- Security by Design
- Identify and implement best practices in AI system development to ensure robust security measures from the design phase through deployment
- Importance of Code Management
- Code Management for Security in AI
- Version Control
- Version Control Best Practices
- Repository Security and Access Controls
- Secure Coding Best Practices
- Secure Coding Standards
- Code Review Processes
- Apply security best practices in AI model development to protect models from adversarial attacks, data poisoning, and other vulnerabilities
- Model Security
- Protecting Model Integrity
- Tools for Protecting Model Integrity
- Model Signing
- Secure Model Serving
- Implement security controls and practices during the deployment phase of AI models to ensure safe operation and mitigate risks
- Container Security
- Container Security Controls
- Memory and Resource Protection
- Hardening AI Runtime Environments
- Network Segmentation Controls
- Rate Limiting and DDoS Protection
- API Security for AI Systems
- Best Practices for API Security in AI Systems
- API Gateway Implementations
- Module Summary
Module 09: Building Privacy, Trust, and Safety in AI Systems
- o Building Privacy, Trust, and Safety in AI Systems
- Explain key privacy-enhancing techniques used to protect sensitive data in AI systems
- Privacy by Design
- Data Minimization
- Di?erential Privacy
- Decentralization
- Data Protection: Encryption and Access Control
- Data Anonymization and Pseudonymization
- Data Retention and Deletion Policies
- Secure Data Destruction Practices
- Privacy-Preserving Analytics
- Assess AI-related privacy risks and apply appropriate mitigation methods
- Evaluating Privacy Risks with Privacy Impact Assessments
- Evaluate Privacy Risks with Risk Assessment Framework
- Reducing Privacy Risk with De-Identi?cation Techniques
- Implement transparency, trust-building, and safety controls to ensure reliable AI behavior
- Incorporating Transparency with Consent Management
- Ensuring Transparency with the Right to Explanation
- Improving Transparency with Explainability Interfaces
- Enhancing Transparency through Stakeholder Communication
- Building Trust with User Feedback Loops
- AI Trustworthiness and Safety Frameworks
- Measuring and Scoring AI Trustworthiness
- Maintaining Trust with Continuous Monitoring
- Validating Trust with Veri?cation Mechanisms
- Assessing Trust with Third-Party Audits
- Ensuring AI Safety with Testing and Red-Teaming
- De?ning Boundaries with AI Guardrails
- Blocking Harmful Outputs with Content Filtering
- Building Resilient AI Systems with Failure Handling
- Design user-centric AI interactions that improve usability, clarity, and trust
- Principles of User-Centric AI Design
- Empowering Users through Education and Awareness
- Addressing User Concerns with Complaint Mechanisms
- Apply ethical guidelines and fairness practices to ensure safe and aligned AI development
- Documenting AI Systems with Transparency Reports
- Guiding Ethical AI Development with Decision Frameworks
- Ensuring Fairness with Audits and Bias Assessment
- Evaluate and monitor AI systems to maintain trust, compliance, and consistent performance
- Certifying Ethical AI with Certi?cation and Attestation
- Validating Compliance with Certi?cation
- Module Summary
Module 10: AI Incident Response and Business Continuity
- o AI Incident Response and Business Continuity
- Design structured, AI-focused incident response strategies and frameworks aligned with organizational and business impact needs
- Understanding AI Incidents and Business Impact
- AI-speci?c Incident Response
- Limitations of Traditional IR in Managing AI Incidents
- How AI Incident Response Supports Business Growth
- Building an E?ective AI-Speci?c IR Plan
- Classifying AI Incidents for E?ective Response
- AI Incident Severity Levels
- Apply the AI incident response lifecycle to detect, contain, investigate, and recover from AI-related incidents e?ectively
- Initial IR Actions
- IR Lifecycle
- Phase 1: Preparation
- Phase 2: Detection
- Phase 3: Analysis and Triage
- Phase 4: Containment
- Phase 5: Eradication
- Phase 6: Recovery
- AI-Speci?c IR Tools
- AI-Speci?c IR Best Practices
- Evaluate and execute structured internal, external, regulatory, and customer communication strategies during AI incidents to maintain trust and compliance
- Importance of Communication During an Incident
- Internal Escalation Protocols
- External Communication Protocols
- Regulatory Noti?cation Requirements for AI Incidents
- Global Regulatory Noti?cation Timelines
- E?ective Media and Public Communication for AI Incidents
- Customer Noti?cation Strategies for AI Incidents
- Assess AI incidents through post-incident reviews, metrics, and documentation to drive learning, accountability, and continuous improvement
- Purpose of Post-Incident Review
- Key Metrics for Post-Incident Review
- Metrics to Measure IR E?ectiveness
- Post-Incident Documentation
- AI Post-Incident Metrics and Analytics
- Enhancing Training and Awareness After Incidents
- Post-Incident Knowledge Base Update
- Post-Incident Review Tools
- Develop AI-focused business continuity strategies by identifying critical AI functions, assessing business impact, and prioritizing recovery actions
- AI Business Continuity
- Key Components of an AI-Speci?c BC Strategy
- Business Impact Analysis in AI-Speci?c BC
- Identifying Critical Functions
- Quantifying Impact
- Recovery Prioritization
- Recovery Tiers Matrix
- Backup and Recovery Requirements
- Backup and Recovery Best Practices
- Redundancy and Failover Mechanisms
- Design AI-speci?c disaster recovery plans by de?ning recovery objectives, backup strategies, failover mechanisms, and supply chain dependencies
- AI Disaster Recovery
- DR Plan Dependencies
- De?ning Recovery Objectives for AI Systems
- DR Site Options for AI Systems
- Failover and Failback Procedures for AI Systems
- Automation in AI-Speci?c DR
- Backup Frequency and Retention in AI-Speci?c DR
- Data Synchronization in AI Recovery
- Ensuring AI Supply Chain Continuity
- AI-Speci?c DR Tools
- Evaluate and enhance AI incident response and recovery readiness through testing, simulations, training, and continuous optimization activities
- DR Testing for AI Systems
- Key Testing Types in AI DR
- Tabletop Exercises for AI-Speci?c DR Drills
- Training in DR for AI Systems
- Optimization in DR for AI Systems
- Continuous Improvement During Recovery
- Module Summary
Module 11: AI Assurance, Testing, and Auditing
- Establish AI assurance principles, mechanisms, and frameworks to support reliable, compliant, and accountable AI systems
- AI Assurance
- Key Components of AI Assurance
- AI Assurance Mechanisms
- Frameworks and Standards for AI Assurance
- Case Studies: Successful AI Assurance Practices
- Apply structured AI testing strategies to evaluate data, models, system behavior, performance, robustness, and security across the AI lifecycle
- Testing in AI
- Why AI Testing is Di?erent?
- AI Test Planning
- Objectives of AI Test Strategy
- Key Components of AI Test Planning
- De?ning the Testing Scope
- Testing Strategy
- Risk-Based AI Testing Strategies
- Functional Testing
- Types of Functional Testing
- Test Case Development
- Testing Methodologies
- Model Performance Testing
- Model Stability and Consistency Testing
- Edge Case Testing
- Testing Over?tting and Under?tting Models
- Testing Model Drift Over Time
- Specialized Testing
- User Acceptance Testing (UAT)
- UAT Process
- Challenges in AI UAT
- Best Practices for AI UAT
- Usability Testing
- Accessibility Testing
- User-Level Performance Testing
- Scenario and Work?ow Testing
- Regression Testing
- Security and Robustness Testing
- Role of Red Teaming in AI Testing
- Best Practices for Security Testing for AI Systems
- Penetration Testing for AI Systems
- Monitoring and Continuous Testing
- AI Bug Bounty Programs
- Tools and Technologies for Testing AI Models
- Conduct pre-deployment and post-deployment validation and veri?cation of AI systems
- Validation of AI Systems
- Data Validation Strategy
- Cross-Validation and Holdout Testing
- Generalization and Transfer Learning Validation
- Veri?cation of AI Systems
- Model Behavior Veri?cation Techniques
- Data Pipeline Veri?cation Techniques
- Integration Veri?cation Techniques
- Deployment and Operational Veri?cation Techniques
- Non-Functional Veri?cation Techniques
- Best Practices for AI System Veri?cation
- Assess AI systems for vulnerabilities, bias, fairness, explainability, and transparency, and manage remediation
- Vulnerability Management for AI Systems
- Best Practices for Vulnerability Management for AI Systems
- AI Security Patch Management
- Best Practices for AI Security Patch Management
- Bias and Fairness Assessment
- Explainability and Transparency Assessment
- Perform structured AI audits using risk-based methodologies, evidence collection, and governance-aligned reporting practices
- AI Auditing
- Key Components of AI Auditing
- AI Auditing Process
- Audit Planning and Scope De?nition
- Audit Sampling and Evidence Collection
- Audit Evidence
- Types of AI Audit Evidence
- Collecting and Organizing Audit Evidence
- Collecting and Organizing Data Evidence
- Collecting and Organizing Model Evidence
- Collecting and Organizing Algorithm Evidence
- Collecting and Organizing Performance Evidence
- Collecting and Organizing Compliance Evidence
- Traceability in AI Audits
- Traceability Matrix for AI Systems
- Documentation Review AI Audits
- Risk Evaluation and Controls Assessment
- Audit Reporting and Recommendations
- Types of Audit Reporting in AI System
- Executive Reporting and Governance Communication
- Remediation Tracking
- Continuous Monitoring and Follow-Up
- Types of AI Audits
- Manual vs. Automated AI Auditing
- External Audits vs. Internal Audits
- Risk-Based Audit Methodology
- Process-Oriented Auditing Methodology
- Outcome-Focused Audit Methodology
- Control-Based Audit Methodology
- AI Auditing Frameworks
- Tools for AI Auditing
- AI Auditing Checklist
- Evaluate emerging technologies, regulatory developments, and automation trends shaping the future of AI assurance and oversight
- Emerging Technologies in AI Assurance
- Regulatory Developments
- The Role of AI in Enhancing Assurance Processes
- Module Summary
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Class times are listed Eastern time
This is a 3-day class
Price: $1,795.00
HEUG Price: $1,256.50
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