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AAIR: Advanced in AI Risk

Because we know just how hard it is to get the size.

Training
Certificate
Course Information

Course Name

AAIR: Advanced in AI Risk

Exam code

AAIR

Duration

2 Days

Certification

Overview

The ISACA® Advanced in AI Risk (AAIR) certification validates risk professionals’ expertise and experience in managing AI-specific risks while harnessing AI’s transformative potential for strategic advantage. This credential builds upon established risk management best practices, focusing on the evolving AI landscape to effectively assess and manage risk profiles within organizations. By fostering cross-functional collaboration, it equips professionals to communicate AI risk comprehensively and ensure ethical and regulatory compliance.

Overview

Overview

The ISACA® Advanced in AI Risk (AAIR) certification validates risk professionals’ expertise and experience in managing AI-specific risks while harnessing AI’s transformative potential for strategic advantage. This credential builds upon established risk management best practices, focusing on the evolving AI landscape to effectively assess and manage risk profiles within organizations. By fostering cross-functional collaboration, it equips professionals to communicate AI risk comprehensively and ensure ethical and regulatory compliance.

Prerequisites

Must possess one of the following:

  • ISACA Designation: CISA, CISM, CRISC, CGEIT, CDPSE
  • Non-ISACA Designation: CRMP, CRMP-FED, CRMA, CERP, CRCM, CGRC, CISSP, CIA, ANAN CAN, Canadian CPA, AACA, FCCA, Japanese CPA, ACA, FCA, CA ANZ, FCA ANZ, CPA HKICPA, or FCPA HKICPA certification

 

Course Outline

AI Models, Frameworks, Strategies, and Use Cases

  • Types of AI
  • AI Frameworks
  • Business Use Case and AI Use Case Review
  • AI Business Strategies

AI Organizational Processes and Alignment

  • AI Governance Fundamentals
  • Alignment to Existing Organizational Structures

AI Ownership, Oversight, and Accountability

  • AI-related Roles and Responsibilities
  • Accountability and AI
  • RACI for AI Solutions

AI Policies, Procedures, and Organizational Training

  • AI Acceptable Use Policy
  • AI Policy Development
  • AI Procedures and Manuals
  • Organizational Culture and AI Risk Governance
  • Elements of Effective AI Training and Awareness

AI Regulatory Compliance and Legal Considerations

  • Compliance With Laws and Regulations
  • Gaps in Regulatory Coverage
  • Mapping Legal Requirements for AI
  • Assessing Legal Exposure and Liability for AI Actions
  • Intellectual Property Considerations in AI
  • Vendor Contract Review

AI Trustworthiness, Ethical and Societal Implications

  • Responsible Use of AI Systems 68
  • Bias and Fairness
  • Transparency and Explainability
  • Trust and Safety
  • Human Rights and Societal Impact
  • Environmental Impact

AI Design, Development, Procurement, and Documentation

  • Plan and Design
  • Data Requirements for AI Models
  • Procurement of AI Solutions
  • Build, Adapt, and Document Models

AI Model Training, Testing and Validation

  • Sourcing Datasets
  • Validating the Data
  • Model Training
  • Model Testing and Validation
  • Model Performance and Fine Tuning

AI Implementation, Maintenance, and Decommissioning

  • AI Deployment and Implementation
  • Robustness and Scalability Considerations
  • Monitoring and Managing Model Drift
  • Change Management in AI Systems
  • Decommissioning AI Solutions

AI Data and Asset Management

  • AI Asset Inventory
  • Data Collection for AI
  • Data Classification
  • Data Confidentiality
  • Data Quality
  • Data Balancing
  • Data Scarcity
  • Data Security
  • Data Preparation and Normalization
  • Data Minimization and Privacy Considerations

AI Risk Scenario Identification and Assessment

  • AI Threat Landscape
  • AI Threat Modeling
  • Development of AI Risk Scenarios
  • AI Risk Classification
  • AI Risk Assessment

AI Risk Treatment Strategies

  • Accept
  • Avoid
  • Mitigation
  • Transfer/Share

AI Controls Management

  • AI Control Types and Control Frameworks
  • AI Control Selection and Validation
  • Control Performance
  • Controls Specific to AI Solutions
  • Use of AI in Control Management

AI Risk Metrics, Monitoring, and Reporting

  • Risk and Performance Metrics
  • AI Risk Reportings

AI Supply Chain Risk Management

  • AI Vendor Management
  • AI Shared Responsibility Model
  • AI Software Supply Chain Risk
  • Cloud Computing Risk in AI Supply Chains

AI Incident Response, BIA, Business Continuity, and Disaster Recovery

  • AI Business Impact Analysis
  • Prepare
  • Identify and Report
  • Assess
  • Respond
  • Post-incident Review
Course Price

RM7,000.00 exc. 8% tax

Training Dates
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