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AAIA - Advanced in AI Audit Certification Prep

  • Código del Curso AAIA
  • Duración 2 días
  • Versión 1.0

Clase de calendario Precio

eur2,395.00

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Método de Impartición

Este curso está disponible en los siguientes formatos:

  • Cerrado

    Cerrado

  • Clase de calendario

    Aprendizaje tradicional en el aula

  • Aprendizaje Virtual

    Aprendizaje virtual

  • Elearning (a tu propio ritmo)

    E-learning a tu propio ritmo

Solicitar este curso en un formato de entrega diferente.

The AAIA Certification Prep Course is designed to help professionals build the expertise needed to audit and govern AI systems with confidence. As artificial intelligence becomes integral to business operations, organizations face new challenges around ethics, compliance, and risk. This course provides a practical framework for understanding AI governance, managing risk, and aligning AI initiatives with organizational objectives.

Participants will explore the full AI lifecycle, from data management and model development to security controls and change management. The program covers proven techniques for testing AI systems, identifying vulnerabilities, and responding to incidents. It also offers guidance on planning and conducting AI-focused audits, collecting reliable evidence, and delivering clear, actionable reports.

Whether you’re preparing for ISACA’s AAIA certification or looking to strengthen your ability to oversee AI programs, this course equips you with the tools and knowledge to ensure transparency, accountability, and compliance in an AI-driven world.

Calendario

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    • Método de Impartición: Clase de calendario
    • Fecha: 23-24 julio, 2026 | 9:00 AM to 5:00 PM
    • Sede: Madrid (W. Europe )
    • Idioma: Español

    eur2,395.00

    • Método de Impartición: Aprendizaje Virtual
    • Fecha: 23-24 julio, 2026 | 9:00 AM to 5:00 PM
    • Sede: Aula Virtual (W. Europe )
    • Idioma: Español

    eur2,395.00

    • Método de Impartición: Aprendizaje Virtual
    • Fecha: 26-27 agosto, 2026 | 10:00 AM to 6:00 PM
    • Sede: Aula Virtual (W. Europe )
    • Idioma: Inglés

    eur2,395.00

    • Método de Impartición: Aprendizaje Virtual
    • Fecha: 07-08 octubre, 2026 | 9:00 AM to 5:00 PM
    • Sede: Aula Virtual (W. Europe )
    • Idioma: Inglés

    eur2,395.00

    • Método de Impartición: Clase de calendario
    • Fecha: 16-17 diciembre, 2026 | 9:00 AM to 5:00 PM
    • Sede: Madrid (W. Europe )
    • Idioma: Español

    eur2,395.00

    • Método de Impartición: Aprendizaje Virtual
    • Fecha: 16-17 diciembre, 2026 | 9:00 AM to 5:00 PM
    • Sede: Aula Virtual (W. Europe )
    • Idioma: Español

    eur2,395.00

Dirigido a

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This course is designed for professionals responsible for auditing, governing, or managing AI systems within their organizations, including:

- IT Auditors and Risk Professionals seeking to expand their expertise into AI auditing.

- AI Governance and Compliance Officers tasked with ensuring ethical and regulatory adherence.

- Cybersecurity and Data Privacy Specialists who need to understand AI-specific risks and controls.

- AI Program Managers and Project Leads overseeing AI solution development and lifecycle management.

- Internal and External Auditors who perform audits on AI systems and related processes.

Ideal for individuals preparing for ISACA’s Advanced in AI Audit (AAIA) certification or those looking to strengthen their knowledge of AI governance, risk management, and auditing practices.

Objetivos del Curso

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After completing this course you should be able to:

  • Establish AI Governance and Risk Frameworks
  • Assess and Manage AI Risks
  • Oversee AI Operations and Development
  • Apply AI-Specific Testing and Security Controls
  • Conduct AI-Focused Audits

Domain 1: AI Governance and Risk

AI Models, Considerations and Requirements

  • Types of AI
  • Machine Learning/AI Models
  • Algorithms
  • AI Life Cycle
  • Business Considerations

AI Governance and Program Management

  • AI Strategy
  • AI-Related Roles and Responsibilities
  • AI-Related Policies and Procedures
  • AI Training and Awareness
  • Program Metrics

AI Risk Management

  • AI-Related Risk Identification
  • Risk Assessment
  • Risk Monitoring

Privacy and Data Governance Programs

  • Data Governance
  • Privacy Considerations

Leading Practices, Ethics, Regulations and Standards for AI 

  • Standards, Frameworks, and Regulations Related to AI
  • Ethical Considerations 

Domain 2: AI Operations

Data Management Specific to AI

  • Data Collection
  • Data Classification
  • Data Confidentiality
  • Data Quality
  • Data Balancing
  • Data Scarcity
  • Data Security

AI Solution Development Methologies and Lifecycle

  • AI Solution Development Life Cycle
  • Privacy and Security by Design

Change Management Specific to AI 

  • Change Management Considerations

Supervision of AI Solutions  

  • AI Agency

Testing Techniques for AI Solutions

  • Conventional Software Testing Techniques Applied to AI Solutions
  • AI-Specific Testing Techniques

Threats and Vulnerabilities Specific to AI   

  • Types of AI-Related Threats
  • Controls for AI-Related Threats

Incident Response Management Specific to AI 

  • Prepare
  • Identify and Report
  • Assess
  • Respond
  • Post-Incident Review

Domain 3: AI Auditing Tools & Techniques

Audit Planning and Design

  • Identification of AI Assets
  • Types of AI Controls
  • AI Audit Use Cases
  • Internal Training for AI Use

Audit Testing and Sampling Methodolgies  

  • Designing an AI Audit
  • AI Audit Testing Methodologies
  • AI Sampling Testing
  • AI Outcomes Sample
  • AI Audit Process

Audit Evidence Collection Techniques 

  • Data Collection
  • Walkthroughs and Interviews
  • AI Collection Tools

Audit Data Quality and Data Analytics

  • Data Quality
  • Data Analytics
  • Data Reporting

AI Audit Outputs and Reports  

  • Reports
  • Audit Follow-up
  • Quality Assurance

 

 

Pre-requisitos

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Attendees should meet the following prerequisites:

  • A solid understanding of IT governance, risk management, and compliance frameworks.
  • Familiarity with AI concepts and terminology, including machine learning models and data governance.
  • Basic knowledge of information security and privacy principles.
  • Experience with audit processes and methodologies in a technology environment.
  • ISACA CISA Certification (Certified Information Systems Auditor) or equivalent auditing experience.
Pre-requisitos:

Certificación de Prueba

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Recommended as preparation for the following exams.

  • AAIA -  ISACA Advanced in AI Audit™ (AAIA™) Certification

Más información

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Exam Duration: ◦ 90 questions ◦ Must be completed in 2.5 hours