The course focuses on governance discipline and decision clarity rather than tools.
The course focuses on governance discipline and decision clarity rather than tools.Sessions emphasize accountable approvals, consistent terminology, and reviewable evidence.Participants practice framing outcomes in language leaders can use.
Practical exercises reinforce theoretical concepts through application.Participants gain confidence through hands-on practice and review.
“Learning effectiveness depends on structured, relevant exercises.”
This ISO/IEC 42001 Lead Implementer course trains professionals to design and deploy an Artificial Intelligence Management System that stands up to regulatory, ethical, and operational scrutiny.
View courseThis training is designed for professionals who must structure, operate, and defend an information security risk management process aligned with ISO/IEC 27005:2022. Participants work through the full risk lifecycle, from context definition to treatment decisions and executive reporting.
View courseThis course prepares participants to manage, govern, and scale AI initiatives aligned with business objectives. It addresses growing pressure to control AI risks, ensure transparency, and deliver measurable value from AI investments. Participants evaluate AI opportunities, structure governance, design dashboards, and automate workflows using no-code tools. Abilene Academy teaches through real case execution, Power BI and n8n labs, and exam-focused coaching led by active consultants. It is designed for AI project managers, business leaders, compliance professionals, and transformation leads.
View courseThe course focuses on governance discipline and decision clarity rather than tools.
byAlexis HIRSCHHORN
The course focuses on governance discipline and decision clarity rather than tools.
byGerhard ROTTER
The course focuses on governance discipline and decision clarity rather than tools.
byChristophe MAZZOLA
Identify AI risks through lifecycle analysis: data risks (bias, quality), model risks (drift, overfitting), deployment risks (adversarial attacks, misuse), and operational risks (feedback loops, unintended impacts).
AI risks are dynamic, probabilistic, and context-dependent. Unlike static IT systems, AI models degrade over time, produce unexpected outputs, and fail in ways difficult to predict or test comprehensively.
The exam is domain-based, covering AI risk concepts and regulations, governance, identification and analysis, evaluation/treatment/monitoring, and organizational learning and performance improvement.
It's designed for risk owners, IT/security teams, data and AI engineers, consultants, legal/ethical advisors, leaders overseeing AI deployments, and executives needing strategic oversight of AI risk.
ISO 27001 gives you a head start on ISO 42001, not a free pass. Here is what carries over, what is new, and how to extend your ISMS to an AIMS, step by step.
Regulation (EU) 2024/1689 is the EU's first comprehensive risk-based horizontal AI law, applying in stages from 2025 to 2027 (with Article 6(1) deferred to 2027). Complete guide.
Browse all FAQs →
Full knowledge base
Necessary cookies are always active. You can accept, reject non-essential cookies, or customize your preferences.