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Certified AI Business Steward (CAIBST)



Certified AI Business Steward is a professional, globally relevant certification that empowers business leaders, compliance managers, and innovation strategists to govern artificial intelligence (AI) responsibly and ethically. As the adoption of AI accelerates across industries, organisations are under pressure to ensure that AI systems are transparent, fair, explainable, and compliant with emerging regulations. The Certified AI Business Steward course offers a practical roadmap for establishing governance structures that mitigate AI risk, protect organisational integrity, and align innovation with regulatory obligations.

In today’s data-driven world, artificial intelligence is no longer optional, it is an embedded part of strategic decision-making. But while AI unlocks speed, accuracy, and scalability, it also introduces challenges such as algorithmic bias, data privacy concerns, model explainability, and auditability. The Certified AI Business Steward equips professionals to take charge of these risks and lead the ethical deployment of AI technologies.

This course is designed for non-technical professionals who influence AI policy, risk frameworks, or strategic AI integration. You do not need a coding background, just a commitment to responsible innovation. Whether you are a Chief Risk Officer ensuring AI compliance under GDPR or the EU AI Act, a Human Resources leader overseeing AI hiring tools, or a transformation lead setting up internal AI ethics boards, this programme will give you the tools to govern AI confidently.

The Certified AI Business Steward goes beyond theory. It offers immediately applicable frameworks, toolkits, and sector-specific policy templates to help professionals develop AI ethics charters, set up AI review boards, write bias audit guidelines, and evaluate vendor AI solutions for compliance and transparency.


Key learning modules include:

  • AI risk management

  • Ethical design principles

  • AI audit and compliance tools

  • algorithmic transparency

  • DEI safeguards

  • Responsible data governance,

  • and leadership accountability.

The course also covers industry regulations such as the EU Artificial Intelligence Act, ISO 42001 (AI Management Systems), OECD principles on trustworthy AI, and cross-sectoral examples from healthcare, HR, finance, and the public sector.

As a Certified AI Business Steward, you will be able to:


  • Build and implement ethical AI governance models

  • Align AI projects with legal, regulatory, and organisational frameworks

  • Champion accountability, fairness, and transparency in automated decision-making

  • Prevent reputational and financial risks by mitigating AI bias and misuse

  • Evaluate internal or third-party AI systems for compliance and explainability

The course is self-paced, 100% online, and professionally verified. It includes over 20 templates and tools, such as AI Risk Registers, Ethics Impact Templates, AI Model Transparency Checklists, and Responsible AI Assessment Dashboards. You’ll also receive a digital certificate that validates your governance expertise and can be added to your LinkedIn profile and CV.


In a world where companies are penalised for misusing AI, the role of an AI Business Steward is no longer optional, it is essential. Join the growing global community of Certified AI Business Stewards and take the lead in building responsible, human-centric AI systems.

By enrolling in the Certified AI Business Steward, you are taking a proactive step toward ensuring your organisation’s AI practices are legally sound, ethically robust, and strategically aligned. This is not just a course, it is a leadership credential for the future of responsible AI.

https://thecasehq.com/courses/certified-ai-business-steward-caibst/?fsp_sid=2207

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