Certified Responsible AI Governance & Ethics (C|RAGE)
Enterprises need leaders who can embed governance throughout the AI life cycle, from ideation to deployment. This credential validates your ability to operationalize governance ali...
Enterprises need leaders who can embed governance throughout the AI life cycle, from ideation to deployment. This credential validates your ability to operationalize governance aligned with NIST AI RMF and ISO/IEC 42001, helping enterprises scale AI with accountability.
- 11 Comprehensive Modules
- Framework-Driven, Regulation-Aligned Curriculum
- Scenario-Based Governance and Risk Analysis
Get Course Details & Pricing
Our advisor will reach out within 24 hours
Enquiry Received!
Thank you! One of our training advisors will contact you within 24 hours with full details and a personalised quote.
C|RAGE is designed for professionals who must ensure AI is ethical, compliant, secure, and accountable, regardless of whether they build models.
GRC and Risk Management
- Head of Governance, Risk & Compliance (GRC)
- GRC Manager
- Director, Risk Management
- Risk Manager
- Head of Enterprise Risk Management (ERM)
- Operational Risk Manager
Compliance and Regulatory
- Director, Compliance
- Compliance Manager
- Director, Regulatory Affairs
- Regulatory Compliance Manager
Privacy and Data Governance
- Chief Privacy Officer
- Director of Privacy
- Privacy Program Manager
- Data Protection Officer (DPO)
- Data Governance Manager
- Director, Data Governance
Audit
- Internal Audit Manager (Technology/IT)
- Technology Audit Manager
- Director, Internal Audit
No pre-requisite
One year access to official training videos
Six months access to labs
One year access to official e-courseware
One year access to exam voucher
Exam Title: Certified Responsible AI Governance and Ethics Professional (C|RAGE)
Exam Code: 612-51
Number of Questions: 100
Duration: 3 hours
Availability: ECC Exam Portal
Passing Score: 70–80%
Test Format: Multiple Choice Questions (MCQs)
Master the foundational concepts, technologies, and operational life cycle of artificial intelligence (AI) to understand how modern AI systems are built, deployed, and scaled responsibly.
- Understand core principles, evolution, and components of AI
- Apply real-world AI applications across industries
- Apply AI project life cycle, MLOps, and DataOps
- Apply AI technology stack, infrastructure, and deployment model
Master the foundational concepts, technologies, and operational life cycle of artificial intelligence (AI) to understand how modern AI systems are built, deployed, and scaled responsibly.
- Understand core principles, evolution, and components of AI
- Apply real-world AI applications across industries
- Apply AI project life cycle, MLOps, and DataOps
- Apply AI technology stack, infrastructure, and deployment models
Develop structured AI strategies and roadmaps that align organizational goals with responsible, scalable, and value-driven AI adoption.
- Set an AI vision and assess organizational readiness
- Prioritize use-case and develop an AI roadmap
- Modernize data, technology, and infrastructure
- Manage AI pilots, scaling strategies, culture, and performance
Design and implement enterprise-wide AI governance structures that ensure accountability, transparency, compliance, and trust.
- Understand AI governance concepts, operating models, and roles
- Define AI governance policies, decision rights, and controls
- Apply global AI governance frameworks and life cycle governance
- Manage AI asset management, documentation, human oversight, and tooling
Navigate global AI regulations and compliance obligations to ensure lawful, ethical, and defensible AI deployments.
- Understand global and sector-specific AI regulatory requirements
- Understand accountability, liability, and user rights in AI systems
- Apply operational compliance, reporting, and audit readiness
- Implement continuous compliance monitoring and legal risk management
Identify, assess, and manage AI-specific risks, threats, and vulnerabilities across the AI life cycle.
- Understand AI threat landscape, vulnerabilities, and adversarial attacks
- Apply AI risk identification, assessment, and prioritization methods
- Apply AI risk management frameworks and standards
- Conduct threat modeling and attack surface analysis for AI systems
Manage vendor, supplier, and ecosystem risks across AI procurement, deployment, and life cycle operations.
- Understand third-party AI risk categories and supply chain threats
- Conduct AI vendor due diligence, evaluation, and contract governance
- Apply regulatory obligations and vendor compliance requirements
- Implement continuous vendor monitoring, assurance, and incident response
Design secure-by-design AI architectures that protect models, data, pipelines, and runtime environments.
- Understand AI security architecture principles and frameworks
- Apply secure AI design patterns and defense-in-depth strategies
- Implement secure coding, model protection, and deployment controls
- Apply runtime security, API protection, and continuous monitoring
Embed privacy, transparency, trust, and safety into AI systems to enable ethical and usercentric AI experiences.
- Understand privacy-enhancing technologies and data protection techniques
- Apply AI privacy risk assessment and mitigation strategies
- Apply transparency, explainability, and trustbuilding mechanisms
- Implement ethical design, fairness assurance, and trust monitoring
Build AI-specific incident response, resilience, and recovery capabilities to sustain trust and business operations.
- Understand AI-focused incident response frameworks and workflows
- Conduct AI incident detection, containment, recovery, and reporting
- Develop AI business continuity and disaster recovery planning
- Apply testing, simulations, and continuous readiness improvement
Establish robust assurance, testing, and audit mechanisms to validate trustworthy, compliant, and reliable AI systems.
- Understand AI assurance principles, frameworks, and governance models
- Apply AI testing strategies across data, models, and systems
- Conduct validation, verification, bias, fairness, and robustness testing
- Apply AI auditing methodologies, evidence management, and reporting
Course Pricing Options
Choose the package that best fits your learning goals and professional background
iLearn (Self-paced and Exam inlcuded)
Send Course Enquiry
Fill out the form and we will get back to you within 24 hours
Why Choose Profice?
Italy's Leading Training Partner with a Proven Track Record
Official Partner
Authorized Training Partner delivering official certified curriculum
Expert Instructors
Certified professionals with 10+ years of real-world experience
Hands-on Labs
Real-world projects and 24/7 lab environment access
95% Pass Rate
Industry-leading certification exam success rate
Job Assistance
Dedicated placement support with 500+ hiring partners
Lifetime Support
Ongoing mentorship and community access after course completion
Ready to Transform Your Career?
Join thousands of professionals who achieved their certification goals with Profice.