The EC-Council Certified Responsible AI Governance and Ethics credential establishes that the holder can design, implement, and audit governance programs for artificial intelligence systems across regulatory regimes, organizational contexts, and the full AI lifecycle from problem framing through retirement. Holders typically work as AI governance leads, compliance officers expanding their portfolio into AI, risk managers, privacy professionals adding AI competence to a privacy program, internal auditors developing AI assurance practices, and policy advisors who must translate emerging legal requirements into operating controls that engineering teams can actually execute against.
The exam covers the major governance frameworks in depth. The NIST AI Risk Management Framework is examined function by function, with attention to Govern, Map, Measure, and Manage, the supporting profiles, and the way the playbook translates abstract principles into auditable activities. ISO and IEC 42001 is treated as the management system standard it is, with the plan-do-check-act cycle mapped to AI-specific clauses on objectives, risk treatment, controls, and continual improvement. The EU AI Act is covered at the level a practitioner needs: the four risk tiers, the obligations attached to high-risk systems, the role of conformity assessment, the general-purpose AI provisions, and the timeline that determines when each clause becomes enforceable. Sectoral overlays are also addressed, including financial services model risk management, healthcare device regulation, and employment-related decision systems.
Bias detection and fairness content covers disparate impact analysis, the statistical parity and equalized odds families of metrics, the inevitability of trade-offs among incompatible fairness definitions, intersectional analysis, and the operational hooks needed to embed bias testing into development pipelines as gating checks rather than aspirational goals. Transparency topics include model cards, system cards, data sheets for datasets, the limits of post-hoc explainability methods such as SHAP and LIME, and the difference between technical explainability for engineers and meaningful information for affected individuals.
Enterprise governance content addresses the design of AI ethics committees with real authority and clear escalation paths, the relationship between privacy, security, and AI governance functions in matrixed organizations, third-party AI risk management for vendor and open-weight models, incident response when an AI system causes demonstrable harm to customers or employees, and the metrics that let leadership see whether the program is working. Procurement, contracting, and the rights organizations should reserve when using external models are treated as practical disciplines rather than abstractions.
The volume includes 120 practice questions covering each exam domain, with detailed answer explanations that ground each item in a framework citation or a real-world precedent.
Intended readers include governance, risk, and compliance professionals adding AI to their portfolio, privacy officers facing AI-specific regulatory pressure, AI program managers building enterprise controls, and technology leaders preparing to attest to board-level AI risk.
Format: 8.5x11 perfect-bound, large-format study layout with framework crosswalks, control catalogs, and exam-domain headers mapped to the CRAGE blueprint.
Drafted with frontier large language models and adversarially verified for technical accuracy. This is an independent publication and is not affiliated with, endorsed by, or sponsored by EC-Council; all trademarks are property of their respective owners.
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Paperback. Zustand: new. Paperback. The EC-Council Certified Responsible AI Governance and Ethics credential establishes that the holder can design, implement, and audit governance programs for artificial intelligence systems across regulatory regimes, organizational contexts, and the full AI lifecycle from problem framing through retirement. Holders typically work as AI governance leads, compliance officers expanding their portfolio into AI, risk managers, privacy professionals adding AI competence to a privacy program, internal auditors developing AI assurance practices, and policy advisors who must translate emerging legal requirements into operating controls that engineering teams can actually execute against.The exam covers the major governance frameworks in depth. The NIST AI Risk Management Framework is examined function by function, with attention to Govern, Map, Measure, and Manage, the supporting profiles, and the way the playbook translates abstract principles into auditable activities. ISO and IEC 42001 is treated as the management system standard it is, with the plan-do-check-act cycle mapped to AI-specific clauses on objectives, risk treatment, controls, and continual improvement. The EU AI Act is covered at the level a practitioner needs: the four risk tiers, the obligations attached to high-risk systems, the role of conformity assessment, the general-purpose AI provisions, and the timeline that determines when each clause becomes enforceable. Sectoral overlays are also addressed, including financial services model risk management, healthcare device regulation, and employment-related decision systems.Bias detection and fairness content covers disparate impact analysis, the statistical parity and equalized odds families of metrics, the inevitability of trade-offs among incompatible fairness definitions, intersectional analysis, and the operational hooks needed to embed bias testing into development pipelines as gating checks rather than aspirational goals. Transparency topics include model cards, system cards, data sheets for datasets, the limits of post-hoc explainability methods such as SHAP and LIME, and the difference between technical explainability for engineers and meaningful information for affected individuals.Enterprise governance content addresses the design of AI ethics committees with real authority and clear escalation paths, the relationship between privacy, security, and AI governance functions in matrixed organizations, third-party AI risk management for vendor and open-weight models, incident response when an AI system causes demonstrable harm to customers or employees, and the metrics that let leadership see whether the program is working. Procurement, contracting, and the rights organizations should reserve when using external models are treated as practical disciplines rather than abstractions.The volume includes 120 practice questions covering each exam domain, with detailed answer explanations that ground each item in a framework citation or a real-world precedent.Intended readers include governance, risk, and compliance professionals adding AI to their portfolio, privacy officers facing AI-specific regulatory pressure, AI program managers building enterprise controls, and technology leaders preparing to attest to board-level AI risk.Format: 8.5x11 perfect-bound, large-format study layout with framework crosswalks, control catalogs, and exam-domain headers mapped to the CRAGE blueprint.Drafted with frontier large language models and adversarially verified for technical accuracy. This is an independent publication and is not affiliated with, endorsed by, or sponsored by EC-Council; all trademarks are property of their respective owners. Complete exam prep for EC-Council CRAGE covering AI governance frameworks, reg Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Bestandsnummer des Verkäufers 9798259500099
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Paperback. Zustand: new. Paperback. The EC-Council Certified Responsible AI Governance and Ethics credential establishes that the holder can design, implement, and audit governance programs for artificial intelligence systems across regulatory regimes, organizational contexts, and the full AI lifecycle from problem framing through retirement. Holders typically work as AI governance leads, compliance officers expanding their portfolio into AI, risk managers, privacy professionals adding AI competence to a privacy program, internal auditors developing AI assurance practices, and policy advisors who must translate emerging legal requirements into operating controls that engineering teams can actually execute against.The exam covers the major governance frameworks in depth. The NIST AI Risk Management Framework is examined function by function, with attention to Govern, Map, Measure, and Manage, the supporting profiles, and the way the playbook translates abstract principles into auditable activities. ISO and IEC 42001 is treated as the management system standard it is, with the plan-do-check-act cycle mapped to AI-specific clauses on objectives, risk treatment, controls, and continual improvement. The EU AI Act is covered at the level a practitioner needs: the four risk tiers, the obligations attached to high-risk systems, the role of conformity assessment, the general-purpose AI provisions, and the timeline that determines when each clause becomes enforceable. Sectoral overlays are also addressed, including financial services model risk management, healthcare device regulation, and employment-related decision systems.Bias detection and fairness content covers disparate impact analysis, the statistical parity and equalized odds families of metrics, the inevitability of trade-offs among incompatible fairness definitions, intersectional analysis, and the operational hooks needed to embed bias testing into development pipelines as gating checks rather than aspirational goals. Transparency topics include model cards, system cards, data sheets for datasets, the limits of post-hoc explainability methods such as SHAP and LIME, and the difference between technical explainability for engineers and meaningful information for affected individuals.Enterprise governance content addresses the design of AI ethics committees with real authority and clear escalation paths, the relationship between privacy, security, and AI governance functions in matrixed organizations, third-party AI risk management for vendor and open-weight models, incident response when an AI system causes demonstrable harm to customers or employees, and the metrics that let leadership see whether the program is working. Procurement, contracting, and the rights organizations should reserve when using external models are treated as practical disciplines rather than abstractions.The volume includes 120 practice questions covering each exam domain, with detailed answer explanations that ground each item in a framework citation or a real-world precedent.Intended readers include governance, risk, and compliance professionals adding AI to their portfolio, privacy officers facing AI-specific regulatory pressure, AI program managers building enterprise controls, and technology leaders preparing to attest to board-level AI risk.Format: 8.5x11 perfect-bound, large-format study layout with framework crosswalks, control catalogs, and exam-domain headers mapped to the CRAGE blueprint.Drafted with frontier large language models and adversarially verified for technical accuracy. This is an independent publication and is not affiliated with, endorsed by, or sponsored by EC-Council; all trademarks are property of their respective owners. Complete exam prep for EC-Council CRAGE covering AI governance fr Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Bestandsnummer des Verkäufers 9798259500099
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Taschenbuch. Zustand: Neu. nach der Bestellung gedruckt Neuware - Printed after ordering - The EC-Council Certified Responsible AI Governance and Ethics credential establishes that the holder can design, implement, and audit governance programs for artificial intelligence systems across regulatory regimes, organizational contexts, and the full AI lifecycle from problem framing through retirement. Holders typically work as AI governance leads, compliance officers expanding their portfolio into AI, risk managers, privacy professionals adding AI competence to a privacy program, internal auditors developing AI assurance practices, and policy advisors who must translate emerging legal requirements into operating controls that engineering teams can actually execute against.The exam covers the major governance frameworks in depth. The NIST AI Risk Management Framework is examined function by function, with attention to Govern, Map, Measure, and Manage, the supporting profiles, and the way the playbook translates abstract principles into auditable activities. ISO and IEC 42001 is treated as the management system standard it is, with the plan-do-check-act cycle mapped to AI-specific clauses on objectives, risk treatment, controls, and continual improvement. The EU AI Act is covered at the level a practitioner needs: the four risk tiers, the obligations attached to high-risk systems, the role of conformity assessment, the general-purpose AI provisions, and the timeline that determines when each clause becomes enforceable. Sectoral overlays are also addressed, including financial services model risk management, healthcare device regulation, and employment-related decision systems.Bias detection and fairness content covers disparate impact analysis, the statistical parity and equalized odds families of metrics, the inevitability of trade-offs among incompatible fairness definitions, intersectional analysis, and the operational hooks needed to embed bias testing into development pipelines as gating checks rather than aspirational goals. Transparency topics include model cards, system cards, data sheets for datasets, the limits of post-hoc explainability methods such as SHAP and LIME, and the difference between technical explainability for engineers and meaningful information for affected individuals.Enterprise governance content addresses the design of AI ethics committees with real authority and clear escalation paths, the relationship between privacy, security, and AI governance functions in matrixed organizations, third-party AI risk management for vendor and open-weight models, incident response when an AI system causes demonstrable harm to customers or employees, and the metrics that let leadership see whether the program is working. Procurement, contracting, and the rights organizations should reserve when using external models are treated as practical disciplines rather than abstractions.The volume includes 120 practice questions covering each exam domain, with detailed answer explanations that ground each item in a framework citation or a real-world precedent.Intended readers include governance, risk, and compliance professionals adding AI to their portfolio, privacy officers facing AI-specific regulatory pressure, AI program managers building enterprise controls, and technology leaders preparing to attest to board-level AI risk.Format: 8.5x11 perfect-bound, large-format study layout with framework crosswalks, control catalogs, and exam-domain headers mapped to the CRAGE blueprint.Drafted with frontier large language models and adversarially verified for technical accuracy. This is an independent publication and is not affiliated with, endorsed by, or sponsored by EC-Council; all trademarks are property of their respective owners. Bestandsnummer des Verkäufers 9798259500099
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Taschenbuch. Zustand: Neu. EC-Council CRAGE Exam Study Guide 2026 | Certified Responsible AI Governance & Ethics: Complete Exam Prep with Practice Questions, Detailed Explanations, and AI Governance Framework Review | Meridian Certification Press | Taschenbuch | Meridian Certification Press Study Guides | Englisch | 2026 | Meridian Certification Press | EAN 9798259500099 | Verantwortliche Person für die EU: Libri GmbH, Europaallee 1, 36244 Bad Hersfeld, gpsr[at]libri[dot]de | Anbieter: preigu Print on Demand. Bestandsnummer des Verkäufers 135413365
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