AI Governance Framework - MasterRisks Advisory
Advisory Services

AI Governance Framework

A comprehensive, enterprise-ready framework for establishing responsible AI governance — designed to manage AI risks, ensure regulatory compliance, embed ethical principles, and enable safe AI adoption at scale.

Request a Consultation →

Structured AI Governance for Your Organization

Our AI Governance Framework provides the structures, policies, processes, and controls needed to govern artificial intelligence responsibly — from strategy and oversight through to operational risk management and regulatory compliance.

Component 01

AI Governance Committee & Accountability Structure

Establish clear ownership, decision-making authority, and oversight mechanisms for AI across the enterprise.

Committee Charter

Terms of reference, membership structure, decision protocols, and escalation pathways to board level

Role Definitions

RACI matrix defining accountability for AI development, deployment, risk management, and compliance

Meeting Cadence

Regular governance forums, standing agenda items, and documentation requirements

Reporting Frameworks

Board-level AI risk dashboards, KPIs, and management information templates

Component 02

AI Risk Management Framework

Systematic identification, assessment, and mitigation of AI-specific risks including bias, opacity, security, and compliance risks.

Risk Taxonomy

Comprehensive classification of AI risks — bias, fairness, transparency, privacy, security, and operational risks

Risk Assessment

Methodologies for evaluating AI risk likelihood, impact, and velocity across the model lifecycle

Risk Appetite

Board-approved appetite statements defining acceptable AI risk levels by risk category

Control Design

Technical and procedural controls mapped to AI risks, including testing and validation protocols

Component 03

AI Ethics Principles & Responsible AI Standards

Define organizational values and ethical guardrails for AI development, deployment, and use.

Ethics Principles

Organizational AI ethics charter covering fairness, transparency, accountability, and human oversight

Bias Assessment

Frameworks for detecting, measuring, and mitigating bias in training data and model outputs

Explainability Standards

Requirements for model transparency, decision explainability, and human-understandable outputs

Ethical Review

Ethics review board procedures for high-risk AI applications and use cases

Component 04

AI Policy Suite

Comprehensive policy framework governing AI acquisition, development, deployment, and ongoing management.

AI Acceptable Use Policy

Defines approved AI use cases, prohibited applications, and user responsibilities across the organization

Model Development Lifecycle Policy

Standards for AI/ML model design, development, testing, validation, and approval processes

AI Procurement & Vendor Management Policy

Requirements for third-party AI evaluation, due diligence, contractual controls, and ongoing monitoring

Data Governance for AI Policy

Data quality, lineage, privacy, and protection standards specific to AI training and operations

AI Incident Response Policy

Procedures for detecting, escalating, investigating, and remediating AI-related incidents

Model Retirement & Decommissioning Policy

Standards for AI model sunset, data retention, and knowledge preservation

Component 05

AI Model Lifecycle Management

End-to-end governance across model development, deployment, monitoring, and retirement.

Model Inventory & Registry

Centralized catalog of all AI models with metadata, risk classification, and ownership

Development Workflows

Stage-gate approval processes from concept through testing, validation, and production deployment

Performance Monitoring

KPIs, KRIs, and automated monitoring for model accuracy, drift, and operational performance

Change Management

Controlled procedures for model updates, retraining, and version control

Component 06

Regulatory Compliance & Assurance

Ensure compliance with AI regulations including the EU AI Act and sector-specific requirements.

EU AI Act Compliance

Risk classification mapping, conformity assessment procedures, and documentation requirements

Regulatory Horizon Scanning

Ongoing monitoring of emerging AI regulations, standards, and guidance globally

Compliance Assessment

Tools and frameworks for evaluating AI systems against regulatory requirements

Audit & Assurance

Internal audit programs, external assurance engagement, and regulatory reporting templates

Framework Deliverables

Working documents, templates, and frameworks ready to implement in your organization

📋

Committee Charter

Terms of reference, membership criteria, and decision-making protocols

📊

Risk Register

AI risk taxonomy, assessment templates, and control library

⚖️

Ethics Framework

Principles, bias assessment tools, and ethical review procedures

📄

Policy Suite

Complete set of AI governance policies ready for customization

🔄

Workflow Templates

Model approval workflows, change processes, and lifecycle management

Compliance Toolkit

EU AI Act mapping, audit checklists, and reporting templates

Implement AI Governance in Your Organization

Work with our advisors to design, customize, and implement this framework for your organization — tailored to your industry, risk appetite, and regulatory environment.

Scroll to Top