AI Ethics
Definition
AI Ethics is the framework of principles, practices, and governance that guides how AI is designed, deployed, and used with respect to fairness, accountability, transparency, privacy, and human wellbeing. In the enterprise, ethics is a procurement and compliance requirement, not a values statement.
Why it matters
The business case for AI Ethics.
Customers, employees, regulators, and investors increasingly demand demonstrable AI ethics practices. Organizations that cannot produce ethics documentation lose deals, talent, and capital.
Related terms in AI Governance & Sovereignty
AI Governance Framework
An AI Governance Framework is the operational system, not the policy document, that makes AI decisions auditable, compliant, and accountable. It includes data governance, model governance, decision governance, incident governance, and compliance governance.
AI Sovereignty
AI Sovereignty is the principle that an organization should own and control its AI systems, data, and intellectual property, not rent them from a vendor. Sovereignty spans data, model weights, infrastructure, and operational knowledge.
AI Compliance
AI Compliance is the practice of ensuring that AI systems meet applicable regulatory, legal, and industry-specific requirements, including the EU AI Act, GDPR, HIPAA, SOC 2, and sector-specific frameworks like model risk management in financial services.
Model Risk Management
Model Risk Management (MRM) is the financial services discipline of identifying, measuring, monitoring, and controlling the risks introduced by predictive and AI models. SR 11-7 in the U.S. and similar frameworks globally formalize MRM requirements.
Data Lineage
Data Lineage is the documented record of where data comes from, how it has been transformed, and where it is used, including by AI systems. Complete data lineage is foundational to AI governance and compliance.
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