Gartner Research

Applying AI — Governance and Risk Management

Summary

Success and scaling of AI projects require leaders to address strategies and methods related to fairness, transparency, explainability, reliability, privacy and security. This report provides an overview of Gartner’s AI research as applied to these governance and risk management issues.

Published: 26 July 2021

ID: G00745080

Analyst(s): Avivah Litan Svetlana Sicular Shubhangi Vashisth Bern Elliot Farhan Choudhary

Table Of Contents

Strategic Planning Assumption

Analysis

Research Highlights

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