A.I. Adoption Is Surging. Data Governance Is Not Keeping Up.
Trilateral Research’s Amelia Williams examines the gap between enterprise A.I. adoption and the quality of the data powering those systems. As companies operationalize generative A.I., many are building governance frameworks that still rely on poorly governed data, creating growing risks around bias, compliance and accountability.
Trilateral Research’s Amelia Williams examines the gap between enterprise A.I. adoption and the quality of the data powering those systems. As companies operationalize generative A.I., many are building governance frameworks that still rely on poorly governed data, creating growing risks around bias, compliance and accountability.
Trilateral Research’s Amelia Williams examines the gap between enterprise A.I. adoption and the quality of the data powering those systems. As companies operationalize generative A.I., many are building governance frameworks that still rely on poorly governed data, creating growing risks around bias, compliance and accountability.
The full story continues on Observer.
Story Sentry shows a short summary aggregated via RSS. The complete article — original photography, charts, and reporting — lives with the publisher.
