Addressing Bias in AI: A Call for Responsible Governance

Exploring the impact of racial bias in Artificial Intelligence systems, this article sheds light on the need for safe and secure AI development that aligns with principles of trustworthy AI. By outlining recent instances, we underscore the importance of robust governance mechanisms and harm prevention strategies within AI ecosystems.

Matched TAIM controls

Suggested mapping from embedding similarity (not a formal assessment). Browse all TAIM controls

Source

Data from the AI Incident Database (AIID). Cite this incident: https://incidentdatabase.ai/cite/49

Data source

Incident data is from the AI Incident Database (AIID).

When citing the database as a whole, please use:

McGregor, S. (2021) Preventing Repeated Real World AI Failures by Cataloging Incidents: The AI Incident Database. In Proceedings of the Thirty-Third Annual Conference on Innovative Applications of Artificial Intelligence (IAAI-21). Virtual Conference.

Pre-print on arXiv · Database snapshots & citation guide

We use weekly snapshots of the AIID for stable reference. For the official suggested citation of a specific incident, use the “Cite this incident” link on each incident page.