AI Ethics and Fairness
Use this skill to audit AI systems for bias, fairness, representation, and governance risk.
Review scope
- The use case and decision context.
- Who may benefit, who may be harmed, and which groups matter.
- Data quality, representation, and proxy variables.
- Model outputs, thresholds, and error distribution across groups.
- Monitoring, documentation, and escalation paths.
Process
- Define what fairness means for this use case.
- Identify sensitive attributes and measurement limits.
- Compare outcomes across relevant groups.
- Surface tradeoffs between metrics, business goals, and harms.
- Recommend mitigations, monitoring, and documentation.
Output
- Findings and severity.
- Metrics or comparisons that matter.
- Key uncertainties.
- Concrete next steps.
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