1. Transparency and Explainability
Some practices to demonstrate repeatability include conducting repeatability assessments to ensure deployments in live environments are repeatable and performing counterfactual fairness testing to ensure that the AI system’s decisions are the same in both the real world and in the counterfactual world.
2. Fairness and Equity
fairness and Equity
2. Fairness and Equity
Deployers should have safeguards in place to ensure that algorithmic decisions do not further exacerbate or amplify existing discriminatory or unjust impacts across different demographics and the design, development, and deployment of AI systems should not result in unfair biasness or discrimination.
2. Fairness and Equity
To mitigate discrimination, it is important that the design, development, and deployment of AI systems align with fairness and equity principles.