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Which Responsible AI consideration should an ML Engineer evaluate BEFORE deploying a hiring-prediction model — referenced in PMLE §6.1?
AFairness across protected demographics + bias evaluation + Responsible-AI review
BCloud Memorystore
CCloud DNS
DSkip fairness review to ship faster
Answer & Solution
Correct answer: A. Fairness across protected demographics + bias evaluation + Responsible-AI review
Fairness / bias evaluation is mandatory Responsible AI (per PMLE §6.1). The other options skip required review.
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