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Which Vertex AI capability should an ML Engineer use to PRODUCE feature-level explanations of an individual prediction — required by stakeholders + responsible-AI reviews in PMLE §6.1?
ACloud DNS
BVertex Explainable AI (with Vertex AI Prediction's explanations feature)
CHardcoded 'because the model said so' responses
DCloud Memorystore
Answer & Solution
Correct answer: B. Vertex Explainable AI (with Vertex AI Prediction's explanations feature)
Vertex Explainable AI provides Shapley + integrated-gradients explanations (per PMLE §6.1). The other options aren't explanations.
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