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Which Vertex AI capability should an ML Engineer use to CATALOG + version + share trained models across teams — with metadata, lineage, and deployment hooks?
ACloud Memorystore
BManually emailing model artifacts as .pkl files
CCloud DNS
DVertex AI Model Registry
Answer & Solution
Correct answer: D. Vertex AI Model Registry
Vertex AI Model Registry is the model catalog (per PMLE §4.1). The others aren't registries.
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