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Which GCP capability lets an ML Engineer build a RAG (retrieval-augmented generation) application connecting a foundation model to enterprise data sources with grounded answers — referenced in PMLE §1.2?
AVertex AI Agent Builder (with Vertex AI Search for retrieval)
BCloud DNS
CCloud Memorystore
DCloud Filestore
Answer & Solution
Correct answer: A. Vertex AI Agent Builder (with Vertex AI Search for retrieval)
Vertex AI Agent Builder is GCP's RAG application platform (per PMLE §1.2). The others aren't RAG platforms.
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