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Which Vertex AI workflow should an ML Engineer use to build a TABULAR ML model with feature engineering + AutoML training + explainability all integrated — referenced in PMLE §1.3 + §3.2?
ACloud Memorystore
BTabular Workflows on Vertex AI
CManual scikit-learn + handwritten feature pipeline + separate explainability tool
DCloud DNS
Answer & Solution
Correct answer: B. Tabular Workflows on Vertex AI
Tabular Workflows are Vertex AI's integrated tabular ML pipeline (per PMLE §1.3, §3.2). The others aren't integrated tabular workflows.
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