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Which Vertex AI service should an ML Engineer use to ORCHESTRATE end-to-end ML pipelines (data → preprocess → train → evaluate → deploy) as a serverless DAG using the Kubeflow Pipelines SDK or TFX?
AVertex AI Pipelines
BCloud Memorystore
CManual sequential shell scripts
DCloud DNS
Answer & Solution
Correct answer: A. Vertex AI Pipelines
Vertex AI Pipelines is the canonical serverless ML-pipeline orchestrator (per PMLE §5.1). The other options aren't pipelines.
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