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Which Vertex AI feature should an ML Engineer use to deploy a Kubeflow-Pipelines DAG running on a GKE cluster — for teams already standardised on Kubeflow?
AManual shell scripts kicked off by a developer at 3am
BCloud Memorystore
CKubeflow Pipelines on GKE (or Vertex AI Pipelines, which uses Kubeflow Pipelines SDK)
DCloud DNS
Answer & Solution
Correct answer: C. Kubeflow Pipelines on GKE (or Vertex AI Pipelines, which uses Kubeflow Pipelines SDK)
Kubeflow Pipelines / Vertex AI Pipelines are the canonical KFP runtimes (per PMLE §3.2 + §5.1). The others aren't pipeline runtimes.
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