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Which Vertex AI feature should an ML Engineer use to deploy a CUSTOM container that wraps a non-standard model framework (e.g. JAX, ONNX) as an online endpoint?
AOnly prebuilt containers — no custom
BVertex AI Prediction with a custom container image
CCloud Memorystore
DCloud DNS
Answer & Solution
Correct answer: B. Vertex AI Prediction with a custom container image
Vertex AI custom containers serve any framework (per PMLE §4.1). The other options restrict frameworks.
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