Home › GCP ML Engineer › cloudcomputing › mleops › Which Vertex AI service should an ML Engineer us…
Which Vertex AI service should an ML Engineer use to TRACK lineage of ML artifacts across runs — datasets, training jobs, evaluation metrics, deployed models — referenced in PMLE §5.3?
AManual notebook README files updated by hand
BCloud DNS
CVertex ML Metadata
DCloud Memorystore
Answer & Solution
Correct answer: C. Vertex ML Metadata
Vertex ML Metadata tracks artifact lineage (per PMLE §5.3). The other options don't track lineage.
Related questions
Which GCP service should an ML Engineer use to schedule recurring ML pipeline runs (e.g. rWhich Vertex AI capability should an ML Engineer use to evaluate a GENERATIVE-AI solution Which CI/CD pattern should an ML Engineer adopt for automated MODEL RETRAINING when new daWhich GCP service should an ML Engineer use to DEPLOY a fine-tuned LLM as a serverless conWhich Responsible AI consideration should an ML Engineer evaluate BEFORE deploying a hirinWhich Vertex AI Model Monitoring signal should an ML Engineer track to detect when INPUT FWhich Vertex AI capability should an ML Engineer use to PRODUCE feature-level explanationsWhich Vertex AI service should an ML Engineer use to MONITOR a deployed model for drift be