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Exam Professional-Machine-Learning-Engineer All Questions
Exam Professional-Machine-Learning-Engineer All Questions

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Google Machine Learning Engineer Professional-Machine-Learning-Engineer Question # 75 Topic 8 Discussion

Professional-Machine-Learning-Engineer Exam Topic 8 Question 75 Discussion:
Question #: 75
Topic #: 8

You work at a large organization that recently decided to move their ML and data workloads to Google Cloud. The data engineering team has exported the structured data to a Cloud Storage bucket in Avro format. You need to propose a workflow that performs analytics, creates features, and hosts the features that your ML models use for online prediction How should you configure the pipeline?


A.

Ingest the Avro files into Cloud Spanner to perform analytics Use a Dataflow pipeline to create the features and store them in BigQuery for online prediction.


B.

Ingest the Avro files into BigQuery to perform analytics Use a Dataflow pipeline to create the features, and store them in Vertex Al Feature Store for online prediction.


C.

Ingest the Avro files into BigQuery to perform analytics Use BigQuery SQL to create features and store them in a separate BigQuery table for online prediction.


D.

Ingest the Avro files into Cloud Spanner to perform analytics. Use a Dataflow pipeline to create the features. and store them in Vertex Al Feature Store for online prediction.


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