Pre-Summer Special Limited Time 70% Discount Offer - Ends in 0d 00h 00m 00s - Coupon code: validbest

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

View all questions & answers for the Professional-Machine-Learning-Engineer exam

Google Machine Learning Engineer Professional-Machine-Learning-Engineer Question # 71 Topic 8 Discussion

Professional-Machine-Learning-Engineer Exam Topic 8 Question 71 Discussion:
Question #: 71
Topic #: 8

You have a custom job that runs on Vertex Al on a weekly basis The job is Implemented using a proprietary ML workflow that produces the datasets. models, and custom artifacts, and sends them to a Cloud Storage bucket Many different versions of the datasets and models were created Due to compliance requirements, your company needs to track which model was used for making a particular prediction, and needs access to the artifacts for each model. How should you configure your workflows to meet these requirement?


A.

Configure a TensorFlow Extended (TFX) ML Metadata database, and use the ML Metadata API.


B.

Create a Vertex Al experiment, and enable autologging inside the custom job


C.

Use the Vertex Al Metadata API inside the custom Job to create context, execution, and artifacts for each model, and use events to link them together.


D.

Register each model in Vertex Al Model Registry, and use model labels to store the related dataset and model information.


Get Premium Professional-Machine-Learning-Engineer Questions

Contribute your Thoughts:


Chosen Answer:
This is a voting comment (?). It is better to Upvote an existing comment if you don't have anything to add.