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Google Professional-Machine-Learning-Engineer Exam With Confidence Using Practice Dumps

Exam Code:
Professional-Machine-Learning-Engineer
Exam Name:
Google Professional Machine Learning Engineer
Certification:
Vendor:
Questions:
285
Last Updated:
Dec 25, 2025
Exam Status:
Stable
Google Professional-Machine-Learning-Engineer

Professional-Machine-Learning-Engineer: Machine Learning Engineer Exam 2025 Study Guide Pdf and Test Engine

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Google Professional Machine Learning Engineer Questions and Answers

Question 1

You recently trained a XGBoost model that you plan to deploy to production for online inference Before sending a predict request to your model's binary you need to perform a simple data preprocessing step This step exposes a REST API that accepts requests in your internal VPC Service Controls and returns predictions You want to configure this preprocessing step while minimizing cost and effort What should you do?

Options:

A.

Store a pickled model in Cloud Storage Build a Flask-based app packages the app in a custom container image, and deploy the model to Vertex Al Endpoints.

B.

Build a Flask-based app. package the app and a pickled model in a custom container image, and deploy the model to Vertex Al Endpoints.

C.

Build a custom predictor class based on XGBoost Predictor from the Vertex Al SDK. package it and a pickled model in a custom container image based on a Vertex built-in image, and deploy the model to Vertex Al Endpoints.

D.

Build a custom predictor class based on XGBoost Predictor from the Vertex Al SDK and package the handler in a custom container image based on a Vertex built-in container image Store a pickled model in Cloud Storage and deploy the model to Vertex Al Endpoints.

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Question 2

You are building a predictive maintenance model to preemptively detect part defects in bridges. You plan to use high definition images of the bridges as model inputs. You need to explain the output of the model to the relevant stakeholders so they can take appropriate action. How should you build the model?

Options:

A.

Use scikit-learn to build a tree-based model, and use SHAP values to explain the model output.

B.

Use scikit-lean to build a tree-based model, and use partial dependence plots (PDP) to explain the model output.

C.

Use TensorFlow to create a deep learning-based model and use Integrated Gradients to explain the model

output.

D.

Use TensorFlow to create a deep learning-based model and use the sampled Shapley method to explain the model output.

Question 3

You are deploying a new version of a model to a production Vertex Al endpoint that is serving traffic You plan to direct all user traffic to the new model You need to deploy the model with minimal disruption to your application What should you do?

Options:

A.

1 Create a new endpoint.

2 Create a new model Set it as the default version Upload the model to Vertex Al Model Registry.

3. Deploy the new model to the new endpoint.

4 Update Cloud DNS to point to the new endpoint

B.

1. Create a new endpoint.

2. Create a new model Set the parentModel parameter to the model ID of the currently deployed model and set it as the default version Upload the model to Vertex Al Model Registry

3. Deploy the new model to the new endpoint and set the new model to 100% of the traffic

C.

1 Create a new model Set the parentModel parameter to the model ID of the currently deployed model Upload the model to Vertex Al Model Registry.

2 Deploy the new model to the existing endpoint and set the new model to 100% of the traffic.

D.

1, Create a new model Set it as the default version Upload the model to Vertex Al Model Registry

2 Deploy the new model to the existing endpoint