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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:
Feb 16, 2026
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

Your team is building an application for a global bank that will be used by millions of customers. You built a forecasting model that predicts customers1 account balances 3 days in the future. Your team will use the results in a new feature that will notify users when their account balance is likely to drop below $25. How should you serve your predictions?

Options:

A.

1. Create a Pub/Sub topic for each user

2 Deploy a Cloud Function that sends a notification when your model predicts that a user's account balance will drop below the $25 threshold.

B.

1. Create a Pub/Sub topic for each user

2. Deploy an application on the App Engine standard environment that sends a notification when your model predicts that

a user's account balance will drop below the $25 threshold

C.

1. Build a notification system on Firebase

2. Register each user with a user ID on the Firebase Cloud Messaging server, which sends a notification when the average of all account balance predictions drops below the $25 threshold

D.

1 Build a notification system on Firebase

2. Register each user with a user ID on the Firebase Cloud Messaging server, which sends a notification when your model predicts that a user's account balance will drop below the $25 threshold

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Question 2

You have been asked to develop an input pipeline for an ML training model that processes images from disparate sources at a low latency. You discover that your input data does not fit in memory. How should you create a dataset following Google-recommended best practices?

Options:

A.

Create a tf.data.Dataset.prefetch transformation

B.

Convert the images to tf .Tensor Objects, and then run Dataset. from_tensor_slices{).

C.

Convert the images to tf .Tensor Objects, and then run tf. data. Dataset. from_tensors ().

D.

Convert the images Into TFRecords, store the images in Cloud Storage, and then use the tf. data API to read the images for training

Question 3

You work with a team of researchers to develop state-of-the-art algorithms for financial analysis. Your team develops and debugs complex models in TensorFlow. You want to maintain the ease of debugging while also reducing the model training time. How should you set up your training environment?

Options:

A.

Configure a v3-8 TPU VM SSH into the VM to tram and debug the model.

B.

Configure a v3-8 TPU node Use Cloud Shell to SSH into the Host VM to train and debug the model.

C.

Configure a M-standard-4 VM with 4 NVIDIA P100 GPUs SSH into the VM and use

Parameter Server Strategy to train the model.

D.

Configure a M-standard-4 VM with 4 NVIDIA P100 GPUs SSH into the VM and use

MultiWorkerMirroredStrategy to train the model.