Winter Sale - Limited Time 65% Discount Offer - Ends in 0d 00h 00m 00s - Coupon code: top65certs

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 4, 2026
Exam Status:
Stable
Google Professional-Machine-Learning-Engineer

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

Are you worried about passing the Google Professional-Machine-Learning-Engineer (Google Professional Machine Learning Engineer) exam? Download the most recent Google Professional-Machine-Learning-Engineer braindumps with answers that are 100% real. After downloading the Google Professional-Machine-Learning-Engineer exam dumps training , you can receive 99 days of free updates, making this website one of the best options to save additional money. In order to help you prepare for the Google Professional-Machine-Learning-Engineer exam questions and verified answers by IT certified experts, CertsTopics has put together a complete collection of dumps questions and answers. To help you prepare and pass the Google Professional-Machine-Learning-Engineer exam on your first attempt, we have compiled actual exam questions and their answers. 

Our (Google Professional Machine Learning Engineer) Study Materials are designed to meet the needs of thousands of candidates globally. A free sample of the CompTIA Professional-Machine-Learning-Engineer test is available at CertsTopics. Before purchasing it, you can also see the Google Professional-Machine-Learning-Engineer practice exam demo.

Google Professional Machine Learning Engineer Questions and Answers

Question 1

You have trained a DNN regressor with TensorFlow to predict housing prices using a set of predictive features. Your default precision is tf.float64, and you use a standard TensorFlow estimator;

estimator = tf.estimator.DNNRegressor(

feature_columns=[YOUR_LIST_OF_FEATURES],

hidden_units-[1024, 512, 256],

dropout=None)

Your model performs well, but Just before deploying it to production, you discover that your current serving latency is 10ms @ 90 percentile and you currently serve on CPUs. Your production requirements expect a model latency of 8ms @ 90 percentile. You are willing to accept a small decrease in performance in order to reach the latency requirement Therefore your plan is to improve latency while evaluating how much the model's prediction decreases. What should you first try to quickly lower the serving latency?

Options:

A.

Increase the dropout rate to 0.8 in_PREDICT mode by adjusting the TensorFlow Serving parameters

B.

Increase the dropout rate to 0.8 and retrain your model.

C.

Switch from CPU to GPU serving

D.

Apply quantization to your SavedModel by reducing the floating point precision to tf.float16.

Buy Now
Question 2

You work for a company that sells corporate electronic products to thousands of businesses worldwide. Your company stores historical customer data in BigQuery. You need to build a model that predicts customer lifetime value over the next three years. You want to use the simplest approach to build the model. What should you do?

Options:

A.

Access BigQuery Studio in the Google Cloud console. Run the create model statement in the SQL editor to create an ARIMA model.

B.

Create a Vertex Al Workbench notebook. Use IPython magic to run the create model statement to create an ARIMA model.

C.

Access BigQuery Studio in the Google Cloud console. Run the create model statement in the SQL editor to create an AutoML regression model.

D.

Create a Vertex Al Workbench notebook. Use IPython magic to run the create model statement to create an AutoML regression model.

Question 3

Your team has been tasked with creating an ML solution in Google Cloud to classify support requests for one of your platforms. You analyzed the requirements and decided to use TensorFlow to build the classifier so that you have full control of the model's code, serving, and deployment. You will use Kubeflow pipelines for the ML platform. To save time, you want to build on existing resources and use managed services instead of building a completely new model. How should you build the classifier?

Options:

A.

Use the Natural Language API to classify support requests

B.

Use AutoML Natural Language to build the support requests classifier

C.

Use an established text classification model on Al Platform to perform transfer learning

D.

Use an established text classification model on Al Platform as-is to classify support requests