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Google Professional Machine Learning Engineer

Last Update 17 hours ago Total Questions : 296

The Google Professional Machine Learning Engineer content is now fully updated, with all current exam questions added 17 hours ago. Deciding to include Professional-Machine-Learning-Engineer practice exam questions in your study plan goes far beyond basic test preparation.

You'll find that our Professional-Machine-Learning-Engineer exam questions frequently feature detailed scenarios and practical problem-solving exercises that directly mirror industry challenges. Engaging with these Professional-Machine-Learning-Engineer sample sets allows you to effectively manage your time and pace yourself, giving you the ability to finish any Google Professional Machine Learning Engineer practice test comfortably within the allotted time.

Question # 41

You have recently used TensorFlow to train a classification model on tabular data You have created a Dataflow pipeline that can transform several terabytes of data into training or prediction datasets consisting of TFRecords. You now need to productionize the model, and you want the predictions to be automatically uploaded to a BigQuery table on a weekly schedule. What should you do?

A.

Import the model into Vertex Al and deploy it to a Vertex Al endpoint On Vertex Al Pipelines create a pipeline that uses the Dataf lowPythonJobop and the Mcdei3archPredictoc components.

B.

Import the model into Vertex Al and deploy it to a Vertex Al endpoint Create a Dataflow pipeline that reuses the data processing logic sends requests to the endpoint and then uploads predictions to a BigQuery table.

C.

Import the model into Vertex Al On Vertex Al Pipelines, create a pipeline that uses the DatafIowPythonJobOp and the ModelBatchPredictOp components.

D.

Import the model into BigQuery Implement the data processing logic in a SQL query On Vertex Al Pipelines create a pipeline that uses the BigqueryQueryJobop and the EigqueryPredictModejobOp components.

Question # 42

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?

A.

Access BigQuery Studio in the Google Cloud console. Run the CREATE MODEL statement in the SQL editor to create a deep neural network (DNN) regressor model.

B.

Create a Vertex AI Workbench notebook. Use IPython magic to run the CREATE MODEL statement to create a deep neural network (DNN) regressor 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 AI Workbench notebook. Use IPython magic to run the CREATE MODEL statement to create an AutoML regression model.

Question # 43

You want to migrate a scikrt-learn classifier model to TensorFlow. You plan to train the TensorFlow classifier model using the same training set that was used to train the scikit-learn model and then compare the performances using a common test set. You want to use the Vertex Al Python SDK to manually log the evaluation metrics of each model and compare them based on their F1 scores and confusion matrices. How should you log the metrics?

A.

B.

C.

D.

Question # 44

You work for a company that is developing an application to help users with meal planning You want to use machine learning to scan a corpus of recipes and extract each ingredient (e g carrot, rice pasta) and each kitchen cookware (e.g. bowl, pot spoon) mentioned Each recipe is saved in an unstructured text file What should you do?

A.

Create a text dataset on Vertex Al for entity extraction Create two entities called ingredient " and cookware " and label at least 200 examples of each entity Train an AutoML entity extraction model to extract occurrences of these entity types Evaluate performance on a holdout dataset.

B.

Create a multi-label text classification dataset on Vertex Al Create a test dataset and label each recipe that corresponds to its ingredients and cookware Train a multi-class classification model Evaluate the model’s performance on a holdout dataset.

C.

Use the Entity Analysis method of the Natural Language API to extract the ingredients and cookware from each recipe Evaluate the model ' s performance on a prelabeled dataset.

D.

Create a text dataset on Vertex Al for entity extraction Create as many entities as there are different ingredients and cookware Train an AutoML entity extraction model to extract those entities Evaluate the models performance on a holdout dataset.

Question # 45

You work for a social media company. You want to create a no-code image classification model for an iOS mobile application to identify fashion accessories You have a labeled dataset in Cloud Storage You need to configure a training workflow that minimizes cost and serves predictions with the lowest possible latency What should you do?

A.

Train the model by using AutoML, and register the model in Vertex Al Model Registry Configure your mobile

application to send batch requests during prediction.

B.

Train the model by using AutoML Edge and export it as a Core ML model Configure your mobile application

to use the mlmodel file directly.

C.

Train the model by using AutoML Edge and export the model as a TFLite model Configure your mobile application to use the tflite file directly

D.

Train the model by using AutoML, and expose the model as a Vertex Al endpoint Configure your mobile application to invoke the endpoint during prediction.

Question # 46

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?

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

Question # 47

You are pre-training a large language model on Google Cloud. This model includes custom TensorFlow operations in the training loop Model training will use a large batch size, and you expect training to take several weeks You need to configure a training architecture that minimizes both training time and compute costs What should you do?

A.

B.

C.

D.

Question # 48

You are building a custom image classification model and plan to use Vertex Al Pipelines to implement the end-to-end training. Your dataset consists of images that need to be preprocessed before they can be used to train the model. The preprocessing steps include resizing the images, converting them to grayscale, and extracting features. You have already implemented some Python functions for the preprocessing tasks. Which components should you use in your pipeline ' ?

A.

B.

C.

D.

Question # 49

You received a training-serving skew alert from a Vertex Al Model Monitoring job running in production. You retrained the model with more recent training data, and deployed it back to the Vertex Al endpoint but you are still receiving the same alert. What should you do?

A.

Update the model monitoring job to use a lower sampling rate.

B.

Update the model monitoring job to use the more recent training data that was used to retrain the model.

C.

Temporarily disable the alert Enable the alert again after a sufficient amount of new production traffic has passed through the Vertex Al endpoint.

D.

Temporarily disable the alert until the model can be retrained again on newer training data Retrain the model again after a sufficient amount of new production traffic has passed through the Vertex Al endpoint

Question # 50

You are creating a retraining policy for a customer churn prediction model deployed in Vertex AI. New training data is added weekly. You want to implement a model retraining process that minimizes cost and effort. What should you do?

A.

Retrain the model when the model ' s latency increases by 10% due to increased traffic.

B.

Retrain the model when the model accuracy drops by 10% on the new training dataset.

C.

Retrain the model every week when new training data is available.

D.

Retrain the model when a significant shift in the distribution of customer attributes is detected in the production data compared to the training data.

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