Free Professional Machine Learning Engineer Exam Braindumps (page: 2)

Page 2 of 69

You manage a team of data scientists who use a cloud-based backend system to submit training jobs. This system has become very difficult to administer, and you want to use a managed service instead. The data scientists you work with use many different frameworks, including Keras, PyTorch, theano, Scikit-learn, and custom libraries. What should you do?

  1. Use the AI Platform custom containers feature to receive training jobs using any framework.
  2. Configure Kubeflow to run on Google Kubernetes Engine and receive training jobs through TF Job.
  3. Create a library of VM images on Compute Engine, and publish these images on a centralized repository.
  4. Set up Slurm workload manager to receive jobs that can be scheduled to run on your cloud infrastructure.

Answer(s): A



You work for an online retail company that is creating a visual search engine. You have set up an end-to-end ML pipeline on Google Cloud to classify whether an image contains your company’s product. Expecting the release of new products in the near future, you configured a retraining functionality in the pipeline so that new data can be fed into your ML models. You also want to use AI Platform’s continuous evaluation service to ensure that the models have high accuracy on your test dataset. What should you do?

  1. Keep the original test dataset unchanged even if newer products are incorporated into retraining.
  2. Extend your test dataset with images of the newer products when they are introduced to retraining.
  3. Replace your test dataset with images of the newer products when they are introduced to retraining.
  4. Update your test dataset with images of the newer products when your evaluation metrics drop below a pre- decided threshold.

Answer(s): C



You need to build classification workflows over several structured datasets currently stored in BigQuery. Because you will be performing the classification several times, you want to complete the following steps without writing code: exploratory data analysis, feature selection, model building, training, and hyperparameter tuning and serving. What should you do?

  1. Configure AutoML Tables to perform the classification task.
  2. Run a BigQuery ML task to perform logistic regression for the classification.
  3. Use AI Platform Notebooks to run the classification model with pandas library.
  4. Use AI Platform to run the classification model job configured for hyperparameter tuning.

Answer(s): A



You work for a public transportation company and need to build a model to estimate delay times for multiple transportation routes. Predictions are served directly to users in an app in real time. Because different seasons and population increases impact the data relevance, you will retrain the model every month. You want to follow Google-recommended best practices. How should you configure the end-to-end architecture of the predictive model?

  1. Configure Kubeflow Pipelines to schedule your multi-step workflow from training to deploying your model.
  2. Use a model trained and deployed on BigQuery ML, and trigger retraining with the scheduled query feature in BigQuery.
  3. Write a Cloud Functions script that launches a training and deploying job on AI Platform that is triggered by Cloud Scheduler.
  4. Use Cloud Composer to programmatically schedule a Dataflow job that executes the workflow from training to deploying your model.

Answer(s): A



Page 2 of 69



Post your Comments and Discuss Google Professional Machine Learning Engineer exam with other Community members:

Tina commented on April 09, 2024
Good questions
Anonymous
upvote

Kavah commented on September 29, 2021
Very responsive and cool support team.
UNITED KINGDOM
upvote