Become Google Certified with updated Professional-Machine-Learning-Engineer exam questions and correct answers
You work at a bank. You need to develop a credit risk model to support loan application decisions You decide
to implement the model by using a neural network in TensorFlow Due to regulatory requirements, you need to
be able to explain the models predictions based on its features When the model is deployed, you also want to
monitor the model's performance overtime You decided to use Vertex Al for both model development and
deployment What should you do?
You work at a large organization that recently decided to move their ML and data workloads to Google Cloud. The data engineering team has exported the structured data to a Cloud Storage bucket in Avro format. You need to propose a workflow that performs analytics, creates features, and hosts the features that your ML models use for online prediction. How should you configure the pipeline?
You have developed a BigQuery ML model that predicts customer churn and deployed the model to Vertex Al
Endpoints. You want to automate the retraining of your model by using minimal additional code when model
feature values change. You also want to minimize the number of times that your model is retrained to reduce
training costs. What should you do?
You work for a retail company that is using a regression model built with BigQuery ML to predict product
sales. This model is being used to serve online predictions Recently you developed a new version of the model
that uses a different architecture (custom model) Initial analysis revealed that both models are performing as
expected You want to deploy the new version of the model to production and monitor the performance over
the next two months You need to minimize the impact to the existing and future model users How should you
deploy the model?
You work for a large social network service provider whose users post articles and discuss news. Millions of comments are posted online each day, and more than 200 human moderators constantly review comments and flag those that are inappropriate. Your team is building an ML model to help human moderators check content on the platform. The model scores each comment and flags suspicious comments to be reviewed by a human. Which metric(s) should you use to monitor the model’s performance?
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