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 subscription-based company. You have trained an ensemble of trees and neural networks to predict customer churn, which is the likelihood that customers will not renew their yearly subscription. The average prediction is a 15% churn rate, but for a particular customer the model predicts that they are 70% likely to churn. The customer has a product usage history of 30%, is located in New York City, and became a customer in 1997. You need to explain the difference between the actual prediction, a 70% churn rate, and the average prediction. You want to use Vertex Explainable AI. What should you do?
You work on a team that builds state-of-the-art deep learning models by using the TensorFlow framework. Your team runs multiple ML experiments each week which makes it difficult to track the experiment runs.
You want a simple approach to effectively track, visualize and debug ML experiment runs on Google Cloud
while minimizing any overhead code. How should you proceed?
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