Become Google Certified with updated Professional-Machine-Learning-Engineer exam questions and correct answers
You work for a bank. You have created a custom model to predict whether a loan application should be flagged for human review. The input features are stored in a BigQuery table. The model is performing well, and you plan to deploy it to production. Due to compliance requirements the model must provide explanations for each prediction. You want to add this functionality to your model code with minimal effort and provide explanations that are as accurate as possible. What should you do?
You are building a linear model with over 100 input features, all with values between -1 and 1. You suspect
that many features are non-informative. You want to remove the non-informative features from your model
while keeping the informative ones in their original form. Which technique should you use?
You work for a bank You have been asked to develop an ML model that will support loan application
decisions. You need to determine which Vertex Al services to include in the workflow You want to track the
model's training parameters and the metrics per training epoch. You plan to compare the performance of each
version of the model to determine the best model based on your chosen metrics. Which Vertex Al services
should you use?
You recently designed and built a custom neural network that uses critical dependencies specific to your organization’s framework. You need to train the model using a managed training service on Google Cloud. However, the ML framework and related dependencies are not supported by AI Platform Training. Also, both your model and your data are too large to fit in memory on a single machine. Your ML framework of choice uses the scheduler, workers, and servers distribution structure. What should you do?
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