Become Google Certified with updated Professional-Machine-Learning-Engineer exam questions and correct answers
You are training an object detection machine learning model on a dataset that consists of three million X-ray images, each roughly 2 GB in size. You are using Vertex AI Training to run a custom training application on a Compute Engine instance with 32-cores, 128 GB of RAM, and 1 NVIDIA P100 GPU. You notice that model training is taking a very long time. You want to decrease training time without sacrificing model performance. What should you do?

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?
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?
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