Become Google Certified with updated Professional-Machine-Learning-Engineer exam questions and correct answers
Your team has been tasked with creating an ML solution in Google Cloud to classify support requests for one of your platforms. You analyzed the requirements and decided to use TensorFlow to build the classifier so that you have full control of the model's code, serving, and deployment. You will use Kubeflow pipelines for the ML platform. To save time, you want to build on existing resources and use managed services instead of building a completely new model. How should you build the classifier?
You are training an ML model on a large dataset. You are using a TPU to accelerate the training process You
notice that the training process is taking longer than expected. You discover that the TPU is not reaching its
full capacity. What should you do?
You work for a retail company. You have a managed tabular dataset in Vertex Al that contains sales data from
three different stores. The dataset includes several features such as store name and sale timestamp. You want
to use the data to train a model that makes sales predictions for a new store that will open soon You need to
split the data between the training, validation, and test sets What approach should you use to split the data?
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