Become Google Certified with updated Professional-Machine-Learning-Engineer exam questions and correct answers
You built a deep learning-based image classification model by using on-premises data. You want to use Vertex
Al to deploy the model to production Due to security concerns you cannot move your data to the cloud. You
are aware that the input data distribution might change over time You need to detect model performance
changes in production. 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 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?
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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