Become Google Certified with updated Professional-Machine-Learning-Engineer exam questions and correct answers
You work for an organization that operates a streaming music service. You have a custom production model
that is serving a "next song" recommendation based on a user’s recent listening history. Your model is
deployed on a Vertex Al endpoint. You recently retrained the same model by using fresh data. The model
received positive test results offline. You now want to test the new model in production while minimizing
complexity. 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?
You work for a food product company. Your company’s historical sales data is stored in BigQuery.You need to use Vertex AI’s custom training service to train multiple TensorFlow models that read the data from BigQuery and predict future sales. You plan to implement a data preprocessing algorithm that performs mm-max scaling and bucketing on a large number of features before you start experimenting with the models. You want to minimize preprocessing time, cost, and development effort. How should you configure this workflow?
You work for a large social network service provider whose users post articles and discuss news. Millions of comments are posted online each day, and more than 200 human moderators constantly review comments and flag those that are inappropriate. Your team is building an ML model to help human moderators check content on the platform. The model scores each comment and flags suspicious comments to be reviewed by a human. Which metric(s) should you use to monitor the model’s performance?
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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