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An ML engineer is using Amazon SageMaker AI to train an ML model.

An ML engineer is using Amazon SageMaker AI to train an ML model. The ML engineer needs to use SageMaker AI automatic model tuning (AMT) features to tune the model hyperparameters over a large parameter space.

The model has 20 categorical hyperparameters and 7 continuous hyperparameters that can be tuned. The ML engineer needs to run the tuning job a maximum of 1,000 times. The ML engineer must ensure that each parameter trial is built based on the performance of the previous trial.

Which solution will meet these requirements?

A.

Define the search space as categorical parameters of 1,000 possible combinations. Use grid search.

B.

Define the search space as continuous parameters. Use random search. Set the maximum number of tuning jobs to 1,000.

C.

Define the search space as categorical parameters and continuous parameters. Use Bayesian optimization. Set the maximum number of training jobs to 1,000.

D.

Define the search space as categorical parameters and continuous parameters. Use grid search. Set the maximum number of tuning jobs to 1,000.

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