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An ML engineer is tuning an image classification model that performs poorly on one of two classes. The poorly performing class represents an extremely small fraction of the training dataset.

Which solution will improve the model’s performance?

A.

Optimize for accuracy. Use image augmentation on the less common images.

B.

Optimize for F1 score. Use image augmentation on the less common images.

C.

Optimize for accuracy. Use SMOTE to generate synthetic images.

D.

Optimize for F1 score. Use SMOTE to generate synthetic images.

A company is developing an ML model to forecast future values based on time series data. The dataset includes historical measurements collected at regular intervals and categorical features. The model needs to predict future values based on past patterns and trends.

Which algorithm and hyperparameters should the company use to develop the model?

A.

Use the Amazon SageMaker AI XGBoost algorithm. Set the scale_pos_weight hyperparameter to adjust for class imbalance.

B.

Use k-means clustering with k to specify the number of clusters.

C.

Use the Amazon SageMaker AI DeepAR algorithm with matching context length and prediction length hyperparameters.

D.

Use the Amazon SageMaker AI Random Cut Forest (RCF) algorithm with contamination to set the expected proportion of anomalies.