Multiple Choice
A large consumer goods manufacturer has the following products on sale: • 34 different toothpaste variants • 48 different toothbrush variants • 43 different mouthwash variants The entire sales history of all these products is available in Amazon S3. Currently, the company is using custom-built autoregressive integrated moving average (ARIMA) models to forecast demand for these products. The company wants to predict the demand for a new product that will soon be launched. Which solution should a Machine Learning Specialist apply?
A) Train a custom ARIMA model to forecast demand for the new product.
B) Train an Amazon SageMaker DeepAR algorithm to forecast demand for the new product.
C) Train an Amazon SageMaker k-means clustering algorithm to forecast demand for the new product.
D) Train a custom XGBoost model to forecast demand for the new product.
Correct Answer:

Verified
Correct Answer:
Verified
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