Summer Special Sale Limited Time 65% Discount Offer - Ends in 0d 00h 00m 00s - Coupon code: vce65

A data scientist wants to use Amazon Forecast to build a forecasting model for inventory...

A data scientist wants to use Amazon Forecast to build a forecasting model for inventory demand for a retail company. The company has provided a dataset of historic inventory demand for its products as a .csv file stored in an Amazon S3 bucket. The table below shows a sample of the dataset.

How should the data scientist transform the data?

A.

Use ETL jobs in AWS Glue to separate the dataset into a target time series dataset and an item metadata dataset. Upload both datasets as .csv files to Amazon S3.

B.

Use a Jupyter notebook in Amazon SageMaker to separate the dataset into a related time series dataset and an item metadata dataset. Upload both datasets as tables in Amazon Aurora.

C.

Use AWS Batch jobs to separate the dataset into a target time series dataset, a related time series dataset, and an item metadata dataset. Upload them directly to Forecast from a local machine.

D.

Use a Jupyter notebook in Amazon SageMaker to transform the data into the optimized protobuf recordIO format. Upload the dataset in this format to Amazon S3.

Amazon Web Services MLS-C01 Summary

  • Vendor: Amazon Web Services
  • Product: MLS-C01
  • Update on: Jul 28, 2025
  • Questions: 330
Price: $52.5  $149.99
Buy Now MLS-C01 PDF + Testing Engine Pack

Payments We Accept

Your purchase with ExamsVCE is safe and fast. Your products will be available for immediate download after your payment has been received.
The ExamsVCE website is protected by 256-bit SSL from McAfee, the leader in online security.

examsvce payment method