Multiple Choice
A financial company uses Amazon S3 as its data lake and has set up a data warehouse using a multi-node Amazon Redshift cluster. The data files in the data lake are organized in folders based on the data source of each data file. All the data files are loaded to one table in the Amazon Redshift cluster using a separate COPY command for each data file location. With this approach, loading all the data files into Amazon Redshift takes a long time to complete. Users want a faster solution with little or no increase in cost while maintaining the segregation of the data files in the S3 data lake. Which solution meets these requirements?
A) Use Amazon EMR to copy all the data files into one folder and issue a COPY command to load the data into Amazon Redshift.
B) Load all the data files in parallel to Amazon Aurora, and run an AWS Glue job to load the data into Amazon Redshift.
C) Use an AWS Glue job to copy all the data files into one folder and issue a COPY command to load the data into Amazon Redshift.
D) Create a manifest file that contains the data file locations and issue a COPY command to load the data into Amazon Redshift.
Correct Answer:

Verified
Correct Answer:
Verified
Q70: An online retailer needs to deploy a
Q71: A financial company hosts a data lake
Q72: A company that produces network devices has
Q73: A marketing company wants to improve its
Q74: A large university has adopted a strategic
Q76: A company is hosting an enterprise reporting
Q77: An online retail company with millions of
Q78: An online retail company is migrating its
Q79: A transport company wants to track vehicular
Q80: A marketing company is using Amazon EMR