A media company wants to perform machine learning and analytics on the data residing in its Amazon S3 data lake. There are two data transformation requirements that will enable the consumers within the company to create reports: ✑ Daily transformations of 300 GB of data with different file formats landing in Amazon S3 at a scheduled time. ✑ One-time transformations of terabytes of archived data residing in the S3 data lake. Which combination of solutions cost-effectively meets the company's requirements for transforming the data? (Choose three.) A. For daily incoming data, use AWS Glue crawlers to scan and identify the schema. B. For daily incoming data, use Amazon Athena to scan and identify the schema. C. For daily incoming data, use Amazon Redshift to perform transformations. D. For daily incoming data, use AWS Glue workflows with AWS Glue jobs to perform transformations. E. For archived data, use Amazon EMR to perform data transformations. F. For archived data, use Amazon SageMaker to perform data transformations. Suggested Answer: BCD Community Answer: ADE This question is in DAS-C01 AWS Certified Data Analytics – Specialty Exam For getting AWS Certified Data Analytics – Specialty Certificate Disclaimers: The website is not related to, affiliated with, endorsed or authorized by Amazon. Trademarks, certification & product names are used for reference only and belong to Amazon. The website does not contain actual questions and answers from Amazon's Certification Exam.
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