A financial services company wants to adopt Amazon SageMaker as its default data science environment. The company's data scientists run machine learning (ML) models on confidential financial data. The company is worried about data egress and wants an ML engineer to secure the environment.Which mechanisms can the ML engineer use to control data egress from SageMaker? (Choose three.)
A. Amazon EMR for data discovery, enrichment, and transformation-Amazon Athena for querying and analyzing the results in Amazon S3 using standard SQL-Amazon QuickSight for reporting and getting insights
B. Amazon Kinesis Data Analytics for data ingestion-Amazon EMR for data discovery, enrichment, and transformation-Amazon Redshift for querying and analyzing the results in Amazon S3
C. AWS Glue for data discovery, enrichment, and transformation-Amazon Athena for querying and analyzing the results in Amazon S3 using standard SQL-Amazon QuickSight for reporting and getting insights
D. AWS Data Pipeline for data transfer-AWS Step Functions for orchestrating AWS Lambda jobs for data discovery, enrichment, and transformation-Amazon Athena for querying and analyzing the results in Amazon S3 using standard SQL-Amazon QuickSight for reporting and getting insights