Course Content
Data Storage
Understanding and utilizing Amazon storage services like Amazon S3, Amazon Redshift, and Amazon DynamoDB for efficient data storage.
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Data Ingestion
Strategies and tools for collecting and importing data from various sources into the Amazon ecosystem.
Data Transformation
Techniques and tools for transforming raw data into a format suitable for analysis and processing, such as using AWS Glue, Apache Spark, or AWS Data Pipeline.
Data Catalogs
Building and managing data catalogs using tools like AWS Glue Data Catalog to provide a centralized view of data assets.
Data Modeling
Designing and implementing data models to support the analytical and reporting needs of the organization, collaborating with data architects and analysts
Data Warehousing
Building and optimizing data warehouses using Amazon Redshift, including schema design, data distribution, and query performance tuning.
Streaming Data Processing:
Handling and processing real-time streaming data using frameworks like Apache Kafka, Amazon Kinesis, or AWS Lambda.
Big Data Technologies
Leveraging Amazon EMR (Elastic MapReduce), Amazon Athena, and AWS Glue to process and analyze large volumes of data.
Data Pipeline Orchestration
Designing and managing data pipelines using AWS Data Pipeline or AWS Step Functions for efficient data flow across various stages.
Monitoring and Performance Optimization:
Monitoring data pipelines, storage, and processing systems, and optimizing performance using monitoring tools and techniques.
Machine Learning Integration:
Integrating machine learning capabilities into data pipelines using services like Amazon SageMaker or AWS Glue for advanced data analysis and predictions.
Data Versioning and Lineage:
Tracking data versioning and lineage information to understand the origin and impact of data changes using tools like AWS Glue DataBrew or third-party solutions.
Data Security:
Implementing data security measures such as encryption, access controls, and data classification using AWS services like AWS Key Management Service (KMS) or AWS Identity and Access Management (IAM).
Data Migration:
Planning and executing data migration strategies to move data from on-premises environments to AWS using services like AWS Database Migration Service (DMS).
Serverless Data Processing:
Leveraging AWS Lambda, AWS Glue, and other serverless services for data processing tasks without the need for infrastructure management.
Data Archiving and Backup:
Implementing data archiving and backup strategies using services like Amazon Glacier, AWS Backup, or other AWS storage solutions.
AWS – Data Engineering
About Lesson

Amazon Aurora is a fully managed MySQL and PostgreSQL-compatible relational database engine. It provides the performance and availability of commercial databases with the simplicity and cost-effectiveness of open-source databases. Aurora uses a distributed architecture and is designed for high performance, scalability, and durability. It offers features such as automatic scaling, read replicas, point-in-time recovery, and automated backups. Aurora delivers fast query performance and is well-suited for mission-critical applications that require high availability and scalability.

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