Amazon Web Services

In this 'Back to Basics' video, Orit Alul explores the fundamentals of data lake and lake house patterns. She discusses the exponential growth of data from various sources and the need for efficient, cost-effective analysis. Orit covers key concepts including data ingestion using Amazon Kinesis Data Firehose, data format optimization, partitioning, and compaction. She explains how to use AWS services like Glue, Athena, QuickSight, and Redshift to build a lake house architecture that combines the flexibility of a data lake with the performance of purpose-built analytics services. This comprehensive overview provides insights into managing and analyzing large-scale data effectively in the cloud.

product-information
skills-and-how-to
data
analytics
databases
Show 5 more

Up Next

VideoThumbnail
14:40

Amazon Aurora MySQL Zero-ETL Integration with Amazon Redshift: Public Preview Demo and Setup Guide

Nov 22, 2024
VideoThumbnail
58:49

AWS Clean Rooms ML and Differential Privacy: Revolutionizing Secure Data Collaboration

Nov 22, 2024
VideoThumbnail
31:20

Enhancing Security Operations with Amazon OpenSearch Service: Introducing Security Analytics for Efficient Threat Detection and Investigation

Nov 22, 2024
VideoThumbnail
43:12

Amazon ECR Unveiled: Architecture, Features, and Scalability for Container Image Management

Nov 22, 2024
VideoThumbnail
52:11

Firewalls in AWS: Types, Placement Strategies, and Best Practices for Cloud Security

Nov 22, 2024