Fast, Cheap and Easy Data Ingestion with AWS Lambda and Delta Lake
Offered By: Databricks via YouTube
Course Description
Overview
Explore how to leverage AWS Lambda and Delta Lake for efficient data ingestion and processing in this 31-minute conference talk. Dive into practical examples of working with Delta tables using AWS Lambdas written in Python and Rust. Learn how Lambda's fast, easy, and cost-effective execution environment can be triggered by various services like Kinesis, SQS, Kafka, and S3 Event Notifications to transform your data platform from batch processing to event-driven architecture. Discover techniques for exploring the transaction log, writing updates, performing table maintenance, and querying Delta tables in milliseconds using native Python or Rust libraries. Gain insights to incorporate Lambda into existing AWS-based data platforms, enabling a more responsive and efficient data processing workflow.
Syllabus
Fast, Cheap and Easy Data Ingestion with AWS Lambda and Delta Lake
Taught by
Databricks
Related Courses
Distributed Computing with Spark SQLUniversity of California, Davis via Coursera Apache Spark (TM) SQL for Data Analysts
Databricks via Coursera Building Your First ETL Pipeline Using Azure Databricks
Pluralsight Implement a data lakehouse analytics solution with Azure Databricks
Microsoft via Microsoft Learn Perform data science with Azure Databricks
Microsoft via Microsoft Learn