Shift left to write data once, read as tables or streams

Shift left to write data once, read as tables or streams

10.605 Lượt nghe
Shift left to write data once, read as tables or streams
Shift Left is a rethink of how we circulate, share and manage data in our organizations using DataStreams, Change Data Capture, FlinkSQL and Tableflow. It addresses the challenges with multi-hop and medallion architectures using batch pipelines by shifting the data preparation, cleaning and schemas to the point where data is created and as a result, you can build fresh trustworthy datasets as streams for operational use cases or Apache Iceberg tables for analytical use cases. For more information and resources on Shift Left, go here: https://cnfl.io/3Zk0oia RELATED RESOURCES ► Read more about building data products as close to the source as possible, which unlocks both near-real-time and batch-based use cases: https://cnfl.io/3XhswQh ► Checkout the playlist "Data Architecture Basics with Adam Bellemare" for more videos like this one: https://www.youtube.com/playlist?list=PLa7VYi0yPIH0QypJnW0OXOnbLvzJRP34C CHAPTERS 0:00 - Introduction 01:05 - Multi-Hop & Medallion Architectures 04:06 - The Problems with Multi-Hop 08:26 - Shift Left with Streams and Tables 12:37 - Plugging in Data 13:57 - Data Evolution and Consistency 16:05 - Conclusion – ABOUT CONFLUENT Confluent is pioneering a fundamentally new category of data infrastructure focused on data in motion. Confluent’s cloud-native offering is the foundational platform for data in motion – designed to be the intelligent connective tissue enabling real-time data, from multiple sources, to constantly stream across the organization. With Confluent, organizations can meet the new business imperative of delivering rich, digital front-end customer experiences and transitioning to sophisticated, real-time, software-driven backend operations. To learn more, please visit www.confluent.io. #apachekafka #kafka #confluent