* Update spark@UljuqA89_SlCSDWWMD_C_.md * Update src/data/roadmaps/mlops/content/spark@UljuqA89_SlCSDWWMD_C_.md * Update flink@o6GQ3-8DgDtHzdX6yeg1w.md --------- Co-authored-by: Arik Chakma <arikchangma@gmail.com>pull/7137/head
parent
1d772af10a
commit
d2a44fbe75
1 changed files with 2 additions and 1 deletions
@ -1,8 +1,9 @@ |
||||
# Flink |
||||
|
||||
Apache Flink is a distributed stream processing framework that is used to process large amounts of data in real-time. It is designed to be highly scalable and fault-tolerant. Flink is built on top of the Apache Kafka messaging system and is used to process data streams in real-time. |
||||
Apache Flink is an open-source stream processing framework designed for real-time and batch data processing with low latency and high throughput. It supports event time processing, fault tolerance, and stateful operations, making it ideal for applications like real-time analytics, fraud detection, and event-driven systems. Flink is highly scalable, integrates with various data systems, and is widely used in industries for large-scale, real-time data processing tasks. |
||||
|
||||
Visit the following resources to learn more: |
||||
|
||||
- [@article@Apache Flink Documentation](https://flink.apache.org/) |
||||
- [@feed@Explore top posts about Apache Flink](https://app.daily.dev/tags/apache-flink?ref=roadmapsh) |
||||
-[@reference@Apache Flink Tutorialpoint](https://www.tutorialspoint.com/apache_flink/apache_flink_introduction.htm) |
||||
|
Loading…
Reference in new issue