这是我自己的Flink中文社区翻译稿存储仓库,用于提供给需要朋友进行二次创作。同时提供Flink一些课外的相关知识文档供大家学习
-
Updated
Dec 1, 2024
这是我自己的Flink中文社区翻译稿存储仓库,用于提供给需要朋友进行二次创作。同时提供Flink一些课外的相关知识文档供大家学习
Elastic data processing with Apache Pulsar and Apache Flink
Flink Tutorial Project
Http Connector for Apache Flink. Provides sources and sinks for Datastream , Table and SQL APIs.
This repository provides Scotty, a framework for efficient window aggregations for out-of-order Stream Processing.
🌟 Examples of use cases that utilize Decodable, as well as demos for related open-source projects such as Apache Flink, Debezium, and Postgres.
Examples of Flink on Azure
Apache Flink Guide
Collection of code examples for Amazon Managed Service for Apache Flink
Different ways to process data into Cassandra in realtime with technologies such as Kafka, Spark, Akka, Flink
Streaming machine learning using PyTorch, Flink, and ONNX
Sample project for Apache Flink with Streaming Engine and JDBC Sink
Amazon Managed Service for Apache Flink Benchmarking Utility helps with capacity planning, integration testing, and benchmarking of Amazon Managed Service for Apache Flink applications.
A Flink applcation that demonstrates reading and writing to/from Apache Kafka with Apache Flink
A sample implementation of stream writes to an Iceberg table on GCS using Flink and reading it using Trino
🚀 Traffic Sentinel: A scalable IoT system using Fog nodes and Apache Flink to process 📷 IP camera streams, powered by YOLO for intelligent 🚗 traffic monitoring on highways. 🛣️
Kinesis Data Analytics Blueprints are a curated collection of Apache Flink applications. Each blueprint will walk you through how to solve a practical problem related to stream processing using Apache Flink. These blueprints can be leveraged to create more complex applications to solve your business challenges in Apache Flink.
Demo Flink and Kafka project to show how to react on tracking events in real-time and trigger offer for customer engagement based on campaign configurations. The project also utilizes the Broadcast State Pattern in order to update the rules (campaigns) at runtime without restarting the project, using a dedicated, low-frequency, Kafka topic.
Add a description, image, and links to the flink-stream-processing topic page so that developers can more easily learn about it.
To associate your repository with the flink-stream-processing topic, visit your repo's landing page and select "manage topics."