Skip to content

Apache Kafka and Confluent Platform examples and demos

License

Notifications You must be signed in to change notification settings

aweagel/confluent_examples

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

image

Demos

This is a curated list of demos that showcase Apache Kafka® event stream processing on the Confluent Platform, an event stream processing platform that enables you to process, organize, and manage massive amounts of streaming data across cloud, on-prem, and serverless deployments.

Where to start

The best demo to start with is cp-demo which spins up a Kafka event streaming application using KSQL for stream processing, with many security features enabled, in an end-to-end streaming ETL pipeline with a source connector pulling from live data and a sink connector connecting to Elasticsearch and Kibana for visualizations. cp-demo also comes with a tutorial and is a great configuration reference for Confluent Platform.

Full demo list

Confluent Cloud

Demo Local Docker Description
Beginner Cloud Y N Fully scripted demo that shows how to interact with your Confluent Cloud cluster and set ACLs using the CLI
Clients to Cloud Y N Client applications in different programming languages connecting to Confluent Cloud
Cloud ETL Y N Cloud ETL solution using fully-managed Confluent Cloud connectors and fully-managed KSQL
On-Prem Kafka to Cloud Y Y This more advanced demo showcases an on-prem Kafka cluster and Confluent Cloud cluster, and data copied between them with Confluent Replicator
GKE to Cloud N Y Uses Google Kubernetes Engine, Confluent Cloud, and Confluent Replicator to explore a multicloud deployment
GCP pipeline N Y Work with Confluent Cloud to build cool pipelines into Google Cloud Platform (GCP)

Stream Processing

Demo Local Docker Description
Clickstream Y Y Automated version of the KSQL clickstream demo
Kafka Tutorials Y Y Collection of common event streaming use cases, with each tutorial featuring an example scenario and several complete code solutions
KSQL UDF Y N Advanced KSQL User-Defined Function (UDF) use case for connected cars
KSQL workshop N Y showcases Kafka event stream processing using KSQL and can run self-guided as a KSQL workshop
Microservices ecosystem Y N Microservices orders Demo Application integrated into the Confluent Platform
Music demo Y Y KSQL version of the Kafka Streams Demo Application

Data Pipelines

Demo Local Docker Description
CDC with MySQL N Y Self-paced steps to set up a change data capture (CDC) pipeline
CDC with Postgres N Y Enrich event stream data with CDC data from Postgres and then stream into Elasticsearch
Clients Y N Client applications in different programming languages
Connect and Kafka Streams Y N Demonstrate various ways, with and without Kafka Connect, to get data into Kafka topics and then loaded for use by the Kafka Streams API
MQTT Y N Internet of Things (IoT) integration example using Apache Kafka + Kafka Connect + MQTT Connector + Sensor Data
MySQL and Debezium Y Y End-to-end streaming ETL with KSQL for stream processing using the Debezium Connector for MySQL
Syslog N Y Real-time syslog processing with Apache Kafka and KSQL: filtering logs, event-driven alerting, and enriching events

Confluent Platform

Demo Local Docker Description
Avro Y N Client applications using Avro and Confluent Schema Registry
CP Demo Y Y Confluent Platform demo (cp-demo) with a tutorial for Kafka event streaming ETL deployments
Kubernetes N Y Demonstrations of Confluent Platform deployments using the Confluent Operator
Multi Datacenter N Y Active-active multi-datacenter design with two instances of Confluent Replicator copying data bidirectionally between the datacenters
Multi Region Replication N Y Multi-region replication with follower fetching, observers, and replica placement
Quickstart Y Y Automated version of the Confluent Platform Quickstart
Role-Based Access Control Y Y Role-based Access Control (RBAC) provides granular privileges for users and service accounts
Secret Protection Y Y Secret Protection feature encrypts secrets in configuration files
Replicator Security N Y Demos of various security configurations supported by Confluent Replicator and examples of how to implement them

Build Your Own

As a next step, you may want to build your own custom demo or test environment. We have several resources that launch just the services in Confluent Platform with no pre-configured connectors, data sources, topics, schemas, etc. Using these as a foundation, you can then add any connectors or applications.

  • cp-all-in-one: This Docker Compose file launches all services in Confluent Platform, and runs them in containers in your local host.
  • cp-all-in-one-community: This Docker Compose file launches only the community services in Confluent Platform, and runs them in containers in your local host.
  • cp-all-in-one-cloud: Use this with your pre-configured Confluent Cloud instance. This Docker Compose file launches all services in Confluent Platform (except for the Kafka brokers), runs them in containers in your local host, and automatically configures them to connect to Confluent Cloud.
  • Confluent CLI: For local, non-Docker installs of Confluent Platform. Using this CLI, you can launch all services in Confluent Platform with just one command confluent local start, and they will all run on your local host.
  • Generate test data: "Hello, World!" for launching Confluent Platform, plus different ways to generate more interesting test data for your topics

Additional documentation: Getting Started

Prerequisites

For local installs:

  • Download Confluent Platform 5.4
  • Env var CONFLUENT_HOME=/path/to/confluentplatform
  • Env var PATH includes $CONFLUENT_HOME/bin
  • Each demo has its own set of prerequisites as well, documented individually in each demo

For Docker: demos have been validated with

About

Apache Kafka and Confluent Platform examples and demos

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • TSQL 37.9%
  • Shell 28.5%
  • Java 12.2%
  • C 5.5%
  • Python 4.2%
  • Makefile 3.1%
  • Other 8.6%