Skip to content

jastis77/awesome-compose

This branch is 143 commits behind docker/awesome-compose:master.

Folders and files

NameName
Last commit message
Last commit date
Mar 27, 2020
Mar 23, 2020
Apr 6, 2020
Mar 23, 2020
Jun 5, 2020
Apr 8, 2020
Mar 29, 2020
Mar 18, 2020
Mar 19, 2020
Mar 23, 2020
Mar 23, 2020
Apr 12, 2020
Mar 23, 2020
Apr 12, 2020
Apr 14, 2020
May 13, 2020
Mar 25, 2020
Mar 24, 2020
Mar 27, 2020
Mar 23, 2020
Mar 23, 2020
Apr 8, 2020
Apr 7, 2020
Jun 5, 2020
Mar 18, 2020
Feb 12, 2020
Mar 27, 2020
Mar 26, 2020
Mar 27, 2020
Apr 7, 2020
Feb 12, 2020

Repository files navigation

Awesome Compose Awesome

logo

A curated list of Docker Compose samples.

These samples provide a starting point for how to integrate different services using a Compose file and to manage their deployment with Docker Compose.

Contents

Samples of Docker Compose applications with multiple integrated services

Single service samples

Basic setups for different platforms (not production ready - useful for personal use)

Getting started

These instructions will get you through the bootstrap phase of creating and deploying samples of containerized applications with Docker Compose.

Prerequisites

Running a sample

The root directory of each sample contains the docker-compose.yaml which describes the configuration of service components. All samples can be run in a local environment by going into the root directory of each one and executing:

docker-compose up -d

Check the README.md of each sample to get more details on the structure and what is the expected output. To stop and remove the all containers of the sample application run:

docker-compose down

Contribute

We welcome examples that help people understand how to use Docker Compose for common applications. Check the Contribution Guide for more details.

About

Awesome Docker Compose samples

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • HTML 43.2%
  • TypeScript 13.7%
  • Dockerfile 7.4%
  • Java 7.3%
  • Python 6.9%
  • CSS 4.3%
  • Other 17.2%