This repository provides a command line interface (CLI) utility that replicates an Amazon Managed Workflows for Apache Airflow (MWAA) environment locally.
The CLI builds a Docker container image locally that’s similar to a MWAA production image. This allows you to run a local Apache Airflow environment to develop and test DAGs, custom plugins, and dependencies before deploying to MWAA.
dags/
requirements.txt
tutorial.py
docker/
.gitignore
mwaa-local-env
README.md
config/
airflow.cfg
constraints.txt
requirements.txt
webserver_config.py
script/
bootstrap.sh
entrypoint.sh
systemlibs.sh
generate_key.sh
docker-compose-dbonly.yml
docker-compose-local.yml
docker-compose-sequential.yml
Dockerfile
- macOS: Install Docker Desktop.
- Linux/Ubuntu: Install Docker Compose and Install Docker Engine.
- Windows: Windows Subsystem for Linux (WSL) to run the bash based command
mwaa-local-env
. Please follow Windows Subsystem for Linux Installation (WSL) and Using Docker in WSL 2, to get started.
git clone https://github.com/aws/aws-mwaa-local-runner.git
cd aws-mwaa-local-runner
Build the Docker container image using the following command:
./mwaa-local-env build-image
Note: it takes several minutes to build the Docker image locally.
Run Apache Airflow using one of the following database backends.
Runs a local Apache Airflow environment that is a close representation of MWAA by configuration.
./mwaa-local-env start
To stop the local environment, Ctrl+C on the terminal and wait till the local runner and the postgres containers are stopped.
By default, the bootstrap.sh
script creates a username and password for your local Airflow environment.
- Username:
admin
- Password:
test
- Open the Apache Airlfow UI: http://localhost:8080/.
The following section describes where to add your DAG code and supporting files. We recommend creating a directory structure similar to your MWAA environment.
- Add DAG code to the
dags/
folder. - To run the sample code in this repository, see the
tutorial.py
file.
- Add Python dependencies to
dags/requirements.txt
. - To test a requirements.txt without running Apache Airflow, use the following script:
./mwaa-local-env test-requirements
Let's say you add aws-batch==0.6
to your dags/requirements.txt
file. You should see an output similar to:
Installing requirements.txt
Collecting aws-batch (from -r /usr/local/airflow/dags/requirements.txt (line 1))
Downloading https://files.pythonhosted.org/packages/5d/11/3aedc6e150d2df6f3d422d7107ac9eba5b50261cf57ab813bb00d8299a34/aws_batch-0.6.tar.gz
Collecting awscli (from aws-batch->-r /usr/local/airflow/dags/requirements.txt (line 1))
Downloading https://files.pythonhosted.org/packages/07/4a/d054884c2ef4eb3c237e1f4007d3ece5c46e286e4258288f0116724af009/awscli-1.19.21-py2.py3-none-any.whl (3.6MB)
100% |████████████████████████████████| 3.6MB 365kB/s
...
...
...
Installing collected packages: botocore, docutils, pyasn1, rsa, awscli, aws-batch
Running setup.py install for aws-batch ... done
Successfully installed aws-batch-0.6 awscli-1.19.21 botocore-1.20.21 docutils-0.15.2 pyasn1-0.4.8 rsa-4.7.2
- Create a directory at the root of this repository, and change directories into it. This should be at the same level as
dags/
anddocker
. For example:
mkdir plugins
cd plugins
- Create a file for your custom plugin. For example:
virtual_python_plugin.py
- (Optional) Add any Python dependencies to
dags/requirements.txt
.
Note: this step assumes you have a DAG that corresponds to the custom plugin. For examples, see MWAA Code Examples.
- Learn how to upload the requirements.txt file to your Amazon S3 bucket in Installing Python dependencies.
- Learn how to upload the DAG code to the dags folder in your Amazon S3 bucket in Adding or updating DAGs.
- Learn more about how to upload the plugins.zip file to your Amazon S3 bucket in Installing custom plugins.
The following section contains common questions and answers you may encounter when using your Docker container image.
- You can setup the local Airflow's boto with the intended execution role to test your DAGs with AWS operators before uploading to your Amazon S3 bucket. To setup aws connection for Airflow locally see Airflow | AWS Connection To learn more, see Amazon MWAA Execution Role.
- A
requirements.txt
file is included in the/dags
folder of your local Docker container image. We recommend adding libraries to this file, and running locally.
- If a library is not available in the Python Package Index (PyPi.org), add the
--index-url
flag to the package in yourdags/requirements.txt
file. To learn more, see Managing Python dependencies in requirements.txt.
The following section contains errors you may encounter when using the Docker container image in this repository.
- If you encountered the following error:
process fails with "dag_stats_table already exists"
, you'll need to reset your database using the following command:
./mwaa-local-env reset-db
A Fernet Key is generated during image build (./mwaa-local-env build-image
) and is durable throughout all
containers started from that image. This key is used to encrypt connection passwords in the Airflow DB.
If changes are made to the image and it is rebuilt, you may get a new key that will not match the key used when
the Airflow DB was initialized, in this case you will need to reset the DB (./mwaa-local-env reset-db
).
See CONTRIBUTING for more information.
This library is licensed under the MIT-0 License. See the LICENSE file.