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Airflow Docker images

Airflow has two main images (build from Dockerfiles):

  • Production image (Dockerfile) - that can be used to build your own production-ready Airflow installation. You can read more about building and using the production image in the Docker stack documentation. The image is built using Dockerfile.
  • CI image (Dockerfile.ci) - used for running tests and local development. The image is built using Dockerfile.ci.

PROD image

The PROD image is a multi-segment image. The first segment airflow-build-image contains all the build essentials and related dependencies that allow to install airflow locally. By default the image is built from a released version of Airflow from GitHub, but by providing some extra arguments you can also build it from local sources. This is particularly useful in CI environment where we are using the image to run Kubernetes tests. See below for the list of arguments that should be provided to build production image from the local sources.

The image is primarily optimised for size of the final image, but also for speed of rebuilds - the airflow-build-image segment uses the same technique as the CI jobs for pre-installing dependencies. It first pre-installs them from the right GitHub branch and only after that final airflow installation is done from either local sources or remote location (PyPI or GitHub repository).

You can read more details about building, extending and customizing the PROD image in the Latest documentation

CI image

The CI image is used by Breeze as the shell image but it is also used during CI tests. The image is single segment image that contains Airflow installation with "all" dependencies installed. It is optimised for rebuild speed. It installs PIP dependencies from the current branch first -so that any changes in pyproject.toml do not trigger reinstalling of all dependencies. There is a second step of installation that re-installs the dependencies from the latest sources so that we are sure that latest dependencies are installed.

Building docker images from current sources

The easy way to build the CI/PROD images is to use Breeze. It uses a number of optimization and caches to build it efficiently and fast when you are developing Airflow and need to update to latest version.

For CI image: Airflow package is always built from sources. When you execute the image, you can however use the --use-airflow-version flag (or USE_AIRFLOW_VERSION environment variable) to remove the preinstalled source version of Airflow and replace it with one of the possible installation methods:

  • "none" - airflow is removed and not installed
  • "wheel" - airflow is removed and replaced with "wheel" version available in dist
  • "sdist" - airflow is removed and replaced with "sdist" version available in dist
  • "<VERSION>" - airflow is removed and installed from PyPI (with the specified version)

For PROD image: By default production image is built from the latest sources when using Breeze, but when you use it via docker build command, it uses the latest installed version of airflow and providers. However, you can choose different installation methods as described in Building PROD docker images from released PIP packages. Detailed reference for building production image from different sources can be found in: Build Args reference

You can build the CI image using current sources this command:

breeze ci-image build

You can build the PROD image using current sources with this command:

breeze prod-image build

By adding --python <PYTHON_MAJOR_MINOR_VERSION> parameter you can build the image version for the chosen Python version.

The images are built with default extras - different extras for CI and production image and you can change the extras via the --extras parameters and add new ones with --additional-airflow-extras.

For example if you want to build Python 3.8 version of production image with "all" extras installed you should run this command:

breeze prod-image build --python 3.8 --extras "all"

If you just want to add new extras you can add them like that:

breeze prod-image build --python 3.8 --additional-airflow-extras "all"

The command that builds the CI image is optimized to minimize the time needed to rebuild the image when the source code of Airflow evolves. This means that if you already have the image locally downloaded and built, the scripts will determine whether the rebuild is needed in the first place. Then the scripts will make sure that minimal number of steps are executed to rebuild parts of the image (for example, PIP dependencies) and will give you an image consistent with the one used during Continuous Integration.

The command that builds the production image is optimised for size of the image.

Building PROD docker images from released PIP packages

You can also build production images from PIP packages via providing --install-airflow-version parameter to Breeze:

breeze prod-image build --python 3.8 --additional-airflow-extras=trino --install-airflow-version=2.0.0

This will build the image using command similar to:

pip install \
  apache-airflow[async,amazon,celery,cncf.kubernetes,docker,elasticsearch,ftp,grpc,hashicorp,http,ldap,google,microsoft.azure,mysql,postgres,redis,sendgrid,sftp,slack,ssh,statsd,virtualenv]==2.0.0 \
  --constraint "https://raw.githubusercontent.com/apache/airflow/constraints-2.0.0/constraints-3.8.txt"

Note

Only pip installation is currently officially supported.

While they are some successes with using other tools like poetry or pip-tools, they do not share the same workflow as pip - especially when it comes to constraint vs. requirements management. Installing via Poetry or pip-tools is not currently supported.

There are known issues with bazel that might lead to circular dependencies when using it to install Airflow. Please switch to pip if you encounter such problems. Bazel community works on fixing the problem in this PR so it might be that newer versions of bazel will handle it.

If you wish to install airflow using those tools you should use the constraint files and convert them to appropriate format and workflow that your tool requires.

You can also build production images from specific Git version via providing --install-airflow-reference parameter to Breeze (this time constraints are taken from the constraints-main branch which is the HEAD of development for constraints):

pip install "https://github.com/apache/airflow/archive/<tag>.tar.gz#egg=apache-airflow" \
  --constraint "https://raw.githubusercontent.com/apache/airflow/constraints-main/constraints-3.8.txt"

You can also skip installing airflow and install it from locally provided files by using --install-packages-from-context parameter to Breeze:

breeze prod-image build --python 3.8 --additional-airflow-extras=trino --install-packages-from-context

In this case you airflow and all packages (.whl files) should be placed in docker-context-files folder.

Using docker cache during builds

Default mechanism used in Breeze for building CI images uses images pulled from GitHub Container Registry. This is done to speed up local builds and building images for CI runs - instead of > 12 minutes for rebuild of CI images, it takes usually about 1 minute when cache is used. For CI images this is usually the best strategy - to use default "pull" cache. This is default strategy when Breeze builds are performed.

For Production Image - which is far smaller and faster to build, it's better to use local build cache (the standard mechanism that docker uses. This is the default strategy for production images when Breeze builds are performed. The first time you run it, it will take considerably longer time than if you use the pull mechanism, but then when you do small, incremental changes to local sources, Dockerfile image and scripts, further rebuilds with local build cache will be considerably faster.

You can also disable build cache altogether. This is the strategy used by the scheduled builds in CI - they will always rebuild all the images from scratch.

You can change the strategy by providing one of the --build-cache flags: registry (default), local, or disabled flags when you run Breeze commands. For example:

breeze ci-image build --python 3.8 --docker-cache local

Will build the CI image using local build cache (note that it will take quite a long time the first time you run it).

breeze prod-image build --python 3.8 --docker-cache registry

Will build the production image with cache used from registry.

breeze prod-image build --python 3.8 --docker-cache disabled

Will build the production image from the scratch.

You can also turn local docker caching by setting DOCKER_CACHE variable to local, registry, disabled and exporting it.

export DOCKER_CACHE="registry"

or

export DOCKER_CACHE="local"

or

export DOCKER_CACHE="disabled"

Naming conventions

By default images we are using cache for images in GitHub Container registry. We are using GitHub Container Registry as development image cache and CI registry for build images. The images are all in organization wide "apache/" namespace. We are adding "airflow-" as prefix for the image names of all Airflow images. The images are linked to the repository via org.opencontainers.image.source label in the image.

See https://docs.github.com/en/packages/learn-github-packages/connecting-a-repository-to-a-package

Naming convention for the GitHub packages.

Images with a commit SHA (built for pull requests and pushes). Those are images that are snapshot of the currently run build. They are built once per each build and pulled by each test job.

ghcr.io/apache/airflow/<BRANCH>/ci/python<X.Y>:<COMMIT_SHA>         - for CI images
ghcr.io/apache/airflow/<BRANCH>/prod/python<X.Y>:<COMMIT_SHA>       - for production images

Thoe image contain inlined cache.

You can see all the current GitHub images at https://github.com/apache/airflow/packages

Note that you need to be committer and have the right to refresh the images in the GitHub Registry with latest sources from main via (./dev/refresh_images.sh). Only committers can push images directly. You need to login with your Personal Access Token with "packages" write scope to be able to push to those repositories or pull from them in case of GitHub Packages.

GitHub Container Registry

docker login ghcr.io

Since there are different naming conventions used for Airflow images and there are multiple images used, Breeze provides easy to use management interface for the images. The CI is designed in the way that it should automatically refresh caches, rebuild the images periodically and update them whenever new version of base Python is released. However, occasionally, you might need to rebuild images locally and push them directly to the registries to refresh them.

Every developer can also pull and run images being result of a specific CI run in GitHub Actions. This is a powerful tool that allows to reproduce CI failures locally, enter the images and fix them much faster. It is enough to pass --image-tag and the registry and Breeze will download and execute commands using the same image that was used during the CI tests.

For example this command will run the same Python 3.8 image as was used in build identified with 9a621eaa394c0a0a336f8e1b31b35eff4e4ee86e commit SHA with enabled rabbitmq integration.

breeze --image-tag 9a621eaa394c0a0a336f8e1b31b35eff4e4ee86e --python 3.8 --integration rabbitmq

You can see more details and examples inBreeze

Customizing the CI image

Customizing the CI image allows to add your own dependencies to the image.

The easiest way to build the customized image is to use breeze script, but you can also build suc customized image by running appropriately crafted docker build in which you specify all the build-args that you need to add to customize it. You can read about all the args and ways you can build the image in the #ci-image-build-arguments chapter below.

Here just a few examples are presented which should give you general understanding of what you can customize.

This builds the production image in version 3.8 with additional airflow extras from 2.0.0 PyPI package and additional apt dev and runtime dependencies.

As of Airflow 2.3.0, it is required to build images with DOCKER_BUILDKIT=1 variable (Breeze sets DOCKER_BUILDKIT=1 variable automatically) or via docker buildx build command if you have buildx plugin installed.

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull \
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg ADDITIONAL_AIRFLOW_EXTRAS="jdbc" \
  --build-arg ADDITIONAL_PYTHON_DEPS="pandas" \
  --build-arg ADDITIONAL_DEV_APT_DEPS="gcc g++" \
  --tag my-image:0.0.1

the same image can be built using breeze (it supports auto-completion of the options):

breeze ci-image build --python 3.8 --additional-airflow-extras=jdbc --additional-python-deps="pandas" \
    --additional-dev-apt-deps="gcc g++"

You can customize more aspects of the image - such as additional commands executed before apt dependencies are installed, or adding extra sources to install your dependencies from. You can see all the arguments described below but here is an example of rather complex command to customize the image based on example in this comment:

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull \
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg AIRFLOW_INSTALLATION_METHOD="apache-airflow" \
  --build-arg ADDITIONAL_AIRFLOW_EXTRAS="slack" \
  --build-arg ADDITIONAL_PYTHON_DEPS="apache-airflow-providers-odbc \
      azure-storage-blob \
      sshtunnel \
      google-api-python-client \
      oauth2client \
      beautifulsoup4 \
      dateparser \
      rocketchat_API \
      typeform" \
  --build-arg ADDITIONAL_DEV_APT_DEPS="msodbcsql17 unixodbc-dev g++" \
  --build-arg ADDITIONAL_DEV_APT_COMMAND="curl https://packages.microsoft.com/keys/microsoft.asc | apt-key add --no-tty - && curl https://packages.microsoft.com/config/debian/12/prod.list > /etc/apt/sources.list.d/mssql-release.list" \
  --build-arg ADDITIONAL_DEV_ENV_VARS="ACCEPT_EULA=Y"
  --tag my-image:0.0.1

CI image build arguments

The following build arguments (--build-arg in docker build command) can be used for CI images:

Build argument Default value Description
PYTHON_BASE_IMAGE python:3.8-slim-bookworm Base Python image
PYTHON_MAJOR_MINOR_VERSION 3.8 major/minor version of Python (should match base image)
DEPENDENCIES_EPOCH_NUMBER 2 increasing this number will reinstall all apt dependencies
ADDITIONAL_PIP_INSTALL_FLAGS additional pip flags passed to the installation commands (except when reinstalling pip itself)
PIP_NO_CACHE_DIR true if true, then no pip cache will be stored
UV_NO_CACHE true if true, then no uv cache will be stored
HOME /root Home directory of the root user (CI image has root user as default)
AIRFLOW_HOME /root/airflow Airflow's HOME (that's where logs and sqlite databases are stored)
AIRFLOW_SOURCES /opt/airflow Mounted sources of Airflow
AIRFLOW_REPO apache/airflow the repository from which PIP dependencies are pre-installed
AIRFLOW_BRANCH main the branch from which PIP dependencies are pre-installed
AIRFLOW_CI_BUILD_EPOCH 1 increasing this value will reinstall PIP dependencies from the repository from scratch
AIRFLOW_CONSTRAINTS_LOCATION If not empty, it will override the source of the constraints with the specified URL or file.
AIRFLOW_CONSTRAINTS_REFERENCE reference (branch or tag) from GitHub repository from which constraints are used. By default it is set to constraints-main but can be constraints-2-X.
AIRFLOW_EXTRAS all extras to install
UPGRADE_INVALIDATION_STRING If set to any random value the dependencies are upgraded to newer versions. In CI it is set to build id.
AIRFLOW_PRE_CACHED_PIP_PACKAGES true Allows to pre-cache airflow PIP packages from the GitHub of Apache Airflow This allows to optimize iterations for Image builds and speeds up CI jobs.
ADDITIONAL_AIRFLOW_EXTRAS additional extras to install
ADDITIONAL_PYTHON_DEPS additional Python dependencies to install
DEV_APT_COMMAND Dev apt command executed before dev deps are installed in the first part of image
ADDITIONAL_DEV_APT_COMMAND Additional Dev apt command executed before dev dep are installed in the first part of the image
DEV_APT_DEPS Empty - install default dependencies (see install_os_dependencies.sh) Dev APT dependencies installed in the first part of the image
ADDITIONAL_DEV_APT_DEPS Additional apt dev dependencies installed in the first part of the image
ADDITIONAL_DEV_APT_ENV Additional env variables defined when installing dev deps
AIRFLOW_PIP_VERSION 24.0 PIP version used.
AIRFLOW_UV_VERSION 0.1.10 UV version used.
AIRFLOW_USE_UV true Whether to use UV for installation.
PIP_PROGRESS_BAR on Progress bar for PIP installation

Here are some examples of how CI images can built manually. CI is always built from local sources.

This builds the CI image in version 3.8 with default extras ("all").

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
   --pull \
   --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" --tag my-image:0.0.1

This builds the CI image in version 3.8 with "gcp" extra only.

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull \
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg AIRFLOW_EXTRAS=gcp --tag my-image:0.0.1

This builds the CI image in version 3.8 with "apache-beam" extra added.

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull \
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg ADDITIONAL_AIRFLOW_EXTRAS="apache-beam" --tag my-image:0.0.1

This builds the CI image in version 3.8 with "mssql" additional package added.

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull \
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg ADDITIONAL_PYTHON_DEPS="mssql" --tag my-image:0.0.1

This builds the CI image in version 3.8 with "gcc" and "g++" additional apt dev dependencies added.

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg ADDITIONAL_DEV_APT_DEPS="gcc g++" --tag my-image:0.0.1

This builds the CI image in version 3.8 with "jdbc" extra and "default-jre-headless" additional apt runtime dependencies added.

DOCKER_BUILDKIT=1 docker build . -f Dockerfile.ci \
  --pull \
  --build-arg PYTHON_BASE_IMAGE="python:3.8-slim-bookworm" \
  --build-arg AIRFLOW_EXTRAS=jdbc \
  --tag my-image:0.0.1

Running the CI image

The entrypoint in the CI image contains all the initialisation needed for tests to be immediately executed. It is copied from scripts/docker/entrypoint_ci.sh.

The default behaviour is that you are dropped into bash shell. However if RUN_TESTS variable is set to "true", then tests passed as arguments are executed

The entrypoint performs those operations:

  • checks if the environment is ready to test (including database and all integrations). It waits until all the components are ready to work
  • removes and re-installs another version of Airflow (if another version of Airflow is requested to be reinstalled via USE_AIRFLOW_PYPI_VERSION variable.
  • Sets up Kerberos if Kerberos integration is enabled (generates and configures Kerberos token)
  • Sets up ssh keys for ssh tests and restarts the SSH server
  • Sets all variables and configurations needed for unit tests to run
  • Reads additional variables set in files/airflow-breeze-config/variables.env by sourcing that file
  • In case of CI run sets parallelism to 2 to avoid excessive number of processes to run
  • In case of CI run sets default parameters for pytest
  • In case of running integration/long_running/quarantined tests - it sets the right pytest flags
  • Sets default "tests" target in case the target is not explicitly set as additional argument
  • Runs system tests if RUN_SYSTEM_TESTS flag is specified, otherwise runs regular unit and integration tests

Naming conventions for stored images

The images produced during the Build Images workflow of CI jobs are stored in the GitHub Container Registry

The images are stored with both "latest" tag (for last main push image that passes all the tests as well with the COMMIT_SHA id for images that were used in particular build.

The image names follow the patterns (except the Python image, all the images are stored in https://ghcr.io/ in apache organization.

The packages are available under (CONTAINER_NAME is url-encoded name of the image). Note that "/" are supported now in the ghcr.io as a part of the image name within the apache organization, but they have to be percent-encoded when you access them via UI (/ = %2F)

https://github.com/apache/airflow/pkgs/container/<CONTAINER_NAME>

Image Name:tag (both cases latest version and per-build) Description
Python image (DockerHub) python:<X.Y>-slim-bookworm Base Python image used by both production and CI image.
CI image airflow/<BRANCH>/ci/python<X.Y>:<TAG> CI image - this is the image used for most of the tests.
PROD image airflow/<BRANCH>/prod/python<X.Y>:<TAG> faster to build or pull. Production image optimized for size.
  • <BRANCH> might be either "main" or "v2-*-test"
  • <X.Y> - Python version (Major + Minor).Should be one of ["3.8", "3.9", "3.10", "3.11", "3.12" ].
  • <COMMIT_SHA> - full-length SHA of commit either from the tip of the branch (for pushes/schedule) or commit from the tip of the branch used for the PR.
  • <TAG> - tag of the image. It is either "latest" or <COMMIT_SHA> (full-length SHA of commit either from the tip of the branch (for pushes/schedule) or commit from the tip of the branch used for the PR).

Read next about Github Variables