This container image includes Python 3.6 as a S2I base image for your Python 3.6 applications. Users can choose between RHEL and CentOS based builder images. The RHEL images are available in the Red Hat Container Catalog, the CentOS images are available on Quay.io, and the Fedora images are available in Quay.io. The resulting image can be run using podman or docker.
Note: while the examples in this README are calling podman
, you can replace any such calls by docker
with the same arguments
Python 3.6 available as container is a base platform for building and running various Python 3.6 applications and frameworks. Python is an easy to learn, powerful programming language. It has efficient high-level data structures and a simple but effective approach to object-oriented programming. Python's elegant syntax and dynamic typing, together with its interpreted nature, make it an ideal language for scripting and rapid application development in many areas on most platforms.
This container image includes an npm utility (see base image repository), so users can use it to install JavaScript modules for their web applications. There is no guarantee for any specific npm or nodejs version, that is included in the image; those versions can be changed anytime and the nodejs itself is included just to make the npm work.
For this, we will assume that you are using one of the supported images available via imagestream tags in Openshift, eg. python:3.6-ubi8
Building a simple python-sample-app application
in Openshift can be achieved with the following step:
```
oc new-app python:3.6-ubi8~https://github.com/sclorg/django-ex.git
```
Accessing the application:
$ oc get pods
$ oc exec <pod> -- curl 127.0.0.1:8080
This image supports the Source-to-Image (S2I) strategy in OpenShift. The Source-to-Image is an OpenShift framework which makes it easy to write images that take application source code as an input, use a builder image like this Python container image, and produce a new image that runs the assembled application as an output.
To support the Source-to-Image framework, important scripts are included in the builder image:
- The
/usr/libexec/s2i/assemble
script inside the image is run to produce a new image with the application artifacts. The script takes sources of a given application and places them into appropriate directories inside the image. It utilizes some common patterns in Perl application development (see the Environment variables section below). - The
/usr/libexec/s2i/run
script is set as the default command in the resulting container image (the new image with the application artifacts). It runs your application according to settings inAPP_MODULE
,APP_FILE
orAPP_SCRIPT
environment variables or it tries to detect the best way automatically.
Compared to the Source-to-Image strategy, using a Dockerfile is a more flexible way to build a Python container image with an application. Use a Dockerfile when Source-to-Image is not sufficiently flexible for you or when you build the image outside of the OpenShift environment.
To use the Python image in a Dockerfile, follow these steps:
podman pull registry.access.redhat.com/ubi8/python-36
An example application available at https://github.com/sclorg/django-ex.git is used here. Feel free to clone the repository for further experiments. You can also take a look at code examples in s2i-python-container repository: https://github.com/sclorg/s2i-python-container/tree/master/examples
git clone https://github.com/sclorg/django-ex.git app-src
This step usually consists of at least these parts:
- putting the application source into the container
- installing the dependencies
- setting the default command in the resulting image
For all these three parts, users can either setup all manually and use commands python
and pip
explicitly in the Dockerfile,
or users can use the Source-to-Image scripts inside the image.
The manual way comes with the highest level of flexibility but requires you to know how to work with modules or software collections manually, how to setup virtual environment with the right version of Python and many more. On the other hand, using Source-to-Image scripts makes your Dockerfile prepared for a future flawless switch to a newer or different platform.
To use the Source-to-Image scripts and build an image using a Dockerfile, create a Dockerfile with this content:
FROM registry.access.redhat.com/ubi8/python-36
# Add application sources to a directory that the assemble script expects them
# and set permissions so that the container runs without root access
USER 0
ADD app-src /tmp/src
RUN /usr/bin/fix-permissions /tmp/src
USER 1001
# Install the dependencies
RUN /usr/libexec/s2i/assemble
# Set the default command for the resulting image
CMD /usr/libexec/s2i/run
If you decide not to use the Source-to-Image scripts, you will need to manually tailor the Dockerfile to your application and its needs. Example Dockerfile for a simple Django application:
FROM registry.access.redhat.com/ubi8/python-36
# Add application sources with correct permissions for OpenShift
USER 0
ADD app-src .
RUN chown -R 1001:0 ./
USER 1001
# Install the dependencies
RUN pip install -U "pip>=19.3.1" && \
pip install -r requirements.txt && \
python manage.py collectstatic --noinput && \
python manage.py migrate
# Run the application
CMD python manage.py runserver 0.0.0.0:8080
podman build -t python-app .
podman run -d python-app
To set these environment variables, you can place them as a key value pair into a .s2i/environment
file inside your source code repository.
-
APP_SCRIPT
Used to run the application from a script file. This should be a path to a script file (defaults to
app.sh
unless set to null) that will be run to start the application. -
APP_FILE
Used to run the application from a Python script. This should be a path to a Python file (defaults to
app.py
unless set to null) that will be passed to the Python interpreter to start the application. -
APP_MODULE
Used to run the application with Gunicorn, as documented here. This variable specifies a WSGI callable with the pattern
MODULE_NAME:VARIABLE_NAME
, whereMODULE_NAME
is the full dotted path of a module, andVARIABLE_NAME
refers to a WSGI callable inside the specified module. Gunicorn will look for a WSGI callable namedapplication
if not specified.If
APP_MODULE
is not provided, therun
script will look for awsgi.py
file in your project and use it if it exists.If using
setup.py
for installing the application, theMODULE_NAME
part can be read from there. For an example, see setup-test-app. -
APP_HOME
This variable can be used to specify a sub-directory in which the application to be run is contained. The directory pointed to by this variable needs to contain
wsgi.py
(for Gunicorn) ormanage.py
(for Django).If
APP_HOME
is not provided, theassemble
andrun
scripts will use the application's root directory. -
APP_CONFIG
Path to a valid Python file with a Gunicorn configuration file.
-
DISABLE_MIGRATE
Set this variable to a non-empty value to inhibit the execution of 'manage.py migrate' when the produced image is run. This only affects Django projects. See "Handling Database Migrations" section of Django blogpost on OpenShift blog on suggestions how/when to run DB migrations in OpenShift environment. Most importantly, note that running DB migrations from two or more pods might corrupt your database.
-
DISABLE_COLLECTSTATIC
Set this variable to a non-empty value to inhibit the execution of 'manage.py collectstatic' during the build. This only affects Django projects.
-
DISABLE_SETUP_PY_PROCESSING / DISABLE_PYPROJECT_TOML_PROCESSING
Set this to a non-empty value to skip processing of setup.{py,cfg} or pyproject.toml script if you use
-e .
in requirements.txt to trigger its processing or you don't want your application to be installed into site-packages directory. -
ENABLE_PIPENV
Set this variable to use Pipenv, the higher-level Python packaging tool, to manage dependencies of the application. This should be used only if your project contains properly formated Pipfile and Pipfile.lock.
-
PIN_PIPENV_VERSION
Set this variable together with
ENABLE_PIPENV
to use a specific version of Pipenv. If not set, the latest stable version from PyPI is installed. For examplePIN_PIPENV_VERSION=2018.11.26
installspipenv==2018.11.26
. -
ENABLE_MICROPIPENV
Set this variable to use micropipenv, a lightweight wrapper for pip to support requirements.txt, Pipenv and Poetry lock files or converting them to pip-tools compatible output. Designed for containerized Python applications. Available only for Python 3 images.
-
ENABLE_INIT_WRAPPER
Set this variable to a non-empty value to make use of an init wrapper. This is useful for servers that are not capable of reaping zombie processes, such as Django development server or Tornado. This option can be used together with APP_SCRIPT or APP_FILE. It never applies to Gunicorn used through APP_MODULE as Gunicorn reaps zombie processes correctly.
-
PIP_INDEX_URL
Set this variable to use a custom index URL or mirror to download required packages during build process. This affects packages listed in requirements.txt. It also affects the installation of pipenv and micropipenv and the update of pip in the container, though if not found in the custom index, the container will try to install/update them from upstream PyPI afterwards.
-
PORT
HTTP(S) port your application should listen on. The default is 8080.
PORT
is used only for Django development server and for Gunicorn with the default configutation (noAPP_CONFIG
orGUNICORN_CMD_ARGS
specified). -
UPGRADE_PIP_TO_LATEST
Set this variable to a non-empty value to have the 'pip' program and related python packages (setuptools and wheel) be upgraded to the most recent version before any Python packages are installed. If not set, the container will use the stable pip version this container was built with, taken from a recent Fedora release.
-
WEB_CONCURRENCY
Set this to change the default setting for the number of workers. By default, this is set to the number of available cores times 2, capped at 12.
You do not need to change anything in your existing Python project's repository. However, if these files exist they will affect the behavior of the build process:
-
requirements.txt
List of dependencies to be installed with
pip
. The format is documented here. -
Pipfile
The replacement for requirements.txt, project is currently under active design and development, as documented here. Set
ENABLE_PIPENV
environment variable to true in order to process this file. -
setup.py
Configures various aspects of the project, including installation of dependencies, as documented here. For most projects, it is sufficient to simply use
requirements.txt
orPipfile
. SetDISABLE_SETUP_PY_PROCESSING
environment variable to true in order to skip processing of this file.
The container image produced by s2i-python executes your project in one of the following ways, in precedence order:
-
Gunicorn
The Gunicorn WSGI HTTP server is used to serve your application in the case that it is installed. It can be installed by listing it either in the
requirements.txt
file or in theinstall_requires
section of thesetup.py
file.If a file named
wsgi.py
is present in your repository, it will be used as the entry point to your application. This can be overridden with the environment variableAPP_MODULE
. This file is present in Django projects by default.If you have both Django and Gunicorn in your requirements, your Django project will automatically be served using Gunicorn.
The default setting for Gunicorn (
--bind=0.0.0.0:$PORT --access-logfile=-
) is applied only if both$APP_CONFIG
and$GUNICORN_CMD_ARGS
are not defined. -
Django development server
If you have Django in your requirements but don't have Gunicorn, then your application will be served using Django's development web server. However, this is not recommended for production environments.
-
Python script
This would be used where you provide a Python code file for running you application. It will be used in the case where you specify a path to a Python script via the
APP_FILE
environment variable, defaulting to a file namedapp.py
if it exists. The script is passed to a regular Python interpreter to launch your application. -
Application script file
This is the most general way of executing your application. It will be used in the case where you specify a path to an executable script file via the
APP_SCRIPT
environment variable, defaulting to a file namedapp.sh
if it exists. The script is executed directly to launch your application.
If you are using Django, hot deploy will work out of the box.
To enable hot deploy while using Gunicorn, make sure you have a Gunicorn
configuration file inside your repository with the
reload
option set to true
. Make sure to specify your config via the APP_CONFIG
environment variable.
To change your source code in running container, use podman's (or docker's) exec command:
podman exec -it <CONTAINER_ID> /bin/bash
After you enter into the running container, your current directory is set
to /opt/app-root/src
, where the source code is located.
Dockerfile and other sources are available on https://github.com/sclorg/s2i-python-container.
In that repository you also can find another versions of Python environment Dockerfiles.
Dockerfile for RHEL8 is called Dockerfile.rhel8
, for RHEL9 it's Dockerfile.rhel9
,
for CentOS Stream 9 it's Dockerfile.c9s
, for CentOS Stream 10 it's Dockerfile.c10s
,
and the Fedora Dockerfile is called Dockerfile.fedora
.