Django is a powerful web framework that can help you get your Python application off the ground quickly. It includes several convenient features like an object-relational mapper, user authentication, and a customizable administrative interface for your application. It also includes a caching framework and encourages clean app design through its URL Dispatcher and Template system.
In this tutorial, you’ll learn how to build a scalable and portable Django Polls app with Docker containers. Out of the box, a Django app requires several modifications to run effectively inside of containers, like logging to standard output streams and configuring itself through environment variables passed into the container. In addition, offloading static assets like JavaScript and CSS stylesheets to object storage allows you to streamline and centralize the management of these files in a multi-container environment.
You’ll implement these modifications—inspired by the Twelve-Factor methodology for building scalable, cloud-native web apps—on a sample Django Polls app. Then, you’ll build the application image and run the containerized app with Docker.
It’s highly recommended to work through the tutorial to understand the changes you’re making to the app, but if you’d like to skip ahead, you can obtain the modified code from the polls-docker branch of the Polls app GitHub repository.
To begin, we’ll connect to the PostgreSQL server from the Ubuntu instance. Then, we’ll create a PostgreSQL database and user for the Django app, and configure the database to work effectively with Django.
Before we connect to the database from our Ubuntu machine (not the app container), we need to install the postgresql-client
package from the Ubuntu repositories. First update the local apt
package index and then download and install the package:
sudo apt update
sudo apt install postgresql-client
Hit Y
and then ENTER
when prompted to begin downloading and installing the packages.
Now that you’ve installed the client, we’ll use it to create a database and database user for our Django application.
To begin, grab the Connection Parameters for your cluster by navigating to Databases from the Cloud Control Panel, and clicking into your database. You should see a Connection Details box containing some Connection parameters for your cluster. Note these down.
Back on the command line, log in to your cluster using these credentials and the psql
PostgreSQL client we just installed:
psql -U username -h host -p port -d database -set=sslmode=require
When prompted, enter the password displayed alongside the Postgres username, and hit ENTER
.
You will be given a PostgreSQL prompt from which you can manage the database.
First, create a database for your project called polls
:
CREATE DATABASE polls;
Note: Every Postgres statement must end with a semicolon, so make sure that your command ends with one if you are experiencing issues.
We can now switch to the polls
database:
\c polls;
Next, create a database user for the project. Make sure to select a secure password:
CREATE USER sammy WITH PASSWORD 'password';
We’ll now modify a few of the connection parameters for the user we just created. This will speed up database operations so that the correct values do not have to be queried and set each time a connection is established.
We are setting the default encoding to UTF-8
, which Django expects. We are also setting the default transaction isolation scheme to “read committed”, which blocks reads from uncommitted transactions. Lastly, we are setting the timezone. By default, our Django projects will be set to use UTC
. These are all recommendations from the Django project itself.
Enter the following commands at the PostgreSQL prompt:
ALTER ROLE sammy SET client_encoding TO 'utf8';
ALTER ROLE sammy SET default_transaction_isolation TO 'read committed';
ALTER ROLE sammy SET timezone TO 'UTC';
Now we can give our new user access to administer our new database:
GRANT ALL PRIVILEGES ON DATABASE polls TO sammy;
When you are finished, exit out of the PostgreSQL prompt by typing:
\q
A Django app, properly configured, can now connect to and manage this database. In the next step, we’ll clone the Polls app code from GitHub and explicitly define its Python package dependencies.
To begin the process of containerizing our Django Polls app, we’ll first clone the django-polls repository, which contains the complete code for the Django project’s tutorial Polls app.
Log in to your server, create a directory called polls-project
and use git
to clone the django-polls
repo from GitHub:
mkdir polls-project
cd polls-project
git clone https://github.com/do-community/django-polls.git
Access the django-polls
directory and list the repository contents:
cd django-polls
ls
OutputLICENSE README.md manage.py mysite polls templates
You should see the following objects:
manage.py
: The main command-line utility used to manipulate the app.polls
: Contains the polls
app code.mysite
: Contains Django project-scope code and settings.templates
: Contains custom template files for the administrative interface.To learn more about the project structure and files, consult Creating a Project from the official Django documentation.
In this directory we’ll also create a file called requirements.txt
that will contain the Django app’s Python dependencies.
Open a file called requirements.txt
in your editor of choice and paste in the following Python dependencies:
polls-project/django-polls/requirements.txt
boto3==1.9.252
botocore==1.12.252
Django==2.2.6
django-storages==1.7.2
docutils==0.15.2
gunicorn==19.9.0
jmespath==0.9.4
psycopg2==2.8.3
python-dateutil==2.8.0
pytz==2019.3
s3transfer==0.2.1
six==1.12.0
sqlparse==0.3.0
urllib3==1.25.6
Here we install Django, the django-storages
plugin for offloading static assets to object storage, the gunicorn
WSGI server, the psycopg2
PostgreSQL adapter, as well as some additional dependency packages. Note that we explicitly list and version every Python package required by our app.
Save and close the file.
Now that we’ve cloned the app and defined its dependencies, we can move on to modifying it for portability.
One of the most important recommendations from the twelve-factor app methodology is extracting hard-coded config from your application’s codebase. This allows you to easily change the behavior of your application at runtime by modifying environment variables. Docker and Kubernetes both suggest this method of configuring containers, so we will adapt our application’s settings file to use this pattern.
The main settings file for our Django project (django-polls/mysite/settings.py
) is a Python module that uses native data structures to configure the application. By default, most of the values in the file are hard-coded, meaning that you have to edit the configuration file to change the application behavior. We can use Python’s getenv
function in the os
module to configure Django to read configuration parameters from local environment variables instead.
To do this, we’ll go through settings.py
and replace the hard-coded values of each of the variables we want to set at runtime with a call to os.getenv
. The os.getenv
function reads the value from a provided environment variable name. You can optionally provide a second parameter with a default value that will be used if the environment variable is not set.
This allows us to set variables like this:
polls-project/django-polls/mysite/settings.py
. . .
SECRET_KEY = os.getenv('DJANGO_SECRET_KEY')
. . .
DEBUG = os.getenv('DJANGO_DEBUG', False)
. . .
For SECRET_KEY
, Django will look for an environment variable called DJANGO_SECRET_KEY
. Since this shouldn’t be hard-coded and needs to be the same across our application servers, we’ll want to set this externally with no fallback value. We want the application to fail if we do not provide this, since it could lead to problems if various copies of our application use different keys.
For DEBUG
, Django will look for an environment variable called DJANGO_DEBUG
. However, this time, we’ve provided a default value that will be used as fallback if the variable is not set. In this case, we’ve opted to set DEBUG
to False
if no value is provided so that we do not accidentally leak sensitive information unless the variable is intentionally defined and set to True
…
To apply this technique, open the polls-project/django-polls/mysite/settings.py
file in your editor of choice, and move through it, externalizing the following variables with the provided default values:
SECRET_KEY = <span class="highlight">os.getenv('DJANGO_SECRET_KEY')</span>
DEBUG = <span class="highlight">os.getenv('DEBUG', False)</span>
ALLOWED_HOSTS = <span class="highlight">os.getenv('DJANGO_ALLOWED_HOSTS', '127.0.0.1').split(',')</span>
For ALLOWED_HOSTS
, we fetch the DJANGO_ALLOWED_HOSTS
environment variable, and split it into a Python list using ,
as a separator. If the variable isn’t set, ALLOWED_HOSTS
is set to 127.0.0.1
.
Once you’ve modified the above variables, navigate to the DATABASES
variable and configure it as follows:
polls-project/django-polls/mysite/settings.py
. . .
# Database
# https://docs.djangoproject.com/en/2.1/ref/settings/#databases
DATABASES = {
'default': {
'ENGINE': 'django.db.backends.{}'.format(
os.getenv('DATABASE_ENGINE', 'sqlite3')
),
'NAME': os.getenv('DATABASE_NAME', 'polls'),
'USER': os.getenv('DATABASE_USERNAME', 'myprojectuser'),
'PASSWORD': os.getenv('DATABASE_PASSWORD', 'password'),
'HOST': os.getenv('DATABASE_HOST', '127.0.0.1'),
'PORT': os.getenv('DATABASE_PORT', 5432),
'OPTIONS': json.loads(
os.getenv('DATABASE_OPTIONS', '{}')
),
}
}
. . .
This will set the default
database parameters using environment variables.
For DATABASES['default']['OPTIONS']
, we used json.loads
to deserialize a JSON object passed in through the DATABASE_OPTIONS
environment variable. Most of the time, interpreting environment variables as simple strings makes the translation to Django settings easier to read. However, in this instance, being able to pass in an arbitrary data structure is valuable. Each database engine has a unique set of valid options, so being able to encode a JSON object with the appropriate parameters gives us much greater flexibility at the expense of some legibility.
To make use of the json
library, import it at the top of settings.py
:
polls-project/django-polls/mysite/settings.py
"""
Django settings for mysite project.
Generated by 'django-admin startproject' using Django 2.1.
For more information on this file, see
https://docs.djangoproject.com/en/2.1/topics/settings/
For the full list of settings and their values, see
https://docs.djangoproject.com/en/2.1/ref/settings/
"""
import os
import json
. . .
The other area that requires special attention is DATABASES['default']['NAME']
. For most database engines, this is the database name within the relational database management system. On the other hand, if you’re using SQLite, NAME
is used to specify the database file so be sure to set this parameter accordingly.
Since the settings.py
file is Python code, there are many different ways you can handle reading values from the environment. The method we’ve used here is just one possible technique for externalizing configuration from your codebase.
In this step we’ve configured the main Django settings variables in a generic and portable fashion, including the database parameters. In the following step, we’ll continue configuring settings for static files like Javascript and CSS stylesheets, which we’ll centralize and offload to an S3-compatible object storage service.
When running multiple Django containers in a production environment, it can be cumbersome to maintain specific versions of static assets and files across the entire fleet of running containers. To streamline this architecture, we can offload all shared elements and state to external storage. Instead of trying to keep these items in sync across replicas or implementing backup and loading routines to ensure data is locally available, we can implement access to these assets as network-accessible services.
In the last step, we configured Django so that we could pass in database connection parameters through environment variables. In this step, we’ll do the same for our object storage service, which we’ll use to store static assets that will be shared by Django containers.
The django-storages package provides remote storage backends (including S3-compatible object storage) that Django can use to offload files. We’ll configure the Polls app to use django-storages
to upload static files to a DigitalOcean Space, as outlined in Step 7 of How to Set Up a Scalable Django App with DigitalOcean Managed Databases and Spaces. In this guide, we’ll use DigitalOcean Spaces, but you can use any S3-compatible object storage provider.
To begin, we’ll make some modifications to the same django-polls/mysite/settings.py
file we’ve altered in previous steps.
Begin by opening up the mysite/settings.py
file for editing and appending the storages
app to Django’s list of INSTALLED_APPS
:
polls-project/django-polls/mysite/settings.py
. . .
INSTALLED_APPS = [
. . .
'django.contrib.staticfiles',
'storages',
]
. . .
The storages
app is installed via django-storages
in the requirements.txt
file we defined in Step 1.
Now, locate the STATIC_URL
variable at the bottom of the file, and replace it with the following block:
polls-project/django-polls/mysite/settings.py
. . .
# Static files (CSS, JavaScript, Images)
# https://docs.djangoproject.com/en/2.1/howto/static-files/
# Moving static assets to DigitalOcean Spaces as per:
# https://www.digitalocean.com/community/tutorials/how-to-set-up-object-storage-with-django
AWS_ACCESS_KEY_ID = os.getenv('STATIC_ACCESS_KEY_ID')
AWS_SECRET_ACCESS_KEY = os.getenv('STATIC_SECRET_KEY')
AWS_STORAGE_BUCKET_NAME = os.getenv('STATIC_BUCKET_NAME')
AWS_S3_ENDPOINT_URL = os.getenv('STATIC_ENDPOINT_URL')
AWS_S3_OBJECT_PARAMETERS = {
'CacheControl': 'max-age=86400',
}
AWS_LOCATION = 'static'
AWS_DEFAULT_ACL = 'public-read'
STATICFILES_STORAGE = 'storages.backends.s3boto3.S3Boto3Storage'
STATIC_URL = '{}/{}/'.format(AWS_S3_ENDPOINT_URL, AWS_LOCATION)
STATIC_ROOT = 'static/'
We hard-code the following configuration variables:
STATICFILES_STORAGE
: Sets the storage backend Django will use to offload static files. This S3Boto3Storage
backend should work with any S3-compatible backend, including DigitalOcean Spaces.AWS_S3_OBJECT_PARAMETERS
Sets the cache control headers on static files.AWS_LOCATION
: Defines a directory called static
within the object storage bucket where all static files will be placed.: Defines the access control list (ACL) for the static files. Setting it to
public-read` ensures that the files are publicly accessible to end users.STATIC_URL
: Specifies the base URL that Django should use when generating URLs for static files. Here, we combine the endpoint URL and the static files subdirectory to construct a base URL for static files.STATIC_ROOT
: Specifies where to collect static files locally before copying them to object storage.To maintain flexibility and portability, we set up many of the parameters to be configurable at runtime using environment variables, just as we did previously. These include:
AWS_ACCESS_KEY_ID
: Set by the STATIC_ACCESS_KEY_ID
environment variable. The DigitalOcean Spaces access key identifier.AWS_SECRET_ACCESS_KEY
: Set by STATIC_SECRET_KEY
. The DigitalOcean Spaces secret key.AWS_STORAGE_BUCKET_NAME
: Set by STATIC_BUCKET_NAME
. The object storage bucket to which Django will upload assets.AWS_S3_ENDPOINT_URL
: Set by STATIC_ENDPOINT_URL
. The endpoint URL used to access the object storage service. For DigitalOcean Spaces, this will be something like https://nyc3.digitaloceanspaces.com
, depending on the region where your Spaces bucket is located.When you’re done making changes to settings.py
, save and close the file.
From now on, when you run manage.py collectstatic
to assemble your project’s static files, Django will upload these to remote object storage. Django is also now configured to serve static assets from this object storage service.
At this point, if you’re using a DigitalOcean Space, you can optionally enable a CDN for your Space, which will speed up delivery of your Django project’s static files by caching them across a geographically-distributed network of edge servers. You can also optionally configure a custom subdomain for your Space. To learn more about CDNs, consult Using a CDN to Speed Up Static Content Delivery. Configuring a CDN goes beyond the scope of this tutorial, but the steps very closely match those in the Enabling CDN section of How to Set Up a Scalable Django App with DigitalOcean Managed Databases and Spaces.
In the next step, we’ll make a final set of changes to settings.py
which will enable Django logging to STDOUT and STDERR so that these streams can be picked up by the Docker Engine and inspected using docker logs
.
By default, Django logs information to standard output and standard error when running the development HTTP server or when the DEBUG
option is set to True
. However, when DEBUG
is set to False
or when using a different HTTP server, both of which are likely true in production environments, Django uses a different logging mechanism. Instead of logging everything of priority INFO
and above to standard streams, it sends messages of priority ERROR
or CRITICAL
to an administrative email account.
This makes sense for many situations, but in Kubernetes and containerized environments, logging to standard output and standard error is highly recommended. Logging messages are collected in a centralized directory on the Node’s filesystem and are accessible interactively using kubectl
and docker
commands. This Node-level aggregation facilitates log collection by allowing operations teams to run a process on each node to watch and forward logs. To leverage this architecture, the application must write its logs to these standard sinks.
Fortunately, logging in Django uses the highly configurable logging
module from the Python standard library, so we can define a dictionary to pass to logging.config.dictConfig
to define our desired outputs and formatting. To learn more about this technique and others for configuring Django logging, consult Django Logging, The Right Way.
Once again, open up django-polls/mysite/settings.py
in your editor.
We’ll first add an additional import
statement to the top of the file so that we can manipulate the logging configuration:
polls-project/django-polls/mysite/settings.py
import json
import os
import logging.config
. . .
The logging.config
import allows us to override Django’s default logging behavior by passing in a dictionary of new logging configuration to the dictConfig
function.
Now, navigate to the bottom of the file, and paste in the following block of logging configuration code:
polls-project/django-polls/mysite/settings.py
. . .
# Logging Configuration
# Clear prev config
LOGGING_CONFIG = None
# Get loglevel from env
LOGLEVEL = os.getenv('DJANGO_LOGLEVEL', 'info').upper()
logging.config.dictConfig({
'version': 1,
'disable_existing_loggers': False,
'formatters': {
'console': {
'format': '%(asctime)s %(levelname)s [%(name)s:%(lineno)s] %(module)s %(process)d %(thread)d %(message)s',
},
},
'handlers': {
'console': {
'class': 'logging.StreamHandler',
'formatter': 'console',
},
},
'loggers': {
'': {
'level': LOGLEVEL,
'handlers': ['console',],
},
},
})
Here, we set LOGGING_CONFIG
to None
to disable the default logging configuration provided by Django. We set LOGLEVEL
to INFO
by default, but check the DJANGO_LOGLEVEL
environment variable so that we can override as necessary.
Finally, we use the dictConfig
function to set a new configuration dictionary using the logging.config
module. In the dictionary, we define the text format using formatters
, define the output by setting up handlers
, and configure which messages should go to each handler using loggers
.
This is a fairly minimal configuration that allows you to specify a logging severity level using an environment variable called DJANGO_LOGLEVEL
, and then log all messages at or above that level to standard streams. For an in-depth discussion of Django logging mechanisms, consult Logging from the official Django docs.
With this configuration, when we containerize the application, Docker will expose these logs through the docker logs
command. Likewise, Kubernetes will capture the output and expose it through the kubectl logs
command.
This concludes our code modifications to the Django Polls app. In the next step, we’ll begin the containerization process by writing the app’s Dockerfile.
In this step we’ll define the container image that will run our Django app and the Gunicorn WSGI server that will serve it. It involves building a container image by defining the runtime environment, installing the application and its dependencies, and completing some basic configuration. While there are many possible ways to encapsulate an application in a container image, the practices followed in this step produce a slim, streamlined app image.
The first major decision that you will have to make when building a container image is the foundation to build from. Container images can either be built from SCRATCH
, indicating an empty filesystem, or from an existing container image. Many different base container images are available, each defining a filesystem and providing a unique set of preinstalled packages. Images based on vanilla Linux distributions like Ubuntu 18.04 provide a generic operating environment, while more specialized images often include common libraries and tooling for specific programming languages.
Whenever possible, it’s often a good idea to use an image from one of Docker’s official repositories as a base. These images have been verified by Docker to follow best practices and are updated regularly for security fixes and improvements.
Since our application is built with Django, an image with a standard Python environment will provide a solid foundation and include many of the tools we need to get started. The official Docker repository for Python offers a wide selection of Python-based images, each installing a version of Python and some common tooling on top of an operating system.
While the appropriate level of functionality depends on your use case, images based on Alpine Linux are often a solid jumping off point. Alpine Linux offers a robust, but minimal, operating environment for running applications. Its default filesystem is very small, but includes a complete package management system with fairly extensive repositories to make adding functionality straightforward.
Note: You may have noticed in the list of tags for Python images that multiple tags are available for each image. Docker tags are mutable and maintainers can reassign the same tag to a different image in the future. As a result, many maintainers provide sets of tags with varying degrees of specificity to allow for different use cases. For example, the tag 3-alpine
is used to point to the latest available Python 3 version on the latest Alpine version, so it will be reassigned to a different image when a new version of Python or Alpine is released. To make image builds more deterministic, it’s best to use the most specific tags you can find for the image you want to use.
In this guide, we’ll use the Python image tagged as 3.7.4-alpine3.10
as the parent image for our Django application. We specify the repository and tag of the parent image in our Dockerfile
using the FROM
instruction.
First, navigate out of the django-polls
directory.
cd ..
Then, open a file called Dockerfile
in your editor of choice. Paste in the following parent image definition:
polls-project/Dockerfile
FROM python:3.7.4-alpine3.10
This defines the starting point for the custom Docker image we are building to run our application.
Once you’ve chosen a parent image, you can begin adding instructions to install dependencies, copy over our application files, and set up the running environment. This process generally mirrors the steps you would take to set up a server for your application, with some key differences to account for the container abstractions.
After the FROM
line, paste in the following block of Dockerfile code:
polls-project/Dockerfile
. . .
ADD django-polls/requirements.txt /app/requirements.txt
RUN set -ex \
&& apk add --no-cache --virtual .build-deps postgresql-dev build-base \
&& python -m venv /env \
&& /env/bin/pip install --upgrade pip \
&& /env/bin/pip install --no-cache-dir -r /app/requirements.txt \
&& runDeps="$(scanelf --needed --nobanner --recursive /env \
| awk '{ gsub(/,/, "\nso:", $2); print "so:" $2 }' \
| sort -u \
| xargs -r apk info --installed \
| sort -u)" \
&& apk add --virtual rundeps $runDeps \
&& apk del .build-deps
ADD django-polls /app
WORKDIR /app
ENV VIRTUAL_ENV /env
ENV PATH /env/bin:$PATH
EXPOSE 8000
Let’s go over these instructions to explain some of the less obvious choices. To learn even more about building production-ready Dockerfiles for Django apps, consult A Production-Ready Dockerfile for your Django App.
First Docker will copy the requirements.txt
file to /app/requirements.txt
so that our application’s dependencies are available on the image’s filesystem. We will use this to install all of the Python packages that our application needs in order to run. We copy the dependencies file as a separate step from the rest of our codebase so that Docker can cache the image layer containing the dependencies file. Any time the requirements.txt
file doesn’t change between builds, Docker can then reuse the cached layer instead of rebuilding it, speeding up the process.
Next, we have a single RUN
instruction that executes a long list of commands, each chained together using the Linux &&
operator. To summarize, these commands:
apk
package managerrequirements.txt
with pip
We chain the commands together instead of executing each in a separate RUN
step because of the way that Docker constructs image layers. For each ADD
, COPY
, and RUN
instruction, Docker creates a new image layer on top of the existing filesystem, executes the instruction, and then saves the resulting layer. This means compressing commands in RUN
instructions will result in fewer image layers.
Once an item has been written to an image layer, it cannot be removed in a subsequent layer to reduce the image size. If we install build dependencies but want to remove them once the application is set up, we need to do so within the same instruction to reduce the image size. In this RUN
command, we install build dependencies, use them to build the app’s packages, and subsequently remove them using apk del
.
After the RUN
instruction, we use ADD
to copy in the application code and WORKDIR
to set the working directory for the image to our code directory.
Then, we use the ENV
instruction to set two environment variables that will be available within containers spawned from our image. The first one sets VIRTUAL_ENV
to /env
and the second instruction modifies the PATH
variable to include the /env/bin
directory. These two lines emulate the results of sourcing the /env/bin/activate
script, which is the traditional method of activating a virtual environment.
Finally, we use EXPOSE
to inform Docker that the container will listen on port 8000
at runtime.
At this point, the Dockerfile
is nearly complete. We just need to define the default command that will run when we start containers using the image.
A Docker image’s default command determines what happens when a container is started without explicitly providing a command to execute. ENTRYPOINT
and CMD
instructions can be used independently or in tandem to define a default command within the Dockerfile
.
When both ENTRYPOINT
and CMD
are defined, the ENTRYPOINT
defines the executable that will be run by the container, and the CMD
represents the default argument list for that command. Users can override the default argument list by appending alternative arguments on the command line: docker run <image> <arguments>
. In this format, users will be unable to easily override the ENTRYPOINT
command, so the ENTRYPOINT
command is often set to a script that will set up the environment and perform different actions based on the argument list it receives.
When used alone, ENTRYPOINT
configures the container’s executable, but does not define a default argument list. If only CMD
is set, it will be interpreted as the default command and argument list, which can be overridden at runtime.
In our image, we want the container to run our application by default using the gunicorn
application server. The argument list that we pass to gunicorn
doesn’t need to be configurable at runtime, but we want the ability to easily run other commands if necessary to debug or perform management tasks (like collecting static assets or initializing the database). With these requirements in mind, it makes sense for us to use CMD
to define a default command with no ENTRYPOINT
.
The CMD
instruction can be defined using any of the following formats:
CMD ["argument 1", "argument 2", . . . ,"argument n"]
: The argument list format (used to define the default argument list for an ENTRYPOINT
)CMD ["command", "argument 1", "argument 2", . . . ,"argument n"]
: The exec
formatCMD command "argument 1" "argument 2" . . . "argument n"
: The shell formatThe first format only lists arguments and is used in conjunction with an ENTRYPOINT
. The other two formats specify commands and their arguments, with a few key differences. The exec
format, which is recommended, executes the command directly, passing in the argument list with no shell processing. The shell format, on the other hand, passes the entire list to sh -c
. This is necessary if, for example, you need to substitute the value of an environment variable in a command, but is generally regarded as less predictable.
For our purposes, the final instruction in our Dockerfile
looks like this:
polls-project/Dockerfile
. . .
CMD ["gunicorn", "--bind", ":8000", "--workers", "3", "mysite.wsgi:application"]
By default, containers using this image will execute gunicorn
bound to localhost port 8000
with 3 workers, and run the application
function in the wsgi.py
file found in the mysite
directory. You can optionally provide a command at runtime to execute a different process instead of gunicorn
.
At this point you can use docker build
to build your app image and docker run
to run the container on your machine.
By default, the docker build
command looks for a Dockerfile
in the current directory to find its build instructions. It also sends the build “context”, the local filesystem hierarchy that should be available during the build process, to the Docker daemon. Often, the current directory is set as the build context.
After accessing the directory containing your Dockerfile
, run docker build
, passing in an image and tag name with the -t
flag, and use the current directory as build context. Here, we name the image django-polls
and tag it with version v0
:
docker build -t django-polls:v0 .
The command will pass the Dockerfile
and current directory as the build context to the Docker daemon. The daemon will build your image by creating a series of image layers as it processes the Dockerfile
instructions.
When docker build
completes, you should see the following output:
OutputSuccessfully built 8260b58f5713
Successfully tagged django-polls:v0
After successfully building the image, you’re able to run the app container using docker run
. However, the run
command will most likely fail here as we still haven’t configured the container’s running environment. Externalized variables like SECRET_KEY
and database settings from settings.py
will be either blank or set to default values.
In the final step, we’ll configure the container’s running environment using an environment variable file. Then, we’ll create the database schema, generate and upload the app’s static files to object storage, and finally test the app.
Docker provides several methods for setting environment variables inside of the container. Since we have to set all of the variables we externalized in Step 1, we’ll use the --env-file
method, which allows us to pass in a file containing a list of environment variables and their values.
Create a file called env
in the polls-project
directory, and paste in the following list of variables:
polls-project/env
DJANGO_SECRET_KEY=your_secret_key
DEBUG=True
DJANGO_ALLOWED_HOSTS=your_server_IP_address
DATABASE_ENGINE=postgresql_psycopg2
DATABASE_NAME=polls
DATABASE_USERNAME=sammy
DATABASE_PASSWORD=your_database_password
DATABASE_HOST=your_database_host
DATABASE_PORT=your_database_port
STATIC_ACCESS_KEY_ID=your_space_access_key_id
STATIC_SECRET_KEY=your_space_secret_key
STATIC_BUCKET_NAME=your_space_name
STATIC_ENDPOINT_URL=https://nyc3.digitaloceanspaces.com
DJANGO_LOGLEVEL=info
Replace the following values in this file:
DJANGO_SECRET_KEY
: Set this to a unique, unpredictable value, as detailed in the Django docs. One method of generating this key is provided in Adjusting the App Settings of the Scalable Django App tutorial.DJANGO_ALLOWED_HOSTS
: Set this to the IP address of your Ubuntu server. For testing purposes, you can also set it to *
, a wildcard that will match all hosts. Be sure to set this value appropriately when running Django in a production environment.DATABASE_USERNAME
: Set this to the database user created in the previous step.DATABASE_PASSWORD
: Set this to the user password created in the previous step.DATABASE_HOST
: Set this to your database’s hostname.DATABASE_PORT
: Set this to your databases’s port.STATIC_ACCESS_KEY_ID
: Set this to your Space’s access key.STATIC_SECRET_KEY
: Set this to your Space’s access key Secret.STATIC_BUCKET_NAME
: Set this to your Space name.STATIC_ENDPOINT_URL
: Set this to the appropriate Space endpoint URL.When running Django in production, be sure to set DEBUG
to False
and adjust the log level according to your desired verbosity.
Save and close the file.
We’ll now use docker run
to override the CMD
set in the Dockerfile and create the database schema using the manage.py makemigrations
and manage.py migrate
commands:
docker run --env-file env django-polls:v0 sh -c "python manage.py makemigrations && python manage.py migrate"
Here, we run the django-polls:v0
container image, pass in the environment variable file we just created, and override the Dockerfile command with sh -c "python manage.py makemigrations && python manage.py migrate"
, which will create the database schema defined by the app code. After running the command you should see:
OutputNo changes detected
Operations to perform:
Apply all migrations: admin, auth, contenttypes, polls, sessions
Running migrations:
Applying contenttypes.0001_initial... OK
Applying auth.0001_initial... OK
Applying admin.0001_initial... OK
Applying admin.0002_logentry_remove_auto_add... OK
Applying admin.0003_logentry_add_action_flag_choices... OK
Applying contenttypes.0002_remove_content_type_name... OK
Applying auth.0002_alter_permission_name_max_length... OK
Applying auth.0003_alter_user_email_max_length... OK
Applying auth.0004_alter_user_username_opts... OK
Applying auth.0005_alter_user_last_login_null... OK
Applying auth.0006_require_contenttypes_0002... OK
Applying auth.0007_alter_validators_add_error_messages... OK
Applying auth.0008_alter_user_username_max_length... OK
Applying auth.0009_alter_user_last_name_max_length... OK
Applying auth.0010_alter_group_name_max_length... OK
Applying auth.0011_update_proxy_permissions... OK
Applying polls.0001_initial... OK
Applying sessions.0001_initial... OK
This indicates that the database schema has successfully been created.
Next, we’ll run another instance of the app container and use an interactive shell inside of it to create an administrative user for the Django project.
docker run -i -t --env-file env django-polls:v0 sh
This will provide you with a shell prompt inside of the running container which you can use to create the Django user:
python manage.py createsuperuser
Enter a username, email address, and password for your user, and after creating the user, hit CTRL+D
to quit the container and kill it.
Finally, we’ll generate the static files for the app and upload them to the DigitalOcean Space using collectstatic
:
docker run --env-file env django-polls:v0 sh -c "python manage.py collectstatic --noinput"
Output
121 static files copied.
We can now run the app:
docker run --env-file env -p 80:8000 django-polls:v0
Output[2019-10-17 21:23:36 +0000] [1] [INFO] Starting gunicorn 19.9.0
[2019-10-17 21:23:36 +0000] [1] [INFO] Listening at: http://0.0.0.0:8000 (1)
[2019-10-17 21:23:36 +0000] [1] [INFO] Using worker: sync
[2019-10-17 21:23:36 +0000] [7] [INFO] Booting worker with pid: 7
[2019-10-17 21:23:36 +0000] [8] [INFO] Booting worker with pid: 8
[2019-10-17 21:23:36 +0000] [9] [INFO] Booting worker with pid: 9
Here, we run the default command defined in the Dockerfile, gunicorn --bind :8000 --workers 3 mysite.wsgi:application
, and expose container port 8000
so that port 80
on the Ubuntu server gets mapped to port 8000
of the django-polls:v0
container.
You should now be able to navigate to the polls
app using your web browser by typing http://your_server_ip
in the URL bar. Since there is no route defined for the /
path, you’ll likely receive a 404 Page Not Found error, which is expected.
Navigate to http://your_server_ip/polls
to see the Polls app interface:
To check out the admin interface, visit http://your_server_ip/admin
. You should see the Polls app admin authentication window:
Enter the administrative username and password you created with the createsuperuser
command.
After authenticating, you can access the Polls app’s administrative interface:
Note that static assets for the admin
and polls
apps are being delivered directly from object storage. To confirm this, consult Testing Spaces Static File Delivery.
When you are finished exploring, hit CTRL-C
in the terminal window running the Docker container to kill the container.
In this tutorial you adapted a Django web app to work effectively in a container-based, cloud-native environment. You then wrote a minimal Dockerfile for the container image, built it locally, and ran it using Docker Engine. You can see a diff of the changes you implemented in the polls-docker branch of the Polls app GitHub repository. This branch contains all the modifications described in this tutorial.
From here, you can pair the Django/Gunicorn container with an Nginx reverse proxy container to handle and route incoming HTTP requests, and a Certbot container to obtain TLS certificates. You can manage this multi-container architecture using Docker Compose; this will be described in a subsequent tutorial.
Note that as-is, this setup is not production ready as you should always run Gunicorn behind an HTTP proxy to buffer slow clients. If not, your Django web app will be vulnerable to denial-of-service attacks. We also chose 3 as an arbitrary number of Gunicorn workers in this tutorial. In production, you should set the number of workers and threads using performance benchmarks.
In this architecture, we made a design choice to offload static assets to object storage so that containers wouldn’t have to bundle a version of these assets and serve them using Nginx, which can become cumbersome to manage in multi-container cluster environments like Kubernetes. Depending on your use case, this may not be an effective design, so you should adapt the steps in this tutorial accordingly.
Finally, now that you’ve fully containerized the Django Polls app, you can push the image to a container registry like Dockerhub and make it available to any system where Docker is available: Ubuntu servers, virtual machines, and container clusters like Kubernetes.
#Django #Docker #python