Introduction
In this post I will show you how you use the GitHub Actions and Amazon Web Services (AWS)-Beanstalk, we'll build a CI/CD pipeline from the ground up. I've broken down the guide into three sections for easier reading and comprehension:
Before getting too bogged down in jargon, let's define a few key terms.
Second, we'll implement continuous integration (CI) to ensure that all builds and tests are executed without human intervention.
Our code will be automatically deployed to AWS after we have set up continuous delivery (CD).
Yes, that was a lot to take in. First, let's define each of these terms in detail so you know exactly where we're headed.
Definition
What is GitHub Action?
I'm going to oversimplify the GitHub Actions concept because I can't think of a better way to explain it. Hence, I've made below Mind Map for better understanding on GitHub Action.
For more details on GitHub , please go to GitHub Action Details
Goals
How to automatically build and run unit tests on push or on PR to the main branch with GitHub Actions.
How to automatically deploy to AWS on push or on PR to the main branch with GitHub Actions.
PART 1: How to Automatically Run Builds and Tests - Continuous Integration (CI)
Prerequisites
P1:P1 Project Folder & Files Structure
I have created a demo Django project which you can grab from this repository:
git clone https://github.com/devops4mecode/django-github-actions-aws.git
After you download the code, create a virtualenv and install the requirements via pip:
pip install -r requirements.txt
Part1:P2 Locally Build and Unit-Test
We build and test the Django App locally below;
Let's set up GitHub Actions now that you have a local Django project ready to go.
Part1:P3 Create GitHub Repository for Django App
We need tp create a new GitHub repository, once create you will get below repository. You may use different name than mine.
As you can see, we also don't have GitHub Action configure yet.
I also created a new DEV branch and update all code/script that we need for GitHub Actions.
STEPS:
Part1:S1 How to Configure GitHub Actions
Our project is now ready to go. More importantly, however, we have committed our polished update to GitHub and have a testcase prepared for the view that we have defined.
Each time a pull request or push is made to master, we want GitHub to automatically initiate a build and run all of our tests. The build and testing weren't triggered by GitHub Actions after we published to main.
Make a new folder in your.github called workflows: The YAML file editor is where all your files will be made. In order to get our build and test routines up and running, we need to make a first workflow. To accomplish this, we make a new file ending in.yml. Put the name "build test.yml" in this file's name. Incorporate the following into the newly produced yaml file:
name: Build and Test
on:
push:
branches: [master]
pull_request:
branches: [master]
jobs:
test:
runs-on: ubuntu-latest
steps:
- name: Checkout code
uses: actions/checkout@v2
- name: Set up Python Environment
uses: actions/setup-python@v2
with:
python-version: '3.x'
- name: Install Dependencies
run: |
python -m pip install --upgrade pip
pip install -r requirements.txt
- name: Run Tests
run: |
python manage.py test
deploy:
needs: [test]
runs-on: ubuntu-latest
steps:
- name: Checkout GitHub source code
uses: actions/checkout@v2
- name: Generate deployment package
run: zip -r deploy.zip . -x '*.git*'
- name: Deploy to AWS Elastic Beanstalk
uses: einaregilsson/beanstalk-deploy@v20
with:
aws_access_key: ${{ secrets.AWS_ACCESS_KEY_ID }}
aws_secret_key: ${{ secrets.AWS_SECRET_ACCESS_KEY }}
application_name: django-github-actions-aws
environment_name: Djangogithubactionsaws-env
version_label: "ver-${{ github.sha }}"
use_existing_version_if_available: true
region: "ap-southeast-1"
deployment_package: deploy.zip
Part1:S2 Push/PR DEV branch code to GitHub Repository
Now that you've defined a workflow by adding the config file in the designated folder, you can commit and push your change to your remote repo.
Let's create Pull Request and Merge it to Master branch.
While our PR being check, you can see our GitHub Action already running;
If you navigate to the Actions tab of your remote repo, you should see a workflow with the name Build and Test (the name which we've given it) listed there. As of now, we can see our Deploy jobs is failed, since we not setup yet our AWS Beanstalk. So this output is expected, don't worry, we will setup it later.
PART 2: How to Automatically Deploy Our Code to AWS - Continuous Deployment (CD)
Prerequisites
Part2:P1 AWS AWS_ACCESS_KEY_ID & AWS_SECRET_ACCESS_KEY
Go to AWS Management Console -> IAM -> User -> Access Key
Please copy and paste Access Key and Secret to your Notepad/any place you prefered, since we will reuse it when we want to setup our secret in GitHub repository later.
Part2:P2 Elastic Beanstalk environment
Before showing the workflow, we must have an operating environment to receive our Django app from GitHub Actions. Since we will use DJango Python as our language, hence, create a new Environment as below.
3.1 Create a new Beanstalk applicaton
Finally, we have created our Beanstalk Sample App
STEPS:
Part2:S1 Configure GitHub Secret
Previously, we have copy our AWS Access Key and Secret Key, now go to GitHub Repository Setting. Then, go to Secret below.
Choose "Action" menu, then click "New repository secret" button;
Give your secret name, please follow back what you had defined in our workflow script above.
AWS_ACCESS_KEY_ID:
AWS_SECRET_ACCESS_KEY:
Part2:S2 Configure your Project for Elastic Beanstalk
Our project's application.py file is the default location where Elastic Beanstalk will look for our code. Our application cannot run without that file, but it is not included in our repository. The Elastic Beanstalk must be instructed to use the wsgi.py file in our project rather than the default python servlet container. Here's what you need to do:
In the root of your project's directory, make a new folder and label it.ebextensions. Make a configuration file in that directory. What you want to call it is up to you. My file is called eb.config. The following should be included in your configuration file:
option_settings:
aws:elasticbeanstalk:container:python:
WSGIPath: django_github_actions_aws.wsgi:application
Part2:S3 Update and finalize your Workflow File
Please update all 5 parameters below with your parameters:
- Your AWS Access Key.
- Your AWS Secret Key.
- Beanstalk's Application Name.
- Beanstalk's Environment Name.
- AWS Region that want to deploy.
This step utilizes einaregilsson/beanstalk-deploy@v20. Actions are reusable apps that handle often repeated activities. the e inaregilsson/beanstalk-deploy@v20 is one.m To emphasize the above, remember our deployment step:
GitHub->AmazonS3->Elastic Beanstalk
We didn't set up Amazon s3 in this tutorial. We didn't upload to or pull from an S3 bucket in our workflow file. The einaregilsson/beanstalk-deploy@v20 operation performs all that for us. You can construct your own action to handle monotonous activities and sell it on GitHub Marketplace.
Now that you've updated your workflow file locally, you can then commit and push this change to your remote. Your jobs will run and your code will be deployed to the Elastic Beanstalk instance you created.
You also can check the log on deploy jobs to our AWS Beanstalk below.
Lastly, we have updated our Sample App to new code below.
Conclusion
Good lord, this one was a marathon, right? I concluded by defining CI/CD Pipeline, Amazon Web Services (AWS), and GitHub Actions. We also learned how to set up GitHub Actions for automated code deployment to an AWS Elastic Beanstalk environment.
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