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Bootstrapping an Amazon EC2 Instance Using User-data to Run a Python Web App

Bootstrapping an Amazon EC2 Instance Using User-data to Run a Python Web App

Deploy a Python web application to an EC2 instance running Nginx and uWSGI, using a CI/CD Pipeline created with Amazon CDK.

CB
Cobus Bernard
Amazon Employee
Published Apr 21, 2023
Last Modified Mar 19, 2024
Co-authored with Darko Mesaros, image generated with Amazon Bedrock.
Manually setting up and configuring the packages required to run a Python web app using Nginx and uWSGI on a server can be time consuming β€” and it's tough to accomplish without any errors. But why do that hard work when you can automate it? Using AWS CDK, we can set up user data scripts and an infrastructure to preconfigure an EC2 instance - which in turn will turn a manual, time-intensive process into a snap. In this tutorial, we will be using a combination of bash scripts and AWS CodeDeploy to install and configure Nginx and uWSGI, set up a systemd service for uWSGI, and copy our application using CDK. Then, we are going to deploy our Python-based web application from a GitHub repository. We will cover how to:
  • Create an AWS CDK stack with an Amazon EC2 instance, a CI/CD Pipeline, and the required resources for it to operate.
  • Install software packages on the EC2 instance's first launch by creating a user data asset.
  • Test, Deploy and Configure the web application using the CI/CD pipeline.
About
βœ… AWS experience200 - Intermediate
⏱ Time to complete60 minutes
πŸ’° Cost to completeFree tier eligible
🧩 Prerequisites- AWS account
-CDK installed: Visit Get Started with AWS CDK to learn more.
πŸ’» Code SampleCode sample used in tutorial on GitHub
πŸ“’ FeedbackAny feedback, issues, or just a πŸ‘ / πŸ‘Ž ?
⏰ Last Updated2024-01-29

Introduction

To deploy this web application we will be using AWS CDK to create and deploy the underlying infrastructure. This infrastructure will consist of an EC2 instance, a VPC, CI/CD pipeline, and accompanying resources required for it to operate (Security Groups and IAM permissions).

Setting up the CDK project

First, let's check if our CDK version is up to date β€” this guide is based on v2 of the CDK. If you are still using v1, please read through the migration docs. To check the version, run the following:
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cdk --version

# 2.122.0 (build 7e77e02)
If you see output showing 1.x.x, or you just want to ensure you are on the latest version, run the following:
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npm install -g aws-cdk
We will now create the skeleton CDK application using TypeScript as our language of choice:
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mkdir ec2-cdk
cd ec2-cdk
cdk init app --language typescript

# Output:

Applying project template app for typescript
# Welcome to your CDK TypeScript project

This is a blank project for CDK development with TypeScript.

The `cdk.json` file tells the CDK Toolkit how to execute your app.

## Useful commands

* `npm run build` compile typescript to js
* `npm run watch` watch for changes and compile
* `npm run test` perform the jest unit tests
* `cdk deploy` deploy this stack to your default AWS account/region
* `cdk diff` compare deployed stack with current state
* `cdk synth` emits the synthesized CloudFormation template

Initializing a new git repository...
Executing npm install...
npm WARN deprecated w3c-hr-time@1.0.2: Use your platform's native performance.now() and performance.timeOrigin.
npm notice
npm notice New patch version of npm available! 8.19.2 β†’ 8.19.3
npm notice Changelog: https://github.com/npm/cli/releases/tag/v8.19.3
npm notice Run npm install -g npm@8.19.3 to update!
npm notice
βœ… All done!

Create the Code for the Resource Stack

CDK uses the folder name for the files it generates. For this tutorial, we will be using ec2-cdk. If you named your directory differently, please replace this with the folder name you used. To start adding infrastructure, go to the file lib/ec2-cdk-stack.ts. This is where we will write the code for the resource stack you are going to create.
A resource stack is a set of cloud infrastructure resources (in your particular case, they will be all AWS resources) that will be provisioned into a specific account. The account and Region where these resources are provisioned can be configured in the stack β€” which we will cover later on.
In this resource stack, you are going to create the following resources:
  • IAM roles: This role will be assigned to the EC2 instance to allow it to call other AWS services.
  • EC2 instance: The virtual machine you will use to host your web application.
  • Security group: The virtual firewall to allow inbound requests to your web application.
  • Secrets manager secret: This is a place where you will store your Github Token that we will use to authenticate the pipeline to it.
  • CI/CD Pipeline: This pipeline will consist of AWS CodePipeline, AWS CodeBuild, and AWS CodeDeploy.

Create the EC2 Instance

In this segment we will create the EC2 instance and its required resources. During the course of this tutorial, there will be code checkpoints where we show what the full file should look like at that point. We do recommend following step-by-step by typing out or copying and pasting the sample code blocks to ensure you understand what each code block does.
To start off, we will create the needed IAM role for your EC2 instance. This role will be used to give your instance permission to interact with AWS Systems Manager and AWS CodeDeploy. This will be important later in the tutorial. To get started, make sure you import the following modules into your main stack. (lib/ec2-cdk-stack.ts):
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import { readFileSync } from 'fs';
import { Vpc, SubnetType, Peer, Port, AmazonLinuxGeneration,
AmazonLinuxCpuType, Instance, SecurityGroup, AmazonLinuxImage,
InstanceClass, InstanceSize, InstanceType
} from 'aws-cdk-lib/aws-ec2';
import { Role, ServicePrincipal, ManagedPolicy } from 'aws-cdk-lib/aws-iam';
Then add the following lines to create a role and attach the needed managed IAM Policies:
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const webServerRole = new Role(this, "ec2Role", {
assumedBy: new ServicePrincipal("ec2.amazonaws.com"),
});

// IAM policy attachment to allow access to
webServerRole.addManagedPolicy(
ManagedPolicy.fromAwsManagedPolicyName("AmazonSSMManagedInstanceCore")
);

webServerRole.addManagedPolicy(
ManagedPolicy.fromAwsManagedPolicyName("service-role/AmazonEC2RoleforAWSCodeDeploy")
);
Next step is to create a VPC where our EC2 instance will be residing. We are creating a VPC with three Public subnets only, so there will be no NAT Gateways, or private subnets.
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// This VPC has 3 public subnets, and that's it
const vpc = new Vpc(this, 'main_vpc',{
subnetConfiguration: [
{
cidrMask: 24,
name: 'pub01',
subnetType: SubnetType.PUBLIC,
},
{
cidrMask: 24,
name: 'pub02',
subnetType: SubnetType.PUBLIC,
},
{
cidrMask: 24,
name: 'pub03',
subnetType: SubnetType.PUBLIC,
}
]
});
We also need to be able to access our instance via http (port 80). To allow traffic to this port, we need to set up firewall rules by creating a security group. We will set up port 80 to allow HTTP traffic to come to the instance from any location on the internet.
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// Security Groups
// This SG will only allow HTTP traffic to the Web server
const webSg = new SecurityGroup(this, 'web_sg',{
vpc,
description: "Allows Inbound HTTP traffic to the web server.",
allowAllOutbound: true,
});

webSg.addIngressRule(
Peer.anyIpv4(),
Port.tcp(80)
);
We're now ready to create the EC2 instance using a pre-built Amazon Machine Image (AMI - pronounced "Ay-Em-Eye") β€” for this tutorial, we will be using the Amazon Linux 2023 AMI for X86_64 CPU architecture. We will also pass the IAM role and VPC created earlier, and the instance type to run on, in your case, a t2.micro that has 1 vCPU and 1GB of memory. If you are running this tutorial in one of the newer AWS Regions, the t2.micro type may not be available. Just use the t3.micro one instead. To view all the different instance types, see the EC2 instance types page.
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// the AMI to be used for the EC2 Instance
const ami = new AmazonLinuxImage({
generation: AmazonLinuxGeneration.AMAZON_LINUX_2023,
cpuType: AmazonLinuxCpuType.X86_64,
});

// The actual Web EC2 Instance for the web server
const webServer = new Instance(this, 'web_server',{
vpc,
instanceType: InstanceType.of(
InstanceClass.T2,
InstanceSize.MICRO,
),
machineImage: ami,
securityGroup: webSg,
role: webServerRole,
});
Finally we are attaching User Data and tagging the instance with specific tags. The user data is used to bootstrap the EC2 instance and install specific application packages on the instance's first boot. The tags are used by Systems Manager to identify the instance later on for deployments.
Here is the user data bash script we will be attaching to the EC2 Instance. Make sure this code sits in a file named configure_amz_linux_sample_app.sh in the assets directory in the root of your CDK Application.
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#!/bin/bash -xe
# Install OS packages
yum update -y
yum groupinstall -y "Development Tools"
amazon-linux-extras install -y nginx1
yum install -y nginx python3.11 python3.11-pip python3.11-devel ruby wget
python3.11 -m pip install pipenv wheel
python3.11 -m pip install uwsgi

# Code Deploy Agent
cd /home/ec2-user
wget https://aws-codedeploy-us-west-2.s3.us-west-2.amazonaws.com/latest/install
chmod +x ./install
./install auto
Now, use CDK to attach the user data script and add tags to the instance:
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// User data - used for bootstrapping
const webSGUserData = readFileSync('./assets/configure_amz_linux_sample_app.sh','utf-8');
webServer.addUserData(webSGUserData);
// Tag the instance
cdk.Tags.of(webServer).add('application-name','python-web')
cdk.Tags.of(webServer).add('stage','prod')
Additionally, we will configure outputs to easily track down the EC2 instance's IP address:
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// Output the public IP address of the EC2 instance
new cdk.CfnOutput(this, "IP Address", {
value: webServer.instancePublicIp,
});
We have now defined our AWS CDK stack to create an EC2 instance, a VPC, a security group with inbound access rules, and an IAM role, attached to the EC2 instance as an IAM instance profile. On top of that, we have tagged the EC2 instance and attached a user data script to it.

βœ… βœ… βœ… Checkpoint 1 βœ… βœ… βœ…

Your lib/ec2-cdk-stack.ts file should now look like this:
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import * as cdk from 'aws-cdk-lib';
import { readFileSync } from 'fs';
import { Construct } from 'constructs';

import { Vpc, SubnetType, Peer, Port, AmazonLinuxGeneration,
AmazonLinuxCpuType, Instance, SecurityGroup, AmazonLinuxImage,
InstanceClass, InstanceSize, InstanceType
} from 'aws-cdk-lib/aws-ec2';

import { Role, ServicePrincipal, ManagedPolicy } from 'aws-cdk-lib/aws-iam';

export class Ec2CdkStack extends cdk.Stack {
constructor(scope: Construct, id: string, props?: cdk.StackProps) {
super(scope, id, props);
// IAM
// Policy for CodeDeploy bucket access
// Role that will be attached to the EC2 instance so it can be
// managed by AWS SSM
const webServerRole = new Role(this, "ec2Role", {
assumedBy: new ServicePrincipal("ec2.amazonaws.com"),
});

// IAM policy attachment to allow access to
webServerRole.addManagedPolicy(
ManagedPolicy.fromAwsManagedPolicyName("AmazonSSMManagedInstanceCore")
);

webServerRole.addManagedPolicy(
ManagedPolicy.fromAwsManagedPolicyName("service-role/AmazonEC2RoleforAWSCodeDeploy")
);

// VPC
// This VPC has 3 public subnets, and that's it
const vpc = new Vpc(this, 'main_vpc',{
subnetConfiguration: [
{
cidrMask: 24,
name: 'pub01',
subnetType: SubnetType.PUBLIC,
},
{
cidrMask: 24,
name: 'pub02',
subnetType: SubnetType.PUBLIC,
},
{
cidrMask: 24,
name: 'pub03',
subnetType: SubnetType.PUBLIC,
}
]
});

// Security Groups
// This SG will only allow HTTP traffic to the Web server
const webSg = new SecurityGroup(this, 'web_sg',{
vpc,
description: "Allows Inbound HTTP traffic to the web server.",
allowAllOutbound: true,
});

webSg.addIngressRule(
Peer.anyIpv4(),
Port.tcp(80)
);

// EC2 Instance
// This is the Python Web server that we will be using
// Get the latest AmazonLinux 2 AMI for the given region
const ami = new AmazonLinuxImage({
generation: AmazonLinuxGeneration.AMAZON_LINUX_2023,
cpuType: AmazonLinuxCpuType.X86_64,
});

// The actual Web EC2 Instance for the web server
const webServer = new Instance(this, 'web_server',{
vpc,
instanceType: InstanceType.of(
InstanceClass.T2,
InstanceSize.MICRO,
),
machineImage: ami,
securityGroup: webSg,
role: webServerRole,
});

// User data - used for bootstrapping
const webSGUserData = readFileSync('./assets/configure_amz_linux_sample_app.sh','utf-8');
webServer.addUserData(webSGUserData);
// Tag the instance
cdk.Tags.of(webServer).add('application-name','python-web')
cdk.Tags.of(webServer).add('stage','prod')

// Output the public IP address of the EC2 instance
new cdk.CfnOutput(this, "IP Address", {
value: webServer.instancePublicIp,
});
}
}

Setting up GitHub

Now we are going to fork the sample application to your own GitHub account and configure a Github Token to be used by the CI/CD pipeline.
It is best practice to use tokens instead of passwords to access your GitHub account via GitHub API or command line. Read more about creating a personal access token.
Save the token in a safe place for later use. We will be using this token for two purposes:
  1. To provide authentication to stage, commit, and push code from local repo to the GitHub repo. You may also use SSH keys for this.
  2. To connect GitHub to CodePipeline, so whenever new code is committed to GitHub repo it automatically triggers pipeline execution.
The token should have the scopes repo (to read the repository) and admin:repo_hook (if you plan to use webhooks, true by default) as shown in the image below.
Github Token Scopes
Now, for AWS CodePipeline to read from this GitHub repo, we need to configure the GitHub personal access token we just created. This token should be stored as a plaintext secret (not a JSON secret) in AWS Secrets Manager under the exact name github-oauth-token.
Replace GITHUB_ACCESS_TOKEN with your plaintext secret and REGION in following command and run it:
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aws secretsmanager create-secret \
--name github-oauth-token \
--description "Github access token for cdk" \
--secret-string GITHUB_ACCESS_TOKEN \
--region REGION
Finally, let's now go ahead and fork the Sample Application repo into our own GitHub Account. This is how we will be interacting with this application from now on. More information on forking repositories can be found here.

Creating the CI/CD Pipeline

It's time to create a CI/CD Pipeline. This CI/CD pipeline will be responsible for testing, deploying, and configuring our Web app on our EC2 Instance. The pipeline itself will consist of three phases: 1/ Source - This is where the pipeline extracts the commit from your GitHub repository we forked earlier; 2/ Build - A stage where we test the Application code using the unittest Python Unit Testing Framework; and 3/ Deploy - Deploying and configuring the web application on the EC2 instance using AWS CodeDeploy. Let's get back to CDK.
To start off, let's import additional modules into our main CDK stack file lib/ec2-cdk-stack.ts:
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import { Pipeline, Artifact } from 'aws-cdk-lib/aws-codepipeline';
import { GitHubSourceAction, CodeBuildAction, CodeDeployServerDeployAction } from 'aws-cdk-lib/aws-codepipeline-actions';
import { PipelineProject, LinuxBuildImage } from 'aws-cdk-lib/aws-codebuild';
import { ServerDeploymentGroup, ServerApplication, InstanceTagSet } from 'aws-cdk-lib/aws-codedeploy';
import { SecretValue } from 'aws-cdk-lib';
Let's now create the pipeline and its stages, this is just us defining the pipeline and the skeleton of different stages/phases:
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// CodePipeline
const pipeline = new Pipeline(this, 'python_web_pipeline',{
pipelineName: 'python-webApp',
crossAccountKeys: false, // solves the encrypted bucket issue
});

// STAGES
// Source Stage
const sourceStage = pipeline.addStage({
stageName: 'Source',
})

// Build Stage
const buildStage = pipeline.addStage({
stageName: 'Build',
})

// Deploy Stage
const deployStage = pipeline.addStage({
stageName: 'Deploy',
})
We will start with the Source stage, as here is where we connect the pipeline to Github, so it can retrieve our code commits to be passed down the pipeline. Some important parts to take note of here: make sure to set up the github token as a secret in AWS Secrets Manager (check the steps above), and ensure to change the owner parameter to match that of your GitHub username:
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// Source action
const sourceOutput = new Artifact();
const githubSourceAction = new GitHubSourceAction({
actionName: 'GithubSource',
oauthToken: SecretValue.secretsManager('github-oauth-token'), // MAKE SURE TO SET UP BEFORE
owner: 'darko-mesaros', // THIS NEEDS TO BE CHANGED TO YOUR OWN USER ID
repo: 'sample-python-web-app',
branch: 'main',
output: sourceOutput,
});

sourceStage.addAction(githubSourceAction);
On to the Build stage: we are not actually building anything, but rather testing the code. In this stage, we are running unit tests against our code (which we will set up later), and if successful, it continues along to the next next stage.
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// Build Action
const pythonTestProject = new PipelineProject(this, 'pythonTestProject',{
environment: {
buildImage: LinuxBuildImage.AMAZON_LINUX_2_5
}
});

const pythonTestOutput = new Artifact();

const pythonTestAction = new CodeBuildAction({
actionName: 'TestPython',
project: pythonTestProject,
input: sourceOutput,
outputs: [pythonTestOutput]
});

buildStage.addAction(pythonTestAction);
And finally the Deploy stage: this stage uses CodeDeploy to deploy and configure the web application on the EC2 instance. For this to work, we need to have the CodeDeploy agent installed and running on the instance (which we did before with the user data), and also we need to tell CodeDeploy which instances to target for deployment. We will be using tags for this. If you recall, earlier in this tutorial we tagged the EC2 instance with specific tags. Now we are using those tags to target the instances with CodeDeploy, and deploy the code.
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// Deploy Actions
const pythonDeployApplication = new ServerApplication(this,"python_deploy_application",{
applicationName: 'python-webApp'
});

// Deployment group
const pythonServerDeploymentGroup = new ServerDeploymentGroup(this,'PythonAppDeployGroup',{
application: pythonDeployApplication,
deploymentGroupName: 'PythonAppDeploymentGroup',
installAgent: true,
ec2InstanceTags: new InstanceTagSet(
{
'application-name': ['python-web'],
'stage':['prod', 'stage']
})
});

// Deployment action
const pythonDeployAction = new CodeDeployServerDeployAction({
actionName: 'PythonAppDeployment',
input: sourceOutput,
deploymentGroup: pythonServerDeploymentGroup,
});

deployStage.addAction(pythonDeployAction);

βœ… βœ… βœ… Checkpoint 2 βœ… βœ… βœ…

We have now completed all code changes to our CDK app, and the lib/ec2-cdk-stack.ts file should look like this:
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import * as cdk from 'aws-cdk-lib';
import { readFileSync } from 'fs';
import { Construct } from 'constructs';

import { Vpc, SubnetType, Peer, Port, AmazonLinuxGeneration,
AmazonLinuxCpuType, Instance, SecurityGroup, AmazonLinuxImage,
InstanceClass, InstanceSize, InstanceType
} from 'aws-cdk-lib/aws-ec2';

import { Role, ServicePrincipal, ManagedPolicy } from 'aws-cdk-lib/aws-iam';
import { Pipeline, Artifact } from 'aws-cdk-lib/aws-codepipeline';
import { GitHubSourceAction, CodeBuildAction, CodeDeployServerDeployAction } from 'aws-cdk-lib/aws-codepipeline-actions';
import { PipelineProject, LinuxBuildImage } from 'aws-cdk-lib/aws-codebuild';
import { ServerDeploymentGroup, ServerApplication, InstanceTagSet } from 'aws-cdk-lib/aws-codedeploy';
import { SecretValue } from 'aws-cdk-lib';

export class Ec2CdkStack extends cdk.Stack {
constructor(scope: Construct, id: string, props?: cdk.StackProps) {
super(scope, id, props);
// IAM
// Policy for CodeDeploy bucket access
// Role that will be attached to the EC2 instance so it can be
// managed by AWS SSM
const webServerRole = new Role(this, "ec2Role", {
assumedBy: new ServicePrincipal("ec2.amazonaws.com"),
});

// IAM policy attachment to allow access to
webServerRole.addManagedPolicy(
ManagedPolicy.fromAwsManagedPolicyName("AmazonSSMManagedInstanceCore")
);

webServerRole.addManagedPolicy(
ManagedPolicy.fromAwsManagedPolicyName("service-role/AmazonEC2RoleforAWSCodeDeploy")
);

// VPC
// This VPC has 3 public subnets, and that's it
const vpc = new Vpc(this, 'main_vpc',{
subnetConfiguration: [
{
cidrMask: 24,
name: 'pub01',
subnetType: SubnetType.PUBLIC,
},
{
cidrMask: 24,
name: 'pub02',
subnetType: SubnetType.PUBLIC,
},
{
cidrMask: 24,
name: 'pub03',
subnetType: SubnetType.PUBLIC,
}
]
});

// Security Groups
// This SG will only allow HTTP traffic to the Web server
const webSg = new SecurityGroup(this, 'web_sg',{
vpc,
description: "Allows Inbound HTTP traffic to the web server.",
allowAllOutbound: true,
});

webSg.addIngressRule(
Peer.anyIpv4(),
Port.tcp(80)
);

// EC2 Instance
// This is the Python Web server that we will be using
// Get the latest AmazonLinux 2 AMI for the given region
const ami = new AmazonLinuxImage({
generation: AmazonLinuxGeneration.AMAZON_LINUX_2023,
cpuType: AmazonLinuxCpuType.X86_64,
});

// The actual Web EC2 Instance for the web server
const webServer = new Instance(this, 'web_server',{
vpc,
instanceType: InstanceType.of(
InstanceClass.T3,
InstanceSize.MICRO,
),
machineImage: ami,
securityGroup: webSg,
role: webServerRole,
});

// User data - used for bootstrapping
const webSGUserData = readFileSync('./assets/configure_amz_linux_sample_app.sh','utf-8');
webServer.addUserData(webSGUserData);
// Tag the instance
cdk.Tags.of(webServer).add('application-name','python-web')
cdk.Tags.of(webServer).add('stage','prod')

// Pipeline stuff
// CodePipeline
const pipeline = new Pipeline(this, 'python_web_pipeline', {
pipelineName: 'python-webApp',
crossAccountKeys: false, // solves the encrypted bucket issue
});

// STAGES
// Source Stage
const sourceStage = pipeline.addStage({
stageName: 'Source',
});

// Build Stage
const buildStage = pipeline.addStage({
stageName: 'Build',
});

// Deploy Stage
const deployStage = pipeline.addStage({
stageName: 'Deploy',
});

// Add some action
// Source action
const sourceOutput = new Artifact();
const githubSourceAction = new GitHubSourceAction({
actionName: 'GithubSource',
oauthToken: SecretValue.secretsManager('github-oauth-token'), // SET UP BEFORE
owner: 'darko-mesaros', // THIS NEEDS TO BE CHANGED TO THE READER
repo: 'sample-python-web-app',
branch: 'main',
output: sourceOutput,
});

sourceStage.addAction(githubSourceAction);

// Build Action
const pythonTestProject = new PipelineProject(this, 'pythonTestProject', {
environment: {
buildImage: LinuxBuildImage.AMAZON_LINUX_2_5
}
});

const pythonTestOutput = new Artifact();
const pythonTestAction = new CodeBuildAction({
actionName: 'TestPython',
project: pythonTestProject,
input: sourceOutput,
outputs: [pythonTestOutput]
});

buildStage.addAction(pythonTestAction);

// Deploy Actions
const pythonDeployApplication = new ServerApplication(this,"python_deploy_application", {
applicationName: 'python-webApp'
});

// Deployment group
const pythonServerDeploymentGroup = new ServerDeploymentGroup(this,'PythonAppDeployGroup', {
application: pythonDeployApplication,
deploymentGroupName: 'PythonAppDeploymentGroup',
installAgent: true,
ec2InstanceTags: new InstanceTagSet(
{
'application-name': ['python-web'],
'stage':['prod', 'stage']
})
});

// Deployment action
const pythonDeployAction = new CodeDeployServerDeployAction({
actionName: 'PythonAppDeployment',
input: sourceOutput,
deploymentGroup: pythonServerDeploymentGroup,
});

deployStage.addAction(pythonDeployAction);

// Output the public IP address of the EC2 instance
new cdk.CfnOutput(this, "IP Address", {
value: webServer.instancePublicIp,
});
}
}

Additional Files for Testing and Deploying

To properly test and deploy our application, we will need to add some additional content to the sample repository we forked earlier. These files are used by the CodeBuild and CodeDeploy services. On top of that, we will write a simple Python unit test. Let's start with that.
To create our tests, in the root directory of the sample application create a tests directory, and add the following test_sample.py file to it:
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import unittest
from application import application

class TestHello(unittest.TestCase):

def setUp(self):
application.testing = True
self.application = application.test_client()

def test_hello(self):
rv = self.application.get('/')
self.assertEqual(rv.status, '200 OK')

if __name__ == '__main__':
import xmlrunner
unittest.main(testRunner=xmlrunner.XMLTestRunner(output='test-reports'))
unittest.main()
This test will run the Flask application and see if it returns a 200 HTTP status code. Simple as that. On top of this file, just for posterity, let's create a __init__.py file in the same directory. This file can be empty so you can just create it with the following command:
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touch tests/__init__.py
We are now ready to create the buildspec.yml file. This file is used by CodeDeploy as an instruction set of what it needs to do to build your code. In our case, we are instructing it on how to run the tests. In the root directory of the sample application, add the buildspec.yml file with the following contents:
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version: 0.2

phases:
install:
runtime-versions:
python: 3.11
commands:
- echo Entered the install phase...
- pip install pipenv
- pipenv install
finally:
- echo This always runs even if the update or install command fails
build:
commands:
- echo Entered the build phase...
- echo Build started on `date`
- pipenv run python -m unittest # not an interactive session so we need to run
finally:
- echo This always runs even if the install command fails
post_build:
commands:
- echo Entered the post_build phase...
- echo Build completed on `date`
Finally, let's add some much needed files for CodeDeploy. Similarly to CodeBuild, CodeDeploy takes a file called appspec.yml as an instruction set on how to deploy your application to its final destination. On top of that file, we will be adding a few shell scripts to configure and launch the application on the server. This is needed as we need to create a specific nginx website, and do some service restarts. But let's first create the appspec.yml file in the root of the sample application directory, with the following contents:
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version: 0.0
os: linux
files:
- source: /
destination: /var/www/SampleApp
hooks:
BeforeInstall:
- location: scripts/setup_dirs.sh
timeout: 300
runas: root
AfterInstall:
- location: scripts/setup_services.sh
- location: scripts/pipenv.sh
timeout: 300
runas: root
ApplicationStart:
- location: scripts/start_server.sh
timeout: 300
runas: root
As you can see, here we are involving 4 different scripts in different phases of the deployment. This is required to properly set up the EC2 instance before and after code deployment. These scripts should sit in a directory called scripts in the root of the sample application. These scripts should be named as follows, and should contain the following contents:
setup_dirs.sh
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#!/bin/bash -xe
mkdir -p /var/www/SampleApp
chown nginx:nginx /var/www
chown nginx:nginx /var/www/SampleApp
setup_services.sh
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#!/bin/bash -xe
## Install uWSGI as a systemd service, enable it to run at boot, then start it
cp /var/www/SampleApp/sample-app.uwsgi.service /etc/systemd/system/mywebapp.uwsgi.service
mkdir -p /var/log/uwsgi
chown nginx:nginx /var/log/uwsgi
systemctl enable mywebapp.uwsgi.service

## Copy the nginx config file, then ensure nginx starts at boot, and restart it to load the config
cp /var/www/SampleApp/nginx-app.conf /etc/nginx/conf.d/nginx-app.conf
mkdir -p /var/log/nginx
chown nginx:nginx /var/log/nginx
systemctl enable nginx.service
pipenv.sh
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#!/bin/bash -xe

chown nginx:nginx -R /var/www/SampleApp/
cd /var/www/SampleApp
pipenv install
start_server.sh
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#!/bin/bash -xe
systemctl restart mywebapp.uwsgi.service
systemctl restart nginx.service
Lastly, make sure to update the Pipfile at the root of your sample application repository so it reflects the following:
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[[source]]
name = "pypi"
url = "https://pypi.org/simple"
verify_ssl = true

[dev-packages]

[packages]
flask = "*"
boto3 = "*"
uwsgi = "*"

[requires]
python_version = "3.11"
Once all these files are created, the sample application directory should look like this:
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β”œβ”€β”€ application.config
β”œβ”€β”€ application.py
β”œβ”€β”€ appspec.yml
β”œβ”€β”€ buildspec.yml
β”œβ”€β”€ CODE_OF_CONDUCT.md
β”œβ”€β”€ configure_amz_linux_sample_app.sh
β”œβ”€β”€ CONTRIBUTING.md
β”œβ”€β”€ Dockerfile
β”œβ”€β”€ LICENSE
β”œβ”€β”€ nginx-app.conf
β”œβ”€β”€ Pipfile
β”œβ”€β”€ README.md
β”œβ”€β”€ sample-app.uwsgi.service
β”œβ”€β”€ scripts
β”‚Β Β  β”œβ”€β”€ pipenv.sh
β”‚Β Β  β”œβ”€β”€ setup_dirs.sh
β”‚Β Β  β”œβ”€β”€ setup_services.sh
β”‚Β Β  └── start_server.sh
β”œβ”€β”€ start.sh
β”œβ”€β”€ static
β”‚Β Β  β”œβ”€β”€ bootstrap
β”‚Β Β  └── jquery
β”œβ”€β”€ templates
β”‚Β Β  └── index.html
└── tests
β”œβ”€β”€ __init__.py
β”œβ”€β”€ __pycache__
└── test_sample.py
Now make sure to add, commit, and push your changes to the sample code to your GitHub Repository before we continue to the next step and deploy the infrastructure.

Bootstrap CDK

Before we can deploy our CDK app, we need to configure CDK on the account you are deploying to. Edit the bin/ec2-cdk.ts and uncomment line 14:
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env: { account: process.env.CDK_DEFAULT_ACCOUNT, region: process.env.CDK_DEFAULT_REGION },
This will use the account ID and Region configured in the AWS CLIβ€”if you have not yet set this up, please follow this tutorial section. We also need to bootstrap CDK in our account. This will create the required infrastructure for CDK to manage infrastructure in your account, and it only needs to be done once per account. If you have already done the bootstrapping, or aren't sure, you can just run the command again. It will only bootstrap if needed. To bootstrap CDK, run cdk bootstrap (your account ID will be different from the placeholder ones below):
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cdk bootstrap

#output
⏳ Bootstrapping environment aws://0123456789012/<region>...
βœ… Environment aws://0123456789012/<region> bootstrapped
Deploying the stack
Once the bootstrapping has completed, we're ready to deploy all the infrastructure. Run the following:
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cdk deploy
You will be presented with the following output and confirmation screen. Because there are security implications for our stack, you will see a summary of these and need to confirm them before deployment proceeds. This will always be shown if you are creating, modifying, or deleting any IAM policy, role, group, or user, and when you change any firewall rules.
CDK output showing infrastructure it will create, with a security confirmation to create the required IAM role.
Enter y to continue with the deployment and create the resources. The CLI will show the deployment progress, and in the end, the output we defined in our CDK app.
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Do you wish to deploy these changes (y/n)? y
PythonEc2BlogpostStack: deploying...
[0%] start: Publishing afe67465ec62603d27d77795221a45e68423c87495467b0265ecdadad80bb5e2:current
[33%] success: Published afe67465ec62603d27d77795221a45e68423c87495467b0265ecdadad80bb5e2:current
[33%] start: Publishing 73887b77b71ab7247eaf6dc4647f03f9f1cf8f0da685460f489ec8f2106d480d:current
[66%] success: Published 73887b77b71ab7247eaf6dc4647f03f9f1cf8f0da685460f489ec8f2106d480d:current
[66%] start: Publishing 13138ebf2da51426144f6f5f4f0ad197787f52aad8b6ceb26ecff68d33cd2b78:current
[100%] success: Published 13138ebf2da51426144f6f5f4f0ad197787f52aad8b6ceb26ecff68d33cd2b78:current
Ec2CdkStack: creating CloudFormation changeset...

βœ… PythonEc2BlogpostStack

✨ Deployment time: 27.74s

Outputs:
PythonEc2BlogpostStack.IPAddress = x.x.x.x
Stack ARN:
arn:aws:cloudformation:us-west-2:123456789000:stack/Ec2CdkStack/59f1e560-grunf-11ed-afno1-06f3bbc9cf63

✨ Total time: 29.11s
Your infrastructure is now deployed, the instance is spinning up, and you can use the outputs at the bottom that indicate the IP address of your web server. The application will not be immediately available, as it needs to be deployed. To check the status of the deployment, head over to the AWS CodePipeline console and find the python-webApp pipeline. There you should see something similar to this:
CodePipeline deployment in stages shown on the AWS Console.
After the deployment is successful (the Deploy stage should be green), copy and then paste the IP address of your EC2 instance in your browser, and your sample application should be up and running. Congratulations! You have set up a Python web application running on an EC2 instance, with a CI/CD pipeline to test and deploy and changes!

Cleaning Up Your AWS Environment

You have now completed this tutorial, but we still need to clean up the resources created during this tutorial. If your account is still in the Free Tier, there will not be any monthly charges. Once out of the Free Tier, it will cost ~$9.45 per month, or $0.0126 per hour.
To remove all the infrastructure we created, use the cdk destroy command. This will only remove infrastructure created during this tutorial in our CDK application. You will see a confirmation:
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cdk destroy

# Enter y to approve the changes and delete any stack resources.
PythonEc2BlogpostStack: destroying ...

βœ… PythonEc2BlogpostStack: destroyed
When the output shows PythonEc2BlogpostStack: destroyed, your resources have been removed. There is one more step for the cleanup: removing the S3 bucket used by CDK to upload the scripts and sample application. These resources aren't deleted by CDK as a safety precaution. Open the S3 console in your browser, and look for a bucket with a name like pythonec2blockpoststack-<randonmunbers>-us-east-1 (yours will have a different random number and your account number instead of 123456789012). If you see more than one (usually if you have used the CDK asset feature before), you can sort by Creation Date to see the latest created one. Open the bucket to confirm that you see a directory called python-webApp. Select all the directory, then choose actions -> delete, and follow the prompts to delete the objects. Lastly, go back to the S3 console, and delete the bucket.

Conclusion

Congratulations! You have finished the Build a Web Application on Amazon EC2 tutorial using CDK to provision all infrastructure, and configured your EC2 instance to install and configure OS packages to run the sample Python web app. If you enjoyed this tutorial, found any issues, or have feedback for us, please send it our way!
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Any opinions in this post are those of the individual author and may not reflect the opinions of AWS.