Overview
In the digital age, spam emails are a persistent nuisance, cluttering inboxes and posing security risks. To combat this, we can leverage artificial intelligence to create a spam detection application. In this blog post, we will guide you through the process of deploying an AI spam detection app built with Python and Flask on an AWS EC2 instance. This application utilizes machine learning to classify emails as spam or not spam, providing a practical solution to a common problem.
What You Will Learn
- How to set up an AWS EC2 instance
- How to install necessary software and dependencies
- How to deploy a Flask application using Gunicorn
- How to configure security settings for your application
Prerequisites
Before we dive into the deployment process, ensure you have the following:
- AWS Account: If you don’t have one, you can create a free-tier account. Create an AWS account here
- Basic Knowledge of Terminal Commands: Familiarity with command-line interfaces will be helpful.
Step 1: Launch the Ubuntu EC2 Instance
1) Log in to your AWS Management Console.
2) Navigate to the EC2 Dashboard.
3) Click Launch Instance.
4) Select an Ubuntu Server AMI (e.g., Ubuntu 20.04 LTS).
5) Choose an Instance Type (e.g., t2.micro for free tier).
6) Create a key pair (.pem)
7) Configure security groups:
- Allow SSH (port 22).
- Add a rule for HTTP (port 80).
8) Launch the instance and connect via EC2 Instance Connect
Step 2: Update the Instance
Once connected to your EC2 instance, it’s a good practice to update the package lists and upgrade the installed packages:
sudo apt update sudo apt upgrade -y
Step 3: Install Python and Pip
1) Next, we need to install Python and Pip, which are essential for running our Flask application:
sudo apt install python3-pip -y
2) Verify the installation:
sudo apt update sudo apt upgrade -y
Step 4: Set Up the Flask App
1) Clone the Flask App Repository: Use Git to clone the repository containing the spam detection app. Replace with the actual URL of your GitHub repository.
sudo apt install python3-pip -y
2) Navigate to the project folder (replace with your actual folder name):
python3 --version pip --version
3) Check the requirements.txt File: Open the requirements.txt file to ensure it lists all necessary dependencies.
git clone <repository-url>
4) Convert Line Endings: If you encounter issues with the requirements.txt file (e.g., it appears encrypted), convert it to Unix-style line endings:
cd <folder-name>
5) Install the dependencies:
nano requirements.txt
Step 5: Run the Flask App (Development Mode)
To test the application, you can run it in development mode:
file requirements.txt sudo apt install dos2unix -y dos2unix requirements.txt
By default, Flask runs on port 5000. You can verify that the app is running by navigating to http://
Step 6: Open Port 5000 in the Security Group
To allow access to your app, you need to open port 5000 in the security group:
1) Go to the EC2 Dashboard in AWS.
2) Select your instance and navigate to the Security tab.
3) Click on the Security Group link.
4) Edit the Inbound Rules to allow TCP traffic on port 5000.
Step 7: Set Up a Production-Ready Server with Gunicorn (optional)
To run your app on a production-ready server, you can use Gunicorn:
1) Install Gunicorn:
pip install -r requirements.txt
2) Run the app with Gunicorn:
python3 app.py
Replace app:app with your actual module and app name if different.
Conclusion
We have successfully deployed your AI spam detection application on AWS EC2! You can now access it via your EC2 public IP. For further enhancements, consider implementing HTTPS and using a reverse proxy like Nginx for better performance and security.
Feel free to check out the screenshot of what the app looks like here
Feel free to ask questions or drop your comments?
The above is the detailed content of Deploying an AI Spam Detection App on AWS EC2. For more information, please follow other related articles on the PHP Chinese website!

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