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Table of Contents
Install Flask and create a project structure
Write the first route and response
Add static resources and multiple pages
Use variables and form processing (optional advanced)
Home Backend Development Python Tutorial Building a simple web application with Python Flask

Building a simple web application with Python Flask

Jul 13, 2025 am 02:50 AM

Flask is a lightweight web framework for beginners, and can be used to quickly build simple websites. 1. Before installing Flask, you should create a virtual environment and install it using pip; 2. The project structure usually includes the main program file app.py, template folder templates, and static resource folder static; 3. Use @app.route() to define routes and return response content, supporting HTML page rendering; 4. When adding CSS or JavaScript files, you must place it in the static folder and reference it through the /static/ path; 5. Support dynamic routing and form processing, and you can receive user input through the request module. Through these basic functions, more complex applications can be gradually expanded.

Building a simple web application with Python Flask

Flask is a very lightweight but powerful framework in Python, which is suitable for building simple web applications. It is fast to get started and has a clear structure, which is especially suitable for beginners or developers who need to quickly implement small projects.

Building a simple web application with Python Flask

Install Flask and create a project structure

First, you need to install Flask. It is recommended to operate in a virtual environment, so that it will not affect the global Python package. You can use venv to create a virtual environment:

 python -m venv venv
source venv/bin/activate # venv\Scripts\activate on Windows
pip install flask

Then, create a new project folder, such as myapp , which contains a main program file, usually named app.py or main.py The basic structure is as follows:

Building a simple web application with Python Flask
 myapp/
├── app.py
└── templates/
    └── index.html

Flask will look for HTML templates in the templates folder by default, so this structure is convenient for subsequent page content.


Write the first route and response

Open app.py and write a basic Hello World example first:

Building a simple web application with Python Flask
 from flask import Flask, render_template

app = Flask(__name__)

@app.route('/')
def home():
    return "Hello, Flask!"

The operation method is also very simple, execute it on the command line:

 flask run

By default, the local http://127.0.0.1:5000/ will be started, and you can see the output content by accessing.

If you want to return an HTML page instead of plain text, you can change return :

 return render_template('index.html')

Then create the corresponding HTML file in the templates folder.


Add static resources and multiple pages

If you want to add CSS or JavaScript files, you can create a static folder in the project root directory, with the structure like this:

 myapp/
├── app.py
├── static/
│ ├── style.css
│ └── script.js
└── templates/
    └── index.html

When referencing these files in HTML, use the path format of /static/文件名, for example:

 <link rel="stylesheet" href="/static/style.css">
<script src="/static/script.js"></script>

As for multiple pages, you only need to continue adding routing functions, such as:

  • /about display about page
  • /contact display contact information
  • Each page corresponds to a @app.route() and a template file

Use variables and form processing (optional advanced)

If you want to make the web page more dynamic, you can use variables to pass the data. For example:

 @app.route(&#39;/greet/<name>&#39;)
def greet(name):
    return f"Hello, {name}!"

You can also use the request module to receive POST requests and process the data submitted by users:

 from flask import request

@app.route(&#39;/login&#39;, methods=[&#39;POST&#39;])
def login():
    username = request.form.get(&#39;username&#39;)
    return f"Welcome, {username}!"

Of course, front-end HTML needs to cooperate with writing a form:

 <form action="/login" method="post">
  <input type="text" name="username">
  <button type="submit">Submit</button>
</form>

Basically that's it. Flask is simple, but it is very flexible. You can start from here and gradually add functions such as database, login verification, front-end and back-end separation to slowly build a more complete application.

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