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HomeBackend DevelopmentPython TutorialFlask and PyCharm integration: Development tips in Python web applications

Python is a very popular programming language that can be used for a variety of different tasks, including web development. In Python, there are many web frameworks to choose from, with Flask being one of the most popular. Flask is a lightweight, reliable, and flexible web framework with an easy-to-use API and a powerful template engine. In the development process of Flask, PyCharm is a very easy-to-use integrated development environment (IDE). This article will introduce how to integrate Flask and PyCharm so that you can develop Python web applications more easily.

Why choose Flask?

When it comes to choosing a Python web framework, there are many different options. Flask is popular because it is very flexible. The core of Flask is very small, but it provides many optional extensions that can be added to the project as needed. Additionally, many developers prefer using Flask because of its easy-to-use API, powerful template engine, and ability to integrate with databases. In short, Flask is a very popular Python web framework worth trying.

Why choose PyCharm?

PyCharm is a very easy-to-use Python integrated development environment. It provides many useful functions to help developers develop Python applications more easily. PyCharm supports all features of the Python language and provides powerful debugging, testing and code analysis tools. In addition, PyCharm provides many third-party extensions that can help developers integrate with other tools more easily. All in all, if you are developing in Python, PyCharm is a great choice.

Steps to integrate Flask and PyCharm

  1. Create a Flask application

First, we need to create a new Flask application. New applications can be created using Flask templates in PyCharm. To create a new Flask application, follow these steps:

  • In PyCharm's main menu, select "File"->"New Project"
  • In the new project In the dialog box, select the "Flask" project type
  • In the project settings dialog box, enter the project name and project path
  • Click the "Create" button to create a new project
  1. Configuring the Flask interpreter in PyCharm

In PyCharm, you can use different interpreters to run Python applications. We need to configure a new Flask interpreter so that PyCharm can correctly recognize Flask's API when debugging and running the application. To configure a new Flask interpreter, follow these steps:

  • In PyCharm's main menu, select "File" -> "Settings"
  • In the settings dialog , select "Project" -> "Project Interpreter"
  • Click the gear icon and select "Add"
  • In the Add Interpreter dialog box, select "Virtualenv Environment" and " New Environment”
  • Select the location and interpreter version to create the virtual environment
  • Click the “OK” button to create a new virtual environment
  1. Set Flask configuration variables

In a Flask application, you can use configuration variables to control the behavior of the application. Configuration variables make applications more flexible and allow developers to easily change the application's behavior when deployed in different environments. To set the Flask configuration variables, edit the app.py file and add the following code:

app.config.from_object('config')

This will configure the Flask application using the variables in the config.py file.

  1. Configuring the debugger in PyCharm

In PyCharm, you can use different debuggers to debug Python applications. We need to configure a new debugger for the Flask application so that we can easily identify requests and variables while debugging. To configure a new debugger, follow these steps:

  • In PyCharm's main menu, select "Run"->"Edit Configurations"
  • In the configuration dialog , click the " " button and select "Python"
  • In the new Python configuration, enter the configuration name and project path
  • In the "Script path" field, enter the Flask application The entry file (usually app.py)
  • In the "Parameters" field, enter "runserver --debugger --reload"
  • Set the interpreter to the previously created virtual environment
  • Click the "OK" button to save the new configuration
  1. Run the Flask application

Now we can run it in PyCharm Flask application. To run a Flask application, follow these steps:

  • Click "Run" -> "Run xxxx" (name of configuration)
  • PyCharm will start the debugger, And open the application in your browser

If everything is fine, you should be able to see the welcome page of your Flask application in your browser. Furthermore, in PyCharm you can use the debugger to inspect requests and variables and easily debug your application in case of errors.

Summarize

In the development process of Python web applications, Flask is a very popular web framework, and PyCharm is a very easy-to-use integrated development environment (IDE). By integrating Flask and PyCharm, you can develop Python web applications more easily and use powerful debugging and testing tools to debug your applications. If you are developing in Python and want to try Flask and PyCharm integration, the steps in this article should help you get started.

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