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Table of Contents
Command line debugging tool: pdb
IDE comes with debugger: PyCharm, VS Code, etc.
Third-party debugging tools: ipdb, pudb, py-spy, etc.
Home Backend Development Python Tutorial What are the different debugging tools available for Python (e.g., pdb, IDE debuggers)?

What are the different debugging tools available for Python (e.g., pdb, IDE debuggers)?

Jun 28, 2025 am 12:56 AM

There are many options for Python debugging tools, suitable for different scenarios. 1. The command line debugger pdb is a standard debugging library built into Python, suitable for basic debugging needs. It can be enabled by inserting code using import pdb or breakpoint(), and supports breakpoints, single-step execution and other operations; 2. The IDE's own debuggers such as PyCharm and VS Code provide graphical interfaces, which support clicking to set breakpoints, view variables, conditional breakpoints and other functions, which are more suitable for use when developing complex projects; 3. Third-party debugging tools include ipdb (combined with IPython to enhance interactive experience), pudb (terminal visual debugging) and py-spy (performance analysis). They need to be installed first to optimize different debugging needs. You can choose the appropriate debugging method according to the project size and personal habits.

What are the different debugging tools available for Python (e.g., pdb, IDE debuggers)?

Python has several debugging tools, each with its own applicable scenarios. If you just want to quickly check the running status of your code, a command line debugger may be enough; if you are developing a large project, the debugging function that comes with the integrated development environment (IDE) will be more convenient.

Command line debugging tool: pdb

pdb is a standard debugging library that comes with Python, suitable for use in command line environments. It supports basic debugging operations such as setting breakpoints, stepping through, viewing variables, etc.

It's easy to use, just insert where you want to start debugging:

 import pdb; pdb.set_trace()

The program will be paused when it runs here and enters interactive debugging mode. You can enter n to execute the next line, c continues to run, q exits debugging, etc.

Although the pdb function is basic, it is better to be lightweight and does not require additional installation. If you are using Python 3.7 and above, you can also use the built-in breakpoint() function instead of the above line of code, and the effect is the same.

IDE comes with debugger: PyCharm, VS Code, etc.

Most modern Python IDEs integrate graphical debugging tools, such as PyCharm and VS Code, and their debugging experience is more friendly than pdb , especially suitable for beginners or when dealing with complex logic.

These tools usually provide the following features:

  • Click next to the line number to set the break point
  • View the current variable value and call stack
  • Control options such as stepping, jumping into functions, jumping out functions, etc.
  • Conditional breakpoint (triggered only under certain conditions)

Taking VS Code as an example, you just need to open the debug panel, click the "Run and Debug" button, and then add the configuration to start debugging. This method is more suitable for scenarios where writing and adjusting are performed during development.

Third-party debugging tools: ipdb, pudb, py-spy, etc.

In addition to the debugging methods provided by the standard library and IDE, there are also some third-party debugging tools that can improve efficiency:

  • ipdb : Used in combination with IPython, the interface is more beautiful and automatic completion is better.
  • pudb : A visual debugger under the terminal, supporting split-screen viewing of variables and stacks.
  • py-spy : suitable for performance analysis, can monitor the running status of the program without modifying the code.

These tools generally need to be installed first, such as:

 pip install ipdb pudb py-spy

They are optimized for different needs. For example, py-spy is particularly suitable for troubleshooting performance bottlenecks, while pudb provides a better interactive experience in the terminal.


Basically these commonly used Python debugging tools. You can choose the appropriate debugging method based on your usage habits and project complexity.

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