To view a Python version, there are several ways to do it. 1. Enter python --version or python3 --version using the command line; 2. Run import sys; print(sys.version); 3. After activating the virtual environment, execute commands or code to confirm the version; 4. View version information through Python command line tools or IDLE in the graphical interface. The operations vary slightly in different scenarios, but the core is to obtain the version through commands or code.
Want to know how to view the Python version? Actually, there are quite a lot of methods and it is not complicated to operate. The key is to choose the right approach based on your current environment.

1. Use the command line (most commonly used)
If you are using Python on Windows, macOS or Linux, opening a terminal or command line tool is the most direct way.
- On Windows:
- Open Command Prompt (cmd)
- Enter
python --version
orpython -V
- On macOS or Linux:
- Open the terminal
- Also enter
python --version
orpython3 --version
Sometimes you will find that python
corresponds to the old version, and the new version needs to be called using the python3
command, which is especially common on Linux and macOS.

2. View in Python interpreter
If you have entered a Python interactive environment (for example, after entering python
or python3
), you can also view the version information in it:
import sys print(sys.version)
This not only allows you to see the version number, but also the build information and operating system related content. Suitable for judging version compatibility when writing scripts.

3. View the version in the virtual environment
If you use a virtual environment (such as venv or virtualenv), confirm that the version of Python in the currently activated environment is correct.
- After activating the virtual environment, execute
python --version
- Or directly enter the Python environment and run
import sys; print(sys.executable)
to see the path of the currently used Python executable file, which helps to troubleshoot whether the wrong environment is used.
4. How to view it in the graphical interface?
Although it is not very common, if you install Python through graphical tools, such as using official installation on Windows, you can find Python-related programs in the "Start Menu", which usually contains a "Python Command Line Tool" or similar shortcuts. Click in to display the version information.
In addition, the currently running Python version number will also be displayed when IDLE (the development environment that comes with Python).
Basically these common methods. There are slight differences in different systems or scenarios, but the core idea is the same: obtain version information through commands or code.
The above is the detailed content of How to check Python version. For more information, please follow other related articles on the PHP Chinese website!

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