Steps to run Python files in PyCharm: Open the project or add a Python file. Navigate to the file you want to run. Configure run/debug settings (optional). Click the "Run" button to run the file.
Running Python files in PyCharm
In order to run Python files in PyCharm, follow these steps:
1. Open a project or file
- Open an existing project that already contains Python files or create a new project.
- If you already have a Python file, add it to your project via the File > Open menu.
2. Select the file to run
- Navigate to the Python file you want to run in the Project tool window.
- Right-click the file and select "Run".
3. Set the run/debug configuration (optional)
- In the Run dialog box, you can configure the run/debug settings , such as parameters, working directory and environment variables.
- For most situations, the default settings are sufficient, but you can adjust them as needed.
4. Run the file
- Click the "Run" button to run the Python file.
- You can view the running results in the "Console" tool window.
Other options:
- Run via shortcut key:Use the shortcut key Ctrl Shift F10 (Windows/Linux) or Cmd Shift F10 (macOS) Run the currently selected file.
- Using the Run Menu: Access additional run options, such as run configuration and debugging, through the Run menu.
- Run in Terminal: You can run Python files in the terminal through the Tools > Terminal menu.
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