How to create a Python project in PyCharm
Step 1: Open PyCharm
Start the PyCharm integrated development environment (IDE) on your computer ).
Step 2: Create a new project
Click the "Create New Project" button in the PyCharm welcome window, or go to the "File" menu and select "New" → "Project..." .
Step 3: Select the project type
In the "New Project" dialog box, select "Python Project" as the project type.
Step 4: Specify the project path
Specify the location where the project will be saved on your computer. The project path represents where the project files are stored.
Step 5: Enter the project name
Enter the project name in the "Name" field. The project name will be used to identify and reference the project.
Step 6: Select an interpreter
Select the Python interpreter to be used for this project. Normally, PyCharm automatically detects the interpreters installed on your system.
Step 7: Select a project template
PyCharm provides a variety of project templates that can be customized to meet your specific needs. If you're not sure, choose the "Empty Project" template.
Step 8: Create a project
Click the "Create" button. PyCharm will create the project and add it to the IDE.
Next steps:
- # Configure project settings: You can configure project specific settings via the Settings/Preferences menu, e.g. Debugging options and style guide.
- Installing dependencies: If you want to use third-party libraries, install them using PyCharm's "Package Manager" tool.
- Write Python code: Create a Python file in the IDE and start writing and debugging code.
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