How to install Python with pycharm
Installation steps: 1. Open PyCharm and open your project; 2. Go to "File" > "Settings"; 3. Select "Project" > "Python Interpreter"; 4. In the upper right corner In the settings window, click the " " symbol to add a new interpreter; 5. Select "Existing interpreter"; 6. Browse and select the Python interpreter installed in your system; 7. Click "OK".
The operating system for this tutorial: Windows 10 system, Python version 3.11.4, Dell G3 computer.
Installing the Python interpreter in PyCharm is also very simple. Here are the steps:
Open PyCharm and open your project.
Go to "File" > "Settings" (on Mac, "PyCharm" > "Preferences").
In the settings window, select "Project" > "Python Interpreter".
In the settings window in the upper right corner, you will see a " " symbol. Click on it to add a new interpreter.
In the pop-up window, select "Existing interpreter".
Browse and select the Python interpreter installed on your system. Typically, it will be located in a path similar to C:\Python39 (Windows) or /usr/bin/python3 (Linux/Mac).
Click "OK" to confirm your selection.
This way, PyCharm will configure your project to use the selected Python interpreter. If you select a virtual environment when creating the project, PyCharm will automatically activate the virtual environment. If not, you may need to manually activate the virtual environment.
Please note that PyCharm supports multiple Python interpreters, and you can switch between projects. This is useful for working on different projects or using different versions of Python.
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