Why Am I Getting a SyntaxError with f-Strings in Python?
SyntaxError with f-Strings
When attempting to utilize f-strings within a Python codebase, users may encounter the following SyntaxError:
SyntaxError: invalid syntax
This error often stems from using an outdated Python version. F-string literals were introduced in Python 3.6, and if your code is running on an earlier version of Python, the interpreter will not recognize the f-string syntax.
Resolution
To resolve this issue, ensure that your Python version is upgraded to 3.6 or later. Follow the steps outlined below:
- Open your terminal or command prompt.
- Type the following command:
python --version
- If your Python version is less than 3.6, update it using the following command:
python -m pip install --upgrade pip python -m pip install --upgrade setuptools python -m pip install --upgrade wheel python get-pip.py python -m pip install --upgrade pip pip install --upgrade pip --user
- Restart your Python IDE or command shell.
Once you have upgraded your Python version, f-strings should work as expected.
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