Six - a Python 2 and 3 compatibility library

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Overview
six on PyPI six on TravisCI six's documentation on Read the Docs MIT License badge

Six is a Python 2 and 3 compatibility library. It provides utility functions for smoothing over the differences between the Python versions with the goal of writing Python code that is compatible on both Python versions. See the documentation for more information on what is provided.

Six supports Python 2.7 and 3.3+. It is contained in only one Python file, so it can be easily copied into your project. (The copyright and license notice must be retained.)

Online documentation is at https://six.readthedocs.io/.

Bugs can be reported to https://github.com/benjaminp/six. The code can also be found there.

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