Python, like a number of applications, don't run 'in-place' wherever the project is checked out - they need to add to path and know a bit about the setup. This is why they are either part of the platform (Mac and Linux) or need a full-blown installer (Windows).
With this consideration, it's probably best not to include Python itself in the repository - you've still got to choose the right binary installer for the platform and run the installer. And then, if you update the version in your version repository, you have to upgrade the target systems. After all this, you will almost certainly not have consistent systems - so wrecking the point of having Python in version control in the first place.
Good versioning and dependency management does require keeping specific versions of tools. Setuptools includes easy_install which makes this easy:
Note the specific version - this can be omitted if you're not too worried about the specific version, or you can specify a minimum:
(Note: there are other tools that work similarly, including pip)
By default, you will be loading from Pypi, and this keeps all historic versions for you in it's repository. Unless you are really concerned about a specific version going missing, this is fine. If millions of dollars or lives are on the line, check the tool into your local repository and install it with easy_install (or similar).
I would strongly recommend using the virtualenv project to virtualize your Python environment. Doing so allows you to create a sandbox into which easy_install installs libraries and tools, so isolating you from any other tools accidentally installed on the system. Virtualenv also can manage specific versions of Python.
One other thought: If replicating a specific environment for build/test purposes is the point, then consider using a cloud/OS virtualization approach such as VirtualBox, VMWare or similar. You can run literally identical OS images over many different machines.