Utility code for use with PyXLL

Overview

pyxll-utils

There is no need to use this package as of PyXLL 5. All features from this package are now provided by PyXLL.

If you were using this package with earlier versions of PyXLL please see the following:

Utility code for use with PyXLL - The Python Excel Add-In.

Full documentation can be found here: http://pyxll-utils.readthedocs.org/en/latest/.

Owner
PyXLL
PyXLL
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