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So I have two DataFrames each with a number of columns, one is from a new lookup table the other is of already known values stored in my database. The only columns with the same name are hash but one has and id and the other has Id (yes bad naming!) I then call:

lookup = lookup.merge(known, on='hash', how='left')
lookup = lookup.rename(columns={'Id':'db_id'})

You know to merge them and to update the names so that I don't have to remember which one is Id and which is id, a few lines earlier I had called

known = known.rename(columns={'Hash':'hash'})

So that I can preform the hash, all is well and good and right with the world. I then go and change my hashing algorithm, update my database and rerun things. Now, the like

lookup = lookup.rename(columns={'Id':'db_id'})

doesn't throw an error but results in a very long error string ending in:

/usr/lib/python2.7/dist-packages/pandas/core/frame.pyc in _apply_standard(self, func, axis, ignore_failures)
   4489                     # no k defined yet

   4490                     pass
-> 4491                 raise e
   4492 
   4493 

TypeError: ("'NoneType' object is not iterable", u'occurred at index hash')

to be stored in lookup, which is you know a problem. If I change my code to:

known = known.rename(columns={'Hash':'hash', 'Id':'db_id'})
lookup = lookup.merge(known, on='hash', how='left')

All is again well and right with the world, except I'm very very confused the way I had it before no longer works.

share|improve this question
    
What do you expect lookup = lookup(columns={'Id':'db_id'}) to do? I'm not sure I know that syntax. –  DSM Nov 24 '13 at 4:34
    
Sorry, when I changed the name of the DataFrame to lookup to make it simpler I accidentally deleted the .rename after it. –  TristanMatthews Nov 24 '13 at 5:28
    
This looks like a bug fixed in 0.13/master (releasing shortly), but w/o the posted data you are merging its hard to tell. –  Jeff Nov 25 '13 at 14:17

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