Here's an excerpt from the pandas pivot docs:


>>> df = pd.DataFrame({'foo': ['one','one','one','two','two','two'],
                       'bar': ['A', 'B', 'C', 'A', 'B', 'C'],
                       'baz': [1, 2, 3, 4, 5, 6]})
>>> df
    foo   bar  baz
0   one   A    1
1   one   B    2
2   one   C    3
3   two   A    4
4   two   B    5
5   two   C    6
>>> df.pivot(index='foo', columns='bar', values='baz')
     A   B   C
one  1   2   3
two  4   5   6

When I run the exact code above (pandas 0.19.2), I instead get the following output:

bar  A  B  C
one  1  2  3
two  4  5  6

My questions are:

  • Do other people get this behaviour?
  • Why does the behaviour differ from the documentation?
  • What actually is the nature of this resulting DataFrame? I am quite new to pandas so this is probably a stupid question. But I don't think I've seen a name (bar) over the index before. I can't work out what it is?


  • it's naming the index 'foo' , this probably didn't happen for the version of pandas that ran that code
    – EdChum
    Mar 23 '17 at 16:20
  • I ran df.index.name and received None. Doesn't that contradict that? Also, this is a mistake in the docs, right? It's the same version, they should be showing the correct output.
    – Denziloe
    Mar 23 '17 at 16:21
  • The generated docs are not necessarily generated by the same version, also see my answer that shows that the index now has a name, my pandas version is 0.19.2
    – EdChum
    Mar 23 '17 at 16:22
  • I must have made a mistake, I receive the index name now. Thanks.
    – Denziloe
    Mar 23 '17 at 16:24

I think this is due to an older version of pandas that generated the docs, in the latest versions it will name the index if passed, in this case 'foo'

In [111]:
pv = df.pivot(index='foo', columns='bar', values='baz')

Index(['one', 'two'], dtype='object', name='foo')

You can see that the index now has a 'name' attribute

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