Running this code:

df = pd.DataFrame(['ADc','Abc','AEc'],columns = ['Test'],index=[0,1,2])
df.sort(columns=['Test'],axis=0, ascending=False,inplace=True)

Returns a dataframe column ordered as: [Abc, AEc, ADc]. ADc should be before AEc, what's going on?

  • This looks like a bug to me, I can reproduce this on pandas 0.16.0, numpy 1.9.1 python 3.4.3 64-bit – EdChum Apr 27 '15 at 14:31
  • Confirming the bug with older pandas 0.14.0 – Zero Apr 27 '15 at 14:46

I don't think that's a pandas bug. It seems to be just the way python sorting algorithm works with mixed cased letters (being case sensitive) - look here

Because when you do:

In [1]: l1 = ['ADc','Abc','AEc']
In [2]: l1.sort(reverse=True)
In [3]: l1
Out[3]: ['Abc', 'AEc', 'ADc']

So, since apparently one cannot control the sorting algorithm using the pandas sort method, just use a lower cased version of that column for the sorting and drop it later on:

In [4]: df = pd.DataFrame(['ADc','Abc','AEc'],columns = ['Test'],index=[0,1,2])
In [5]: df['test'] = df['Test'].str.lower()
In [6]: df.sort(columns=['test'], axis=0, ascending=True, inplace=True)
In [7]: df.drop('test', axis=1, inplace=True)
In [8]: df
1  Abc
0  ADc
2  AEc

Note: If you want the column sorted alphabetically, the ascending argument must be set to True


As DSM suggested, to avoid creating a new helper column, you can do:

df = df.loc[df["Test"].str.lower().order().index]


As pointed out by weatherfrog, for newer versions of pandas the correct method is .sort_values(). So the above one-liner becomes:

df = df.loc[df["Test"].str.lower().sort_values().index]
  • 2
    Yeah, this is Python behaviour. Alternatively, you could do something like df.loc[df["Test"].str.lower().order().index], to avoid creating a temporary column. The OP will still have to decide how "AbC" and "ABc" should be ordered relative to one another. – DSM Apr 27 '15 at 15:09
  • I never knew this, this is insightful +1 – EdChum Apr 27 '15 at 15:12
  • The above one liner no longer works with newer versions of Pandas because Series.order() is now Series.sort_values(). So this transforms to df.loc[df["Test"].str.lower().sort_values().index]. – weatherfrog Aug 15 '18 at 13:53
  • @weatherfrog Thank you. I will add it as an update. – paulo.filip3 Aug 15 '18 at 17:48

Here is an example of how to sort multiple columns using reindex, extended from @Zero's answer here. We want to sort the example dataframe first by the second column (SORT_INDEX1), then the first (SORT_INDEX2). This example sorts the secondary column (SORT_INDEX2) using a case-insensitive sort, then the primary column (SORT_INDEX1) using the default case-sensitive sort.

import pandas as pd

df = pd.DataFrame([['q', '1'],['a', '1'],['B', '1'],['C', '1'],
                   ['q', '0'],['a', '0'],['B', '0'],['C', '0']])


# Cannot change sorting algorithm used internally by pandas.
df_default = df.sort_values(by=[SORT_INDEX1, SORT_INDEX2])

# Use tuple of (index, value to sort by) to get a list of sorted indices, obtained through unzipping.
df_new = df.reindex(list(zip(*sorted(zip(df.index, df[SORT_INDEX2]), key=lambda t: t[1].lower())))[0])

print('Original dataframe:')

print('Default case-sensitive sort:')

print('Case-insensitive sort:')


Original dataframe:
   0  1
0  q  1
1  a  1
2  B  1
3  C  1
4  q  0
5  a  0
6  B  0
7  C  0
Default case-sensitive sort:
   0  1
6  B  0
7  C  0
5  a  0
4  q  0
2  B  1
3  C  1
1  a  1
0  q  1
Case-insensitive sort:
   0  1
5  a  0
6  B  0
7  C  0
4  q  0
1  a  1
2  B  1
3  C  1
0  q  1

(More info on unzipping)

EDIT: Apologies, the second sort does not work properly for larger datasets. The secondary column's order is not preserved. This method will work fine for sorting by one column, but I still need to find a reliable and concise way to sort 2 columns.

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