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This question already has an answer here:

I have a dataframe with over 200 columns. The issue is as they were generated the order is

['Q1.3','Q6.1','Q1.2','Q1.1',......]

I need to re-order the columns as follows:

['Q1.1','Q1.2','Q1.3',.....'Q6.1',......]

Is there some way for me to do this within Python?

marked as duplicate by Sheldore python Jul 3 at 22:10

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

11 Answers 11

305
df = df.reindex(sorted(df.columns), axis=1)

This assumes that sorting the column names will give the order you want. If your column names won't sort lexicographically (e.g., if you want column Q10.3 to appear after Q9.1), you'll need to sort differently, but that has nothing to do with pandas.

  • 6
    I like this because the same method can be used to sort rows (I needed to sort rows and columns). While it's the same method, you can omit the axis argument (or provide its default value, 0), like df.reindex_axis(sorted(non_sorted_row_index)) which is equivalent to df.reindex(sorted(non_sorted_row_index)) – The Red Pea Nov 17 '15 at 19:57
  • 2
    Note that re-indexing is not done in-place, so to actually apply the sort to the df you have to use df = df.reindex_axis(...). Also, note that non-lexicographical sorts are easy with this approach, since the list of column names can be sorted separately into an arbitrary order and then passed to reindex_axis. This is not possible with the alternative approach suggested by @Wes McKinney (df = df.sort_index(axis=1)), which is however cleaner for pure lexicographical sorts. – WhoIsJack Jan 28 '18 at 23:49
  • 1
    not sure when '.reindex_axis' was deprecated, see message below. FutureWarning: '.reindex_axis' is deprecated and will be removed in a future version. Use '.reindex' instead. This is separate from the ipykernel package so we can avoid doing imports until – aspiringGuru May 8 '18 at 8:27
  • Does this actually sort the columns of dataframe? From first glance it seems like this would just sort the column names then reset the index. – pbreach Jul 8 '18 at 21:13
  • 6
    reindex_axis is deprecated and results in FutureWarning. However, .reindex works fine. For the above example, use df.reindex(columns=sorted(df.columns)) – Logan Sep 17 '18 at 17:43
288

You can also do more succinctly:

df.sort_index(axis=1)

Make sure you assign the result back:

df = df.sort_index(axis=1)

Or, do it in-place:

df.sort_index(axis=1, inplace=True)
  • 2
    remember to do df = df.sort_index(axis=1), per @multigoodverse – GoJian Jan 6 '17 at 14:59
  • 5
    or modify df in-place with df.sort_index(axis=1, inplace=True) – Jakub Mar 1 '17 at 17:12
31

You can just do:

df[sorted(df.columns)]

Edit: Shorter is

df[sorted(df)]
  • 1
    I get "'DataFrame' object is not callable" for this. Version: pandas 0.14. – multigoodverse Jan 29 '15 at 10:39
19

Tweet's answer can be passed to BrenBarn's answer above with

data.reindex_axis(sorted(data.columns, key=lambda x: float(x[1:])), axis=1)

So for your example, say:

vals = randint(low=16, high=80, size=25).reshape(5,5)
cols = ['Q1.3', 'Q6.1', 'Q1.2', 'Q9.1', 'Q10.2']
data = DataFrame(vals, columns = cols)

You get:

data

    Q1.3    Q6.1    Q1.2    Q9.1    Q10.2
0   73      29      63      51      72
1   61      29      32      68      57
2   36      49      76      18      37
3   63      61      51      30      31
4   36      66      71      24      77

Then do:

data.reindex_axis(sorted(data.columns, key=lambda x: float(x[1:])), axis=1)

resulting in:

data


     Q1.2    Q1.3    Q6.1    Q9.1    Q10.2
0    2       0       1       3       4
1    7       5       6       8       9
2    2       0       1       3       4
3    2       0       1       3       4
4    2       0       1       3       4
15

Don't forget to add "inplace=True" to Wes' answer or set the result to a new DataFrame.

df.sort_index(axis=1, inplace=True)
13

If you need an arbitrary sequence instead of sorted sequence, you could do:

sequence = ['Q1.1','Q1.2','Q1.3',.....'Q6.1',......]
your_dataframe = your_dataframe.reindex(columns=sequence)

I tested this in 2.7.10 and it worked for me.

11

For several columns, You can put columns order what you want:

#['A', 'B', 'C'] <-this is your columns order
df = df[['C', 'B', 'A']]

This example shows sorting and slicing columns:

d = {'col1':[1, 2, 3], 'col2':[4, 5, 6], 'col3':[7, 8, 9], 'col4':[17, 18, 19]}
df = pandas.DataFrame(d)

You get:

col1  col2  col3  col4
 1     4     7    17
 2     5     8    18
 3     6     9    19

Then do:

df = df[['col3', 'col2', 'col1']]

Resulting in:

col3  col2  col1
7     4     1
8     5     2
9     6     3     
3

The quickest method is:

df.sort_index(axis=1)

Be aware that this creates a new instance. Therefore you need to store the result in a new variable:

sortedDf=df.sort_index(axis=1)
1

The sort method and sorted function allow you to provide a custom function to extract the key used for comparison:

>>> ls = ['Q1.3', 'Q6.1', 'Q1.2']
>>> sorted(ls, key=lambda x: float(x[1:]))
['Q1.2', 'Q1.3', 'Q6.1']
  • This works for lists in general and I am familiar with it. How do I apply it to a pandas DataFrame? – pythOnometrist Jun 17 '12 at 2:24
  • 1
    Not sure, I admit my answer was not specific to this library. – tweet Jun 17 '12 at 3:04
0

One use-case is that you have named (some of) your columns with some prefix, and you want the columns sorted with those prefixes all together and in some particular order (not alphabetical).

For example, you might start all of your features with Ft_, labels with Lbl_, etc, and you want all unprefixed columns first, then all features, then the label. You can do this with the following function (I will note a possible efficiency problem using sum to reduce lists, but this isn't an issue unless you have a LOT of columns, which I do not):

def sortedcols(df, groups = ['Ft_', 'Lbl_'] ):
    return df[ sum([list(filter(re.compile(r).search, list(df.columns).copy())) for r in (lambda l: ['^(?!(%s))' % '|'.join(l)] + ['^%s' % i  for i in l ] )(groups)   ], [])  ]
-2
print df.sort_index(by='Frequency',ascending=False)

where by is the name of the column,if you want to sort the dataset based on column

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