>>> df =DataFrame({'a':[1,2,3,4],'b':[2,4,6,8]})
>>> df['x']=df.a + df.b
>>> df['y']=df.a - df.b
>>> df
   a  b   x  y
0  1  2   3 -1
1  2  4   6 -2
2  3  6   9 -3
3  4  8  12 -4

Now I want to rearrange the column sequence, which makes 'x','y' column to be the first & second columns by :

>>> df = df[['x','y','a','b']]
>>> df
    x  y  a  b
0   3 -1  1  2
1   6 -2  2  4
2   9 -3  3  6
3  12 -4  4  8

But if I have a long coulmns 'a','b','c','d'....., and I don't want to explictly list the columns. How can I do that ?

Or Does Pandas provide a function like set_column_sequence(dataframe,col_name, seq) so that I can do : set_column_sequence(df,'x',0) and set_column_sequence(df,'y',1) ?

6 Answers 6


You could also do something like this:

df = df[['x', 'y', 'a', 'b']]

You can get the list of columns with:

cols = list(df.columns.values)

The output will produce something like this:

['a', 'b', 'x', 'y']

...which is then easy to rearrange manually before dropping it into the first function

  • 4
    For newbies like me, re-arrange the list you get from cols. Then df=df[cols] i.e. the re-arranged list gets dropped into the first expression without only one set of brackets.
    – Sid
    Mar 20, 2018 at 15:17
  • Could you be explaining the first example? Nov 5, 2020 at 7:17

There may be an elegant built-in function (but I haven't found it yet). You could write one:

# reorder columns
def set_column_sequence(dataframe, seq, front=True):
    '''Takes a dataframe and a subsequence of its columns,
       returns dataframe with seq as first columns if "front" is True,
       and seq as last columns if "front" is False.
    cols = seq[:] # copy so we don't mutate seq
    for x in dataframe.columns:
        if x not in cols:
            if front: #we want "seq" to be in the front
                #so append current column to the end of the list
                #we want "seq" to be last, so insert this
                #column in the front of the new column list
                #"cols" we are building:
                cols.insert(0, x)
return dataframe[cols]

For your example: set_column_sequence(df, ['x','y']) would return the desired output.

If you want the seq at the end of the DataFrame instead simply pass in "front=False".

  • Hopefully I can find Pandas build-in 'set_column_sequence(df, col_list, assign_col_seq)' function, that I can use "set_column_sequence(df,['x','y'],[0,1])" to have the job done.
    – bigbug
    Sep 8, 2012 at 10:57
  • @bigbug Hopefully! If I find one I'll update my answer... 'til you do, this should work. Sep 8, 2012 at 11:03
  • How about including a list comprehension version to speed it up?
    – pylang
    Aug 4, 2016 at 15:48
  • @pylang I don't think that'll speed it up (that's not the main perf issue I shouldn't think) but a neat way to write it is: s = {col: i for i, col in enumerate(first_cols)}; sorted(df.columns, key=lambda c: s.get(c, len(s))). This is still (4 years later) kinda awkward to write, I though perhaps there was a trick with sort_index, but there doesn't seem to be. hmmm Aug 5, 2016 at 8:39
  • @pylang potentially you can do: df[df.columns[df.columns.map(lambda col: s.get(col, len(s))).argsort()]] but that;s pretty ugly. Still better than this old answer, so I may edit that in... Aug 5, 2016 at 8:41

You can do the following:

df =DataFrame({'a':[1,2,3,4],'b':[2,4,6,8]})

df['x']=df.a + df.b
df['y']=df.a - df.b

create column title whatever order you want in this way:

column_titles = ['x','y','a','b']


This will give you desired output

  • My preferred way because this can be chained with other methods on the dataframe Dec 26, 2019 at 6:14
def _col_seq_set(df, col_list, seq_list):
    ''' set dataframe 'df' col_list's sequence by seq_list '''
    col_not_in_col_list = [x for x in list(df.columns) if x not in col_list]
    for i in range(len(col_list)):
        col_not_in_col_list.insert(seq_list[i], col_list[i])

    return df[col_not_in_col_list]
DataFrame.col_seq_set = _col_seq_set

I would suggest you just write a function to do what you're saying probably using drop (to delete columns) and insert to insert columns at a position. There isn't an existing API function to do what you're describing.


Feel free to disregard this solution as subtracting a list from an Index does not preserve the order of the original Index, if that's important.

In [61]: df.reindex(columns=pd.Index(['x', 'y']).append(df.columns - ['x', 'y']))
    x  y  a  b
0   3 -1  1  2
1   6 -2  2  4
2   9 -3  3  6
3  12 -4  4  8

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.