I know that there are ways to swap the column order in python pandas. Let say I have this example dataset:

import pandas as pd    
employee = {'EmployeeID' : [0,1,2],
     'FirstName' : ['a','b','c'],
     'LastName' : ['a','b','c'],
     'MiddleName' : ['a','b', None],
     'Contact' : ['(M) 133-245-3123', '(F)[email protected]', '(F)312-533-2442 [email protected]']}

df = pd.DataFrame(employee)

The one basic way to do would be:

neworder = ['EmployeeID','FirstName','MiddleName','LastName','Contact']

However, as you can see, I only want to swap two columns. It was doable just because there are only 4 column, but what if I have like 100 columns? what would be an effective way to swap or reorder columns?

There might be 2 cases:

  1. when you just want 2 columns swapped.
  2. when you want 3 columns reordered. (I am pretty sure that this case can be applied to more than 3 columns.)

9 Answers 9


Say your current order of column is [b,c,d,a] and you want to order it into [a,b,c,d], you could do it this way:

new_df = old_df[['a', 'b', 'c', 'd']]
  • 6
    Can this be achieved 'inplace'?
    – naccode
    Jun 13, 2020 at 19:59
  • 10
    You don't need to create a new dataframe, you can just assign: old_df = old_df[['a', 'b', 'c', 'd']].
    – MikeB2019x
    Sep 27, 2021 at 14:32

Two column Swapping

cols = list(df.columns)
a, b = cols.index('LastName'), cols.index('MiddleName')
cols[b], cols[a] = cols[a], cols[b]
df = df[cols]

Reorder column Swapping (2 swaps)

cols = list(df.columns)
a, b, c, d = cols.index('LastName'), cols.index('MiddleName'), cols.index('Contact'), cols.index('EmployeeID')
cols[a], cols[b], cols[c], cols[d] = cols[b], cols[a], cols[d], cols[c]
df = df[cols]

Swapping Multiple

Now it comes down to how you can play with list slices -

cols = list(df.columns)
cols = cols[1::2] + cols[::2]
df = df[cols]

If you want to have a fixed list of columns at the beginning, you could do something like

cols = ['EmployeeID','FirstName','MiddleName','LastName']
df = df[cols + [c for c in df.columns if c not in cols]]

This will put these 4 columns first and leave the rest untouched (without any duplicate column).

  • 2
    For any R users looking for the equivalent of tidyverse's everything() command, this is what you're looking for.
    – Jeremy K.
    Sep 25, 2021 at 6:28

When faced with same problem at larger scale, I came across a very elegant solution at this link: http://www.datasciencemadesimple.com/re-arrange-or-re-order-the-column-of-dataframe-in-pandas-python-2/ under the heading "Rearrange the column of dataframe by column position in pandas python".

Basically if you have the column order as a list, you can read that in as the new column order.

##### Rearrange the column of dataframe by column position in pandas python


In my case, I had a pre-calculated column linkage that determined the new order I wanted. If this order was defined as an array in L, then:

a_L_order = a[a.columns[L]]
  • This definitely wins for simplicity.
    – RWL01
    Sep 10, 2021 at 19:54

When writing to a file

Columns can also be reordered when the dataframe is written out to a file (e.g. CSV):

  • I used a python script to export a table from html to csv and use this new table in csv to calculate different metrics. The columns changed in the source page. This solved my problem and I didn't need to change anything in the calculated metrics. Sep 1 at 14:12

A concise way to reorder columns when you don't have too many columns and don't want to list the column names is with .iloc[].

df_reorderd = df.iloc[:, [0, 1, 3, 2, 4]]

I think a function like this will be very useful to have control over the position of the columns:

def df_changeorder(frame: pd.DataFrame, var: list, remove=False, count_order='left', offset=0) -> pd.DataFrame:
    :param frame: dataframe
    :param var: list of columns to move to the front
    :param count_order: where to start counting from left or right to insert
    :param offset: cols to skip in the count_order specified
    :return: dataframe with order changed

    varlist = [w for w in frame.columns if w not in var]

    if remove:
        frame = frame[var]

        if offset == 0:

            if count_order == 'left':

                frame = frame[var + varlist]

            if count_order == 'right':

                frame = frame[varlist + var]

            if count_order == 'left':
                frame = frame[varlist[:offset] + var + varlist[offset:]]

            if count_order == 'right':
                frame = frame[varlist[:-offset] + var + varlist[-offset:]]

    return frame

A simple use case will be like defining the columns we want to reorder, for example, using the provided DataFrame, if we wanted to make this order:

['EmployeeID', 'Contact', 'LastName', 'FirstName', 'MiddleName']

Notice we only need to move Contact and LastName, therefore we can have that result easily as:

# columns to swap
swap_columns = ["Contact","LastName"]

# change the order
df = df_changeorder(df, swap_columns, count_order='left', offset=1)

With this approach we can reorder as many columns as we want, we just need to specify the list of columns and then apply the function as in the example.


Positioning the pandas series according to need

#using pandas.iloc

the first param of the pandas.iloc function is meant for rows, and the second param is meant for columns so we had given a list of order in which the columns has to be displayed.


Here's a two line solution which will work regardless of the size of the dataframe (no matter how many columns are there) as long as you know the names of the columns you want to swap. If the two columns are "col1" and "col2" in your dataframe (df):

df['col1'], df['col2'] = df['col2'].values, df['col1'].values
df = df.rename(columns={'col1': 'temp_col1', 'col2': 'col1', 'temp_col1': 'col2'})

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