90

I have a dataframe in pandas with mixed int and str data columns. I want to concatenate first the columns within the dataframe. To do that I have to convert an int column to str. I've tried to do as follows:

mtrx['X.3'] = mtrx.to_string(columns = ['X.3'])

or

mtrx['X.3'] = mtrx['X.3'].astype(str)

but in both cases it's not working and I'm getting an error saying "cannot concatenate 'str' and 'int' objects". Concatenating two str columns is working perfectly fine.

112
In [16]: df = DataFrame(np.arange(10).reshape(5,2),columns=list('AB'))

In [17]: df
Out[17]: 
   A  B
0  0  1
1  2  3
2  4  5
3  6  7
4  8  9

In [18]: df.dtypes
Out[18]: 
A    int64
B    int64
dtype: object

Convert a series

In [19]: df['A'].apply(str)
Out[19]: 
0    0
1    2
2    4
3    6
4    8
Name: A, dtype: object

In [20]: df['A'].apply(str)[0]
Out[20]: '0'

Don't forget to assign the result back:

df['A'] = df['A'].apply(str)

Convert the whole frame

In [21]: df.applymap(str)
Out[21]: 
   A  B
0  0  1
1  2  3
2  4  5
3  6  7
4  8  9

In [22]: df.applymap(str).iloc[0,0]
Out[22]: '0'

df = df.applymap(str)
  • 3
    I really don't understand why, but mtrx['X.3'].apply(str) does not work for me either :( dtype still shows int64. The dataframe for 23177 row and X.3 column got only numbers. In [21]: mtrx['X.3'].dtype Out[21]: dtype('int64') – Malfet Jul 31 '13 at 12:43
  • what version pandas? – Jeff Jul 31 '13 at 12:59
  • 0.7.0, come with python 2.7 on Ubuntu system – Malfet Jul 31 '13 at 13:11
  • current version is 0.12, you should upgrade. – Jeff Jul 31 '13 at 13:51
  • 1
    @DmitryKonovalov in python strings are immutable, so whenever you manipulating the data, you have to put the result back in to the variable. – Sriram Arvind Lakshmanakumar Jan 10 at 10:36
81

Change data type of DataFrame column:

To int:

df.column_name = df.column_name.astype(np.int64)

To str:

df.column_name = df.column_name.astype(str)

  • 6
    This is appealing, but it is about 4x slower than apply(str) from @Jeff, in my test using pd.Series(np.arange(1000000)). – John Zwinck Aug 1 '16 at 22:01
  • 1
    This works for me. df['A'] = df['A'].apply(str) also works. The answer provided by @Jeff does not work for me. – tommy.carstensen May 24 '17 at 11:41
  • 1
    Regarding @JohnZwinck's comment, using Python3 it seems to be more like 2x as fast to use apply() instead of astype(): timeit.Timer('c.apply(str)', setup='import pandas as pd; c = pd.Series(range(1000))').timeit(1000) >>> 0.41499893204309046 >>> timeit.Timer('c.astype(str)', setup='import pandas as pd; c = pd.Series(range(1000))').timeit(1000) 0.8004439630312845 – hamx0r Apr 12 '18 at 23:23
13

Warning: Both solutions given ( astype() and apply() ) do not preserve NULL values in either the nan or the None form.

import pandas as pd
import numpy as np

df = pd.DataFrame([None,'string',np.nan,42], index=[0,1,2,3], columns=['A'])

df1 = df['A'].astype(str)
df2 =  df['A'].apply(str)

print df.isnull()
print df1.isnull()
print df2.isnull()

I believe this is fixed by the implementation of to_string()

  • 1
    to_string allows you to choose handling of Nan eg to return empty string rather than 'Nan' – seanv507 Jan 4 at 20:54
  • Which is exactly what I said under the code block – Keith Jan 7 at 17:24
  • 1
    (I wasn't disagreeing, just expanding on what you said) -- had wanted to say +1 – seanv507 Jan 7 at 17:27
5

Use the following code:

df.column_name = df.column_name.astype('str')

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