So I am attempting to edit an entire column cell by cell to change the column from something that contains integer and string to just the integer component. For example

one cell looks like:

3001234; textTEXT TextTeXTExt.TExt

I am using this command:

df2.columns[3] = df2.columns[3].map(lambda x: x.lstrip([5:]))

Ive also tried something like this:

df2.columns[3] = df2.columns[3].split([])

This is the error I get from ipython:

AttributeError: 'unicode' object has no attribute 'map'

Actual column from data frame:

0                           11212; xxxxxxxxxx xxxxxxxx   
1                           11212; xxxxxxxxxx xxxxxxxx   
2                           11212; xxxxxxxxxx xxxxxxxx   
3                           11212; xxxxxxxxxx xxxxxxxx     
8                  667788; xxxxxxx xxxxxxxxxxxxx xxxxxx   
9                  55555; xxxxxxx xxxxxxxxxxxxx xxxxxx   
10                 55555; xxxxxxx xxxxxxxxxxxxx xxxxxx   
11                 55555; xxxxxxx xxxxxxxxxxxxx xxxxxx   
12                 33333; xxxxxxx xxxxxxxxxxxxx xxxxxx   
13                 333; xxx xxxxx @ xxx xxx 2 xxxx   
14                 9991; xxxx; xxxxxx xxxxx xxxx @ 2 xxx   
18                       1635; vvvvvvvvvvvv vvvvvv 10   
19                       1635; vvvvvvvvvvvv vvvvvv 10   
20                       1635; vvvvvvvvvvvv vvvvvv 10   
21                       1635; vvvvvvvvvvvv vvvvvv 10     
32                       1712; Cxxxx xxxxxxxx; xxx 0   
33                       1712; Cxxxx xxxxxxxx; xxx 0   
34                       1712; Cxxxx xxxxxxxx; xxx 0   
35                       1712; Cxxxx xxxxxxxx; xxx 0

This is the code I am running

    import pandas as pd 

    # import excel file 
    xlsx = pd.ExcelFile("/home/PATH") 
    # create data frame from excel file on sheet 1
    df2 = pd.read_excel(xlsx,'Sheet1')

    df = pd.DataFrame({"Card": df2})
    print(df.head())

    df.iloc[:,0] = df.iloc[:,0].apply(lambda x: x.split(';')[0])
    print df.head()

    # delete columns not relative to us
    df2.drop(df2.columns[[0,5,10,11]],inplace=True,axis=1)
  • So, from this 3001234; textTEXT TextTeXTExt.TExt you just want to keep this: 3001234? – Joe T. Boka Mar 6 '17 at 22:51

If I understand your question correctly, you can try this:

import pandas as pd
import re
df = pd.DataFrame({'col1':['3001234; textTEXT TextTeXTExt.TExt', '1005678;  more text']})
print(df)
col1
0  3001234; textTEXT TextTeXTExt.TExt
1                  1005678; more text


digits = df['col1'].apply(lambda x: re.findall('\d+', str(x)))
print(digits)
0    [3001234]
1    [1005678]
Name: col1, dtype: object

df['col1'] = digits.str.get(0).astype(int)
print(df)
col1
0  3001234
1  1005678

print(df.dtypes)
col1    int32
dtype: object
  • 'code' digits = df2.columns[3].apply(lambda x: re.findall('\d+', str(x))) AttributeError: 'unicode' object has no attribute 'apply' – Deon Saunders Mar 6 '17 at 23:37
  • @DeonSaunders You said, you want to edit an entire column cell by cell. So, can you try df2['your column name'].apply(...)? – Joe T. Boka Mar 7 '17 at 0:02
  • No that does not work. I keep getting an error about the key. – Deon Saunders Mar 7 '17 at 4:04
  • @DeonSaunders Can you post your data frame so we can figure out the problem? – Joe T. Boka Mar 7 '17 at 4:09
  • Check the post I modified it a few times and keep getting errors. Every column is float even if it has text. Why? – Deon Saunders Mar 8 '17 at 20:43

df2.columns[3] represents the column name and not the column contents. Column name does not have methods like map or apply. use df.iloc[:, column_number] or df['column_name'] to get the contents of the column.

import pandas as pd
data = [u'11212; xxxxxxxxxx xxxxxxxx', 
u'11212; xxxxxxxxxx xxxxxxxx',   
u'11212; xxxxxxxxxx xxxxxxxx',   
u'11212; xxxxxxxxxx xxxxxxxx',     
u'667788; xxxxxxx xxxxxxxxxxxxx xxxxxx',   
u'55555; xxxxxxx xxxxxxxxxxxxx xxxxxx',  
u'55555; xxxxxxx xxxxxxxxxxxxx xxxxxx',   
u'55555; xxxxxxx xxxxxxxxxxxxx xxxxxx',   
u'33333; xxxxxxx xxxxxxxxxxxxx xxxxxx',   
u'333; xxx xxxxx @ xxx xxx 2 xxxx',   
u'9991; xxxx; xxxxxx xxxxx xxxx @ 2 xxx',   
u'1635; vvvvvvvvvvvv vvvvvv 10',   
u'1635; vvvvvvvvvvvv vvvvvv 10',   
u'1635; vvvvvvvvvvvv vvvvvv 10',   
u'1635; vvvvvvvvvvvv vvvvvv 10',     
u'1712; Cxxxx xxxxxxxx; xxx 0',  
u'1712; Cxxxx xxxxxxxx; xxx 0',   
u'1712; Cxxxx xxxxxxxx; xxx 0',   
u'1712; Cxxxx xxxxxxxx; xxx 0']

# make a dataframe from data as the first column
df = pd.DataFrame({'col0': data})

print df.head()

#Here I use the  iloc to the get the contents of first column (0 th column), in your case, it will 3)
df.iloc[:,0] = df.iloc[:,0].apply(lambda x: x.split(';')[0])

# in your case it will be 
#df.iloc[:,3] = df.iloc[:,3].apply(lambda x: x.split(';')[0])

print df.head()

results in

                                  col0
0            11212; xxxxxxxxxx xxxxxxxx
1            11212; xxxxxxxxxx xxxxxxxx
2            11212; xxxxxxxxxx xxxxxxxx
3            11212; xxxxxxxxxx xxxxxxxx
4  667788; xxxxxxx xxxxxxxxxxxxx xxxxxx
     col0
0   11212
1   11212
2   11212
3   11212
4  667788
  • I tried your method and am getting an AttributeError: 'unicode' object has no attribute 'apply'>>>>>df2.columns[3] = df2.columns[3].apply(lambda x: ''.join(i for i in x if i.isdigit())) ) – Deon Saunders Mar 6 '17 at 23:58
  • can you post part of your data? so that I can try it out. – plasmon360 Mar 7 '17 at 0:18
  • re check. I just added an example data frame – Deon Saunders Mar 7 '17 at 7:53
  • I think you were getting "AttributeError: 'unicode' object has no attribute 'apply'>>>>>df2.columns[3] = df2.columns[3].apply(lambda x: ''.join(i for i in x if i.isdigit())) ) –" because df2.columns[3] does not represent the contents of the column but rather gives only the name of the column. the name of column which is a unicode object does not have any attribute 'apply'. To choose the contents of the column, u need to use iloc as shown in the latest edit. – plasmon360 Mar 7 '17 at 15:51
  • I added in the actual code I am using. I think I am having issues because I am using an excel file. Sorry to bother you again. Thanks for the help. – Deon Saunders Mar 8 '17 at 18:02
df["Col"] = df["Col"].str.extract('(\d+)')
  • Please use the edit link on your question to add additional information. The Post Answer button should be used only for complete answers to the question. - From Review – John Joe Mar 14 '17 at 4:22
  • @JohnJoe that was the answer. Do you work for Stack – Deon Saunders Mar 15 '17 at 5:36

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