I have a df with 18 columns and 15K rows.

df.info() gives for first column:


0   Behandelcode                17451 non-null  object

''' Converting all values in columns 'Behandelcode' to integers fails because some strings have a letter at the end, example: '''

(405, '33971'),
 (406, '38154'),
 (407, '033620A'),
 (408, '33971'),

''' Every time a string has a letter at the end, length of string is 7.

I've been trying for too long now. So once again I need your help.

The question is: how can i iterate over column: df2['Behandelcode'], so that all values are kept in place, but (for example) the A in 0336620A on index row 407 gets deleted and only; 0336620 stays in place. And this for all the values ending with a letter.

I tried this, didn't work.... ( I did i, value because df['Behandelcode'] gives a series.


for i, value in enumerate(df2['Behandelcode']):
y = len(value)
if y == 7:
    value = value

''' Maybe there is a safer / more clean python method then working with len. For now, first things first and that is cleaning op this column so I can set it astype(int32). I would be very very thankfull if you can help me. greetings Jan


You could use the str.replace() to modify strings in bulk by using regular expressions:

df2['Behandelcode'].str.replace(r'(?P<match>\d{6}).*', lambda x: x.group('match'))

This expression will succesfully match only values with atleast 6 Digits continued by an indefinite number of characters, and will truncate it to only the first 6 Digits

  • Thanks! I can see this works, but how to get this inplace in the column? I mean: your code works, but it doesn't seem to change my df. thanks again! – Janneman Aug 9 '20 at 8:59
  • I added some extra code, results to my question. thanks! – Janneman Aug 9 '20 at 9:08
  • 1
    No Problem, just as a side note if there's any legit integers that are made up with 6 digits you could try adjusting the regular expression i.e. ... r'(?P<match>\d*)[A-Za-z]' ... will keep the first concatenation of numbers with any length and delete any trailing letters, including both Upper or Lower case i.e. '123456789AABbZZz' will be changed to '123456789' – SGar28 Aug 9 '20 at 10:26

Here is a way, based on looking at the last position in the string:

# the data frame

    id     code
0  405    33971
1  406    38154
2  407  033620A
3  408    33971
4  409  035774A  # <-- new last element

# list of letters, to be stripped
letters = 'ABCD' # extend to all letters in alphabet...

# results
df['code'].apply(lambda x: x[:-1] if x[-1] in letters else x)

0     33971
1     38154
2    033620
3     33971
4    035774
Name: code, dtype: object

UPDATE: I added a new element to the data frame (409, '035774A') and re-ran the code. In my environment, the trailing 'A' was removed.


Thanks jsmart! Sadly it doesn't seem to work.

df2.iloc['Behandelcode'] for example stil gives: '035774A'.

Maybe a view of part of my df helps?

enter image description here

A morning edit to my post: thank you all in for trying to help me out.

Maybe this will help: This code gives a list that looks like the part of the list below the code. When I run len(zeven) it gives the value of 1. For me this is strange because alle the df['Behandelcode'] values with lengt 7 are in this list.


for x in df2['Behandelcode']:
    zeven = []
    if len(x) == 7:

''' This results in this (part of total list zeven):


I tried this code as well. It runs (made a copy of df2 > df3) without Error but doesn't effect my column....


for x in df3['Behandelcode']:
    zeven = []
    if len(x) == 7:
        df3['Behandelcode'].apply(lambda x: x[:-1])


It feels like the solution should be simple, but still can't figure it out: how to get rid of all the letters at the end of these strings so afterwards I will be able to convert them to integers. Thanks again!

  • did you mean to use iloc in this statement df2.iloc['Behandelcode'] -- iloc[] expects integer arguments (it is position-based indexing). Also, please can you post example data frames in executable statements. – jsmart Aug 8 '20 at 19:04
  • Hey. I added some extra information to my question. Thanks again! – Janneman Aug 9 '20 at 8:06

Sgar28 thanks again. Question is: how to get this inplace in my df?

Before your lambda function (last rows of output):

''' df['Behandelcode']


17446      31802
17447      31802
17448      31802
17449      31802
17450    031714A

apply your lambda: '''

df['Behandelcode'].str.replace(r'(?P<match>\d{6}).*', lambda x: x.group('match'))

''' gives:

17446     31802
17447     31802
17448     31802
17449     31802
17450    031714

But checking my df with: '''


''' gives:


The solution is simple to my last question...... '''

df['Behandelcode'] = df['Behandelcode'].str.replace(r'(?P<match>\d{6}).*', lambda x: x.group('match'))


Thanks again!!!

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