2

I have a column in pandas which has string and numbers mixed I want to strip numbers from the string.

A
11286011
11268163
C7DDA72897
C8ABC557
Abul
C80DAS577
C80DSS665

Want an output as

A
C7DDA72897
C8ABC557
Abul
C80DAS577
C80DSS665
4
In [52]: df
Out[52]:
            A
0    11286011
1    11268163
2  C7DDA72897
3    C8ABC557
4   C80DAS577
5   C80DSS665

In [53]: df = pd.to_numeric(df.A, errors='coerce').dropna()

In [54]: df
Out[54]:
0    11286011.0
1    11268163.0
Name: A, dtype: float64

or using RegEx:

In [59]: df.loc[~df.A.str.contains(r'\D+')]
Out[59]:
          A
0  11286011
1  11268163
  • Thanks @MaxU your RegEx solved the problem for me. Works great. – Abul Apr 19 '17 at 5:26
4

You can use .str.isnumeric to use in boolean slicing.

df[df.A.astype(str).str.isnumeric()]

          A
0  11286011
1  11268163

As pointed out by @MaxU, assuming every element is already a string, you can limit this to

df[df.A.str.isnumeric()]

          A
0  11286011
1  11268163
  • I think A is already of string (object) dtype, so we can omit .astype(str)... – MaxU Apr 13 '17 at 13:31
  • 1
    @MaxU dtype==object doesn't imply that all elements are strings. You can have an actual float or int in the array. If you do, str.isnumeric will fail. – piRSquared Apr 13 '17 at 13:51
  • this is a good point! I just have tested it - .isnumeric() will retyren NaN in this case – MaxU Apr 13 '17 at 14:04
  • @piRSquared Thanks for the help too. – Abul Apr 19 '17 at 10:40

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