0

Imagine the next dataframe

data = pd.DataFrame({"col1" : ["a", "b", "z","w", "g", "p", "f"], "col2" : 
["010", "030","500","333","090","050","111"]})

I want to use a lambda function to remove the first prefix 0 of the cells in col2.

What I have tried is

data["col2"].apply(lambda row: row["col2"][1:] if row["col2"] 
[0:1] == "0" else row["col2"])

But is not working, returning the next error

TypeError: string indices must be integers

So col2 should appear like 10, 30, 500, 333, 90, 50, 111

  • That would still make them strings. you need to convert them to integers. – Sayse Jul 19 '19 at 7:59
  • I would like to keep them as string. Thanks for the reply – Lazzal Jul 19 '19 at 8:03
  • data['col2'] = data.col2.astype(int)?? – yatu Jul 19 '19 at 8:05
0

no need to use 'col2'

    data["col2"].apply(lambda row: row[1:] if row[0:1] == "0" else row)

output

| improve this answer | |
  • glad to help :) kindly approve this answer. – Rahul Verma Jul 19 '19 at 8:14
0

You can also try regex in python:

data = pd.DataFrame({"col1" : ["a", "b", "z","w", "g", "p", "f"], "col2" : 
["010", "030","500","333","090","050","111"]})

data['col2'] = data['col2'].apply(lambda x:re.sub(r"^0", '', x))

output:

  col1 col2
0    a   10
1    b   30
2    z  500
3    w  333
4    g   90
5    p   50
6    f  111
| improve this answer | |
0

Ex.

import pandas as pd

df = pd.DataFrame({"col1" : ["a", "b", "z","w", "g", "p", "f"], "col2" :
["010", "030","500","333","090","050","111"]})

df.col2 = pd.to_numeric(df.col2, errors='coerce').astype(str)
#or
#df.col2 = df.col2.astype(int).astype(str)
print(df)

O/P:

  col1  col2
0    a    10
1    b    30
2    z   500
3    w   333
4    g    90
5    p    50
6    f   111
| improve this answer | |

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