I have a data frame in which all the data in columns are of type object. Now I want to convert all objects into numeric types using astype() function but I don't want to do something like this ->

df.astype({'col1': 'int32' , 'col2' : 'int32' ....})

If I do something like this ->

enter image description here

I get an error because apply function needs Series to traverse.

PS: The other option of doing the same thing is ->


But I want to do this using .astype() Is there any other way instead of using df.apply() and still convert all object type data into numeric using df.astype()

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Use df = df.astype(int) to convert all columns to int datatype

import numpy

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In my opinion the safest is to use pd.to_numeric in your apply function which also allows you error manipulation, coerce, raise or ignore. After getting the columns to numeric, then you can safely perform your astype() operation, but I wouldn't suggest it to begin with:

df.apply(pd.to_numeric, errors='ignore')

If the column can't be converted to numeric, it will remain unchanged

df.apply(pd.to_numeric, errors='coerce')

The columns will be converted to numeric, the values that can't be converted to numeric in the column will be replaced with NaN.

df.apply(pd.to_numeric, errors='raise')

ValueError will be returned if the column can't be converted to numeric

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If these are object columns and you're certain they can be "soft-casted" to int, you have two options:

  worker day    tasks
0      A   2     read
1      A   9    write
2      B   1     read
3      B   2    write
4      B   4  execute


worker    object
day       object
tasks     object
dtype: object

pandas <= 0.25

infer_objects (0.21+ only) casts your data to numpy types if possible.


worker    object
day        int64
tasks     object
dtype: object

pandas >= 1.0

convert_dtypes casts your data to the most specific pandas extension dtype if possible.


worker    string
day        Int64
tasks     string
dtype: object

Also see this answer by me for more information on "hard" versus "soft" conversions.

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