0

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 ->

df.apply(pd.to_numeric)

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()

| |
1

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

import numpy

df.astype(numpy.int32)
| |
1

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

| |
1

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

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

df.dtypes

worker    object
day       object
tasks     object
dtype: object

pandas <= 0.25

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

df.infer_objects().dtypes

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.

df.convert_dtypes().dtypes

worker    string
day        Int64
tasks     string
dtype: object

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

| |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.