Suppose we have

>>> df.dtype Name object Height object Weight object Age object Job object

Is there any simple way to covert all columns except Name and Job columns with .to_numeric() method?

I have tried but it doesn't work

df.iloc[df.columns != Name & df.columns != Job] = pd.to_numeric(df.iloc[df.columns != Name & df.columns != Job], errors='coerce')

2 Answers 2


The simplest way that comes to my mind would be to make a list of all the columns except Name and Job and then iterate pandas.to_numeric over them:

cols=[i for i in df.columns if i not in ["Name","Job"]]
for col in cols:


If you absolutely want to use numbers instead of columns names and already know at which indice they are:

for i in [i for i in list(range(len(df.columns))) if i not in [0,4]]:

That's more complicated than necessary though.

  • Thank you, so simple. But what if I want to use index, then what should I write?
    – Learner132
    Jun 17, 2017 at 9:20
  • What do you mean with "use index" ? The operation is propagated on all the rows, so you don't need to bother with the index.
    – baloo
    Jun 17, 2017 at 9:26
  • instead of using ["Name","Job"] in cols=[i for i in df.columns if i not in ["Name","Job"]]. Is it possible to use column index like this [ df.loc[:, 0], df.loc[:, 4] ]
    – Learner132
    Jun 17, 2017 at 9:38
  • Thank you, that is quite useful in some cases
    – Learner132
    Jun 17, 2017 at 11:17
  • can this be done somehow inplace? or with a list comprehension but then for several column? because the assignment inside the list comprehension is not allowed Aug 16, 2018 at 14:30

Suppose you have DF:

  Name Height Weight Age Job
0    0      2      3   4   5


Name      object
Height    object
Weight    object
Age       object
Job       object
dtype: object

If you have to use pd.to_numeric to convert those columns, you can do it this way:

df2 = pd.concat([pd.DataFrame([pd.to_numeric(df[e],errors='coerce') \
                               for e in df.columns if e not in ['Name','Job']]).T,\

   Height  Weight  Age Name Job
0       2       3    4    0   5

Height     int64
Weight     int64
Age        int64
Name      object
Job       object
dtype: object
  • Thanks, is it possible to use index? Also, if I understand you correctly, there is other way to do it ?
    – Learner132
    Jun 17, 2017 at 9:24

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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