I want to check every column in a dataframe whether it contains only numeric data. Specifically, my query is not about the datatype, but instead, I want to check every value in each column of the dataframe whether it's a numeric value.

How can I find this out?

  • Actually I need to reframe my question I think. My query is not in the datatype level instead i need to check every value in each column of dataframe whether its contains numeric values only Jan 29, 2019 at 18:06

6 Answers 6


You can check that using to_numeric and coercing errors:

pd.to_numeric(df['column'], errors='coerce').notnull().all()

For all columns, you can iterate through columns or just use apply

df.apply(lambda s: pd.to_numeric(s, errors='coerce').notnull().all())


df = pd.DataFrame({'col' : [1,2, 10, np.nan, 'a'], 
                   'col2': ['a', 10, 30, 40 ,50],
                   'col3': [1,2,3,4,5.0]})


col     False
col2    False
col3     True
dtype: bool
  • 1
    Though I guess there's a question as to whether NaN counts as numeric: np.issubdtype(type(np.NaN), np.number)
    – ALollz
    Jan 29, 2019 at 18:22
  • Yes ALollz, for my application at the moment, np.Nan is a perfectly fine numeric value, so i want to get "True" for 1.23423, "True" for np.NaN, but "False" for, say, [1.,2.] or "hello"
    – Tunneller
    Mar 11 at 11:34

You can draw a True / False comparison using isnumeric()


 >>> df
       A      B
0      1      1
1    NaN      6
2    NaN    NaN
3      2      2
4    NaN    NaN
5      4      4
6   some   some
7  value  other


>>> df.A.str.isnumeric()
0     True
1      NaN
2      NaN
3     True
4      NaN
5     True
6    False
7    False
Name: A, dtype: object

# df.B.str.isnumeric()

with apply() method which seems more robust in case you need corner to corner comparison:

DataFrame having two different columns one with mixed type another with numbers only for test:

>>> df
       A   B
0      1   1
1    NaN   6
2    NaN  33
3      2   2
4    NaN  22
5      4   4
6   some  66
7  value  11


>>> df.apply(lambda x: x.str.isnumeric())
       A     B
0   True  True
1    NaN  True
2    NaN  True
3   True  True
4    NaN  True
5   True  True
6  False  True
7  False  True

Another example:

Let's consider the below dataframe with different data-types as follows..

>>> df
   num  rating    name  age
0    0    80.0  shakir   33
1    1   -22.0   rafiq   37
2    2   -10.0     dev   36
3  num     1.0   suraj   30

Based on the comment from OP on this answer, where it has negative value and 0's in it.

1- This is a pseudo-internal method to return only the numeric type data.

>>> df._get_numeric_data()
   rating  age
0    80.0   33
1   -22.0   37
2   -10.0   36
3     1.0   30


2- there is an option to use method select_dtypes in module pandas.core.frame which return a subset of the DataFrame's columns based on the column dtypes. One can use Parameters with include, exclude options.

>>> df.select_dtypes(include=['int64','float64']) # choosing int & float
   rating  age
0    80.0   33
1   -22.0   37
2   -10.0   36
3     1.0   30

>>> df.select_dtypes(include=['int64'])  # choose int
0   33
1   37
2   36
3   30
  • 1
    @ALollz, Just edited the answer forgot to put second datafarme example :-)
    – Karn Kumar
    Jan 29, 2019 at 18:26
  • Works fine. Actually this command works for object data type only. Right ? Jan 29, 2019 at 18:41
  • For example if my columns is of int type and it has negative value and 0's in it. How can i check their existence ? Jan 29, 2019 at 19:06
  • @RajaSaheS, Just added more examples.. i see its old thread :-)
    – Karn Kumar
    Jul 7, 2020 at 8:21

This will return True if all columns are numeric, False otherwise.

df.shape[1] == df.select_dtypes(include=np.number).shape[1]

To select numeric columns:

new_df = df.select_dtypes(include=np.number)

Let's say you have a dataframe called df, if you do:

df.select_dtypes(include=["float", 'int'])

This will return all the numeric columns, you can check if this is the same as the original df.

Otherwise, you can also use the exclude parameter:

df.select_dtypes(exclude=["float", 'int'])

and check if this gives you an empty dataframe.


The accepted answers seem bit overkill, as they sub-select the entire dataframe.

To check types only metadata should be used, which can be done with pd.api.types.is_numeric_dtype.

import pandas as pd
df = pd.DataFrame(data=[[1,'a']],columns=['numeruc_col','string_col'])

print(df.columns[list(map(pd.api.types.is_numeric_dtype,df.dtypes))]) # one way
print(df.dtypes.map(pd.api.types.is_numeric_dtype)) # another way
  • You're just checking the dtype. The accepted answer actually check whether the column is numeric, not just the dtype.
    – Princy
    Jul 13, 2021 at 20:06
  • Using dtype gives more fine-grained control. Furthermore, this approach uses only metadata as it should be, instead of sub-slicing dataframe. Jul 15, 2021 at 6:19
  • Then you are answering a different question. Read the question (and the clarifying comment on the question).
    – Princy
    Jul 15, 2021 at 20:10
  • 1
    This is best answer. It returns False for col that has any nonnumbers. That is just what OP wanted
    – pauljohn32
    Jun 2, 2022 at 4:53

To check for numeric columns, you could use df[c].dtype.kind in 'iufcb' where c is any given column name. The comparison will yeild a True or False boolean output.

It can be iterated through all the column names with a list comprehension:

>>> [(c, df[c].dtype.kind in 'iufcb') for c in df.columns]

[('col', False), ('col2', False), ('col3', True)]

The numpy.dtype.kind 'iufcb' notation is a representation of whether it is a signed integer (i), unsigned integer (u), float (f), complex number (c), or boolean (b). The string can be modified to exclude any of the above (e.g., 'iufc' to exclude boolean).

This solves the original question in relation to checking column data types. It also provides the benefits of (1) a shorter line of code which (2) remains sufficiently intuitive to the user.

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