I'm trying to find a better way to assert the column data type in Python/Pandas of a given dataframe.

For example:

import pandas as pd
t = pd.DataFrame({'a':[1,2,3], 'b':[2,6,0.75], 'c':['foo','bar','beer']})

I would like to assert that specific columns in the data frame are numeric. Here's what I have:

numeric_cols = ['a', 'b']  # These will be given
assert [x in ['int64','float'] for x in [t[y].dtype for y in numeric_cols]]

This last assert line doesn't feel very pythonic. Maybe it is and I'm just cramming it all in one hard to read line. Is there a better way? I would like to write something like:

assert t[numeric_cols].dtype.isnumeric()

I can't seem to find something like that though.

3 Answers 3


You could use ptypes.is_numeric_dtype to identify numeric columns, ptypes.is_string_dtype to identify string-like columns, and ptypes.is_datetime64_any_dtype to identify datetime64 columns:

import pandas as pd
import pandas.api.types as ptypes

t = pd.DataFrame({'a':[1,2,3], 'b':[2,6,0.75], 'c':['foo','bar','beer'],
              'd':pd.date_range('2000-1-1', periods=3)})
cols_to_check = ['a', 'b']

assert all(ptypes.is_numeric_dtype(t[col]) for col in cols_to_check)
# True
assert ptypes.is_string_dtype(t['c'])
# True
assert ptypes.is_datetime64_any_dtype(t['d'])
# True

The pandas.api.types module (which I aliased to ptypes) has both a is_datetime64_any_dtype and a is_datetime64_dtype function. The difference is in how they treat timezone-aware array-likes:

In [239]: ptypes.is_datetime64_any_dtype(pd.DatetimeIndex([1, 2, 3], tz="US/Eastern"))
Out[239]: True

In [240]: ptypes.is_datetime64_dtype(pd.DatetimeIndex([1, 2, 3], tz="US/Eastern"))
Out[240]: False
  • @Mr.F. You're right; thanks. But since I'm going for clarity, not winning code golf, I've changed it to ['a', 'b'].
    – unutbu
    Commented Feb 19, 2015 at 3:02
  • The reason I do not want to use for col in 'ab' is because it does not generalize to the case of multi-character column names. Of course, you could say the same about for col in list('ab'). (Sometimes, however, list('ab') is useful where 'ab' is not -- consider pd.DataFrame(..., index=list('ab')) for instance.) In any case, since most people coming to this page are going to have multi-character column names, we might as well write code that generalizes easily to that case.
    – unutbu
    Commented Feb 19, 2015 at 12:47
  • Is there anything similar to is_numeric_dtype for strings (or objects, in pandas terminology)?
    – famargar
    Commented Mar 20, 2017 at 15:11
  • 1
    @famargar: You could use ptypes.is_string_dtype. I've edited the post above to show what I mean.
    – unutbu
    Commented Mar 20, 2017 at 17:21
  • 2
    @famargar: You could use ptypes.is_datetime64_any_dtype. See above. (I found this by perusing dir(ptypes).)
    – unutbu
    Commented Jul 13, 2017 at 17:39

You can do this

import numpy as np
numeric_dtypes = [np.dtype('int64'), np.dtype('float64')]
# or whatever types you want

assert t[numeric_cols].apply(lambda c: c.dtype).isin(numeric_dtypes).all()

Example how to simple do python's isinstance check of column's panda dtype where column is numpy datetime:

isinstance(dfe.dt_column_name.dtype, type(np.dtype('datetime64')))

note: dtype could be checked against list/tuple as 2nd argument.

If you're interested in checking column's data type consistency over rows then @ely answer using apply could be better choice

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.