Option is not an option (yet)
It seems there is nothing such an option to control this behaviour. It is hard coded:
inspect.getfile(pd.DataFrame.sum) # './pandas/core/generic.py'
# @Substitution(outname=name, desc=desc, name1=name1, name2=name2,
# axis_descr=axis_descr, min_count=_min_count_stub,
# see_also=see_also, examples=examples)
# def stat_func(self, axis=None, skipna=None, level=None, numeric_only=None,
It could be a good idea for pull request.
A simple solution
Probably not the best solution, it is a bit hackish but it does address your problem.
I am not saying that it is a good practice in general. It may have drawbacks that I have not addressed (you are welcome to list it in comment). Anyway this solution has the advantage to be non intrusive.
Additionally, although it is a quite simple technique and it is pure PSL, it may violate Principle Of Least Astonishment (see this answer for details).
Lets build a wrapper that overrides existing default parameters or add extra parameters:
def set_default(func, **default):
def inner(*args, **kwargs):
kwargs.update(default) # Update function kwargs w/ decorator defaults
return func(*args, **kwargs) # Call function w/ updated kwargs
return inner # Return decorated function
Then, we can decorate any function. For instance:
import pandas as pd
pd.DataFrame.sum = set_default(pd.DataFrame.sum, skipna=False)
sum method of
DataFrame object has its
skipna overridden to
False each time we call it. Now the following code:
import numpy as np
df = pd.DataFrame([1., 2., np.nan])
We can apply this modification to many functions, at once:
for key in ['sum', 'mean', 'std']:
setattr(pd.DataFrame, key, set_default(getattr(pd.DataFrame, key), skipna=False))
If we store those modifications into a python module (
.py file) they will be applied at the import time without having the need to modify the Pandas code itself.