This is what I am trying to explain:

>>> a = pd.Series([7, 20, 22, 22])
>>> a.std()
>>> np.std(a)

I have data about many different restaurants. For simplicity I have extracted just one restaurant with four items:

>>> df
    restaurant_id  price
1           10407      7
3           10407     20
6           10407     22
13          10407     22

For each restaurant, I want to get the standard deviation, however, Pandas returns wrong values.

>>> df.groupby('restaurant_id').std()
10407          7.228416

We can get the correct value with np.std():

>>> np.std(df['price'])

But obviously, this is not a solution when I have more than one restaurant. How do I do this properly?

Just to make sure, I checked that df['price'].mean() == np.mean(df['price']).

There is a related discussion here, but their suggestions do not work either.

  • 11
    pd.Series([7,20,22,22]).std(ddof=0) would be the same number as np.std Commented Sep 6, 2014 at 1:37
  • OK, resolved. I guess I have to think, which one I want to use. Commented Sep 6, 2014 at 1:42
  • FWIW, I wanted to mention .agg(np.std) as a workaround (which wouldn't be an ideal solution in this case, but the pattern is good to know), but actually, that still produces the Bessel output! I had to do .agg(lambda col: np.std(col)) to get the non-Bessel output. I'm not an expert on this, but I think np.std is a ufunc, which causes special behaviour.
    – wjandrea
    Commented Oct 17, 2023 at 19:59

1 Answer 1


Pandas std is using Bessel's correction by default -- that is, the standard deviation formula with N-1 instead of N in the denominator. To use N-0:

a.std(ddof=0) == np.std(a)

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.