# Pandas groupby agg std NaN

Inputs:

``````df['PopEst']
.astype('float')
.groupby(ContinentDict)
.agg(['size','sum','mean','std']))
``````

Outputs:

``````            size            sum                mean              std
Asia          5     2.898666e+09       5.797333e+08     6.790979e+08
Australia     1     2.331602e+07       2.331602e+07              NaN
Europe        6     4.579297e+08       7.632161e+07     3.464767e+07
North America 2     3.528552e+08       1.764276e+08     1.996696e+08
South America 1     2.059153e+08       2.059153e+08              NaN
``````

Some values in column of std turns out to be NaN if the group just have one row, but I think these values are supposed to be 0, why is that?

`pd.DataFrame.std` assumes 1 degree of freedom by default, also known as sample standard deviation. This results in `NaN` results for groups with one number.

`numpy.std`, by contrast, assumes 0 degree of freedom by default, also known as population standard deviation. This gives `0` for groups with one number.

To understand the difference between sample and population, see Bessel's correction.

Therefore, you can specify `numpy.std` for your calculation. Note, however, that the output will be different as the calculation is different. Here's a minimal example.

``````import pandas as pd, numpy as np

df = pd.DataFrame(np.random.randint(0, 9, (5, 2)))

def std(x): return np.std(x)

res = df.groupby(0)[1].agg(['size', 'sum', 'mean', std])

print(res)

size  sum  mean       std
0
0     2   13   6.5       0.5
4     1    3   3.0       0.0
5     1    3   3.0       0.0
6     1    3   3.0       0.0
``````

Alternatively, if you require 1 degree of freedom, you can use `fillna` to replace `NaN` values with `0`:

``````res = df.groupby(0)[1].agg(['size', 'sum', 'mean', 'std']).fillna(0)
``````
• Thanks for your answer! When I change the code to `.agg('size','sum','mean',np.std)`, the outputs still keep NaN. But when I use `lambda x:np.std(x)` instead, NaNs turn to 0, it is what I wanted. I wonder know why this happened. Commented May 13, 2018 at 7:27
• what if I want to be able to change `ddof` when calling `.agg([np.mean, np.std])`? I tried to pass it as external argument with `.agg([np.mean, np.std], ddof=0)` but it doesn't work. Commented May 1, 2020 at 6:38
• @FrancescoLS, As in my answer, use a function, e.g. `def std_zero(x): return np.std(x, ddof=0)`
– jpp
Commented May 1, 2020 at 7:08
• @jpp yes, I see the point and it works. But what I am saying is that I want to be able to pass it as an argument, e.g. say I want to compare the `std` with `ddof` =1 and =2, doing as you suggest I would need to create 2 different functions and pass them Commented May 1, 2020 at 13:57
• @FrancescoLS, The best I can think of.. you can use a higher order function via `functools.partial`, then use `partial(np.std, ddof=1)` or `partial(np.std, ddof=2)` etc.
– jpp
Commented May 1, 2020 at 16:16

According to the document, `np.std(..., ddof=1)` by default set "delta degree of freedom" to 1. To fix your problem, simply replace `np.std` with `lambda x: np.std(x, ddof=0)` then your `NaN` will be changed to `0`.

• This answer seems incorrect.. the document linked refers to `pd.DataFrame.std` while the answer specifies it relates to `np.std`.
– jpp
Commented Oct 30, 2019 at 13:52