# Python - Calculating standard deviation (row level) of dataframe columns

I have created a Pandas Dataframe and am able to determine the standard deviation of one or more columns of this dataframe (column level). I need to determine the standard deviation for all the rows of a particular column. Below are the commands that I have tried so far

``````# Will determine the standard deviation of all the numerical columns by default.
inp_df.std()

salary         8.194421e-01
num_months     3.690081e+05
no_of_hours    2.518869e+02
``````

``````# Same as above command. Performs the standard deviation at the column level.
inp_df.std(axis = 0)
``````

``````# Determines the standard deviation over only the salary column of the dataframe.
inp_df[['salary']].std()

salary         8.194421e-01
``````

``````# Determines Standard Deviation for every row present in the dataframe. But it
# does this for the entire row and it will output values in a single column.
# One std value for each row.
inp_df.std(axis=1)

0       4.374107e+12
1       4.377543e+12
2       4.374026e+12
3       4.374046e+12
4       4.374112e+12
5       4.373926e+12
``````

When I execute the below command I am getting "NaN" for all the records. Is there a way to resolve this?

``````# Trying to determine standard deviation only for the "salary" column at the
# row level.
inp_df[['salary']].std(axis = 1)

0      NaN
1      NaN
2      NaN
3      NaN
4      NaN
``````
• Not sure what "standard deviation for all rows of one column" means. Isn't that just the std of that column, which would be one scalar number instead a column? Could you post the code that generates your DataFrame and also which columns/rows you want to calculate std on? Dec 17 '18 at 5:37
• you're calculating standard deviation of a single number (one column, row by row)... what result would you expect? it's NaN because it divides by `N-1` where `N` is `1`. Dec 17 '18 at 5:45
• @filippo apologies. I was not aware of the reason why it was getting NaN. Now it makes sense. Thanks for your inputs
– JKC
Dec 17 '18 at 9:00
• @Indominus That's right . It will return only one scalar if we do std over only one column. I have to combine with another column to get proper std values as explained by jezrael below.
– JKC
Dec 17 '18 at 9:02
• @JKC no need to apologize ;-) maybe I sounded too harsh. What I meant was it wasn't that clear from your question if your issue was with the `NaN`s or you didn't really notice your were calculating standard deviation on single samples. Glad it's solved now! Dec 18 '18 at 0:58

It is expected, because if checking `DataFrame.std`:

Normalized by N-1 by default. This can be changed using the ddof argument

If you have one element, you're doing a division by 0. So if you have one column and want the sample standard deviation over columns, get all the missing values.

Sample:

``````inp_df = pd.DataFrame({'salary':[10,20,30],
'num_months':[1,2,3],
'no_of_hours':[2,5,6]})
print (inp_df)
salary  num_months  no_of_hours
0      10           1            2
1      20           2            5
2      30           3            6
``````

Select one column by one `[]` for `Series`:

``````print (inp_df['salary'])
0    10
1    20
2    30
Name: salary, dtype: int64
``````

Get `std` of `Series` - get a scalar:

``````print (inp_df['salary'].std())
10.0
``````

Select one column by double `[]` for `one column DataFrame`:

``````print (inp_df[['salary']])
salary
0      10
1      20
2      30
``````

Get `std` of `DataFrame` per index (default value) - get one element `Series`:

``````print (inp_df[['salary']].std())
#same like
#print (inp_df[['salary']].std(axis=0))
salary    10.0
dtype: float64
``````

Get `std` of `DataFrame` per columns (axis=1) - get all NaNs:

``````print (inp_df[['salary']].std(axis = 1))
0   NaN
1   NaN
2   NaN
dtype: float64
``````

If changed default `ddof=1` to `ddof=0`:

``````print (inp_df[['salary']].std(axis = 1, ddof=0))
0    0.0
1    0.0
2    0.0
dtype: float64
``````

If you want `std` by two or more columns:

``````#select 2 columns
print (inp_df[['salary', 'num_months']])
salary  num_months
0      10           1
1      20           2
2      30           3

#std by index
print (inp_df[['salary','num_months']].std())
salary        10.0
num_months     1.0
dtype: float64

#std by columns
print (inp_df[['salary','no_of_hours']].std(axis = 1))
0     5.656854
1    10.606602
2    16.970563
dtype: float64
``````
• No words to express my gratitude to you and your answer. It's simply an awesome explanation :)
– JKC
Dec 17 '18 at 9:03