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
```

`N-1`

where`N`

is`1`

.`NaN`

s or you didn't really notice your were calculating standard deviation on single samples. Glad it's solved now!