To calculate the total number of missing values in each column of the dataframe, we use

```
df.isnull().sum(axis=0)
```

and to calculate the total number of missing values in each row of the dataframe, we use

```
df.isnull().sum(axis=1)
```

This is counter-intuitive since axis = 0 is for rows and axis = 1 is for columns. Considering also that we use axis = 1 as below to drop columns

```
df = df.drop([]'BuildingArea','YearBuilt','CouncilArea'], axis=1)
```

Any help will be appreciated as i am stuck with this comprehension.