I stuck with quite obvious task.

I have a df with missing data. For processing such kind of data I want to test two dataFrames.

For the first one `X_real_zeros`

- I replace missing with 0.
And for the second one `X_real_means`

- with column's mean.

I have collected all numeric columns name in one array

```
numeric_cols = ['RFCD.Percentage.1', 'RFCD.Percentage.2', 'RFCD.Percentage.3',
'RFCD.Percentage.4', 'RFCD.Percentage.5',
'SEO.Percentage.1', 'SEO.Percentage.2', 'SEO.Percentage.3',
'SEO.Percentage.4', 'SEO.Percentage.5',
'Year.of.Birth.1', 'Number.of.Successful.Grant.1', 'Number.of.Unsuccessful.Grant.1']
```

Then I'm trying to create two dataFrames.

```
data = pd.read_csv('data.csv')
X_real_zeros = data
for col in numeric_cols:
X_real_zeros[col] = data[col].fillna(0)
X_real_means = data
a = calculate_means(data[numeric_cols])
for col in numeric_cols:
print(a[col], col)
X_real_means[col] = data[col].fillna(a[col])
```

But, when I want to create the second one, it turns out, that my `data`

data frame has been modified. Anyway I think my approach is not accurate, what is the proper way of solving such tasks?