I'm struggling to understand the behaviour of Python's Pandas library when adding columns in a loop to a dataframe. I want to loop through a list of objects (these are actually tuples of dates) adding a number of columns in each loop. A simplified version of this is as follows:

```
import pandas as pd
import numpy as np
df = pd.DataFrame(np.arange(6).reshape(2, 3), columns=('a', 'b', 'c'))
for x in range(10):
# Printed on each loop:
print('Adding column type 1')
df['{}_type1'.format(x)] = 'Type 1'
# Printed on last loop only:
print('Adding column type 2')
df['{}_type2'.format(x)] = 'Type 2'
```

I would expect this to add 20 new columns to the dataframe (2 per loop), but instead it adds 11 columns; the first 10 of 'Type 1', and the 11th of 'Type 2'. Further, the first print is outputted 10 times but the second only once:

```
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 1
Adding column type 2
```

I am new to Pandas so may be missing something fundamental but this seems like a bug to me, perhaps a rogue `continue`

in the logic that does the vectorised operation? Any thoughts or explanations would be greatly welcomed.

Thanks, Dominic