The trick is to extract the car column first, then to get the maker.

```
import pandas as pd
import numpy as np
df['model'] = df['T'].apply(lambda x: x.split(
'(')[0].strip() if x.count('(') > 0 else np.NaN)
df['maker'] = df['T'].apply(lambda x: x.split('[')[0].strip(
) if x.count('[') > 0 else np.NaN).fillna(method="ffill")
df = df.dropna().drop('T', axis=1).reindex(
columns=['maker', 'model']).reset_index(drop=True)
```

The first line of the code extracts all the cars by using split and strip string operations if the entry contained `'('`

, it assigns `NaN`

otherwise, we use `NaN`

so that we can delete those rows after finding the makers.
At this stage the data frame `df`

will be:

```
+----+-----------------------+------------+
| | T | model |
|----+-----------------------+------------|
| 0 | Honda [edit] | nan |
| 1 | Accord (4 models) | Accord |
| 2 | Civic (4 models) | Civic |
| 3 | Pilot (3 models) | Pilot |
| 4 | Toyota [edit] | nan |
| 5 | Prius (4 models) | Prius |
| 6 | Highlander (3 models) | Highlander |
| 7 | Ford [edit] | nan |
| 8 | Explorer (2 models) | Explorer |
+----+-----------------------+------------+
```

The second line does the same but for `'['`

records, here the `NaNs`

are used to fill forward the empty maker cells using fillna
At this stage the data frame `df`

will be:

```
+----+-----------------------+------------+---------+
| | T | model | maker |
|----+-----------------------+------------+---------|
| 0 | Honda [edit] | nan | Honda |
| 1 | Accord (4 models) | Accord | Honda |
| 2 | Civic (4 models) | Civic | Honda |
| 3 | Pilot (3 models) | Pilot | Honda |
| 4 | Toyota [edit] | nan | Toyota |
| 5 | Prius (4 models) | Prius | Toyota |
| 6 | Highlander (3 models) | Highlander | Toyota |
| 7 | Ford [edit] | nan | Ford |
| 8 | Explorer (2 models) | Explorer | Ford |
+----+-----------------------+------------+---------+
```

The third line drops the extra records and rearrange the columns as well as reset the index

```
| | maker | model |
|----+---------+------------|
| 0 | Honda | Accord |
| 1 | Honda | Civic |
| 2 | Honda | Pilot |
| 3 | Toyota | Prius |
| 4 | Toyota | Highlander |
| 5 | Ford | Explorer |
```

EDIT:

A more "pandorable" version (I am fond of one liners)

```
df = df['T'].str.extractall('(.+)\[|(.+)\(').apply(
lambda x: x.ffill()
if x.name==0
else x).dropna(subset=[1]).reset_index(
drop=True).rename(columns={1:'Model',0:'Maker'})
```

the above works as follows
`extractall`

will return a DataFrame with two columns; column `0`

corresponding to the group in the regex extracted using the first group`'(.+)\['`

i.e. the maker records ending with; and column `1`

, corresponding to the second group i.e. `'(.+)\('`

, `apply`

is used to iterate through the columns, the column named `0`

will be modified to propagate the 'Maker' values forward via `ffill`

and column `1`

will be left as is. `dropna`

is then used with subset `1`

to remove all rows where the value in column `1`

is `NaN`

, `reset_index`

is used to drop the mult-index `extractall`

generates. finally the columns are renamed using `rename`

and a correspondence dictionary

Another one liner (func ;))

```
df['T'].apply(lambda line: [line.split('[')[0],None] if line.count('[')
else [None,line.split('(')[0].strip()]
).apply(pd.Series
).rename(
columns={0:'Maker',1:'Model'}
).apply(
lambda col: col.ffill() if col.name == 'Maker'
else col).dropna(
subset=['Model']
).reset_index(drop=True)
```