Let's say my data frame contains these data:

```
>>> df = pd.DataFrame({'a':['l1','l2','l1','l2','l1','l2'],
'b':['1','2','2','1','2','2']})
>>> df
a b
0 l1 1
1 l2 2
2 l1 2
3 l2 1
4 l1 2
5 l2 2
```

`l1`

should correspond to `1`

whereas `l2`

should correspond to `2`

.
I'd like to create a new column '`c`

' such that, for each row, `c = 1`

if `a = l1`

and `b = 1`

(or `a = l2`

and `b = 2`

). If `a = l1`

and `b = 2`

(or `a = l2`

and `b = 1`

) then `c = 0`

.

The resulting data frame should look like this:

```
a b c
0 l1 1 1
1 l2 2 1
2 l1 2 0
3 l2 1 0
4 l1 2 0
5 l2 2 1
```

My data frame is very large so I'm really looking for the most efficient way to do this using pandas.