Vectorized method, using `arange`

to find the last index, `max`

, and concatenation:

```
df['last_referred'] = np.r_[[np.NaN], df.columns][
((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1).values]
```

Explanation:

We want to find the rightmost cell in each row that has the value `'referred'`

:

```
>>> df == 'referred'
name action_1 action_2 action_3
0 False True True False
1 False False True True
2 False False False False
3 False False True False
4 False True False False
5 False False False False
```

One option would be `DataFrame.idxmax`

, but that gives the first (i.e. leftmost) occurrence. However, suppose we could replace the `True`

values with their column index, we could just use normal `max`

. Since `True`

is `1`

and `False`

is `0`

, we can do this by multiplying with the integer range `[0, 1, 2, ...]`

broadcast vertically:

```
>>> np.arange(df.shape[1])
array([0, 1, 2, 3])
>>> (df == 'referred') * np.arange(df.shape[1])
name action_1 action_2 action_3
0 0 1 2 0
1 0 0 2 3
2 0 0 0 0
3 0 0 2 0
4 0 1 0 0
5 0 0 0 0
>>> ((df == 'referred') * np.arange(df.shape[1])).max(axis=1)
0 2
1 3
2 0
3 2
4 1
5 0
dtype: int32
```

One problem, though: we can't tell the difference between `'referred'`

in the "name" column and not occurring at all. Easy fix; just start the integer range from 1:

```
>>> ((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1)
0 3
1 4
2 0
3 3
4 2
5 0
dtype: int32
```

Now just use this array to index into the column names:

```
>>> df.columns[((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1).values]
IndexError: index 4 is out of bounds for size 4
```

Oops! We need to make `0`

come out as `NaN`

and the rest of the columns to shift over. We can do this using `np.r_`

, which concatenates arrays:

```
>>> np.r_[[np.NaN], df.columns]
array([nan, 'name', 'action_1', 'action_2', 'action_3'], dtype=object)
>>> np.r_[[np.NaN], df.columns][
((df == 'referred') * (np.arange(df.shape[1]) + 1)).max(axis=1).values]
array(['action_2', 'action_3', nan, 'action_2', 'action_1', nan], dtype=object)
```

And there you have it.