As far as I know `np.where`

does not support multiple return statements (at least not more than two). So either you rewrite your `np.where`

to result in one True and one False statement and to return 1/0 for True/False, or you need to use masks.

If you rewrite `np.where`

, you are limited to two results and the second result will always be set when the condition is not True. So it will be also set for values like `(S == 5) & (A = np.nan)`

.

```
df['Result'] = np.where(((df.S == 1) & (df.A == 1)) | ((df.S == 2) & (df.A == 0)), 1, 0)
```

When using masks, you can apply an arbitrary number of conditions and results. For your example, the solution looks like:

```
mask_0 = ((df.S == 1) & (df.A == 0)) | ((df.S == 2) & (df.A == 1))
mask_1 = ((df.S == 1) & (df.A == 1)) | ((df.S == 2) & (df.A == 0))
df.loc[mask_0, 'Result'] = 0
df.loc[mask_1, 'Result'] = 1
```

Results will be set to `np.nan`

where no condition is met. This is imho failsafe and should thus be used. But if you want to have zeros in these locations, just initialize your `Results`

column with zeros.

Of course this can be simplified for special cases like only having 1 and 0 as result and extended for any number of result by using dicts or other containers.

getattrreturn object.__getattribute__(self, name). AttributeError: 'DataFrame' object has no attribute.