I have a pandas frame similar to this one:

```
import pandas as pd
import numpy as np
data = {'Col1' : [4,5,6,7], 'Col2' : [10,20,30,40], 'Col3' : [100,50,-30,-50], 'Col4' : ['AAA', 'BBB', 'AAA', 'CCC']}
df = pd.DataFrame(data=data, index = ['R1','R2','R3','R4'])
Col1 Col2 Col3 Col4
R1 4 10 100 AAA
R2 5 20 50 BBB
R3 6 30 -30 AAA
R4 7 40 -50 CCC
```

Given an array of targets:

```
target_array = np.array(['AAA', 'CCC', 'EEE'])
```

I would like to find the cell elements indices in `Col4`

which also appear in the `target_array`

.

I have tried to find a documented answer but it seems beyond my skill... Anyone has any advice?

P.S. Incidentally, for this particular case I can input a target array whose elements are the data frame indices names `array(['R1', 'R3', 'R5'])`

. Would it be easier that way?

Edit 1:

Thank you very much for all the great replies. Sadly I can only choose one but everyone seems to point @Divakar as the best. Still you should look at piRSquared and MaxU speed comparisons for all the possibilities available