I have 3 datasets, the first one named Data that holds my data; the table has 5 columns, and 3 rows - each column represents a specific location, that can be identified with a set of X, Y locations, and each row represents a specific depth (Z); the 2nd dataset holds the 5 X, Y locations (the columns of the first data set), while a 3rd file holds the 3 Z values, (rows of Data table)

# generate my data

```
import numpy as np
Data = np.arange(1, 16).reshape(3, 5) #holds the 'data' I am interested in
X = [0, 0, 1, 1, 2] #create 'X', 'Y' values
Y = [0, 1, 0, 1, 0]
XY = np.array((X, Y)).reshape(5, 2) # this is the format I have the 'X' and 'Y' values
Z = [-1, -5, -10]
z = np.array(Z)
```

I want now to combine all and have a new numpy array (or pandas dataframe) of the X, Y, Z, Data format for example for the data given the first 3 rows of the table should be:

```
X Y Z Data #this is a header, I just add it to make reading easier
0 0 -1 1
0 0 -5 6
0 0 -10 11
0 1 -1 2
0 1 -5 7
0 1 -10 12
```

etc....

any hint on how to do that would be great I am thinking using pandas to create the proper (multi) index columns but I fail to find the proper way to do so

`Z`

list has less entries than lists`X`

and`Y`

, is that correct? – Saullo Castro Oct 14 '13 at 15:37