See numpy.lib.recfunctions.join_by

It only works on structured arrays or recarrays, so there are a couple of kinks.

First you need to be at least somewhat familiar with structured arrays. See here if you're not.

```
import numpy as np
import numpy.lib.recfunctions
# Define the starting arrays as structured arrays with two fields ('key' and 'field')
dtype = [('key', np.int), ('field', np.float)]
x = np.array([(1, 2),
(2, 4),
(3, 6),
(4, np.NaN),
(5, 10)],
dtype=dtype)
y = np.array([(0, -5),
(1, 0),
(2, 5),
(5, 20),
(6, 25)],
dtype=dtype)
# You want an outer join, rather than the default inner join
# (all values are returned, not just ones with a common key)
join = np.lib.recfunctions.join_by('key', x, y, jointype='outer')
# Now we have a structured array with three fields: 'key', 'field1', and 'field2'
# (since 'field' was in both arrays, it renamed x['field'] to 'field1', and
# y['field'] to 'field2')
# This returns a masked array, if you want it filled with
# NaN's, do the following...
join.fill_value = np.NaN
join = join.filled()
# Just displaying it... Keep in mind that as a structured array,
# it has one dimension, where each row contains the 3 fields
for row in join:
print row
```

This outputs:

```
(0, nan, -5.0)
(1, 2.0, 0.0)
(2, 4.0, 5.0)
(3, 6.0, nan)
(4, nan, nan)
(5, 10.0, 20.0)
(6, nan, 25.0)
```

Hope that helps!

Edit1: Added example
Edit2: Really shouldn't join with floats... Changed 'key' field to an int.