# Splice arrays in NumPy?

I'd like to perform a splice of sorts in NumPy. Let's say I have two arrays, `a` and `b`:

``````>>> a
array([[ 1, 10],
[ 2, 20],
[ 5, 30]])
>>> b
array([[ 1, 11],
[ 3, 31],
[ 4, 41]])
``````

which I want to splice together into the following array, `c`:

``````>>> c
array([[  1.,  10.],
[  2.,  20.],
[  3.,  nan],
[  4.,  nan],
[  5.,  30.]])
``````

That is, I splice the values from the first column of `b` into `a` without bothering about the second column.

I could of course implement this myself pretty easily, but it would be nicer to have NumPy do it for me instead. Is that possible?

-

The answer by mishaF is only missing the last step -- making the entries of the last column unique. The full code to get your `c` (except for the dtype, which changes from `int` to `float` in your post) is

``````b[:,1]=numpy.nan
c = numpy.r_[a, b]
c.sort(0)
c = c[numpy.unique(c[:,0], True)[1]]
``````
-

You could stack the two together and then sort. However, this doesn't take care of the fact that you have two occurrences of the index 1. Not sure this is a great improvement...

`````` b[:,1]=np.nan
c = np.vstack((a,b))
c.sort(0)
``````
-