# What is the equivalent of “zip()” in Python's numpy?

I am trying to do the following but with numpy arrays:

``````x = [(0.1, 1.), (0.1, 2.), (0.1, 3.), (0.1, 4.), (0.1, 5.)]
normal_result = zip(*x)
``````

This should give a result of:

``````normal_result = [(0.1, 0.1, 0.1, 0.1, 0.1), (1., 2., 3., 4., 5.)]
``````

But if the input vector is a numpy array:

``````y = np.array(x)
numpy_result = zip(*y)
print type(numpy_result)
``````

It (expectedly) returns a:

``````<type 'list'>
``````

The issue is that I will need to transform the result back into a numpy array after this.

What I would like to know is what is if there is an efficient numpy function that will avoid these back-and-forth transformations?

-

You can just transpose it...

``````>>> a = np.array([(0.1, 1.), (0.1, 2.), (0.1, 3.), (0.1, 4.), (0.1, 5.)])
>>> a
array([[ 0.1,  1. ],
[ 0.1,  2. ],
[ 0.1,  3. ],
[ 0.1,  4. ],
[ 0.1,  5. ]])
>>> a.T
array([[ 0.1,  0.1,  0.1,  0.1,  0.1],
[ 1. ,  2. ,  3. ,  4. ,  5. ]])
``````
-
Oh my god, this is so obvious! I can't believe I didn't think of this myself (I've clearly been staring at my screen too long). Thank you! –  TimY Oct 5 '12 at 11:05

Try using dstack:

``````>>> from numpy import *
>>> a = array([[1,2],[3,4]]) # shapes of a and b can only differ in the 3rd dimension (if present)
>>> b = array([[5,6],[7,8]])
>>> dstack((a,b)) # stack arrays along a third axis (depth wise)
array([[[1, 5],
[2, 6]],
[[3, 7],
[4, 8]]])
``````

so in your case it would be:

``````x = [(0.1, 1.), (0.1, 2.), (0.1, 3.), (0.1, 4.), (0.1, 5.)]
y = np.array(x)
np.dstack(y)

>>> array([[[ 0.1,  0.1,  0.1,  0.1,  0.1],
[ 1. ,  2. ,  3. ,  4. ,  5. ]]])
``````
-
Adds an extra dimension to a 2d array. If you want something similar to what the OP wanted, you'll have to take the first element of the dstacked array. –  benjwadams Sep 18 '14 at 14:08