# How to return a subarray of a multidimensional array in Python?

I need to be able to return a part of a multidimensional array, but I don't know how to do this in a correct way. The way I do it seems very naive:

``````import numpy as np
a=np.ones([3,3,3,3,3])
b=np.asarray([2,2])
c=np.asarray([2,2])
print a[b[0],b[1],:,c[0],c[1]]
``````

and will return

``````[1,1,1]
``````

However what I want is something like this:

``````a=np.ones([3,3,3,3,3])
b=np.asarray([2,2])
c=np.asarray([2,2])
print a[b,:,c]
``````

Which returns the `a` itself, Although I want it to return `[1,1,1]` instead.

And I don't know why. How can I read part of an array without specifying element by element but giving the indices of the array I want as a pack?

P.S. Thanks to @hcwhsa, I updated the question to address more specifically what I want.

-
What exactly do you want that second thing to return? In particular, what do you want `a[b,:,c].shape` to be? – user2357112 Nov 25 '13 at 0:58
@user2357112 The same thing, i.e. `[1,1,1]` just with this new way of calling – Cupitor Nov 25 '13 at 0:59
What's your use case? Why do you have these `b` and `c` arrays? – user2357112 Nov 25 '13 at 1:01
@user2357112, Well I have a giant joint distribution and sometimes I need to marginalize it. Then I need to partly sum up. Or sample from a specific part of it. Obviously in a discrete case. – Cupitor Nov 25 '13 at 1:09
`a[tuple(b) + (slice(None),) + tuple(c)]` – askewchan Nov 25 '13 at 1:58

I can think of two ways to do this, neither is perfect. One is to roll the axis you want to get all of to the end:

``````ax = 2 # the axis you want to have all values in
np.rollaxis(a, ax, a.ndim)[tuple(np.r_[b,c])]
``````

This works for `a[b,:,:,c]` if you move two axes to the back (be careful in the index shift for axis number!)

``````np.rollaxis(np.rollaxis(a, ax, a.ndim), ax, a.ndim)[tuple(np.r_[b,c])]
``````

where `np.rollaxis(a, ax, a.ndim)` moves the axis `ax` you want to keep all of to the end:

``````a = np.zeros((1,2,3,4,5))
a.shape
#(1,2,3,4,5)
np.rollaxis(a, ax, a.ndim).shape
#(1,2,4,5,3)
``````

And the `np.r_[b,c]` just concatentes the two arrays. You could also do: `tuple(np.concatenate([b,c]))`

Or, you can use the one from my comment:

``````a[tuple(b) + (slice(None),) + tuple(c)]
``````

where `slice` is the object that the `start:end:step` syntax creates. `None` gives you the `:`, but you can create it dynamically (without having to type the `:` in the right spot). So, `a[1:3]` is equivalent to `a[slice(1,3)]`, and `a[:3]` is `a[slice(None,3)]`. I've wrapped it inside a tuple so that it can be "added" to the other two tuples to create one long tuple.

-

Define `b` as a tuple:

``````>>> b = (2, 2)
>>> a[b]
array([ 1.,  1.,  1.])
``````

Or convert it to a `tuple` before passing it to `a[]`

``````>>> b = np.asarray([2,2])
>>> a[tuple(b)]
array([ 1.,  1.,  1.])
``````
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Thank you. Vote up. But in my code b is array and not a tuple and the "tuple(map(tuple, arr))" doesn't work here. – Cupitor Nov 25 '13 at 0:46
@Naji Check out my updated answer. – Ashwini Chaudhary Nov 25 '13 at 0:47
And what about the case that my dimension is higher and I need the subarray for example: `a[b,:,:,c]` Where `b` and `c` are arrays? – Cupitor Nov 25 '13 at 0:50