Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I found a very similar question to mine, but not exactly the same. This one: here However in ntimes's case the size of the array matches the number of the dimensions the tuple is point at. In my case I have a 4-dimensional array and a 2-dimensional tuple, just like this:

from numpy.random import rand

I want to use the tuple as an index to the first two dimensions, and manually index the last two. Something like:


However, I obtain a repetition of the first dimension with index=2, along the fourth dimension( since it technically hasn't been indexed). That is because this indexing is interpreting a double indexing to the first dimension instead of one value for each dimension,

| dim 0:(index 2 AND index 2) , dim 1:(index 3), dim 2:(index 2), dim 3:(no index)|
instead of 
|dim 0(index 2), dim 1(index 2), dim 2:(index 3), dim 3:(index 2)|.

How can I 'unpack' this tuple then? Any ideas? thanks!

share|improve this question
add comment

2 Answers 2

up vote 2 down vote accepted

You can also pass in your first tuple alone to get the slice of interest, then index it seprately:

from numpy.random import rand
chosen_slice = (2,2)

>>> big_array[ chosen_slice ]
array([[ 0.96281602,  0.38296561,  0.59362615,  0.74032818,  0.88169483],
       [ 0.54893771,  0.33640089,  0.53352849,  0.75534718,  0.38815883],
       [ 0.85247424,  0.9441886 ,  0.74682007,  0.87371017,  0.68644639],
       [ 0.52858188,  0.74717948,  0.76120181,  0.08314177,  0.99557654]])

>>> chosen_part = (1,1)

>>> big_array[ chosen_slice ][ chosen_part ]

That may be slightly more readable for some users, but otherwise I'd lean towards mgilson's solution.

share|improve this answer
damn! I like it too! I would say this option is a bit more flexible since you can place it in 'middle' dimensions more straightforwardly. Something like: big_array[1][tup][2] works like a charm. Great insight, thank you! –  vint-i-vuit Sep 4 '12 at 14:52
add comment

Since you're using numpy:


should work. When you call __getitem__ (via the square brackets), the stuff is passed to __getitem__ as a tuple. You just need to construct the tuple explicitly here (adding tuples together concatenates into a new tuple) and numpy will do what you want.

share|improve this answer
simple and perfect, like a charm! I did not know you could do that with tuples, thank you! –  vint-i-vuit Sep 4 '12 at 14:46
add comment

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.