# python numpy array indexed by a whole array

``````t_index = np.argsort(adj, axis = 0)[:,::-1]  # 54 x 54 shape
t = np.sort(adj, axis= 0)[:,::-1] # 54 x 54
t[5:,] = 0
adj = t[t_index] # 54 x 54 x 54
``````

Instead of returning a 54 x 54 shape, it is 54 x 54 x 54. How can I get the same shape? Why is it three-dimensional?

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Just a minor note, in python multidimensional arrays are indexed `t[i, j]` instead of `t[i][j]`. –  Bi Rico Oct 16 '13 at 23:41
Can you explain what you are trying to achieve? I think I see what you are trying to do, and there are much simpler approaches. You definitely shouldn't need to both `sort` and `argsort` an array no matter what you are trying to do. My guess is that what you want to do is: `t_index = np.argsort(adj, axis=0); mask = (t_index < adj.shape[0] - 5); adj[mask] = 0` –  Jaime Oct 16 '13 at 23:51

Let me give you an example of who we use the `t[t_index]` syntax to help you understand how it works. I sometimes use integer arrays to represent images using a color pallet. Each of 256 colors, rgb values, are stored in a pallet array that has shape (256, 3). The image is stored as an array of (1000, 1000) integers between 0 and 255, or indices into the pallet array. If I want to create an rgb image, for example for display purpose i do `rgbimage = pallet[image]` to create an rgb image which is (1000, 1000, 3).

update: I see that you've updated your question in include argsort, maybe you're trying to do something similar tho this question. For a 2d array, the short version looks like this:

``````s = np.random.random((54, 54))
t = np.random.random((54, 54))
axis = 0

t_index = s.argsort(axis)
idx = np.ogrid[:t.shape[0], :t.shape[1]]
idx[axis] = t_index
t_sort = t[idx]
``````

I was looking for a good explanation of how this works, but I can't seem to find a good one. If anyone has a good reference for how `ogrid` works, or how broadcasting in numpy indexing works please leave a note in the comments. I'll write a short explanation which should help. Lets say `t` is a 2d array and I want to pick out 2 elements from each column, I would do the following:

``````t = np.arange((12)).reshape(3, 4)
print t
# [[ 0,  1,  2,  3],
#  [ 4,  5,  6,  7],
#  [ 8,  9, 10, 11]]

print t[[0, 3], :]
# [[ 0  1  2  3]
#  [ 8  9 10 11]]
``````

Now imagine I want different elements from each row, I might try:

``````row_index = [[0, 2],
[0, 2],
[1, 2],
[0, 1]]
t[row_index]
# Which in python is the same as
t[row_index, :]
``````

But that will not work. This behavior shouldn't be surprising because the `:` means every column. In the previous example we got every column for 0, and every column for 2. What we really want is:

``````row_index = [[0, 2],
[0, 2],
[1, 2],
[0, 1]]
column_index = [[0, 0],
[1, 1],
[2, 2],
[3, 3]]
t[row_index, column_index]
``````

Numpy also lets us cheat and use the following because the values are just repeated:

``````column_index = [[0],
[1],
[2],
[3]]
``````