# NumPy: use 2D index array from argmin in a 3D slice

I'm trying to index large 3D arrays using a 2D array of indicies from argmin (or related argmax, etc. functions). Here is my example data:

``````import numpy as np
shape3d = (16, 500, 335)
shapelen = reduce(lambda x, y: x*y, shape3d)

# 3D array of [random] source integers
intcube = np.random.uniform(2, 50, shapelen).astype('i').reshape(shape3d)

# 2D array of indices of minimum value along first axis
minax0 = intcube.argmin(axis=0)

# Another 3D array where I'd like to use the indices from minax0
othercube = np.zeros(shape3d)

# A 2D array of [random] values I'd like to assign in othercube
some2d = np.empty(shape3d[1:])
``````

At this point, both 3D arrays have the same shape, while the `minax0` array has the shape (500, 335). Now I'd like assign values from the 2D array `some2d` to the 3D array `othercube` using `minax0` for the index position of the first dimension. This is what I'm trying, but doesn't work:

``````othercube[minax0] = some2d    # or
othercube[minax0,:] = some2d
``````

throws the error:

ValueError: dimensions too large in fancy indexing

Note: What I'm currently using, but is not very NumPythonic:

``````for r in range(shape3d[1]):
for c in range(shape3d[2]):
othercube[minax0[r, c], r, c] = some2d[r, c]
``````

I've been digging around the web to find similar examples that can index `othercube`, but I'm not finding anything elegant. Would this require an advanced index? Any tips?

-

fancy indexing can be a little non-intuitive. Luckily the tutorial has some good examples.

Basically, you need to define the j and k where each `minidx` applies. numpy doesn't deduce it from the shape.

``````i = minax0