# Using numpy.take on multidimensional arrays?

Is it possible to use take over multiple axes the same way fancy indexing works?

The multidimensional arrays are fairly large, so I was hoping to potentially get a speedup.

For example:

import numpy as np
x = np.random.rand(20,20,20,20)
m = np.where(x>0.5)
m = (m[0],m[1],m[2])
print x[m].shape
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Can you expand on that? Are you hoping to get the same results from your code example, but faster using numpy.take? Does x[x > 0.5] not give you the result you want? – YXD Aug 8 '12 at 16:30
Yes, I'm hoping to get better performance with take. x[x > 0.5] is not the same as I'm only taking the first three axes of m. – Christopher Dorian Aug 8 '12 at 18:18

m = np.where(x>0.5)
m = (m[0],m[1],m[2])
result = x[m]

Can be written to avoid the np.where by using repeat:

m = np.sum(x>0.5,-1)
result = x.reshape(-1,x.shape[-1]).repeat(w.ravel(), 0)

Which seems about 4 times faster. However I wonder if you did not mean to ask for

m = np.any(x>0.5,-1)
result = x[m,:]

which will not create duplicates (though reshaping is still required here)?

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