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I have multiple arrays without column or row names, and I would like to combine them using something like numpy.vstack() or numpy.hstack().

Column and row labels can be assigned can be done when creating a structured array, but hstack and vstack don't seem to have this functionality.

import numpy as np
a1 = np.array([1,2,3,4])
a2 = np.array([5,6,7,8])
a3 = np.vstack([a1,a2],dtype=[('RowName1','double'),('RowName2','double')])


TypeError: vstack() got an unexpected keyword argument 'dtype'

Any suggestions?

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3 Answers 3

up vote 1 down vote accepted

vstack doesn't work with structured arrays, but only with 'standard' numpy arrays that are contiguous in memory. The easiest way is for you to create an empty structured array and then fill it up with the rows that you want:

import numpy as np
a3 = np.empty(4, dtype=[('RowName1','double'),('RowName2','double')])
a3['RowName1'] = a1
a3['RowName2'] = a2
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Something possible option is (since recfunctions are pretty hidden):

from numpy.lib import recfunctions
a1 = np.array([1,2,3,4]).astype(('RowName1',float))
a2 = np.array([5,6,7,8]).astype(('RowName2',float))
recfunctions.merge_arrays((a1, a2))

Had this, but this has a few problems to be careful with, because of how reinterpretation of memory works with view, its better to just create a new recarray with the concatenated array.

you could just turn around the logic:

import numpy    
a1 = np.array([1,2,3,4])
a2 = np.array([5,6,7,8])
# ok, not that beautiful. But if your arrays are the correct type to begin with
# you can skip that astype call. Using `np.c_[]` since it happens to concatenate right.
a3 = np.c_[v1,v2].astype(float).copy('C').view(dtype=[('RowName1',float),('RowName2',float)])
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I don't think that works as the OP wanted. First, it will view integer arrays as double (ie, garbled), and it will have the wrong shape because the wanted index is by row and not by column. –  tiago Dec 12 '12 at 10:43
@tiango, right :/... I didn't check that vstack wasn't really right to begin with, and without explicit cast to the right type, the view is bad of course. –  seberg Dec 12 '12 at 10:53
it still gives a wrong result. If you look at your a3['RowName1'], it gives a 2D array: array([[ 1., 5.], [ 3., 7.]]). I'm not trying to criticise your answers, just genuinely curious. Even if a1, a2 are of the same type and concatenated in the right direction, it doesn't seem possible to get a view per row -- the shape is wrong. –  tiago Dec 12 '12 at 11:05
@tiango yeah sorry, it was not a good idea with view. The reason is that the concatenation array is not C-Contiguous and view only reinterprets the underlying memory, but because it is not C-Contiguous that is not the same as the wanted result... Its actually a good example why one needs to be careful with view... –  seberg Dec 12 '12 at 11:17

You might also consider looking at pandas. Pandas has a nice data frame data structure that might be good.

Of course, this requires you to add another dependency to your project. Luckily, if you are already using numpy then Pandas is pretty easy to get going.

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