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I use Python and Numpy and have some problem with "transpose":

a=array([ 5,4])                 # a is random !!!
print a
print a.T

Why this no working? If a is for example [[],[]] then works but I need transpose of [...,...,...].

thanks

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also tried "print a.transpose" which is the same but without sucess, not transpose... –  thaking May 10 '11 at 18:35
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4 Answers 4

up vote 35 down vote accepted

It's working exactly as it's supposed to. The transpose of a 1D array is still a 1D array! (If you're used to matlab, it fundamentally doesn't have a concept of a 1D array. Matlab's "1D" arrays are 2D.)

If you want to turn your 1D vector into a 2D array and then transpose it, just slice it with np.newaxis (or None, they're the same, newaxis is just more readable).

import numpy as np
a = np.array([5,4])[np.newaxis]
print a
print a.T

Generally speaking though, you don't ever need to worry about this. Adding the extra dimension is usually not what you want, if you're just doing it out of habit. Numpy will automatically broadcast a 1D array when doing various calculations. There's usually no need to distinguish between a row vector and a column vector (neither of which are vectors. They're both 2D!) when you just want a vector.

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Well yes, but I have a=[ 5,4]; not a=[1,2,3,4,5....] –  thaking May 10 '11 at 18:44
2  
@thaking - I just used np.arange to quickly make a 1D array. It works exactly the same for a = np.array([5,4]). –  Joe Kington May 10 '11 at 18:45
1  
@thaking If you are new to numpy - keep in mind that the round brackets () do not indicate an additional dimension in numpy. If a = np.arange(10) then a is array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9]) as produced by a.__repr__(). This is a 1-dimensional (i.e. a.ndim --> 1) vector as indicated by the square brackets []. The array( ... ) is not seen when you do either print(a) or a.__str__(). –  dtlussier May 11 '12 at 16:15
2  
@JoeKington there is a situation that broadcasting of a 1D array is useful. Computing the distance between all 1D points in an array. Thanks to your solution one can do x - x[np.newaxis].T which gives the distance matrix –  JuanPi Apr 25 '13 at 2:13
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Transpose of [5,4] is [5,4], well actually

[5,
 4]

PS: There is a simple way to transpose a 2D matrix -

zip(*a)
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I may be wrong, but isn't the transpose of [5,4] = [[5],[4]]? –  Bryce Siedschlaw May 10 '11 at 18:40
    
If I do zip(*a) I received error: TypeError: zip argument #1 must support iteration –  thaking May 10 '11 at 18:41
    
@thaking - note the 2D matrix. It won't work on [5,4] . It will work on something like [[5,4],[6,7]] –  manojlds May 10 '11 at 18:42
    
Yes I notice that but I need on 2D [5,4] = [[5],[4]].... How to get it? –  thaking May 10 '11 at 18:43
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You can use two bracket pairs instead of one. This actually creates a 2D array, which can be transposed, unlike the 1D array you create if you use one bracket pair. About a year too late, but just for the record...

import numpy as np    
a = np.array([[5, 4]])
a.T
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I prefer this solution to the [np.newaxis] one, it looks more elegant imo. –  PhilMacKay Mar 20 at 16:23
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You can convert an existing vector into a matrix by wrapping it in an extra set of square brackets...

from numpy import *
v=array([5,4]) ## create a numpy vector
array([v]).T ## transpose a vector into a matrix

numpy also has a matrix class (see array vs. matrix)...

matrix(v).T ## transpose a vector into a matrix
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