# Transpose of a vector using numpy

I am having an issue with Ipython - Numpy. I want to do the following operation:

``````x^T.x
``````

with x belonging to R^n, and x^T the transpose operation on vector x. x is extracted from a txt file with the instruction:

``````x = np.loadtxt('myfile.txt')
``````

The problem is that if i use the transpose function

``````np.transpose(x)
``````

and uses the shape function to know the size of x, I get the same dimensions for x and x^T. Numpy gives the size with a L uppercase indice after each dimensions. e.g.

``````print x.shape
print np.transpose(x).shape

(3L, 5L)
(3L, 5L)
``````

Does anybody know how to solve this, and compute x^T.x as a matrix product?

Thank you!

-

As explained by others, transposition won't "work" like you want it to for 1D arrays. You might want to use `np.atleast_2d` to have a consistent scalar product definition:

``````def vprod(x):
y = np.atleast_2d(x)
return np.dot(y.T, y)
``````
-

What `np.transpose` does is reverse the shape tuple, i.e. you feed it an array of shape `(m, n)`, it returns an array of shape `(n, m)`, you feed it an array of shape `(n,)`... and it returns you the same array with shape`(n,)`.

What you are implicitly expecting is for numpy to take your 1D vector as a 2D array of shape `(1, n)`, that will get transposed into a `(n, 1)` vector. Numpy will not do that on its own, but you can tell it that's what you want, e.g.:

``````>>> a = np.arange(4)
>>> a
array([0, 1, 2, 3])
>>> a.T
array([0, 1, 2, 3])
>>> a[np.newaxis, :].T
array([[0],
[1],
[2],
[3]])
``````
-

For starters `L` just means that the type is a long int. This shouldn't be an issue. You'll have to give additional information about your problem though since I cannot reproduce it with a simple test case:

``````In [1]: import numpy as np

In [2]: a = np.arange(12).reshape((4,3))

In [3]: a
Out[3]:
array([[ 0,  1,  2],
[ 3,  4,  5],
[ 6,  7,  8],
[ 9, 10, 11]])

In [4]: a.T #same as np.transpose(a)
Out[4]:
array([[ 0,  3,  6,  9],
[ 1,  4,  7, 10],
[ 2,  5,  8, 11]])

In [5]: a.shape
Out[5]: (4, 3)

In [6]: np.transpose(a).shape
Out[6]: (3, 4)
``````

There is likely something subtle going on with your particular case which is causing problems. Can you post the contents of the file that you're reading into `x`?

-

The file 'myfile.txt' contain lines such as

``````5.100000 3.500000 1.400000 0.200000 1
4.900000 3.000000 1.400000 0.200000 1
``````

Here is the code I run:

``````import numpy as np
x = data[1,:]

print x.shape
print np.transpose(x).shape
print x*np.transpose(x)
print np.transpose(x)*x
``````

And I get as a result

``````(5L,)
(5L,)
[ 24.01   9.     1.96   0.04   1.  ]
[ 24.01   9.     1.96   0.04   1.  ]
``````

I would be expecting one of the two last result to be a scalar instead of a vector, because x^T.x (or x.x^T) should give a scalar.

-
You can get what you are after as `np.dot(x, x)`. The `*` operator in numpy represents element-wise multiplication, not matrix multiplication. –  Jaime Oct 8 '13 at 4:03
This isn't an answer, and should be made as an edit to your question instead. Two points: (1) Originally you said that `numpy` wasn't changing the shape of a `(3L, 5L)` array, which was very surprising, but isn't not surprising at all that `(5L,)` stays as `(5L,)`; it's a 1-D object, and its transpose is itself. Was your original report in error? (2) `x*np.transpose(x)` is an elementwise multiplication of two 1-D arrays, and therefore a 1-D array. –  DSM Oct 8 '13 at 4:03