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I would like to do a matrix multiplication (a 3x3 matrix) with a vector (3x1). The "problem" ist that every component of the vector is taken each one of another matrix and I do not know how to proceed. Is there any way to do it?

import numpy as np
A = np.array([[1,1,1],[2,1,0],[1,0,1]])

v1 = np.array([[1,2,3,4]])
v2 = np.array([[5,6,7,8]])
v3 = np.array([[9,10,11,12]])

And I would like to multiply: A x {1,5,9}.T and save the result. Then A x {2,6,10}.T, A x {3,7,11}.T and finally A x {4,8,12}.T. The lengths of arrays v1, v2, and v3 are the same.

Thank you in advance! Regards,

Xabi

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closed as off-topic by msw, Hans Then, madth3, zhangyangyu, Antti Haapala Aug 7 '13 at 1:06

This question appears to be off-topic. The users who voted to close gave this specific reason:

  • "Questions asking for code must demonstrate a minimal understanding of the problem being solved. Include attempted solutions, why they didn't work, and the expected results. See also: Stack Overflow question checklist" – msw, Hans Then, madth3, zhangyangyu, Antti Haapala
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4  
Even showing your worst attempt gives us reason to think you've tried to solve it; it also helps us to understand what you've got in your mental toolbox which allows us to give you a more usable answer. –  msw Aug 6 '13 at 9:07
    
do not see why you would want to do this with or without for loops. numpy has methods for matrix multiplication and Transposition. you are already importing numby why not just use it. it has C optimised, tested code exactly for that purpose. –  Joop Aug 6 '13 at 10:10

2 Answers 2

up vote 2 down vote accepted

You can do the operation you are after with a single matrix multiplication, if you first stack all your vectors together into a single array:

vectors = np.vstack((vv1, v2, v3))
products = np.dot(A, v)

And now products[:, i] (or products.T[i], if you prefer) has the product of A with the i-th vector.

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Thank you for your response! It is a good way to solve the "problem"! –  user2655987 Aug 7 '13 at 7:55

Numpy Arrays:

Using two numpy arrays; one 3 x 3 and one 3x1:

>>> import numpy as np
>>> a = np.ones((3,3))
>>> b=np.random.rand(3,1)
array([[ 0.08970952],
       [ 0.56447089],
       [ 0.57500698]])

If you want matrix multiplication you can use dot

>>> np.dot(a,b)
array([[ 1.22918739],
       [ 1.22918739],
       [ 1.22918739]])

If you want element wise muliplication you can use *

>>> a*b
array([[ 0.08970952,  0.08970952,  0.08970952],
       [ 0.56447089,  0.56447089,  0.56447089],
       [ 0.57500698,  0.57500698,  0.57500698]])

Numpy Matrices:

Note that if you are using numpy matrices then the * operator can be used for matrix multiplication:

>>> c = np.mat(a)   # converts from array to matrix
>>> d = np.mat(b)
>>> c*d
matrix([[ 1.22918739],
        [ 1.22918739],
        [ 1.22918739]])
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