# Numpy transpose multiplication problem

I tried to find the eigenvalues of a matrix multiplied by its transpose but I couldn't do it using numpy.

``````testmatrix = numpy.array([[1,2],[3,4],[5,6],[7,8]])
prod = testmatrix * testmatrix.T
print eig(prod)
``````

I expected to get the following result for the product:

``````5    11    17    23
11    25    39    53
17    39    61    83
23    53    83   113
``````

and eigenvalues:

``````0.0000
0.0000
0.3929
203.6071
``````

Instead I got `ValueError: shape mismatch: objects cannot be broadcast to a single shape` when multiplying `testmatrix` with its transpose.

This works (the multiplication, not the code) in MatLab but I need to use it in a python application.

Can someone tell me what I'm doing wrong?

-

You might find this tutorial useful since you know MATLAB.

Also, try multiplying `testmatrix` with the `dot()` function, i.e. `numpy.dot(testmatrix,testmatrix.T)`

Apparently `numpy.dot` is used between arrays for matrix multiplication! The `*` operator is for element-wise multiplication (`.*` in MATLAB).

-

You're using element-wise multiplication - the `*` operator on two Numpy matrices is equivalent to the `.*` operator in Matlab. Use

``````prod = numpy.dot(testmatrix, testmatrix.T)
``````
-