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Published inJul 2021
Reading LevelIntermediate
PublisherPackt
ISBN-139781838822323
Edition2nd Edition
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Authors (3):
Claus Führer
Claus Führer
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Claus Führer

Claus Führer is a professor of scientific computations at Lund University, Sweden. He has an extensive teaching record that includes intensive programming courses in numerical analysis and engineering mathematics across various levels in many different countries and teaching environments. Claus also develops numerical software in research collaboration with industry and received Lund University's Faculty of Engineering Best Teacher Award in 2016.
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16.3.1 Symbolic matrices

We briefly met the matrix data type when we discussed vector-valued functions. There, we saw it in its simplest form, which converts a list of lists into a matrix. To see an example, let's construct a rotation matrix:

phi=symbols('phi')
rotation=Matrix([[cos(phi), -sin(phi)],
[sin(phi), cos(phi)]])

When working with SymPy matrices we have to note that the operator * performs matrix multiplications and is not acting as an elementwise multiplication, which is the case for NumPy arrays. 

The previously defined rotation matrix can be checked for orthogonality by using this matrix multiplication and the transpose of a matrix:

simplify(rotation.T*rotation -eye(2))  # returns a 2 x 2 zero matrix

The previous example shows how a matrix is transposed and how the identity matrix is created. Alternatively, we could have checked whether its inverse is its transpose, which can be done as follows:

simplify...
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Scientific Computing with Python - Second Edition
Published in: Jul 2021Publisher: PacktISBN-13: 9781838822323

Authors (3)

author image
Claus Führer

Claus Führer is a professor of scientific computations at Lund University, Sweden. He has an extensive teaching record that includes intensive programming courses in numerical analysis and engineering mathematics across various levels in many different countries and teaching environments. Claus also develops numerical software in research collaboration with industry and received Lund University's Faculty of Engineering Best Teacher Award in 2016.
Read more about Claus Führer