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Numpy Beginner's Guide (Update)

You're reading from   Numpy Beginner's Guide (Update) Build efficient, high-speed programs using the high-performance NumPy mathematical library

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Product type Paperback
Published in Jun 2015
Publisher
ISBN-13 9781785281969
Length 348 pages
Edition 1st Edition
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Author (1):
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Ivan Idris Ivan Idris
Author Profile Icon Ivan Idris
Ivan Idris
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Table of Contents (16) Chapters Close

Preface 1. NumPy Quick Start FREE CHAPTER 2. Beginning with NumPy Fundamentals 3. Getting Familiar with Commonly Used Functions 4. Convenience Functions for Your Convenience 5. Working with Matrices and ufuncs 6. Moving Further with NumPy Modules 7. Peeking into Special Routines 8. Assuring Quality with Testing 9. Plotting with matplotlib 10. When NumPy Is Not Enough – SciPy and Beyond 11. Playing with Pygame A. Pop Quiz Answers B. Additional Online Resources C. NumPy Functions' References
Index

Time for action – computing the pseudo inverse of a matrix

Let's compute the pseudo inverse of a matrix:

  1. First, create a matrix:
    A = np.mat("4 11 14;8 7 -2")
    print("A\n", A)

    The matrix we created looks like the following:

    A
    [[ 4 11 14]
     [ 8  7 -2]]
    
  2. Calculate the pseudo inverse matrix with the pinv() function:
    pseudoinv = np.linalg.pinv(A)
    print("Pseudo inverse\n", pseudoinv)

    The pseudo inverse result is as follows:

    Pseudo inverse
    [[-0.00555556  0.07222222]
     [ 0.02222222  0.04444444]
     [ 0.05555556 -0.05555556]]
    
  3. Multiply the original and pseudo inverse matrices:
    print("Check", A * pseudoinv)

    What we get is not an identity matrix, but it comes close to it:

    Check [[  1.00000000e+00   0.00000000e+00]
     [  8.32667268e-17   1.00000000e+00]]
    

What just happened?

We computed the pseudo inverse of a matrix with the pinv() function of the numpy.linalg module. The check by matrix multiplication resulted in a matrix that is approximately an identity matrix (see...

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