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NumPy Essentials

You're reading from  NumPy Essentials

Product type Book
Published in Apr 2016
Publisher
ISBN-13 9781784393670
Pages 156 pages
Edition 1st Edition
Languages
Authors (3):
Leo (Liang-Huan) Chin Leo (Liang-Huan) Chin
Profile icon Leo (Liang-Huan) Chin
Tanmay Dutta Tanmay Dutta
Profile icon Tanmay Dutta
Shane Holloway Shane Holloway
Profile icon Shane Holloway
View More author details

Table of Contents (16) Chapters

NumPy Essentials
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
1. An Introduction to NumPy 2. The NumPy ndarray Object 3. Using NumPy Arrays 4. NumPy Core and Libs Submodules 5. Linear Algebra in NumPy 6. Fourier Analysis in NumPy 7. Building and Distributing NumPy Code 8. Speeding Up NumPy with Cython 9. Introduction to the NumPy C-API 10. Further Reading

Summary


In this chapter, we covered the last important component of the ndarray object: strides. We saw a huge difference in memory layouts and also in performance when you use different ways to initialize your NumPy array. We also got to know the record array (structured array) and how to manipulate the date/time in NumPy. Most importantly, we saw how to read and write our data with NumPy.

NumPy is powerful not only because of its performance or ufuncs, but also because of how easy it can make your analysis. Use NumPy with your data as much as you can!

Next, we will look at linear algebra and matrix computation using NumPy.

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