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Expert Python Programming – Fourth Edition

You're reading from   Expert Python Programming – Fourth Edition Master Python by learning the best coding practices and advanced programming concepts

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Product type Paperback
Published in May 2021
Publisher Packt
ISBN-13 9781801071109
Length 630 pages
Edition 4th Edition
Languages
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Authors (3):
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Michał Jaworski Michał Jaworski
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Michał Jaworski
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Tarek Ziadé Tarek Ziadé
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Tarek Ziadé
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Toc

Table of Contents (16) Chapters Close

Preface 1. Current Status of Python 2. Modern Python Development Environments 3. New Things in Python 4. Python in Comparison with Other Languages 5. Interfaces, Patterns, and Modularity FREE CHAPTER 6. Concurrency 7. Event-Driven Programming 8. Elements of Metaprogramming 9. Bridging Python with C and C++ 10. Testing and Quality Automation 11. Packaging and Distributing Python Code 12. Observing Application Behavior and Performance 13. Code Optimization 14. Other Books You May Enjoy
15. Index

The need to use extensions

It's not easy to say when it is a reasonable decision to write extensions in C/C++. The general rule of thumb could be "never unless you have no other choice". But this is a very subjective statement that leaves a lot of place for the interpretation of what is not doable in Python. In fact, it is hard to find a thing that cannot be done using pure Python code.

Still, there are some problems where extensions may be especially useful by adding the following benefits:

  • Bypassing GIL in the CPython threading model
  • Improving performance in critical code sections
  • Integrating source code written in different languages
  • Integrating third-party dynamic libraries
  • Creating efficient custom datatypes

Of course, for every such problem, there is usually a viable native Python solution. For example, the core CPython interpreter constraints, such as GIL, can easily be overcome with a different approach to concurrency...

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