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CMake Cookbook

You're reading from   CMake Cookbook Building, testing, and packaging modular software with modern CMake

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Product type Paperback
Published in Sep 2018
Publisher Packt
ISBN-13 9781788470711
Length 606 pages
Edition 1st Edition
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Authors (2):
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Radovan Bast Radovan Bast
Author Profile Icon Radovan Bast
Radovan Bast
Roberto Di Remigio Roberto Di Remigio
Author Profile Icon Roberto Di Remigio
Roberto Di Remigio
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Table of Contents (18) Chapters Close

Preface 1. Setting up Your System FREE CHAPTER 2. From a Simple Executable to Libraries 3. Detecting the Environment 4. Detecting External Libraries and Programs 5. Creating and Running Tests 6. Configure-time and Build-time Operations 7. Generating Source Code 8. Structuring Projects 9. The Superbuild Pattern 10. Mixed-language Projects 11. Writing an Installer 12. Packaging Projects 13. Building Documentation 14. Alternative Generators and Cross-compilation 15. Testing Dashboards 16. Porting a Project to CMake 17. Other Books You May Enjoy

Detecting Python modules and packages

The code for this recipe is available at https://github.com/dev-cafe/cmake-cookbook/tree/v1.0/chapter-03/recipe-03 and has a C++ example. The recipe is valid with CMake version 3.5 (and higher) and has been tested on GNU/Linux, macOS, and Windows.

In the previous recipe, we showed how to detect the Python interpreter and how to compile a simple C program, embedding the Python interpreter. Both are fundamental tasks to get you off the ground when combining Python and a compiled language. Often, your code will depend on specific Python modules, be they Python tools, compiled programs embedding Python, or libraries extending it. For example, NumPy has become very popular in the scientific community for problems involving matrix algebra. In projects that depend on Python modules or packages, it is important to make sure that the dependency on...

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