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Mastering Object-Oriented Python

You're reading from   Mastering Object-Oriented Python Build powerful applications with reusable code using OOP design patterns and Python 3.7

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Product type Paperback
Published in Jun 2019
Publisher Packt
ISBN-13 9781789531367
Length 770 pages
Edition 2nd Edition
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Author (1):
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Steven F. Lott Steven F. Lott
Author Profile Icon Steven F. Lott
Steven F. Lott
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Table of Contents (25) Chapters Close

Preface
Who this book is for
What this book covers
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1. Preliminaries, Tools, and Techniques FREE CHAPTER 2. The __init__() Method 3. Integrating Seamlessly - Basic Special Methods 4. Attribute Access, Properties, and Descriptors 5. The ABCs of Consistent Design 6. Using Callables and Contexts 7. Creating Containers and Collections 8. Creating Numbers 9. Decorators and Mixins - Cross-Cutting Aspects 10. Serializing and Saving - JSON, YAML, Pickle, CSV, and XML 11. Storing and Retrieving Objects via Shelve 12. Storing and Retrieving Objects via SQLite 13. Transmitting and Sharing Objects 14. Configuration Files and Persistence 15. Design Principles and Patterns 16. The Logging and Warning Modules 17. Designing for Testability 18. Coping with the Command Line 19. Module and Package Design 20. Quality and Documentation

Testing – unittest and doctest

Unit testing is absolutely essential.

If there's no automated test to show a particular element functionality, then the feature doesn't really exist. Put another way, it's not done until there's a test that shows that it's done.

We'll touch, tangentially, on testing. If we delved into testing each object-oriented design feature, the book would be twice as long as it is. Omitting the details of testing has the disadvantage of making good unit tests seem optional. They're emphatically not optional.

Unit testing is essential.

When in doubt, design the tests first. Fit the code to the test cases.

Python offers two built-in testing frameworks. Most applications and libraries will make use of both. One general wrapper for testing is the unittest module. In addition, many public API docstrings will have examples that can be found and used by the doctest module. Also, unittest can incorporate doctest.

The pytest tool can locate test cases and execute them. This is a very useful tool, but must be installed separately from the rest of Python.

One lofty ideal is that every class and function has at least a unit test. The important, visible classes and functions will often also have doctest. There are other lofty ideals: 100% code coverage; 100% logic path coverage, and so on.

Pragmatically, some classes don't need testing. A class that extends typing.NamedTuple, for example, doesn't really need a sophisticated unit test. It's important to test the unique features of a class you've written and not the features inherited from the standard library.

Generally, we want to develop the test cases first, and then write code that fits the test cases. The test cases formalize the API for the code. This book will reveal numerous ways to write code that has the same interface. Once we've defined an interface, there are still numerous candidate implementations that fit the interface. One set of tests will apply to several different object-oriented designs.

One general approach to using the unittest and pytest tools is to create at least three parallel directories for your project:

  • myproject: This directory is the final package that will be installed in lib/site-packages for your package or application. It has an __init__.py file. We'll put our files in here for each module.
  • tests: This directory has the test scripts. In some cases, the scripts will parallel the modules. In some cases, the scripts may be larger and more complex than the modules themselves.
  • docs: This has other documentation. We'll touch on this in the next section, as well as a chapter in part three.

In some cases, we'll want to run the same test suite on multiple candidate classes so that we can be sure each candidate works. There's no point in doing timeit comparisons on code that doesn't actually work.

You have been reading a chapter from
Mastering Object-Oriented Python - Second Edition
Published in: Jun 2019
Publisher: Packt
ISBN-13: 9781789531367
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