Book Image

Mastering Object-Oriented Python - Second Edition

By : Steven F. Lott
Book Image

Mastering Object-Oriented Python - Second Edition

By: Steven F. Lott

Overview of this book

Object-oriented programming (OOP) is a relatively complex discipline to master, and it can be difficult to see how general principles apply to each language's unique features. With the help of the latest edition of Mastering Objected-Oriented Python, you'll be shown how to effectively implement OOP in Python, and even explore Python 3.x. Complete with practical examples, the book guides you through the advanced concepts of OOP in Python, and demonstrates how you can apply them to solve complex problems in OOP. You will learn how to create high-quality Python programs by exploring design alternatives and determining which design offers the best performance. Next, you'll work through special methods for handling simple object conversions and also learn about hashing and comparison of objects. As you cover later chapters, you'll discover how essential it is to locate the best algorithms and optimal data structures for developing robust solutions to programming problems with minimal computer processing. Finally, the book will assist you in leveraging various Python features by implementing object-oriented designs in your programs. By the end of this book, you will have learned a number of alternate approaches with different attributes to confidently solve programming problems in Python.
Table of Contents (25 chapters)
Free Chapter
1
Section 1: Tighter Integration Via Special Methods
11
Section 2: Object Serialization and Persistence
17
Section 3: Object-Oriented Testing and Debugging

Storing and Retrieving Objects via SQLite

There are many applications where we need to persist a large number of distinct objects. The techniques we looked at in Chapter 10, Serializing and Saving - JSON, YAML, Pickle, CSV, and XML, were biased toward persistence for a single, monolithic object. Sometimes, we need to persist separate, individual objects from a larger domain. For example, we might be saving blog entries, blog posts, authors, and advertisements; each of which must be handled separately.

In Chapter 11, Storing and Retrieving Objects via Shelve, we looked at storing distinct Python objects in a shelve data store. This allowed us to implement the CRUD processing on a domain of individual objects. Each object can be created, retrieved, updated, or deleted without having to load and dump the entire file.

In this chapter, we'll look at mapping Python objects to a...