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Modern Python Cookbook

Modern Python Cookbook - Third Edition

By : Steven F. Lott
4.9 (17)
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Modern Python Cookbook

Modern Python Cookbook

4.9 (17)
By: Steven F. Lott

Overview of this book

Python is the go-to language for developers, engineers, data scientists, and hobbyists worldwide. Known for its versatility, Python can efficiently power applications, offering remarkable speed, safety, and scalability. This book distills Python into a collection of straightforward recipes, providing insights into specific language features within various contexts, making it an indispensable resource for mastering Python and using it to handle real-world use cases. The third edition of Modern Python Cookbook provides an in-depth look into Python 3.12, offering more than 140 new and updated recipes that cater to both beginners and experienced developers. This edition introduces new chapters on documentation and style, data visualization with Matplotlib and Pyplot, and advanced dependency management techniques using tools like Poetry and Anaconda. With practical examples and detailed explanations, this cookbook helps developers solve real-world problems, optimize their code, and get up to date with the latest Python features.
Table of Contents (20 chapters)
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18
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Index

7.10 Using properties for lazy attributes

In the Designing classes with lots of processing recipe, we defined a class that eagerly computed a number of attributes of the data in a collection. The idea there was to compute the values as soon as possible, so that the attributes would have no further computational cost.

We described this as eager processing, since the work was done as soon as possible. The other approach is lazy processing, where the work is done as late as possible.

What if we have values that are used rarely, and are very expensive to compute? What can we do to minimize the up-front computation, and only compute values when they are truly needed?

7.10.1 Getting ready...

For background, see the NIST Aerosol Particle Size case study: https://www.itl.nist.gov/div898/handbook/pmc/section6/pmc62.htm

See the Designing classes with lots of processing recipe in this chapter for more details on this dataset. Rather...

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