Thinking in Pandas: How to Use the Python Data Analysis Library the Right Way » MIRLIB.RU - ТВОЯ БИБЛИОТЕКА
Категория: КНИГИ » ПРОГРАММИРОВАНИЕ
Thinking in Pandas: How to Use the Python Data Analysis Library the Right Way
/
Название: Thinking in Pandas: How to Use the Python Data Analysis Library the Right Way
Автор: Hannah Stepanek
Издательство: Apress
Год: 2020
Формат: true pdf/epub/mobi
Страниц:
Размер: 10.3 Mb
Язык: English

Understand and implement big data analysis solutions in pandas with an emphasis on performance. This book strengthens your intuition for working with pandas, the Python data analysis library, by exploring its underlying implementation and data structures.
Thinking in Pandas introduces the topic of big data and demonstrates concepts by looking at exciting and impactful projects that pandas helped to solve. From there, you will learn to assess your own projects by size and type to see if pandas is the appropriate library for your needs. Author Hannah Stepanek explains how to load and normalize data in pandas efficiently, and reviews some of the most commonly used loaders and several of their most powerful options. You will then learn how to access and transform data efficiently, what methods to avoid, and when to employ more advanced performance techniques. You will also go over basic data access and munging in pandas and the intuitive dictionary syntax. Choosing the right DataFrame format, working with multi-level DataFrames, and how pandas might be improved upon in the future are also covered.
By the end of the book, you will have a solid understanding of how the pandas library works under the hood. Get ready to make confident decisions in your own projects by utilizing pandas?the right way.
What You Will Learn
Understand the underlying data structure of pandas and why it performs the way it does under certain circumstances
Discover how to use pandas to extract, transform, and load data correctly with an emphasis on performance
Choose the right DataFrame so that the data analysis is simple and efficient.
Improve performance of pandas operations with other Python libraries







[related-news]
[/related-news]
Комментарии 0
Комментариев пока нет. Стань первым!