Apress, 2022. — 394 p. — ISBN 1484281209.
This book focuses on the
Python-based tools and techniques to help you become highly productive at all aspects of typical data science stacks such as
statistical analysis, visualization, model selection, and feature engineering. You’ll review the inefficiencies and bottlenecks lurking in the daily business process and solve them with practical solutions. Automation of repetitive data science tasks is a
key mindset that is
promoted throughout the book. You’ll learn how to extend the existing coding practice to handle
larger datasets with high efficiency with the help of
advanced libraries and packages that already exist in the
Python ecosystem. The book focuses on topics such as how to measure the
memory footprint and execution speed of machine learning models, quality test a data science pipelines, and modularizing a data science pipeline for app development. You’ll review Python libraries which come in very handy for
automating and speeding up the day-to-day tasks. In the end, you’ll understand and perform
data science and machine learning tasks beyond the traditional methods and utilize the
full spectrum of the Python data science ecosystem to increase productivity.
What You’ll LearnWrite fast and efficient code for data science and machine learning.
Build robust and expressive data science pipelines.
Measure memory and CPU profile for machine learning methods.
Utilize the full potential of GPU for data science tasks.
Handle large and complex data sets efficiently.
Who This Book Is ForData scientists, data analysts, machine learning engineers, Artificial intelligence practitioners, statisticians who want to take full advantage of Python ecosystem.
True PDF