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Python Packages introduces Python packaging at an introductory and
practical level that's suitable for those with no previous
packaging experience. Despite this, the text builds up to advanced
topics such as automated testing, creating documentation,
versioning and updating a package, and implementing continuous
integration and deployment. Covering the entire Python packaging
life cycle, this essential guide takes readers from package
creation all the way to effective maintenance and updating. Python
Packages focuses on the use of current and best-practice packaging
tools and services like poetry, cookiecutter, pytest, sphinx,
GitHub, and GitHub Actions. Features: The book's source code is
available online as a GitHub repository where it is collaborated
on, automatically tested, and built in real time as changes are
made; demonstrating the use of good reproducible and clear project
workflows. Covers not just the process of creating a package, but
also how to document it, test it, publish it to the Python Package
Index (PyPI), and how to properly version and update it. All
concepts in the book are demonstrated using examples. Readers can
follow along, creating their own Python packages using the
reproducible code provided in the text. Focuses on a modern
approach to Python packaging with emphasis on automating and
streamlining the packaging process using new and emerging tools
such as poetry and GitHub Actions.
Python Packages introduces Python packaging at an introductory and
practical level that's suitable for those with no previous
packaging experience. Despite this, the text builds up to advanced
topics such as automated testing, creating documentation,
versioning and updating a package, and implementing continuous
integration and deployment. Covering the entire Python packaging
life cycle, this essential guide takes readers from package
creation all the way to effective maintenance and updating. Python
Packages focuses on the use of current and best-practice packaging
tools and services like poetry, cookiecutter, pytest, sphinx,
GitHub, and GitHub Actions. Features: The book's source code is
available online as a GitHub repository where it is collaborated
on, automatically tested, and built in real time as changes are
made; demonstrating the use of good reproducible and clear project
workflows. Covers not just the process of creating a package, but
also how to document it, test it, publish it to the Python Package
Index (PyPI), and how to properly version and update it. All
concepts in the book are demonstrated using examples. Readers can
follow along, creating their own Python packages using the
reproducible code provided in the text. Focuses on a modern
approach to Python packaging with emphasis on automating and
streamlining the packaging process using new and emerging tools
such as poetry and GitHub Actions.
Data Science: A First Introduction focuses on using the R
programming language in Jupyter notebooks to perform data
manipulation and cleaning, create effective visualizations, and
extract insights from data using classification, regression,
clustering, and inference. The text emphasizes workflows that are
clear, reproducible, and shareable, and includes coverage of the
basics of version control. All source code is available online,
demonstrating the use of good reproducible project workflows. Based
on educational research and active learning principles, the book
uses a modern approach to R and includes accompanying autograded
Jupyter worksheets for interactive, self-directed learning. The
book will leave readers well-prepared for data science projects.
The book is designed for learners from all disciplines with minimal
prior knowledge of mathematics and programming. The authors have
honed the material through years of experience teaching thousands
of undergraduates in the University of British Columbia's DSCI100:
Introduction to Data Science course.
Data Science: A First Introduction focuses on using the R
programming language in Jupyter notebooks to perform data
manipulation and cleaning, create effective visualizations, and
extract insights from data using classification, regression,
clustering, and inference. The text emphasizes workflows that are
clear, reproducible, and shareable, and includes coverage of the
basics of version control. All source code is available online,
demonstrating the use of good reproducible project workflows. Based
on educational research and active learning principles, the book
uses a modern approach to R and includes accompanying autograded
Jupyter worksheets for interactive, self-directed learning. The
book will leave readers well-prepared for data science projects.
The book is designed for learners from all disciplines with minimal
prior knowledge of mathematics and programming. The authors have
honed the material through years of experience teaching thousands
of undergraduates in the University of British Columbia's DSCI100:
Introduction to Data Science course.
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