R Data Science Quick Reference: A Pocket Guide to APIs, Libraries, and Packages
In this handy, practical book you will cover each concept concisely, with many illustrative examples. You'll be introduced to several R data science packages, with examples of how to use each of them. 
In this book, you’ll learn about the following APIs and packages that deal specifically with data science applications: readr, dibble, forecasts, lubridate, stringr, tidyr, magnittr, dplyr, purrr, ggplot2, modelr, and more.
After using this handy quick reference guide, you'll have the code, APIs, and insights to write data science-based applications in the R programming language.  You'll also be able to carry out data analysis.  

What You Will Learn
  • Import data with readr
  • Work with categories using forcats, time and dates with lubridate, and strings with stringr
  • Format data using tidyr and then transform that data using magrittr and dplyr
  • Write functions with R for data science, data mining, and analytics-based applications
  • Visualize data with ggplot2 and fit data to models using modelr

Who This Book Is For
Programmers new to R's data science, data mining, and analytics packages.  Some prior coding experience with R in general is recommended.  
1131014377
R Data Science Quick Reference: A Pocket Guide to APIs, Libraries, and Packages
In this handy, practical book you will cover each concept concisely, with many illustrative examples. You'll be introduced to several R data science packages, with examples of how to use each of them. 
In this book, you’ll learn about the following APIs and packages that deal specifically with data science applications: readr, dibble, forecasts, lubridate, stringr, tidyr, magnittr, dplyr, purrr, ggplot2, modelr, and more.
After using this handy quick reference guide, you'll have the code, APIs, and insights to write data science-based applications in the R programming language.  You'll also be able to carry out data analysis.  

What You Will Learn
  • Import data with readr
  • Work with categories using forcats, time and dates with lubridate, and strings with stringr
  • Format data using tidyr and then transform that data using magrittr and dplyr
  • Write functions with R for data science, data mining, and analytics-based applications
  • Visualize data with ggplot2 and fit data to models using modelr

Who This Book Is For
Programmers new to R's data science, data mining, and analytics packages.  Some prior coding experience with R in general is recommended.  
44.99 In Stock
R Data Science Quick Reference: A Pocket Guide to APIs, Libraries, and Packages

R Data Science Quick Reference: A Pocket Guide to APIs, Libraries, and Packages

by Thomas Mailund
R Data Science Quick Reference: A Pocket Guide to APIs, Libraries, and Packages

R Data Science Quick Reference: A Pocket Guide to APIs, Libraries, and Packages

by Thomas Mailund

eBook1st ed. (1st ed.)

$44.99 

Available on Compatible NOOK devices, the free NOOK App and in My Digital Library.
WANT A NOOK?  Explore Now

Related collections and offers


Overview

In this handy, practical book you will cover each concept concisely, with many illustrative examples. You'll be introduced to several R data science packages, with examples of how to use each of them. 
In this book, you’ll learn about the following APIs and packages that deal specifically with data science applications: readr, dibble, forecasts, lubridate, stringr, tidyr, magnittr, dplyr, purrr, ggplot2, modelr, and more.
After using this handy quick reference guide, you'll have the code, APIs, and insights to write data science-based applications in the R programming language.  You'll also be able to carry out data analysis.  

What You Will Learn
  • Import data with readr
  • Work with categories using forcats, time and dates with lubridate, and strings with stringr
  • Format data using tidyr and then transform that data using magrittr and dplyr
  • Write functions with R for data science, data mining, and analytics-based applications
  • Visualize data with ggplot2 and fit data to models using modelr

Who This Book Is For
Programmers new to R's data science, data mining, and analytics packages.  Some prior coding experience with R in general is recommended.  

Product Details

ISBN-13: 9781484248942
Publisher: Apress
Publication date: 08/07/2019
Sold by: Barnes & Noble
Format: eBook
File size: 877 KB

About the Author

Thomas Mailund is an associate professor at Aarhus University, Denmark. He has a background in math and computer science.  For the last decade, his main focus has been on genetics and evolutionary studies, particularly comparative genomics, speciation, and gene flow between emerging species.  He has published Beginning Data Science in R, Functional Programming in R, and Metaprogramming in R with Apress as well as other books.  

Table of Contents

1. Introduction.- 2. Importing Data: readr.- 3. Representing Tables: tibble.- 4. Reformatting Tables: tidyr.- 5. Pipelines: magrittr.- 6. Functional Programming: purrr.- 7. Manipulating Data Frames: dplyr.- 8. Working with Strings: stringr.- 9. Working with Factors: forcats.- 10. Working with Dates: lubridate.- 11. Working with Models: broom and modelr.- 12. Plotting: ggplot2.- 13. Conclusions.
From the B&N Reads Blog

Customer Reviews