Amazon cover image
Image from Amazon.com

Introduction to r-programming language / by Mohsen Nady

By: Material type: TextTextPublication details: Canada : Arcler Press, c2022.Description: ix, 432 p. : ill. ; 24 cmISBN:
  • 9781774690390
Subject(s): LOC classification:
  • QA76.9.D343 N13 2022
Contents:
Chapter 1 Installing R and Rstudio Chapter 2 Getting Started with R and Rstudio Chapter 3 Objects and Files Chapter 4 Vectors and Lists Chapter 5 Matrices and Dataframes Chapter 6 Factors and Missing Values Chapter 7 Subsetting Objects Chapter 8 Dates and Times Chapter 9 Importing Data Chapter 10 Basic Data Wrangling With Tidyverse Chapter 11 Data Visualization Using GGPLOT2 Chapter 12 Functions.
Abstract: This book covers some introductory steps in using R programming language as a data science tool. The data science field has evolved so much recently with incredible quantities of generated data. To extract value from those data, one needs to be trained in the proper data science skills like statistical analysis, data cleaning, data visualization, and machine learning. R is now considered the centerpiece language for doing all these data science skills because it has many useful packages that not only can perform all the previous skills, but also, has additional packages that was developed by different scientists in diverse fields. These fields include, but are not limited to, business, marketing, microbiology, social science, geography, genomics, environmental science, etc. Furthermore, R is free software and can run on all major platforms: Windows, Mac Os, and UNIX/Linux. The first two chapters involve installing and using R and RStudio. RStudio is an IDE (integrated development environment) that makes R easier to use and is more similar to SPSS or Stata. Chapters 38 covers the different R objects and how to manipulate them including the very popular one, dataframes. Chapter 9 is about importing different files into your R working session like text or excel files. Chapters 10 and 11 are dealing with different tidy verse packages that can do interesting summaries of different data frames including different types of data visualizations. In the last chapter, it introduces how functions are created in R along with some control structures and useful functions. In all these chapters, many examples along with different codes and outputs are given to help your understanding of this powerful programming language. I hope this book will be great addition to your future data analysis projects.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Status Barcode
Books Books Philippine Christian University Manila Reserve College QA76.9.D343 N13 2022 (Browse shelf(Opens below)) Not For Loan 52951

Includes bibliographical references and index.

Chapter 1 Installing R and Rstudio Chapter 2 Getting Started with R and Rstudio Chapter 3 Objects and Files Chapter 4 Vectors and Lists Chapter 5 Matrices and Dataframes Chapter 6 Factors and Missing Values Chapter 7 Subsetting Objects Chapter 8 Dates and Times Chapter 9 Importing Data Chapter 10 Basic Data Wrangling With Tidyverse Chapter 11 Data Visualization Using GGPLOT2 Chapter 12 Functions.

This book covers some introductory steps in using R programming language as a data science tool. The data science field has evolved so much recently with incredible quantities of generated data. To extract value from those data, one needs to be trained in the proper data science skills like statistical analysis, data cleaning, data visualization, and machine learning. R is now considered the centerpiece language for doing all these data science skills because it has many useful packages that not only can perform all the previous skills, but also, has additional packages that was developed by different scientists in diverse fields. These fields include, but are not limited to, business, marketing, microbiology, social science, geography, genomics, environmental science, etc. Furthermore, R is free software and can run on all major platforms: Windows, Mac Os, and UNIX/Linux. The first two chapters involve installing and using R and RStudio. RStudio is an IDE (integrated development environment) that makes R easier to use and is more similar to SPSS or Stata. Chapters 38 covers the different R objects and how to manipulate them including the very popular one, dataframes. Chapter 9 is about importing different files into your R working session like text or excel files. Chapters 10 and 11 are dealing with different tidy verse packages that can do interesting summaries of different data frames including different types of data visualizations. In the last chapter, it introduces how functions are created in R along with some control structures and useful functions. In all these chapters, many examples along with different codes and outputs are given to help your understanding of this powerful programming language. I hope this book will be great addition to your future data analysis projects.

There are no comments on this title.

to post a comment.
credits

© 2024 PCU Learning Resource Center, All Rights Reserved