In data science application development, such as credit card fraud detection, airline delay prediction, sentiment analysis from a huge corpus of text, and so on, we are required to store, process, and analyze a dataset that might not fit into computer memory. Moreover, in some situations, the dataset might not be that big but the complexity of the algorithm forces us to use huge memory. In these types of situations where the dataset is way too big, or the algorithm is too complex, you are required to use parallel processing to achieve the task. In R, the data frame is the most convenient and popular structure to store, process, and analyze a dataset, but for a larger data context, the data frame is not fast enough. The external data frame (XDF) is an alternative to the typical R data frame used to store, process, and analyze larger data. In this chapter...
-
Book Overview & Buying
-
Table Of Contents
-
Feedback & Rating
Modern R Programming Cookbook
By :
Modern R Programming Cookbook
By:
Overview of this book
R is a powerful tool for statistics, graphics, and statistical programming. It is used by tens of thousands of people daily to perform serious statistical analyses. It is a free, open source system whose implementation is the collective accomplishment of many intelligent, hard-working people. There are more than 2,000 available add-ons, and R is a serious rival to all commercial statistical packages. The objective of this book is to show how to work with different programming aspects of R. The emerging R developers and data science could have very good programming knowledge but might have limited understanding about R syntax and semantics. Our book will be a platform develop practical solution out of real world problem in scalable fashion and with very good understanding. You will work with various versions of R libraries that are essential for scalable data science solutions. You will learn to work with Input / Output issues when working with relatively larger dataset. At the end of this book readers will also learn how to work with databases from within R and also what and how meta programming helps in developing applications.
Table of Contents (10 chapters)
Preface
Installing and Configuring R and its Libraries
Data Structures in R
Writing Customized Functions
Conditional and Iterative Operations
R Objects and Classes
Querying, Filtering, and Summarizing
R for Text Processing
R and Databases
Customer Reviews