Book Image

R Data Science Essentials

Book Image

R Data Science Essentials

Overview of this book

With organizations increasingly embedding data science across their enterprise and with management becoming more data-driven it is an urgent requirement for analysts and managers to understand the key concept of data science. The data science concepts discussed in this book will help you make key decisions and solve the complex problems you will inevitably face in this new world. R Data Science Essentials will introduce you to various important concepts in the field of data science using R. We start by reading data from multiple sources, then move on to processing the data, extracting hidden patterns, building predictive and forecasting models, building a recommendation engine, and communicating to the user through stunning visualizations and dashboards. By the end of this book, you will have an understanding of some very important techniques in data science, be able to implement them using R, understand and interpret the outcomes, and know how they helps businesses make a decision.
Table of Contents (15 chapters)
R Data Science Essentials
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Preface
Index

About the Reviewers

Jeremy Gray is a data scientist with over 8 years of experience and is based in Toronto.

He completed his PhD in biology at the University of Auckland (the birthplace of R) and worked as a post-doctoral fellow and course instructor at the University of Toronto. His research interests are primarily in using R as an integrated machine learning environment, financial modeling, and consumer analytics, as well as pedagogical methods in scientific computing.

Navin K Manaswi is a data science professional who loves to delve into messy complex data to bring meaningful insights out of it. Although he has been recognized as one of the top 10 data scientists in India, he still loves to learn everyday as a curious child does. Having done both his bachelor's and master's from IIT Kanpur, he has been contributing to the world of data analytics, machine learning, big data technologies, and business intelligence. So far, he has worked at the intersection of technologies and business domains of supply chain management, sales and marketing, finance, and healthcare.