Book Image

Spark for Data Science

By : Srinivas Duvvuri, Bikramaditya Singhal
Book Image

Spark for Data Science

By: Srinivas Duvvuri, Bikramaditya Singhal

Overview of this book

This is the era of Big Data. The words ‘Big Data’ implies big innovation and enables a competitive advantage for businesses. Apache Spark was designed to perform Big Data analytics at scale, and so Spark is equipped with the necessary algorithms and supports multiple programming languages. Whether you are a technologist, a data scientist, or a beginner to Big Data analytics, this book will provide you with all the skills necessary to perform statistical data analysis, data visualization, predictive modeling, and build scalable data products or solutions using Python, Scala, and R. With ample case studies and real-world examples, Spark for Data Science will help you ensure the successful execution of your data science projects.
Table of Contents (18 chapters)
Spark for Data Science
Credits
Foreword
About the Authors
About the Reviewers
www.PacktPub.com
Preface

Spark SQL


Executing SQL queries for basic business needs is very common and almost every business does it using some kind of database. So Spark SQL also supports the execution of SQL queries written using either a basic SQL syntax or HiveQL. Spark SQL can also be used to read data from an existing Hive installation. Apart from these plain SQL operations, Spark SQL also addresses some tough problems. Designing complex logic through relational queries was cumbersome and almost impossible at times. So, Spark SQL was designed to integrate the capabilities of relational processing and functional programming so that complex logics can be implemented, optimized, and scaled on a distributed computing setup. There are basically three ways to interact with Spark SQL, including SQL, the DataFrame API, and the Dataset API. The Dataset API is an experimental layer added in Spark 1.6 at the time of writing this book so we will limit our discussions to DataFrames only.

Spark SQL exposes DataFrames as a...