Book Image

Hadoop Essentials

By : Shiva Achari
Book Image

Hadoop Essentials

By: Shiva Achari

Overview of this book

This book jumps into the world of Hadoop and its tools, to help you learn how to use them effectively to optimize and improve the way you handle Big Data. Starting with the fundamentals Hadoop YARN, MapReduce, HDFS, and other vital elements in the Hadoop ecosystem, you will soon learn many exciting topics such as MapReduce patterns, data management, and real-time data analysis using Hadoop. You will also explore a number of the leading data processing tools including Hive and Pig, and learn how to use Sqoop and Flume, two of the most powerful technologies used for data ingestion. With further guidance on data streaming and real-time analytics with Storm and Spark, Hadoop Essentials is a reliable and relevant resource for anyone who understands the difficulties - and opportunities - presented by Big Data today. With this guide, you'll develop your confidence with Hadoop, and be able to use the knowledge and skills you learn to successfully harness its unparalleled capabilities.
Table of Contents (15 chapters)
Hadoop Essentials
Credits
About the Author
Acknowledgments
About the Reviewers
www.PacktPub.com
Preface
3
Pillars of Hadoop – HDFS, MapReduce, and YARN
Index

Summary


In this chapter, we have explored two wrappers of MapReduce programming–Pig and Hive.

MapReduce is very powerful but a very complex high learning curve. The difficult part is to manage the MapReduce programs and the time taken for the development and optimizations. For easier and faster development in MapReduce, we have abstraction layers such as Pig, which is a wrapper of the Pig Latin procedural language on top of MapReduce, and Hive which is a SQL-like HiveQL wrapper.

Pig is used in the data flow model, as it uses the DAG model to transform the Pig Latin language to the MapReduce job. Pig does the transformation in three plans, namely Logical to Physical to MapReduce, where each plan translates the statements and produces an optimized plan of execution. Pig also has the grunt mode for analyzing data interactively. Pig has very useful commands to filter, group, aggregate, cogroup, and so on, and it also supports user-defined functions.

Hive is used by users who are more comfortable...