Book Image

Data Lake for Enterprises

By : Vivek Mishra, Tomcy John, Pankaj Misra
Book Image

Data Lake for Enterprises

By: Vivek Mishra, Tomcy John, Pankaj Misra

Overview of this book

The term "Data Lake" has recently emerged as a prominent term in the big data industry. Data scientists can make use of it in deriving meaningful insights that can be used by businesses to redefine or transform the way they operate. Lambda architecture is also emerging as one of the very eminent patterns in the big data landscape, as it not only helps to derive useful information from historical data but also correlates real-time data to enable business to take critical decisions. This book tries to bring these two important aspects — data lake and lambda architecture—together. This book is divided into three main sections. The first introduces you to the concept of data lakes, the importance of data lakes in enterprises, and getting you up-to-speed with the Lambda architecture. The second section delves into the principal components of building a data lake using the Lambda architecture. It introduces you to popular big data technologies such as Apache Hadoop, Spark, Sqoop, Flume, and ElasticSearch. The third section is a highly practical demonstration of putting it all together, and shows you how an enterprise data lake can be implemented, along with several real-world use-cases. It also shows you how other peripheral components can be added to the lake to make it more efficient. By the end of this book, you will be able to choose the right big data technologies using the lambda architectural patterns to build your enterprise data lake.
Table of Contents (23 chapters)
Title Page
Credits
Foreword
About the Authors
About the Reviewers
www.PacktPub.com
Customer Feedback
Preface
Part 1 - Overview
Part 2 - Technical Building blocks of Data Lake
Part 3 - Bringing It All Together

Elasticsearch in purview of SCV use case


We have seen a high-level working of Elasticsearch via some basic examples. Let's put Elasticsearch to work with other components for our single customer view use case in the following sub-sections. This time we will be storing the data in PARQUET format and since this is one of our last examples with all components working together, we will try to build the Data Lake from scratch to understand the sequence of integrations involved starting with data preparation. We will only cover main commands as you can always refer to the previous chapter for more details if needed.

Data preparation

We will be using the same set of data as used before, that is, 2 million customer records, addresses, and contacts.

But before we proceed, let's clean the data created in previous chapters by following the steps explained here. Ensure the required processes are up and running for the cleanup, i.e. Hue, DFS, hiveserver2, Zookeeper and Kafka.

Initial Cleanup

Drop the tables...