Processing Big Data with Azure HDInsight Processing Big Data with Azure HDInsight

Processing Big Data with Azure HDInsight

Building Real-World Big Data Systems on Azure HDInsight Using the Hadoop Ecosystem

    • €36.99
    • €36.99

Publisher Description

Get a jump start on using Azure HDInsight and Hadoop Ecosystem components. As most Hadoop and Big Data projects are written in either Java, Scala, or Python, this book minimizes the effort to learn another language and is written from the perspective of a .NET developer. Hadoop components are covered, including Hive, Pig, HBase, Storm, and Spark on Azure HDInsight, and code samples are written in .NET only.

Processing Big Data with Azure HDInsight covers the fundamentals of big data, how businesses are using it to their advantage, and how Azure HDInsight fits into the big data world. This book introduces Hadoop and big data concepts and then dives into creating different solutions with HDInsight and the Hadoop Ecosystem. It covers concepts with real-world scenarios and code examples, making sure you get hands-on experience. The best way to utilize this book is to practice while reading. After reading this book you will be familiar with Azure HDInsight and how it can be utilized to build big data solutions, including batch processing, stream analytics, interactive processing, and storing and retrieving data in an efficient manner.

What You Will Learn: Understand the fundamentals of HDInsight and Hadoop
Work with HDInsight cluster
Query with Apache Hive and Apache PigStore and retrieve data with Apache HBaseStream data processing using Apache StormWork with Apache Spark

GENRE
Computing & Internet
RELEASED
2017
29 May
LANGUAGE
EN
English
LENGTH
226
Pages
PUBLISHER
Apress
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
3.9
MB
Modern Big Data Processing with Hadoop Modern Big Data Processing with Hadoop
2018
Hadoop in Practice Hadoop in Practice
2014
HBase in Action HBase in Action
2012
Big Data Made Easy Big Data Made Easy
2014
The Azure Data Lakehouse Toolkit The Azure Data Lakehouse Toolkit
2022
Hadoop: Questions and Answers Hadoop: Questions and Answers
2018