Ultimate Big Data Analytics with Apache Hadoop

Overview

Released
December 29, 2025
ISBN
9788197396571
Format
ePub
Category
Computer

Book Details

Master the Hadoop Ecosystem and Build Scalable Analytics Systems
Key Features● Explains Hadoop, YARN, MapReduce, and Tez for understanding distributed data processing and resource management.● Delves into Apache Hive and Apache Spark for their roles in data warehousing, real-time processing, and advanced analytics.● Provides hands-on guidance for using Python with Hadoop for business intelligence and data analytics.
Book DescriptionIn a rapidly evolving Big Data job market projected to grow by 28% through 2026 and with salaries reaching up to $150,000 annually—mastering big data analytics with the Hadoop ecosystem is most sought after for career advancement. The Ultimate Big Data Analytics with Apache Hadoop is an indispensable companion offering in-depth knowledge and practical skills needed to excel in today's data-driven landscape.
The book begins laying a strong foundation with an overview of data lakes, data warehouses, and related concepts. It then delves into core Hadoop components such as HDFS, YARN, MapReduce, and Apache Tez, offering a blend of theory and practical exercises.
You will gain hands-on experience with query engines like Apache Hive and Apache Spark, as well as file and table formats such as ORC, Parquet, Avro, Iceberg, Hudi, and Delta. Detailed instructions on installing and configuring clusters with Docker are included, along with big data visualization and statistical analysis using Python.
Given the growing importance of scalable data pipelines, this book equips data engineers, analysts, and big data professionals with practical skills to set up, manage, and optimize data pipelines, and to apply machine learning techniques effectively.
Don't miss out on the opportunity to become a leader in the big data field to unlock the full potential of big data analytics with Hadoop.
What you will learn● Gain expertise in building and managing large-scale data pipelines with Hadoop, YARN, and MapReduce.● Master real-time analytics and data processing with Apache Spark's powerful features.● Develop skills in using Apache Hive for efficient data warehousing and complex queries.● Integrate Python for advanced data analysis, visualization, and business intelligence in the Hadoop ecosystem.● Learn to enhance data storage and processing performance using formats like ORC, Parquet, and Delta.● Acquire hands-on experience in deploying and managing Hadoop clusters with Docker and Kubernetes.● Build and deploy machine learning models with tools integrated into the Hadoop ecosystem.
Table of Contents1. Introduction to Hadoop and ASF2. Overview of Big Data Analytics3. Hadoop and YARN MapReduce and Tez4. Distributed Query Engines: Apache Hive5. Distributed Query Engines: Apache Spark6. File Formats and Table Formats (Apache Ice-berg, Hudi, and Delta)7. Python and the Hadoop Ecosystem for Big Data Analytics - BI8. Data Science and Machine Learning with Hadoop Ecosystem9. Introduction to Cloud Computing and Other Apache ProjectsIndex
About the AuthorsSimhadri Govindappa holds a Bachelor of Engineering in Electronics and Communication Engineering from M.S. Ramaiah Institute of Technology, Bangalore, India. He is an accomplished professional with significant contributions to the field of big data.
Simhadri began his career at GE Healthcare as part of the AI data platform team, where he developed AI models and deep learning annotation tools. His work led to a patent granted by the USPTO (patent no: US11069036B1). He then moved to Cloudera, a pioneer in big data, joining the Apache Hive R&D team. His work primarily focuses on Distributed systems, Apache Iceberg, Apache Hive, Hive- ACID-Spark Connectivity (HWC), and enhancing Hive Acid functionality.

Author Description

Simhadri Govindappa holds a Bachelor of Engineering in Electronics and Communication Engineering from M.S. Ramaiah Institute of Technology, Bangalore, India. He is an accomplished professional with significant contributions to the field of big data.
Simhadri began his career at GE Healthcare as part of the AI data platform team, where he developed AI models and deep learning annotation tools. His work led to a patent granted by the USPTO (patent no: US11069036B1). He then moved to Cloudera, a pioneer in big data, joining the Apache Hive R&D team. His work primarily focuses on Distributed systems, Apache Iceberg, Apache Hive, Hive- ACID-Spark Connectivity (HWC), and enhancing Hive Acid functionality.
Simhadri has made notable contributions to the Apache Hive open-source community, for which he was awarded Hive Committership. He has also presented his work on Hive-Iceberg integration at the Apache Conference - Community Over Code, held in Bratislava, Slovakia. Currently, he serves as a Senior Software Engineer at Cloudera's Enterprise DataWarehouse R&D Team, where he continues to tackle complex challenges and drive advancements in big data technologies.
Additionally, Simhadri has participated in and won numerous hackathons, including the Smart India Hackathon 2019. He has also presented a few papers at IEEE conferences on various topics. When not working on technical projects, Simhadri enjoys traveling and reading books.

Read this book in our EasyReadz App for Mobile or Tablet devices

To read this book on Windows or Mac based desktops or laptops:

Recently viewed Books

Help make us better

We’re always looking for ways to improve. If you’ve got feedback or suggestions about how we can do better, we’d love to hear from you.

Note: If you’re looking to solve a problem with your URMS eReader, app, or purchase, visit our Help page, or submit a help request.

What is the purpose of your visit?
Did you accomplish your goal?
Yes No
Where can we improve?
Your comments*