Skip to main content
Have a personal or library account? Click to login
Big Data Analytics with Hadoop and Spark Cover

Big Data Analytics with Hadoop and Spark

A hands-on guide to big data engineering and scalable analytics (English Edition)

By:   
Paid access
|May 2026
Product purchase options

Technologies like Hadoop and Spark, powered by the Cloudera platform, have become essential for storing, processing, and analyzing big data across various industries, including finance, healthcare, e-commerce, and research in today’s data-driven world. This book systematically navigates the entire ecosystem, starting with big data fundamentals, security, and HDFS architecture before mastering MapReduce through weather and stock data case studies. Readers will gain hands-on experience with the Cloudera framework, learning high-level scripting with Pig Latin and structured data warehousing using HiveQL’s Metastore and partitions. Additionally, it explores NoSQL versatility with HBase and MongoDB’s CAP theorem, followed by Scala programming and Spark’s high-speed in-memory engine. You will learn to optimize queries with the Catalyst optimizer and process complex Parquet or JSON files using Spark SQL DataFrames. The book also covers machine learning pipelines with spark.ml for professional-grade classification and clustering applications. By the end of this book, readers will be able to develop strong conceptual clarity and practical expertise in big data analytics. This will enable them to confidently design, implement, and manage scalable data processing solutions, preparing them to solve real-world data challenges and take on professional roles in big data engineering and analytics. WHAT YOU WILL LEARN ● Understand big data concepts, architecture, ethics, and applications. ● Build scalable storage using HDFS and MapReduce. ● Perform data analysis using Pig and Hive. ● Develop NoSQL solutions using HBase and MongoDB. ● Process large datasets using Apache Spark. ● Analyze data using Spark SQL and DataFrames. ● Implement machine learning using PySpark. WHO THIS BOOK IS FOR This book is ideal for students, researchers, and academicians. It empowers aspiring big data engineers, data scientists, and software engineers. Readers should possess basic programming knowledge and database fundamentals to master Hadoop and Spark for professional-grade data science and faculty-level instruction. TABLE OF CONTENTS 1. Exploring Big Data 2. Introduction to Hadoop 3. Hadoop Distributed File System and MapReduce 4. Big Data Analysis with Cloudera 5. Stock Data Analysis with Cloudera 6. Understanding Pig for Big Data Processing 7. Operators in Pig Latin 8. Functions in Apache Pig 9. Hive-data Warehousing and SQL-like Queries 10. Data Analysis Using Hive 11. Data Storage and Processing Using HBase 12. MongoDB 13. Introduction to Spark for Big Data Processing 14. Getting Started with Scala Programming 15. Data Analysis with Spark SQL 16. Machine Learning Application Using PySpark

PDF ISBN: 978-93-6589-689-3 | E-Pub ISBN: 978-93-6589-474-5
Publisher: BPB Publications
Copyright owner: © 2026 BPB Publications
Publication date: 2026
Language: English
Pages: 384