Big Data with Hadoop MapReduce: A Classroom Approach
โ Scribed by Rathinaraja Jeyaraj, Ganeshkumar Pugalendhi, Anand Paul
- Publisher
- Apple Academic Press
- Year
- 2020
- Tongue
- English
- Leaves
- 427
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
The authors provide an understanding of big data and MapReduce by clearly presenting the basic terminologies and concepts. They have employed over 100 illustrations and many worked-out examples to convey the concepts and methods used in big data, the inner workings of MapReduce, and single node/multi-node installation on physical/virtual machines. This book covers almost all the necessary information on Hadoop MapReduce for most online certification exams. Upon completing this book, readers will find it easy to understand other big data processing tools such as Spark, Storm, etc.
Ultimately, readers will be able to:
โข understand what big data is and the factors that are involved
โข understand the inner workings of MapReduce, which is essential for certification exams
โข learn the features and weaknesses of MapReduce
โข set up Hadoop clusters with 100s of physical/virtual machines
โข create a virtual machine in AWS
โข write MapReduce with Eclipse in a simple way
โข understand other big data processing tools and their applications
โฆ Table of Contents
Cover
Half Title
Title Page
Copyright Page
About the Authors
A Message from Kaniyan
Table of Contents
Abbreviations
Preface
Dedication and Acknowledgment
Introduction
1: Big Data
2: Hadoop Framework
3: Hadoop 1.2.1 Installation
4: Hadoop Ecosystem
5: Hadoop 2.7.0
6: Hadoop 2.7.0 Installation
7: Data Science
Appendix A: Public Datasets
Appendix B: MapReduce Exercise
Appendix C: Case Study: Application Development NYSE Dataset
Web References
Index
๐ SIMILAR VOLUMES
Learn to process large and complex data sets, starting simply, then diving in deep. Solve complex big data problems such as classifications, finding relationships, online marketing and recommendations. More than 50 Hadoop MapReduce recipes, presented in a simple and straightforward manner, with step
<span>BOOKS</span>
Build full-fledged deep learning applications with Java and different open-source libraries.