Guide to High Performance Distributed Computing: Case Studies With Hadoop, Scalding and Spark - Rilegato

Srinivasa, K. G.; Muppalla, Anil Kumar

 
9783319134963: Guide to High Performance Distributed Computing: Case Studies With Hadoop, Scalding and Spark

Sinossi

This timely text/reference describes the development and implementation of large-scale distributed processing systems using open source tools and technologies. Comprehensive in scope, the book presents state-of-the-art material on building high performance distributed computing systems, providing practical guidance and best practices as well as describing theoretical software frameworks. Features: describes the fundamentals of building scalable software systems for large-scale data processing in the new paradigm of high performance distributed computing; presents an overview of the Hadoop ecosystem, followed by step-by-step instruction on its installation, programming and execution; Reviews the basics of Spark, including resilient distributed datasets, and examines Hadoop streaming and working with Scalding; Provides detailed case studies on approaches to clustering, data classification and regression analysis; Explains the process of creating a working recommender system using Scalding and Spark.

Le informazioni nella sezione "Riassunto" possono far riferimento a edizioni diverse di questo titolo.

Dalla quarta di copertina

This timely text/reference describes the development and implementation of large-scale distributed processing systems using open source tools and technologies such as Hadoop, Scalding and Spark.

Comprehensive in scope, the book presents state-of-the-art material on building high performance distributed computing systems, providing practical guidance and best practices as well as describing theoretical software frameworks.

Topics and features:

  • Describes the fundamentals of building scalable software systems for large-scale data processing in the new paradigm of high performance distributed computing
  • Presents an overview of the Hadoop ecosystem, followed by step-by-step instruction on its installation, programming and execution
  • Reviews the basics of Spark, including resilient distributed datasets, and examines Hadoop streaming and working with Scalding
  • Provides detailed case studies on approaches to clustering, data classification and regression analysis
  • Explains the process of creating a working recommender system using Scalding and Spark
  • Supplies a complete list of supplementary source code and datasets at an associated website

Fulfilling the need for both introductory material for undergraduate students of computer science and detailed discussions for software engineering professionals, this book will aid a broad audience to understand the esoteric aspects of practical high performance computing through its use of solved problems, research case studies and working source code.

K.G. Srinivasa is Professor and Head of the Department of Computer Science and Engineering at M.S. Ramaiah Institute of Technology (MSRIT), Bangalore, India. His other publications include the Springer title Soft Computing for Data Mining Applications. Anil Kumar Muppalla is also a researcher at MSRIT.

Le informazioni nella sezione "Su questo libro" possono far riferimento a edizioni diverse di questo titolo.

Altre edizioni note dello stesso titolo

9783319383477: Guide to High Performance Distributed Computing: Case Studies with Hadoop, Scalding and Spark

Edizione in evidenza

ISBN 10:  3319383477 ISBN 13:  9783319383477
Casa editrice: Springer, 2016
Brossura