Big Data Management, Technologies, and Applications

Author: Wen-Chen Hu   Naima Kaabouch  

Publisher: IGI Global‎

Publication year: 2013

E-ISBN: 9781466647008

P-ISBN(Paperback): 9781466646995

Subject: TP Automation Technology , Computer Technology

Language: ENG

Access to resources Favorite

Disclaimer: Any content in publications that violate the sovereignty, the constitution or regulations of the PRC is not accepted or approved by CNPIEC.

Description

Due to the tremendous amount of data generated daily from fields such as business, research, and sciences, big data is everywhere. Therefore, alternative management and processing methods have to be created to handle this complex and unstructured data size. Big Data Management, Technologies, and Applications discusses the exponential growth of information size and the innovative methods for data capture, storage, sharing, and analysis for big data. With its prevalence, this collection of articles on big data methodologies and technologies are beneficial for IT workers, researchers, students, and practitioners in this timely field.

Chapter

Acknowledgment

Acknowledgment

Big Data Technologies, Methods, and Algorithms

Big Data Technologies, Methods, and Algorithms

Technologies for Big Data

Technologies for Big Data

Applying the K-Means Algorithm in Big Raw Data Sets with Hadoop and MapReduce

Applying the K-Means Algorithm in Big Raw Data Sets with Hadoop and MapReduce

Synchronizing Execution of Big Data in Distributed and Parallelized Environments

Synchronizing Execution of Big Data in Distributed and Parallelized Environments

Parallel Data Reduction Techniques for Big Datasets

Parallel Data Reduction Techniques for Big Datasets

Big Data Storage, Management, and Sharing

Big Data Storage, Management, and Sharing

Techniques for Sampling Online Text-Based Data Sets

Techniques for Sampling Online Text-Based Data Sets

Big Data Warehouse Automatic Design Methodology

Big Data Warehouse Automatic Design Methodology

Big Data Management in the Context of Real-Time Data Warehousing

Big Data Management in the Context of Real-Time Data Warehousing

Big Data Sharing Among Academics

Big Data Sharing Among Academics

Specific Big Data

Specific Big Data

Scalable Data Mining, Archiving, and Big Data Management for the Next Generation Astronomical Telescopes

Scalable Data Mining, Archiving, and Big Data Management for the Next Generation Astronomical Telescopes

Efficient Metaheuristic Approaches for Exploration of Online Social Networks

Efficient Metaheuristic Approaches for Exploration of Online Social Networks

Big Data at Scale for Digital Humanities

Big Data at Scale for Digital Humanities

GeoBase

GeoBase

Large-Scale Sensor Network Analysis

Large-Scale Sensor Network Analysis

Big Data and Computer Systems and Big Data Benchmarks

Big Data and Computer Systems and Big Data Benchmarks

Accelerating Large-Scale Genome-Wide Association Studies with Graphics Processors

Accelerating Large-Scale Genome-Wide Association Studies with Graphics Processors

The Need to Consider Hardware Selection when Designing Big Data Applications Supported by Metadata

The Need to Consider Hardware Selection when Designing Big Data Applications Supported by Metadata

Excess Entropy in Computer Systems

Excess Entropy in Computer Systems

A Review of System Benchmark Standards and a Look Ahead Towards an Industry Standard for Benchmarking Big Data Workloads

A Review of System Benchmark Standards and a Look Ahead Towards an Industry Standard for Benchmarking Big Data Workloads

Compilation of References

Compilation of References

About the Contributors

About the Contributors

Index

Index

The users who browse this book also browse


No browse record.