Big Data Management and Analytics /

"With the proliferation of information, big data management and analysis have become an indispensable part of any system to handle such amounts of data. The amount of data generated by the multitude of interconnected devices increases exponentially, making the storage and processing of these da...

Full description

Bibliographic Details
Main Authors: Gupta, Brij, 1982-, author 622976, Mamta, author 656299, World Scientific (Online service) 655444
Format: software, multimedia
Language:eng
Published: New Jersey : World Scientific, [202
Subjects:
Online Access:https://www-worldscientific-com.ezproxy.utm.my/worldscibooks/10.1142/12869#t=aboutBook
_version_ 1826473658151862272
author Gupta, Brij, 1982-, author 622976
Mamta, author 656299
World Scientific (Online service) 655444
author_facet Gupta, Brij, 1982-, author 622976
Mamta, author 656299
World Scientific (Online service) 655444
author_sort Gupta, Brij, 1982-, author 622976
collection OCEAN
description "With the proliferation of information, big data management and analysis have become an indispensable part of any system to handle such amounts of data. The amount of data generated by the multitude of interconnected devices increases exponentially, making the storage and processing of these data a real challenge. Big data management and analytics have gained momentum in almost every industry, ranging from finance or healthcare. Big data can reveal key insights if handled and analyzed properly; it has great application potential to improve the working of any industry. This book covers the spectrum aspects of big data; from the preliminary level to specific case studies. It will help readers gain knowledge of the big data landscape. Highlights of the topics covered include description of the Big Data ecosystem; real-world instances of big data issues; how the Vs of Big Data (volume, velocity, variety, veracity, valence, and value) affect data collection, monitoring, storage, analysis, and reporting; structural process to get value out of Big Data and recognize the differences between a standard database management system and a big data management system. Readers will gain insights into choice of data models, data extraction, data integration to solve large data problems, data modelling using machine learning techniques, Spark's scalable machine learning techniques, modeling a big data problem into a graph database and performing scalable analytical operations over the graph and different tools and techniques for processing big data and its applications including in healthcare and finance"--
first_indexed 2024-09-23T23:45:26Z
format software, multimedia
id KOHA-OAI-TEST:612035
institution Universiti Teknologi Malaysia - OCEAN
language eng
last_indexed 2025-02-19T04:49:31Z
publishDate [202
publisher New Jersey : World Scientific,
record_format dspace
spelling KOHA-OAI-TEST:6120352025-02-07T07:28:52ZBig Data Management and Analytics / Gupta, Brij, 1982-, author 622976 Mamta, author 656299 World Scientific (Online service) 655444 software, multimedia Electronic books 631902 New Jersey : World Scientific,[2024]eng"With the proliferation of information, big data management and analysis have become an indispensable part of any system to handle such amounts of data. The amount of data generated by the multitude of interconnected devices increases exponentially, making the storage and processing of these data a real challenge. Big data management and analytics have gained momentum in almost every industry, ranging from finance or healthcare. Big data can reveal key insights if handled and analyzed properly; it has great application potential to improve the working of any industry. This book covers the spectrum aspects of big data; from the preliminary level to specific case studies. It will help readers gain knowledge of the big data landscape. Highlights of the topics covered include description of the Big Data ecosystem; real-world instances of big data issues; how the Vs of Big Data (volume, velocity, variety, veracity, valence, and value) affect data collection, monitoring, storage, analysis, and reporting; structural process to get value out of Big Data and recognize the differences between a standard database management system and a big data management system. Readers will gain insights into choice of data models, data extraction, data integration to solve large data problems, data modelling using machine learning techniques, Spark's scalable machine learning techniques, modeling a big data problem into a graph database and performing scalable analytical operations over the graph and different tools and techniques for processing big data and its applications including in healthcare and finance"--Includes bibliographical references and index."With the proliferation of information, big data management and analysis have become an indispensable part of any system to handle such amounts of data. The amount of data generated by the multitude of interconnected devices increases exponentially, making the storage and processing of these data a real challenge. Big data management and analytics have gained momentum in almost every industry, ranging from finance or healthcare. Big data can reveal key insights if handled and analyzed properly; it has great application potential to improve the working of any industry. This book covers the spectrum aspects of big data; from the preliminary level to specific case studies. It will help readers gain knowledge of the big data landscape. Highlights of the topics covered include description of the Big Data ecosystem; real-world instances of big data issues; how the Vs of Big Data (volume, velocity, variety, veracity, valence, and value) affect data collection, monitoring, storage, analysis, and reporting; structural process to get value out of Big Data and recognize the differences between a standard database management system and a big data management system. Readers will gain insights into choice of data models, data extraction, data integration to solve large data problems, data modelling using machine learning techniques, Spark's scalable machine learning techniques, modeling a big data problem into a graph database and performing scalable analytical operations over the graph and different tools and techniques for processing big data and its applications including in healthcare and finance"--Big dataDatabase managementData mininghttps://www-worldscientific-com.ezproxy.utm.my/worldscibooks/10.1142/12869#t=aboutBookURN:ISBN:
spellingShingle Big data
Database management
Data mining
Gupta, Brij, 1982-, author 622976
Mamta, author 656299
World Scientific (Online service) 655444
Big Data Management and Analytics /
title Big Data Management and Analytics /
title_full Big Data Management and Analytics /
title_fullStr Big Data Management and Analytics /
title_full_unstemmed Big Data Management and Analytics /
title_short Big Data Management and Analytics /
title_sort big data management and analytics
topic Big data
Database management
Data mining
url https://www-worldscientific-com.ezproxy.utm.my/worldscibooks/10.1142/12869#t=aboutBook
work_keys_str_mv AT guptabrij1982author622976 bigdatamanagementandanalytics
AT mamtaauthor656299 bigdatamanagementandanalytics
AT worldscientificonlineservice655444 bigdatamanagementandanalytics