Big Data: Concepts, Technology, and Architecture

┬╖ ┬╖ ┬╖
┬╖ John Wiley & Sons
рдИ-рдкреБрд╕реНрддрдХ
368
рдкреЗрдЬ
рд░реЗрдЯрд┐рдВрдЧ рдЖрдгрд┐ рдкрд░реАрдХреНрд╖рдгреЗ рдпрд╛рдВрдЪреА рдкрдбрддрд╛рд│рдгреА рдХреЗрд▓реЗрд▓реА рдирд╛рд╣реА ┬ардЕрдзрд┐рдХ рдЬрд╛рдгреВрди рдШреНрдпрд╛

рдпрд╛ рдИ-рдкреБрд╕реНрддрдХрд╛рд╡рд┐рд╖рдпреА

Learn Big Data from the ground up with this complete and up-to-date resource from leaders in the field

Big Data: Concepts, Technology, and Architecture delivers a comprehensive treatment of Big Data tools, terminology, and technology perfectly suited to a wide range of business professionals, academic researchers, and students. Beginning with a fulsome overview of what we mean when we say, тАЬBig Data,тАЭ the book moves on to discuss every stage of the lifecycle of Big Data.

YouтАЩll learn about the creation of structured, unstructured, and semi-structured data, data storage solutions, traditional database solutions like SQL, data processing, data analytics, machine learning, and data mining. YouтАЩll also discover how specific technologies like Apache Hadoop, SQOOP, and Flume work.

Big Data also covers the central topic of big data visualization with Tableau, and youтАЩll learn how to create scatter plots, histograms, bar, line, and pie charts with that software.

Accessibly organized, Big Data includes illuminating case studies throughout the material, showing you how the included concepts have been applied in real-world settings. Some of those concepts include:

  • The common challenges facing big data technology and technologists, like data heterogeneity and incompleteness, data volume and velocity, storage limitations, and privacy concerns
  • Relational and non-relational databases, like RDBMS, NoSQL, and NewSQL databases
  • Virtualizing Big Data through encapsulation, partitioning, and isolating, as well as big data server virtualization
  • Apache software, including Hadoop, Cassandra, Avro, Pig, Mahout, Oozie, and Hive
  • The Big Data analytics lifecycle, including business case evaluation, data preparation, extraction, transformation, analysis, and visualization

Perfect for data scientists, data engineers, and database managers, Big Data also belongs on the bookshelves of business intelligence analysts who are required to make decisions based on large volumes of information. Executives and managers who lead teams responsible for keeping or understanding large datasets will also benefit from this book.

рд▓реЗрдЦрдХрд╛рд╡рд┐рд╖рдпреА

BALAMURUGAN BALUSAMY, PHD, is a Professor with the School of Computing Science and Engineering at Galgotias University, Greater Noida, India

NANDHINI ABIRAMI. R is an IT Consultant and Research Scholar at VIT University in Vellore.

SEIFEDINE KADRY, PhD, is a Professor of Data Science at the Faculty of Applied Computing and Technology at Noroff University College, Kristiansand, Norway.

AMIR H. GANDOMI, PHD, is a Professor of Data Science at the Faculty of Engineering & Information Technology, University of Technology Sydney, Australia.

рдпрд╛ рдИ-рдкреБрд╕реНрддрдХрд▓рд╛ рд░реЗрдЯрд┐рдВрдЧ рджреНрдпрд╛

рддреБрдореНрд╣рд╛рд▓рд╛ рдХрд╛рдп рд╡рд╛рдЯрддреЗ рддреЗ рдЖрдореНрд╣рд╛рд▓рд╛ рд╕рд╛рдВрдЧрд╛.

рд╡рд╛рдЪрди рдорд╛рд╣рд┐рддреА

рд╕реНрдорд╛рд░реНрдЯрдлреЛрди рдЖрдгрд┐ рдЯреЕрдмрд▓реЗрдЯ
Android рдЖрдгрд┐ iPad/iPhone рд╕рд╛рдареА Google Play рдмреБрдХ рдЕтАНреЕрдк рдЗрдВрд╕реНтАНрдЯреЙрд▓ рдХрд░рд╛. рд╣реЗ рддреБрдордЪреНтАНрдпрд╛ рдЦрд╛рддреНтАНрдпрд╛рдиреЗ рдЖрдкреЛрдЖрдк рд╕рд┐рдВрдХ рд╣реЛрддреЗ рдЖрдгрд┐ рддреБрдореНтАНрд╣реА рдЬреЗрдереЗ рдХреБрдареЗ рдЕрд╕рд╛рд▓ рддреЗрдереВрди рддреБрдореНтАНрд╣рд╛рд▓рд╛ рдСрдирд▓рд╛рдЗрди рдХрд┐рдВрд╡рд╛ рдСрдлрд▓рд╛рдЗрди рд╡рд╛рдЪрдгреНтАНрдпрд╛рдЪреА рдЕрдиреБрдорддреА рджреЗрддреЗ.
рд▓реЕрдкрдЯреЙрдк рдЖрдгрд┐ рдХреЙрдВрдкреНрдпреБрдЯрд░
рддреБрдореНрд╣реА рддреБрдордЪреНрдпрд╛ рдХрд╛рдБрдкреНрдпреБрдЯрд░рдЪрд╛ рд╡реЗрдм рдмреНрд░рд╛рдЙрдЭрд░ рд╡рд╛рдкрд░реВрди Google Play рд╡рд░ рдЦрд░реЗрджреА рдХреЗрд▓реЗрд▓реА рдСрдбрд┐рдУрдмреБрдХ рдРрдХреВ рд╢рдХрддрд╛.
рдИрд╡рд╛рдЪрдХ рдЖрдгрд┐ рдЗрддрд░ рдбрд┐рд╡реНрд╣рд╛рдЗрд╕реЗрд╕
Kobo eReaders рд╕рд╛рд░рдЦреНрдпрд╛ рдИ-рдЗрдВрдХ рдбрд┐рд╡реНтАНрд╣рд╛рдЗрд╕рд╡рд░ рд╡рд╛рдЪрдгреНтАНрдпрд╛рд╕рд╛рдареА, рддреБрдореНрд╣реА рдПрдЦрд╛рджреА рдлрд╛рдЗрд▓ рдбрд╛рдЙрдирд▓реЛрдб рдХрд░реВрди рддреА рддреБрдордЪреНтАНрдпрд╛ рдбрд┐рд╡реНтАНрд╣рд╛рдЗрд╕рд╡рд░ рдЯреНрд░рд╛рдиреНрд╕рдлрд░ рдХрд░рдгреЗ рдЖрд╡рд╢реНрдпрдХ рдЖрд╣реЗ. рд╕рдкреЛрд░реНрдЯ рдЕрд╕рд▓реЗрд▓реНрдпрд╛ eReaders рд╡рд░ рдлрд╛рдЗрд▓ рдЯреНрд░рд╛рдиреНрд╕рдлрд░ рдХрд░рдгреНрдпрд╛рд╕рд╛рдареА, рдорджрдд рдХреЗрдВрджреНрд░ рдордзреАрд▓ рддрдкрд╢реАрд▓рд╡рд╛рд░ рд╕реВрдЪрдирд╛ рдлреЙрд▓реЛ рдХрд░рд╛.