Home>Store

Big Data Fundamentals: Concepts, Drivers & Techniques

Register your productto gain access to bonus material or receive a coupon.

Big Data Fundamentals: Concepts, Drivers & Techniques

Best Value Purchase

Book + eBook Bundle

  • Your Price: $43.19
  • List Price: $71.98
  • Includes EPUB and PDF
  • About eBook Formats
  • This eBook includes the following formats, accessible from yourAccountpage after purchase:

    ePubEPUBThe open industry format known for its reflowable content and usability on supported mobile devices.

    Adobe ReaderPDFThe popular standard, used most often with the freeAdobe® Reader®software.

    This eBook requires no passwords or activation to read. We customize your eBook by discreetly watermarking it with your name, making it uniquely yours.

More Purchase Options

Book

  • Your Price: $31.99
  • List Price: $39.99
  • Usually ships in 24 hours.

eBook (Watermarked)

  • Your Price: $25.59
  • List Price: $31.99
  • Includes EPUB and PDF
  • About eBook Formats
  • This eBook includes the following formats, accessible from yourAccountpage after purchase:

    ePubEPUBThe open industry format known for its reflowable content and usability on supported mobile devices.

    Adobe ReaderPDFThe popular standard, used most often with the freeAdobe® Reader®software.

    This eBook requires no passwords or activation to read. We customize your eBook by discreetly watermarking it with your name, making it uniquely yours.

About

Features

  • 提出了独立于供应商覆盖的概念,西奥ry, terminology, technologies, key analysis/analytics techniques, and more
  • Illuminates fundamental and advanced principles with hundreds of images, diagrams, and real case studies
  • Clarifies the linkages between Big Data and existing enterprise technologies, analytics capabilities, and business intelligence systems
  • Clear, consistent, logically organized, and up-to-date
  • The newest title in The Prentice Hall Service Technology Series from Thomas Erl

Description

  • Copyright 2016
  • Dimensions: 7" x 9-1/8"
  • Pages: 240
  • Edition: 1st
  • Book
  • ISBN-10: 0-13-429107-7
  • ISBN-13: 978-0-13-429107-9

“This text should be required reading for everyone in contemporary business.”
--Peter Woodhull, CEO, Modus21

“The one book that clearly describes and links Big Data concepts to business utility.”
--Dr. Christopher Starr, PhD

“Simply, this is the best Big Data book on the market!”
--Sam Rostam, Cascadian IT Group

“...one of the most contemporary approaches I’ve seen to Big Data fundamentals...”
--Joshua M. Davis, PhD

The Definitive Plain-English Guide to Big Data for Business and Technology Professionals

Big Data Fundamentalsprovides a pragmatic, no-nonsense introduction to Big Data. Best-selling IT author Thomas Erl and his team clearly explain key Big Data concepts, theory and terminology, as well as fundamental technologies and techniques. All coverage is supported with case study examples and numerous simple diagrams.

The authors begin by explaining how Big Data can propel an organization forward by solving a spectrum of previously intractable business problems. Next, they demystify key analysis techniques and technologies and show how a Big Data solution environment can be built and integrated to offer competitive advantages.

  • Discovering Big Data’s fundamental concepts and what makes it different from previous forms of data analysis and data science
  • Understanding the business motivations and drivers behind Big Data adoption, from operational improvements through innovation
  • Planning strategic, business-driven Big Data initiatives
  • Addressing considerations such as data management, governance, and security
  • Recognizing the 5 “V” characteristics of datasets in Big Data environments: volume, velocity, variety, veracity, and value
  • Clarifying Big Data’s relationships with OLTP, OLAP, ETL, data warehouses, and data marts
  • Working with Big Data in structured, unstructured, semi-structured, and metadata formats
  • Increasing value by integrating Big Data resources with corporate performance monitoring
  • Understanding how Big Data leverages distributed and parallel processing
  • Using NoSQL and other technologies to meet Big Data’s distinct data processing requirements
  • Leveraging statistical approaches of quantitative and qualitative analysis
  • Applying computational analysis methods, including machine learning

Extras

Author's Site

请求e visit the author's site athttp://servicetechbooks.com/

Sample Content

Online Sample Chapter

Big Data Adoption and Planning Considerations

Sample Pages

Download the sample pages(includes Chapter 3 and Index)

Table of Contents

Acknowledgments xvii
Reader Services xviii
PART I: THE FUNDAMENTALS OF BIG DATA
Chapter 1: Understanding Big Data 3

Concepts and Terminology 5
Datasets 5
Data Analysis 6
Data Analytics 6
Descriptive Analytics 8
Diagnostic Analytics 9
Predictive Analytics 10
Prescriptive Analytics 11
业务英特尔ligence (BI) 12
Key Performance Indicators (KPI) 12
Big Data Characteristics 13
Volume 14
Velocity 14
Variety 15
Veracity 16
Value 16
Different Types of Data 17
Structured Data 18
Unstructured Data 19
Semi-structured Data 19
Metadata 20
Case Study Background 20
History 20
Technical Infrastructure and Automation Environment 21
Business Goals and Obstacles 22
Case Study Example 24
Identifying Data Characteristics 26
Volume 26
Velocity 26
Variety 26
Veracity 26
Value 27
Identifying Types of Data 27
Chapter 2: Business Motivations and Drivers for Big Data Adoption 29
Marketplace Dynamics 30
Business Architecture 33
Business Process Management 36
Information and Communications Technology 37
Data Analytics and Data Science 37
Digitization 38
Affordable Technology and Commodity Hardware 38
Social Media 39
Hyper-Connected Communities and Devices 40
Cloud Computing 40
Internet of Everything (IoE) 42
Case Study Example 43
Chapter 3: Big Data Adoption and Planning Considerations 47
Organization Prerequisites 49
Data Procurement 49
Privacy 49
Security 50
Provenance 51
Limited Realtime Support 52
Distinct Performance Challenges 53
Distinct Governance Requirements 53
Distinct Methodology 53
Clouds 54
Big Data Analytics Lifecycle 55
Business Case Evaluation 56
Data Identification 57
Data Acquisition and Filtering 58
Data Extraction 60
Data Validation and Cleansing 62
Data Aggregation and Representation 64
Data Analysis 66
Data Visualization 68
Utilization of Analysis Results 69
Case Study Example 71
Big Data Analytics Lifecycle 73
Business Case Evaluation 73
Data Identification 74
Data Acquisition and Filtering 74
Data Extraction 74
Data Validation and Cleansing 75
Data Aggregation and Representation 75
Data Analysis 75
Data Visualization 76
Utilization of Analysis Results 76
Chapter 4: Enterprise Technologies and Big Data Business Intelligence 77
Online Transaction Processing (OLTP) 78
联机分析处理(OLAP) 79
Extract Transform Load (ETL) 79
Data Warehouses 80
Data Marts 81
Traditional BI 82
Ad-hoc Reports 82
指示板82
Big Data BI 84
Traditional Data Visualization 84
Data Visualization for Big Data 85
Case Study Example 86
Enterprise Technology 86
Big Data Business Intelligence 87
PART II: STORING AND ANALYZING BIG DATA
Chapter 5: Big Data Storage Concepts 91

Clusters 93
File Systems and Distributed File Systems 93
NoSQL 94
Sharding 95
Replication 97
Master-Slave 98
Peer-to-Peer 100
Sharding and Replication 103
Combining Sharding and Master-Slave Replication 104
Combining Sharding and Peer-to-Peer Replication 105
CAP Theorem 106
ACID 108
BASE 113
Case Study Example 117
Chapter 6: Big Data Processing Concepts 119
Parallel Data Processing 120
Distributed Data Processing 121
Hadoop 122
Processing Workloads 122
Batch 123
Transactional 123
Cluster 124
Processing in Batch Mode 125
Batch Processing with MapReduce 125
Map and Reduce Tasks 126
Map 127
Combine 127
Partition 129
Shuffle and Sort 130
Reduce 131
A Simple MapReduce Example 133
Understanding MapReduce Algorithms 134
Processing in Realtime Mode 137
Speed Consistency Volume (SCV) 137
Event Stream Processing 140
Complex Event Processing 141
Realtime Big Data Processing and SCV 141
Realtime Big Data Processing and MapReduce 142
Case Study Example 143
Processing Workloads 143
Processing in Batch Mode 143
Processing in Realtime 144
Chapter 7: Big Data Storage Technology 145
On-Disk Storage Devices 147
Distributed File Systems 147
RDBMS Databases 149
NoSQL Databases 152
Characteristics 152
Rationale 153
Types 154
Key-Value 156
Document 157
Column-Family 159
Graph 160
NewSQL Databases 163
In-Memory Storage Devices 163
In-Memory Data Grids 166
Read-through 170
Write-through 170
Write-behind 172
Refresh-ahead 172
In-Memory Databases 175
Case Study Example 179
Chapter 8: Big Data Analysis Techniques 181
Quantitative Analysis 183
Qualitative Analysis 184
Data Mining 184
Statistical Analysis 184
A/B Testing 185
Correlation 186
Regression 188
Machine Learning 190
Classification (Supervised Machine Learning) 190
Clustering (Unsupervised Machine Learning) 191
Outlier Detection 192
Filtering 193
Semantic Analysis 195
Natural Language Processing 195
Text Analytics 196
Sentiment Analysis 197
Visual Analysis 198
Heat Maps 198
Time Series Plots 200
Network Graphs 201
Spatial Data Mapping 202
Case Study Example 204
Correlation 204
Regression 204
Time Series Plot 205
Clustering 205
Classification 205
Appendix A: Case Study Conclusion 207
About the Authors 211

Thomas Erl 211
Wajid Khattak 211
Paul Buhler 212
Index 213

Updates

Submit Errata

More Information

InformIT Promotional Mailings & Special Offers

I would like to receive exclusive offers and hear about products from InformIT and its family of brands. I can unsubscribe at any time.

Overview


Pearson Education, Inc., 221 River Street, Hoboken, New Jersey 07030, (Pearson) presents this site to provide information about products and services that can be purchased through this site.

This privacy notice provides an overview of our commitment to privacy and describes how we collect, protect, use and share personal information collected through this site. Please note that other Pearson websites and online products and services have their own separate privacy policies.

Collection and Use of Information


To conduct business and deliver products and services, Pearson collects and uses personal information in several ways in connection with this site, including:

Questions and Inquiries

For inquiries and questions, we collect the inquiry or question, together with name, contact details (email address, phone number and mailing address) and any other additional information voluntarily submitted to us through a Contact Us form or an email. We use this information to address the inquiry and respond to the question.

Online Store

For orders and purchases placed through our online store on this site, we collect order details, name, institution name and address (if applicable), email address, phone number, shipping and billing addresses, credit/debit card information, shipping options and any instructions. We use this information to complete transactions, fulfill orders, communicate with individuals placing orders or visiting the online store, and for related purposes.

Surveys

Pearson may offer opportunities to provide feedback or participate in surveys, including surveys evaluating Pearson products, services or sites. Participation is voluntary. Pearson collects information requested in the survey questions and uses the information to evaluate, support, maintain and improve products, services or sites, develop new products and services, conduct educational research and for other purposes specified in the survey.

Contests and Drawings

Occasionally, we may sponsor a contest or drawing. Participation is optional. Pearson collects name, contact information and other information specified on the entry form for the contest or drawing to conduct the contest or drawing. Pearson may collect additional personal information from the winners of a contest or drawing in order to award the prize and for tax reporting purposes, as required by law.

Newsletters

If you have elected to receive email newsletters or promotional mailings and special offers but want to unsubscribe, simplyemailinformation@informit.com.

Service Announcements

On rare occasions it is necessary to send out a strictly service related announcement. For instance, if our service is temporarily suspended for maintenance we might send users an email. Generally, users may not opt-out of these communications, though they can deactivate their account information. However, these communications are not promotional in nature.

Customer Service

We communicate with users on a regular basis to provide requested services and in regard to issues relating to their account we reply via email or phone in accordance with the users' wishes when a user submits their information through ourContact Us form.

其他信息的收集和使用


Application and System Logs

Pearson automatically collects log data to help ensure the delivery, availability and security of this site. Log data may include technical information about how a user or visitor connected to this site, such as browser type, type of computer/device, operating system, internet service provider and IP address. We use this information for support purposes and to monitor the health of the site, identify problems, improve service, detect unauthorized access and fraudulent activity, prevent and respond to security incidents and appropriately scale computing resources.

Web Analytics

Pearson may use third party web trend analytical services, including Google Analytics, to collect visitor information, such as IP addresses, browser types, referring pages, pages visited and time spent on a particular site. While these analytical services collect and report information on an anonymous basis, they may use cookies to gather web trend information. The information gathered may enable Pearson (but not the third party web trend services) to link information with application and system log data. Pearson uses this information for system administration and to identify problems, improve service, detect unauthorized access and fraudulent activity, prevent and respond to security incidents, appropriately scale computing resources and otherwise support and deliver this site and its services.

Cookies and Related Technologies

This site uses cookies and similar technologies to personalize content, measure traffic patterns, control security, track use and access of information on this site, and provide interest-based messages and advertising. Users can manage and block the use of cookies through their browser. Disabling or blocking certain cookies may limit the functionality of this site.

Do Not Track

This site currently does not respond to Do Not Track signals.

Security


Pearson uses appropriate physical, administrative and technical security measures to protect personal information from unauthorized access, use and disclosure.

Children


This site is not directed to children under the age of 13.

Marketing


Pearson may send or direct marketing communications to users, provided that

  • Pearson will not use personal information collected or processed as a K-12 school service provider for the purpose of directed or targeted advertising.
  • Such marketing is consistent with applicable law and Pearson's legal obligations.
  • Pearson will not knowingly direct or send marketing communications to an individual who has expressed a preference not to receive marketing.
  • Where required by applicable law, express or implied consent to marketing exists and has not been withdrawn.

Pearson may provide personal information to a third party service provider on a restricted basis to provide marketing solely on behalf of Pearson or an affiliate or customer for whom Pearson is a service provider. Marketing preferences may be changed at any time.

Correcting/Updating Personal Information


If a user's personally identifiable information changes (such as your postal address or email address), we provide a way to correct or update that user's personal data provided to us. This can be done on theAccount page. If a user no longer desires our service and desires to delete his or her account, please contact us atcustomer-service@informit.comand we will process the deletion of a user's account.

Choice/Opt-out


Users can always make an informed choice as to whether they should proceed with certain services offered by InformIT. If you choose to remove yourself from our mailing list(s) simply visit the following page and uncheck any communication you no longer want to receive:www.e-skidka.com/u.aspx.

Sale of Personal Information


Pearson does not rent or sell personal information in exchange for any payment of money.

While Pearson does not sell personal information, as defined in Nevada law, Nevada residents may email a request for no sale of their personal information toNevadaDesignatedRequest@pearson.com.

Supplemental Privacy Statement for California Residents


California residents should read ourSupplemental privacy statement for California residentsin conjunction with this Privacy Notice. TheSupplemental privacy statement for California residentsexplains Pearson's commitment to comply with California law and applies to personal information of California residents collected in connection with this site and the Services.

Sharing and Disclosure


Pearson may disclose personal information, as follows:

  • As required by law.
  • With the consent of the individual (or their parent, if the individual is a minor)
  • In response to a subpoena, court order or legal process, to the extent permitted or required by law
  • To protect the security and safety of individuals, data, assets and systems, consistent with applicable law
  • In connection the sale, joint venture or other transfer of some or all of its company or assets, subject to the provisions of this Privacy Notice
  • To investigate or address actual or suspected fraud or other illegal activities
  • To exercise its legal rights, including enforcement of the Terms of Use for this site or another contract
  • To affiliated Pearson companies and other companies and organizations who perform work for Pearson and are obligated to protect the privacy of personal information consistent with this Privacy Notice
  • To a school, organization, company or government agency, where Pearson collects or processes the personal information in a school setting or on behalf of such organization, company or government agency.

Links


本网站含有其他网站的链接。请求e be aware that we are not responsible for the privacy practices of such other sites. We encourage our users to be aware when they leave our site and to read the privacy statements of each and every web site that collects Personal Information. This privacy statement applies solely to information collected by this web site.

Requests and Contact


请求econtact usabout this Privacy Notice or if you have any requests or questions relating to the privacy of your personal information.

Changes to this Privacy Notice


We may revise this Privacy Notice through an updated posting. We will identify the effective date of the revision in the posting. Often, updates are made to provide greater clarity or to comply with changes in regulatory requirements. If the updates involve material changes to the collection, protection, use or disclosure of Personal Information, Pearson will provide notice of the change through a conspicuous notice on this site or other appropriate way. Continued use of the site after the effective date of a posted revision evidences acceptance. Please contact us if you have questions or concerns about the Privacy Notice or any objection to any revisions.

Last Update: November 17, 2020