Browse content
Table of contents
Actions for selected chapters
- Full text access
- Book chapterAbstract only
Chapter 1.1 - An Introduction to Data Architecture
Pages 1-5 - Book chapterAbstract only
Chapter 1.2 - The Data Infrastructure
Pages 7-12 - Book chapterAbstract only
Chapter 1.3 - The “Great Divide”
Pages 13-19 - Book chapterAbstract only
Chapter 1.4 - Demographics of Corporate Data
Pages 21-25 - Book chapterAbstract only
Chapter 1.5 - Corporate Data Analysis
Pages 27-31 - Book chapterAbstract only
Chapter 1.6 - The Life Cycle of Data: Understanding Data Over Time
Pages 33-37 - Book chapterAbstract only
Chapter 1.7 - A Brief History of Data
Pages 39-45 - Book chapterAbstract only
Chapter 2.1 - The End-State Architecture—The “World Map”
Pages 47-57 - Book chapterAbstract only
Chapter 3.1 - Transformations in the End-State Architecture
Pages 59-66 - Book chapterAbstract only
Chapter 4.1 - A Brief History of Big Data
Pages 67-71 - Book chapterAbstract only
Chapter 4.2 - What Is Big Data?
Pages 73-80 - Book chapterAbstract only
Chapter 4.3 - Parallel Processing
Pages 81-87 - Book chapterAbstract only
Chapter 4.4 - Unstructured Data
Pages 89-97 - Book chapterAbstract only
Chapter 4.5 - Contextualizing Repetitive Unstructured Data
Pages 99-100 - Book chapterAbstract only
Chapter 4.6 - Textual Disambiguation
Pages 101-110 - Book chapterAbstract only
Chapter 4.7 - Taxonomies
Pages 111-119 - Book chapterAbstract only
Chapter 5.1 - The Siloed Application Environment
Pages 121-131 - Book chapterAbstract only
Chapter 6.1 - Introduction to Data Vault 2.0
Pages 133-140 - Book chapterAbstract only
Chapter 6.2 - Introduction to Data Vault Modeling
Pages 141-156 - Book chapterAbstract only
Chapter 6.3 - Introduction to Data Vault Architecture
Pages 157-162 - Book chapterAbstract only
Chapter 6.4 - Introduction to Data Vault Methodology
Pages 163-170 - Book chapterAbstract only
Chapter 6.5 - Introduction to Data Vault Implementation
Pages 171-176 - Book chapterAbstract only
Chapter 7.1 - The Operational Environment: A Short History
Pages 177-183 - Book chapterAbstract only
Chapter 7.2 - The Standard Work Unit
Pages 185-189 - Book chapterAbstract only
Chapter 7.3 - Data Modeling for the Structured Environment
Pages 191-198 - Book chapterAbstract only
Chapter 8.1 - A Brief History of Data Architecture
Pages 199-210 - Book chapterAbstract only
Chapter 8.2 - Big Data/Existing System Interface
Pages 211-218 - Book chapterAbstract only
Chapter 8.3 - The Data Warehouse/Operational Environment Interface
Pages 219-224 - Book chapterAbstract only
Chapter 8.4 - Data Architecture: A High-Level Perspective
Pages 225-229 - Book chapterAbstract only
Chapter 9.1 - Repetitive Analytics: Some Basics
Pages 231-249 - Book chapterAbstract only
Chapter 9.2 - Analyzing Repetitive Data
Pages 251-260 - Book chapterAbstract only
Chapter 9.3 - Repetitive Analysis
Pages 261-268 - Book chapterAbstract only
Chapter 10.1 - Nonrepetitive Data
Pages 269-289 - Book chapterAbstract only
Chapter 10.2 - Mapping
Pages 291-293 - Book chapterAbstract only
Chapter 10.3 - Analytics From Nonrepetitive Data
Pages 295-308 - Book chapterAbstract only
Chapter 11.1 - Operational Analytics: Response Time
Pages 309-317 - Book chapterAbstract only
Chapter 12.1 - Operational Analytics
Pages 319-329 - Book chapterAbstract only
Chapter 13.1 - Personal Analytics
Pages 331-335 - Book chapterAbstract only
Chapter 14.1 - Data Models Across the End-State Architecture
Pages 337-351 - Book chapterAbstract only
Chapter 15.1 - The System of Record
Pages 353-361 - Book chapterAbstract only
Chapter 16.1 - Business Value and the End-State Architecture
Pages 363-369 - Book chapterAbstract only
Chapter 17.1 - Managing Text
Pages 371-379 - Book chapterAbstract only
Chapter 18.1 - An Introduction to Data Visualizations
Pages 381-395 - Book chapterNo access
Glossary
Pages 397-408 - Book chapterNo access
Index
Pages 409-416
About the book
Description
Over the past 5 years, the concept of big data has matured, data science has grown exponentially, and data architecture has become a standard part of organizational decision-making. Throughout all this change, the basic principles that shape the architecture of data have remained the same. There remains a need for people to take a look at the "bigger picture" and to understand where their data fit into the grand scheme of things.
Data Architecture: A Primer for the Data Scientist, Second Edition addresses the larger architectural picture of how big data fits within the existing information infrastructure or data warehousing systems. This is an essential topic not only for data scientists, analysts, and managers but also for researchers and engineers who increasingly need to deal with large and complex sets of data. Until data are gathered and can be placed into an existing framework or architecture, they cannot be used to their full potential. Drawing upon years of practical experience and using numerous examples and case studies from across various industries, the authors seek to explain this larger picture into which big data fits, giving data scientists the necessary context for how pieces of the puzzle should fit together.
Over the past 5 years, the concept of big data has matured, data science has grown exponentially, and data architecture has become a standard part of organizational decision-making. Throughout all this change, the basic principles that shape the architecture of data have remained the same. There remains a need for people to take a look at the "bigger picture" and to understand where their data fit into the grand scheme of things.
Data Architecture: A Primer for the Data Scientist, Second Edition addresses the larger architectural picture of how big data fits within the existing information infrastructure or data warehousing systems. This is an essential topic not only for data scientists, analysts, and managers but also for researchers and engineers who increasingly need to deal with large and complex sets of data. Until data are gathered and can be placed into an existing framework or architecture, they cannot be used to their full potential. Drawing upon years of practical experience and using numerous examples and case studies from across various industries, the authors seek to explain this larger picture into which big data fits, giving data scientists the necessary context for how pieces of the puzzle should fit together.
Key Features
- New case studies include expanded coverage of textual management and analytics
- New chapters on visualization and big data
- Discussion of new visualizations of the end-state architecture
- New case studies include expanded coverage of textual management and analytics
- New chapters on visualization and big data
- Discussion of new visualizations of the end-state architecture
Details
ISBN
978-0-12-816916-2
Language
English
Published
2019
Copyright
Copyright © 2019 Elsevier Inc. All rights reserved.
Imprint
Academic Press