Data Resource Design Data Resource Design

Data Resource Design

Reality Beyond Illusion

    • US$39.99
    • US$39.99

출판사 설명

Are you struggling with the formal design of your organization’s data resource?  Do you find yourself forced into generic data architectures and universal data models?  Do you find yourself warping the business to fit a purchased application?  Do you find yourself pushed into developing physical databases without formal logical design?  Do you find disparate data throughout the organization?  If the answer to any of these questions is Yes, then you need to read Data Resource Design to help guide you through a formal design process that produces a high quality data resource within a single common data architecture.

Most public and private sector organizations do not consistently follow a formal data resource design process that begins with the organization’s perception of the business world, proceeds through logical data design, through physical data design, and into implementation.  Most organizations charge ahead with physical database implementation, physical package implementation, and other brute-force-physical approaches.  The result is a data resource that becomes disparate and does not fully support the organization in its business endeavors.

Data Resource Design describes how to formally design an organization’s data resource to meet its current and future business information demand.  It builds on Data Resource Simplexity, which described how to stop the burgeoning data disparity, and on Data Resource Integration, which described how to understand and resolve an organization’s disparate data resource.  It describes the concepts, principles, and techniques for building a high quality data resource based on an organization’s perception of the business world in which they operate.  

Like Data Resource Simplexity and Data Resource Integration, Michael Brackett draws on five decades of data management experience building and managing data resources, and resolving disparate data in both public and private sector organizations.  He leverages theories, concepts, principles, and techniques from a wide variety of disciplines, such as human dynamics, mathematics, physics, chemistry, philosophy, and biology, and applies them to properly designing data as a critical resource of an organization.  He shows how to understand the business environment where an organization operates and design a data resource that supports the organization in that business environment.

ABOUT THE AUTHOR

Michael Brackett has been in data management for 50 years.  During that time he has developed many innovative concepts, principles, and techniques for managing data.  He has written eight books and numerous articles on data management.  He is a prominent speaker at local, national, and international conferences and is regarded as a visionary thought leader.  He has been a member of DAMA International since 1985 and established the DAMA International Foundation in 2004.  He received DAMA International’s Lifetime Achievement Award in 2006 for his pioneering work in data resource management.  He is semi-retired and lives in a log home that he built in the Olympic Mountains near Lilliwaup, Washington.

In HTML

Are you struggling with the formal design of your organization’s data resource?  Do you find yourself forced into generic data architectures and universal data models?  Do you find yourself warping the business to fit a purchased application?  Do you find yourself pushed into developing physical databases without formal logical design?  Do you find disparate data throughout the organization?  If the answer to any of these questions is Yes, then you need to read 

Data Resource Design to help guide you through a formal design process that produces a high quality data resource within a single common data architecture.



Most public and private sector organizations do not consistently follow a formal data resource design process that begins with the organization’s perception of the business world, proceeds through logical data design, through physical data design, and into implementation.  Most organizations charge ahead with physical database implementation, physical package implementation, and other brute-force-physical approaches.  The result is a data resource that becomes disparate and does not fully support the organization in its business endeavors.



Data Resource Design describes how to formally design an organization’s data resource to meet its current and future business information demand.  It builds on 

Data Resource Simplexity, which described how to stop the burgeoning data disparity, and on 

Data Resource Integration, which described how to understand and resolve an organization’s disparate data resource.  It describes the concepts, principles, and techniques for building a high quality data resource based on an organization’s perception of the business world in which they operate.  



Like Data Resource Simplexity and Data Resource Integration, Michael Brackett draws on five decades of data management experience building and managing data resources, and resolving disparate data in both public and private sector organizations.  He leverages theories, concepts, principles, and techniques from a wide variety of disciplines, such as human dynamics, mathematics, physics, chemistry, philosophy, and biology, and applies them to properly designing data as a critical resource of an organization.  He shows how to understand the business environment where an organization operates and design a data resource that supports the organization in that business environment.

장르
컴퓨터 및 인터넷
출시일
2012년
9월 15일
언어
EN
영어
길이
392
페이지
출판사
Technics Publications
판매자
Technics Publications
크기
6.2
MB
Creating Good Data Creating Good Data
2020년
Knowledge Graphs and Big Data Processing Knowledge Graphs and Big Data Processing
2020년
Data Science Thinking Data Science Thinking
2018년
Data Analytics and Big Data Data Analytics and Big Data
2018년
Big-Data Analytics and Cloud Computing Big-Data Analytics and Cloud Computing
2016년
Information Modelling Information Modelling
2022년
Data Resource Integration Data Resource Integration
2014년
Data Resource Guide Data Resource Guide
2016년
Data Resource Understanding Data Resource Understanding
2015년
Data Resource Simplexity Data Resource Simplexity
2011년