The Data Modeling Handbook und über 1 Million weitere Bücher verfügbar für Amazon Kindle . Erfahren Sie mehr


oder
Loggen Sie sich ein, um 1-Click® einzuschalten.
oder
Mit kostenloser Probeteilnahme bei Amazon Prime. Melden Sie sich während des Bestellvorgangs an. Erfahren Sie mehr
Alle Angebote
Möchten Sie verkaufen? Hier verkaufen
The Data Modeling Handbook: A Best-Practice Approach to Building Quality Data Models
 
 
Beginnen Sie mit dem Lesen von The Data Modeling Handbook auf Ihrem Kindle in weniger als einer Minute.

Sie haben keinen Kindle? Hier kaufen oder eine gratis Kindle Lese-App herunterladen.

The Data Modeling Handbook: A Best-Practice Approach to Building Quality Data Models [Englisch] [Gebundene Ausgabe]

Michael Reingruber , Reingruber , Mbchb MD Gregory
4.8 von 5 Sternen  Alle Rezensionen anzeigen (5 Kundenrezensionen)
Statt: EUR 78,99
Jetzt: EUR 77,99 kostenlose Lieferung. Siehe Details.
Sie sparen: EUR 1,00 (1%)
  Alle Preisangaben inkl. MwSt.
o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o
Auf Lager.
Verkauf und Versand durch Amazon.de. Geschenkverpackung verfügbar.
Nur noch 1 Stück auf Lager - jetzt bestellen.
Lieferung bis Mittwoch, 30. Mai: Wählen Sie an der Kasse Morning-Express. Siehe Details.
‹  Zurück zur Artikelübersicht

Produktbeschreibungen

Book Description

A straightforward explanation of how to combine good technique with business context in a self-regulating modeling process that results in the creation of useable models. Contains a series of rules and best practices in an organized reference format. Addresses transition to systems development and model management, presenting each rule in several notations. Includes numerous examples drawn from practical experience.

Synopsis

A Straightforward, No--Nonsense Guide to Building the Most Accurate, Complete, and Useful Data Models Possible. How do I know if my data model is accurate? When is a model really complete? Is it possible for a model to be both technically perfect and of no use to an organization, and what can I do to avoid that problem? This book provides answers to these and other crucial data modeling questions. While there are plenty of books that describe the characteristics of finished high--quality data models, only The Data Modeling Handbook gets down to the nitty--gritty of actually building one. Packed with real--world examples, annotated diagrams, and a wealth of rules and best practices, this field--tested guide provides experienced data modelers, architects, and engineers with hands--on guidance from two noted data management experts.

* The only book offering clear, straightforward rules and guidelines for judging model accuracy and completeness* Presents all rules in several notations, including IDEF1X, Martin, Chen, and Finkelstein* Compares and contrasts the most popular modeling styles and demonstrates how great models can be built using any type of notation* Explains how to use an organization's plans, policies, objectives, and strategies to build accurate, complete, and useful models* Offers detailed guidance to establishing a continuous quality evaluation program that's easy to implement and follow* Packed with real--world examples and annotated diagrams illustrating each point covered* Describes how to use Case tools most effectively to build high--quality models

Buchrückseite

A Straightforward, No-Nonsense Guide to Building the Most Accurate, Complete, and Useful Data Models Possible. How do I know if my data model is accurate? When is a model really complete? Is it possible for a model to be both technically perfect and of no use to an organization, and what can I do to avoid that problem? This book provides answers to these and other crucial data modeling questions. While there are plenty of books that describe the characteristics of finished high-quality data models, only The Data Modeling Handbook gets down to the nitty-gritty of actually building one. Packed with real-world examples, annotated diagrams, and a wealth of rules and best practices, this field-tested guide provides experienced data modelers, architects, and engineers with hands-on guidance from two noted data management experts.
  • The only book offering clear, straightforward rules and guidelines for judging model accuracy and completeness
  • Presents all rules in several notations, including IDEF1X, Martin, Chen, and Finkelstein
  • Compares and contrasts the most popular modeling styles and demonstrates how great models can be built using any type of notation
  • Explains how to use an organization’s plans, policies, objectives, and strategies to build accurate, complete, and useful models
  • Offers detailed guidance to establishing a continuous quality evaluation program that’s easy to implement and follow
  • Packed with real-world examples and annotated diagrams illustrating each point covered
  • Describes how to use Case tools most effectively to build high-quality models

Über den Autor

MICHAEL C. REINGRUBER is Technical Leader for the development of the SRA Business Reengineering Methodology. WILLIAM W. GREGORY is Deputy Director of the Business Process Improvement Division of SRA.
‹  Zurück zur Artikelübersicht

Datenschutzerklärung von Amazon.de Versandbedingungen von Amazon.de Umtausch- & Rücknahme bei Amazon.de