The Data Model Resource Book: A Library of Logical Data and Data Warehouse Designs: A Library of Logical Data and Data Warehouse Models - Softcover

Silverston, Len; Inmon, William H; Graziano, Kent

 
9780471153641: The Data Model Resource Book: A Library of Logical Data and Data Warehouse Designs: A Library of Logical Data and Data Warehouse Models

Inhaltsangabe

International products have separate terms, are sold from abroad and may differ from local products, including fit, age ratings, and language of product, labeling or instructions.

Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.

Über die Autorin bzw. den Autor

LEN SILVERSTON (lsilvers@qdbc.com) is President of Quest Database Consulting, Inc. ( W. H. INMON is the acknowledged "father of the data warehouse" and the founder of Pine Cone Systems, a data warehousing company. KENT GRAZIANO (kgraziana@qdbc.com) is Director of Data Warehouse Services for Quest Database Consulting, Inc.

Von der hinteren Coverseite

Database and data warehouse designers, this book can save you and your staff hundreds of hours of hard work and tens of thousands of dollars in systems development costs and/or consultants' fees.

Let's face it, most data models are made up of common constructs that have been developed countless times before in other organizations. As a consequence, each time you build a data model from scratch it's like you're reinventing the wheel. Clearly, developing database systems and data warehouses would be much simpler if you had your own library of "best models" to work from. Now you do.

The Data Model Resource Book arms you with a set of proven data models and data warehouse designs for the core functions shared by most businesses. You get a comprehensive set of detailed models for marketing and sales, human resources, inventory, professional services, order processing, billing, product delivery, work order management, budgeting, accounting, and more. The authors also show you how to quickly convert the logical data models into enterprise-wide data warehouses as well as data marts.

„Über diesen Titel“ kann sich auf eine andere Ausgabe dieses Titels beziehen.