000 03674cam a2200301 a 4500
001 vtls000005201
003 VRT
005 20250102223915.0
008 090222s2007 njua |b 001 0 eng
020 _a9780471790495 (cloth)
020 _a0471790494 (cloth)
039 9 _a201402040132
_bVLOAD
_c201010111242
_dmalmash
_c200902221142
_dvenkatrajand
_c200902221142
_dvenkatrajand
_y200902221141
_zvenkatrajand
050 0 0 _aQA76.9.D26
_bP574 2007
082 0 0 _a005.74
_222
100 1 _aPonniah, Paulraj.
_932239
245 1 0 _aData Modeling Fundamentals :
_bA Practical guide for IT Professionals /
_cPaulraj Ponniah.
260 _aHoboken, N.J. :
_bWiley-Interscience,
_cc2007.
300 _axxi, 436 p. :
_bill. ;
_c26 cm.
504 _aIncludes bibliographical references (p. 423-424) and index.
505 _aPreface. Acknowledgments. PART I: INTRODUCTION TO DATA MODELING. 1. Data Modeling: An Overview. Chapter Objectives. Data Model Defined. What is a Data Model? Why Data Modeling? Who Performs Data Modeling? Information Levels. Classification of Information Levels. Data Models at Information Levels. Conceptual Data Modeling. Data Model Components. Data Modeling Steps. Data Model Quality. Significance of Data Model Quality. Data Model Characteristics. Ensuring Data Model Quality. Data System Development. Data System Development Life Cycle (DDLC). Roles and Responsibilities. Modeling the Information Requirements. Applying Agile Modeling Principles. Data Modeling Approaches and Trends. Data Modeling Approaches. Modeling for Data Warehouse. Other Modeling Trends. Chapter Summary. Review Questions. 2. Methods, Techniques, and Symbols. Chapter Objectives. Data Modeling Approaches. Semantic Modeling. Relational Modeling. Entity-Relationship Modeling. Binary Modeling. Methods and Techniques. Peter Chen (E-R) Modeling. Information Engineering. IDEF1X. Richard Barker's. ORM (Object Role Modeling). XML (eXtensible Markup Language). Summary and Comments. Unified Modeling Language (UML). Data Modeling Using UML. UML in the Development Process. Chapter Summary. Review Questions. PART II. DATA MODELING FUNDAMENTALS. 3. Anatomy of a Data Model. Chapter Objectives. Data Model Composition. Models at Different Levels. Conceptual Model: Review Procedure. Conceptual Model: Identifying Components. Case Study. Description. E-R Model. UML Model. Creation of Models. User Views. View Integration. Entity Types. Specialization/Generalization. Relationships. Attributes. Identifiers. Review of the Model Diagram. Logical Model: Overview. Model Components. Transformation Steps. Relatio
520 _aThe purpose of this book is to provide a practical approach for IT professionals to acquire the necessary knowledge and expertise in data modeling to function effectively. It begins with an overview of basic data modeling concepts, introduces the methods and techniques, provides a comprehensive case study to present the details of the data model components, covers the implementation of the data model with emphasis on quality components, and concludes with a presentation of a realistic approach to data modeling. It clearly describes how a generic data model is created to represent truly the enterprise information requirements.
650 0 _aDatabase design.
_91560
650 0 _aData structures (Computer science)
_9188
856 4 1 _3Table of contents only
_uhttp://www.loc.gov/catdir/toc/ecip075/2006038737.html
856 4 2 _3Contributor biographical information
_uhttp://www.loc.gov/catdir/enhancements/fy0739/2006038737-b.html
856 4 2 _3Publisher description
_uhttp://www.loc.gov/catdir/enhancements/fy0739/2006038737-d.html
942 _2lcc
_n0
_cBK
999 _c13975
_d13975