Data Warehousing Fundamentals: A Comprehensive Guide for IT ProfessionalsEine Einführung in das Data Warehousing - speziell für IT-Fachleute, die sich in dieses Gebiet einarbeiten wollen. Behandelt werden alle wichtigen Themen wie Planung, Systemvoraussetzungen, Architektur, Infrastruktur, Design, Datenaufbereitung, Implementation und Wartung. Der Stoff wird anhand zahlreicher Beispiele, Fallstudien aus der Industrie und Übungsaufgaben anschaulich und nachvollziehbar dargestellt. Autor Paulraj Ponniah verfügt über 25 Jahre Erfahrung in Design und Implementation von Datenbanken und Data Warehousing Anwendungen. Er hat u.a. so namhafte Unternehmen wie Texaco, Sotheby's, Blue Cross/Blue Shield, NA Philips und Bantam-Doubleday-Dell betreut. "Data Warehousing Fundamentals" - ein topaktuelles Buch zu einem brisanten Thema. |
From inside the book
Results 6-10 of 90
Page 19
... data into information suitable for strategic decision making. You take all the historic data from the various operational systems, combine this internal data with any relevant data from outside sources, and pull them together. You ...
... data into information suitable for strategic decision making. You take all the historic data from the various operational systems, combine this internal data with any relevant data from outside sources, and pull them together. You ...
Page 21
... data from such sources. This is one more variation in the mix of source data for a data warehouse. Figure 2-2 illustrates a simple process of data integration for a banking institution. Here the data fed into the subject area of account in ...
... data from such sources. This is one more variation in the mix of source data for a data warehouse. Figure 2-2 illustrates a simple process of data integration for a banking institution. Here the data fed into the subject area of account in ...
Page 23
... data warehouse. This aspect of the data warehouse is quite significant ... sources are transformed, integrated, and stored in the data warehouse. The ... data warehouse is not updated or DEFINING FEATURES 23 Nonvolatile Data Data Granularity.
... data warehouse. This aspect of the data warehouse is quite significant ... sources are transformed, integrated, and stored in the data warehouse. The ... data warehouse is not updated or DEFINING FEATURES 23 Nonvolatile Data Data Granularity.
Page 29
... Source Data Data Warehouse DBMS Multi- dimensional DBs Report/Query OLAP Data Mining Data Storage Metadata Management & Control Information Delivery Data Marts Data Staging Production Data. This category of data comes from the various ...
... Source Data Data Warehouse DBMS Multi- dimensional DBs Report/Query OLAP Data Mining Data Storage Metadata Management & Control Information Delivery Data Marts Data Staging Production Data. This category of data comes from the various ...
Page 30
... data warehouse. Profiles of individual customers become very important for consideration. When your account ... sources. Again, you may want to schedule the acquisition of internal data ... data types. 30 DATA WAREHOUSE: THE BUILDING BLOCKS.
... data warehouse. Profiles of individual customers become very important for consideration. When your account ... sources. Again, you may want to schedule the acquisition of internal data ... data types. 30 DATA WAREHOUSE: THE BUILDING BLOCKS.
Contents
1 | |
Part 2 PLANNING AND REQUIREMENTS | 63 |
Part 3 ARCHITECTURE AND INFRASTRUCTURE | 127 |
Part 4 DATA DESIGN AND DATA PREPARATION | 203 |
Part 5 INFORMATION ACCESS AND DELIVERY | 315 |
Part 6 IMPLEMENTATION AND MAINTENANCE | 429 |
Appendix A Project Life Cycle Steps and Checklists | 493 |
Appendix B Critical Factors for Success | 497 |
Appendix C Guidelines for Evaluating Vendor Solutions | 499 |
References | 501 |
Glossary | 503 |
Index | 511 |
Other editions - View all
Data Warehousing Fundamentals: A Comprehensive Guide for IT Professionals Paulraj Ponniah No preview available - 2004 |
Common terms and phrases
aggregate algorithms analysis applications architectural components attributes business dimensions capture changes chapter columns complex create data cleansing data elements data extraction data loading data marts data mining data model data quality data sources data staging data storage data structures data transformation data warehouse environment data warehouse project data warehousing database DBMS deployment dimension table dimensional model end-users enterprise example fact table Figure files functions hardware incremental loads integrated interface marketing MDDBs methods metrics MOLAP multidimensional OLAP system OLTP online analytical processing operational systems options package diagrams performance pilot platform predefined primary key product dimension programs project team queries and reports records relational requirements definition ROLAP selection server source data source systems specific staging area standards STAR schema summary techniques tion transaction types users values vendors ware Web-enabled data warehouse
Popular passages
Page 349 - Processing (OLAP) is a category of software technology that enables analysts, managers, and executives to gain insight into data through fast, consistent, interactive access to a wide variety of possible views of information that has been transformed from raw data to reflect the real dimensionality of the enterprise as understood by the user.
Page 18 - Inmon identified four characteristics of a data warehouse, which are represented in his formal definition: "... a data warehouse is a subject oriented, integrated, non-volatile and time variant collection of data in support of management's decisions.
Page 412 - Trees are normally drawn upside down, with the root at the top and the leaves at the bottom.
Page 501 - Kimball, Ralph, and Richard Merz. The Data Webhouse Toolkit: Building the WebEnabled Data Warehouse. New York: John Wiley & Sons, 2000.
Page 500 - Discovering Data Mining: From Concept to Implementation, Upper Saddle River, NJ: Prentice-Hall PTR, 1998.
Page 53 - It completes the process by providing users with knowledge to use the right information, at the right time, and at the right place.
Page 501 - Managing the Data Warehouse: Practical Techniques for Monitoring Operations and Performances, Administering Data and Tools, Managing Change and Growth, New York: Wiley, 1997.
Page 465 - ... but be careful not to bite off more than you can chew.
Page 5 - Web-enabled analysis tools enables merchants to gain insights into their customer base, manage inventories more tightly, and keep the right products in front of the right people at the right place at the right time.