Abstract
Choosing the appropriate modeling approach is often the critical factor in the success or failure of a data warehousing implementation.
- Breslin, M. Data warehousing battle of the giants: Comparing the basics of the Kimball and Inmon models. Business Intelligence Journal 9, 1 (Winter 2004), 6--20.]]Google Scholar
- Bruckner, R. and Tjoa, A. Capturing delays and valid times in data warehouses. Journal of Intelligent Information Systems 19, 2 (Sept. 2002), 169--190.]] Google ScholarDigital Library
- Chaudhuri, A. and Dayal, U. An overview of data warehousing and OLAP technology. ACM SIGMOD Record 26, 1 (1997), 65--74.]] Google ScholarDigital Library
- Chenoweth, T., Schuff, D. and St. Louis, R. Method for developing dimensional data marts. Commun. ACM 46, 12 (Dec. 2003), 93--98.]] Google ScholarDigital Library
- Imhoff, C., Galemmo, N., and Geiger, J. Mastering Data Warehouse Design: Relational and Dimensional Techniques. Wiley, 2003.]]Google Scholar
- Inmon, W. The problem with dimensional modeling. DM Review (May 2000).]]Google Scholar
- Inmon, W. Building the Data Warehouse, 3rd Edition. Wiley, 2002.]] Google ScholarDigital Library
- Kimball, R., Reeves, L., Ross, M., and Thornthwaite, W. The Data Warehouse Lifecycle Toolkit. Wiley, 1998.]] Google ScholarDigital Library
- Moss, L., and Atre, S. Business Intelligence Roadmap. Addison-Wesley, 2003.]] Google ScholarDigital Library
- Ponniah, P. Data Warehousing Fundamentals. Wiley, 2001.]] Google ScholarDigital Library
- Watson, H., Annino, D., Wixom, B., Avery, K., and Rutherford, M. Current practices in data warehousing. Information Systems Management 18, 1 (2001), 47--54.]]Google ScholarCross Ref
Index Terms
- Modeling strategies and alternatives for data warehousing projects
Recommendations
Schema design alternatives for multi-granular data warehousing
DEXA'10: Proceedings of the 21st international conference on Database and expert systems applications: Part IIData warehousing is widely used in industry for reporting and analysis of huge volumes of data at different levels of detail. In general, data warehouses use standard dimensional schema designs to organize their data. However, current data warehousing ...
An empirical investigation of the factors affecting data warehousing success
The IT implementation literature suggests that various implementation factors play critical roles in the success of an information system; however, there is little empirical research about the implementation of data warehousing projects. Data ...
Comments