ABSTRACT
Although data warehouse modeling is an established branch within data warehouse research, there are still lots of opportunities for further work within this area. In this talk, I will first sketch major achievements and trends in conceptual data warehouse modeling and pinpoint open problems along the way. Afterwards, I will take a closer look at the overall design process, focus on the transformation of conceptual data warehouse schemata into logical ones, and argue that there still is a semantic gap between advanced conceptual data models and relational or multidimensional implementations, which needs to be bridged. Finally, I will turn to one specific aspect of the data warehouse lifecycle, namely schema changes, and highlight challenges in data warehouse schema versioning.
- My favorite issues in data warehouse modeling
Recommendations
Alliance Rules for Data Warehouse Cleansing
ICSPS '09: Proceedings of the 2009 International Conference on Signal Processing SystemsData Cleansing is an activity performed on the data sets of data warehouse to enhance and maintain the quality and consistency of the data. This paper addresses the problems related with dirty data, entrance of dirty data and detection of dirty data in ...
Temporal Issues in Data Warehouse Systems
DANTE '99: Proceedings of the 1999 International Symposium on Database Applications in Non-Traditional EnvironmentsWith wide acceptance of the data warehousing technology, researchers are proposing data models and development methodologies. While they recognize time as an important dimension, the suggested modeling is largely ad-hoc and experience driven. On the ...
Comments