Using ontologies and requirements for constructing and optimizing data warehouses

Developing database (DB) and data warehouse (DW) applications pass through three main phrases imposed by the ANSI/SPARC architecture: conceptual modeling, logical modeling and physical modeling. Some research efforts add a new ontological level above the conceptual one. This architecture has created two main actors whose presence is mandatory to ensure the success of applications: “conceptual designer” for conceptual and logical levels and “database administrators” (DBA) for physical level. Note that some administration tasks need some inputs from conceptual phase. Unfortunately, interaction between these two actors is negligible. Recently, some research and industrial efforts identify a highest cost of DBA and propose tools (advisors) to replace them, in order to ensure what we call zero-administration. The main limitation of these tools is their robustness. In this paper, we propose a new human resource management for database applications. Instead of replacing DBA, we claim to delegate some DBA tasks to conceptual designers. These tasks are usually those having inputs user requirements that may be translated to SQL queries. First, we propose a user make user requirements persistent into DWs. An analysis of requirements is given to identify SQL queries that may be used for physical design phase. Finally, a selection of indexes based on user requirements is presented and evaluated using star schema benchmark.

[1]  Chimène Fankam OntoDB2 : un système flexible et efficient de base de données à base ontologique pour le web sémantique et les données techniques. (OntoDB2) , 2009 .

[2]  Ashraf Aboulnaga,et al.  Robustness in automatic physical database design , 2008, EDBT '08.

[3]  Diego Calvanese,et al.  Discovering functional dependencies for multidimensional design , 2009, DOLAP.

[4]  Arnaud Giacometti,et al.  Query recommendations for OLAP discovery driven analysis , 2009, DOLAP.

[5]  Vijayan Sugumaran,et al.  The role of domain ontologies in database design: An ontology management and conceptual modeling environment , 2006, TODS.

[6]  Rima Bouchakri,et al.  On Simplifying Integrated Physical Database Design , 2011, ADBIS.

[7]  Ladjel Bellatreche,et al.  A methodology and tool for conceptual designing a data warehouse from ontology-based sources , 2010, DOLAP '10.

[8]  Ladjel Bellatreche,et al.  Extending the ANSI/SPARC Architecture Database with Explicit Data Semantics: An Ontology-Based Approach , 2008, ECSA.

[9]  Paolo Giorgini,et al.  Goal-oriented requirement analysis for data warehouse design , 2005, DOLAP '05.

[10]  Ladjel Bellatreche,et al.  Contribution of ontology-based data modeling to automatic integration of electronic catalogues within engineering databases , 2006, Comput. Ind..

[11]  Ladjel Bellatreche,et al.  OntoDB: An Ontology-Based Database for Data Intensive Applications , 2007, DASFAA.

[12]  Panos Vassiliadis,et al.  Towards Quality-oriented Data Warehouse Usage and Evolution , 2000, Inf. Syst..

[13]  Ladjel Bellatreche,et al.  DWOBS: Data Warehouse Design from Ontology-Based Sources , 2011, DASFAA.