Proc. of 4th Int'l Conference on Information and Knowledge Management Cikm, Research Problems in Data Warehousing
نویسنده
چکیده
The topic of data warehousing encompasses architectures, algorithms, and tools for bringing together selected data from multiple databases or other information sources into a single repository, called a data warehouse, suitable for direct querying or analysis. In recent years data warehousing has become a prominent buzzword in the database industry, but attention from the database research community has been limited. In this paper we motivate the concept of a data warehouse, we outline a general data warehousing architecture, and we propose a number of technical issues arising from the architecture that we believe are suitable topics for exploratory research.
منابع مشابه
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This paper presents an overview of DOLAP’07, the 10th ACM International Workshop on Data Warehousing and OLAP, held on November 9, 2007 in Lisbon, Portugal in conjunction with CIKM’07, the ACM 16th Conference on Information and Knowledge Management. The mission of DOLAP is to explore novel research directions and emerging application domains in the areas of data warehousing and OLAP. Although, ...
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