High-Level ETL for Semantic Data Warehouses -- Full Version
Rudra Pratap Deb Nath, Oscar Romero, Torben Bach Pedersen, and Katja, Hose

TL;DR
This paper introduces a high-level, RDF-based ETL approach for semantic data warehouses, automating data integration and transformation, significantly reducing development effort and improving scalability while maintaining performance.
Contribution
It proposes a novel layer-based RDF ETL framework with automated metadata-driven data flows, enhancing productivity and ease of semantic data warehouse integration.
Findings
92% fewer typed characters compared to previous framework
Development time nearly halved with the new approach
Scalable performance comparable to existing methods
Abstract
The popularity of the Semantic Web (SW) encourages organizations to organize and publish semantic data using the RDF model. This growth poses new requirements to Business Intelligence (BI) technologies to enable On-Line Analytical Processing (OLAP)-like analysis over semantic data. The incorporation of semantic data into a Data Warehouse (DW) is not supported by the traditional Extract-Transform-Load (ETL) tools because they do not consider semantic issues in the integration process. In this paper, we propose a layer-based integration process and a set of high-level RDF-based ETL constructs required to define, map, extract, process, transform, integrate, update, and load (multidimensional) semantic data. Different to other ETL tools, we automate the ETL data flows by creating metadata at the schema level. Therefore, it relieves ETL developers from the burden of manual mapping at the ETL…
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Taxonomy
TopicsSemantic Web and Ontologies · Data Quality and Management · Advanced Database Systems and Queries
