Back to Search Start Over

Anfrage-getriebener Wissenstransfer zur Unterstuetzung von Datenanalysten

Authors :
Wahl, Andreas M.
Endler, Gregor
Schwab, Peter K.
Herbst, Sebastian
Lenz, Richard
Publication Year :
2016

Abstract

In larger organizations, multiple teams of data scientists have to integrate data from heterogeneous data sources as preparation for data analysis tasks. Writing effective analytical queries requires data scientists to have in-depth knowledge of the existence, semantics, and usage context of data sources. Once gathered, such knowledge is informally shared within a specific team of data scientists, but usually is neither formalized nor shared with other teams. Potential synergies remain unused. We therefore introduce a novel approach which extends data management systems with additional knowledge-sharing capabilities to facilitate user collaboration without altering established data analysis workflows. Relevant collective knowledge from the query log is extracted to support data source discovery and incremental data integration. Extracted knowledge is formalized and provided at query time.<br />Comment: in German

Details

Language :
German
Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1610.06382
Document Type :
Working Paper