@inproceedings{priebe_finding_2021, address = {Orlando, FL, USA}, title = {Finding {Your} {Way} {Through} the {Jungle} of {Big} {Data} {Architectures}}, url = {https://ieeexplore.ieee.org/document/9671862}, doi = {10/gn7mtm}, abstract = {This paper presents a systematic review of common analytical data architectures based on DAMA-DMBOK and ArchiMate. The paper is work in progress and provides a first view on Gartner’s Logical Data Warehouse paradigm, Data Fabric and Dehghani’s Data Mesh proposal as well as their interdependencies. It furthermore sketches the way forward how this work can be extended by covering more architecture paradigms (incl. classic Data Warehouse, Data Vault, Data Lake, Lambda and Kappa architectures) and introducing a template with among others "context", "problem" and "solution" descriptions, leading ultimately to a pattern system providing guidance for choosing the right architecture paradigm for the right situation.}, publisher = {IEEE}, author = {Priebe, Torsten and Neumaier, Sebastian and Markus, Stefan}, year = {2021}, keywords = {FH SP Data Analytics \& Visual Computing, Forschungsgruppe Data Intelligence, Institut für IT Sicherheitsforschung, SP IT Sec Applied Security \& Data Science, Vortrag, Wiss. Beitrag, best, peer-reviewed}, }