| Veröffentlichte Version Download ( PDF | 1MB) | Lizenz: Creative Commons Namensnennung 4.0 International |
Four Generations in Data Engineering for Data Science
Klettke, Meike
und Störl, Uta
(2022)
Four Generations in Data Engineering for Data Science.
Datenbank-Spektrum 22 (1), S. 59-66.
Veröffentlichungsdatum dieses Volltextes: 13 Aug 2025 06:33
Artikel
DOI zum Zitieren dieses Dokuments: 10.5283/epub.77282
Zusammenfassung
Data-driven methods and data science are important scientific methods in many research fields. All data science approaches require professional data engineering components. At the moment, computer science experts are needed for solving these data engineering tasks. Simultaneously, scientists from many fields (like natural sciences, medicine, environmental sciences, and engineering) want to ...
Data-driven methods and data science are important scientific methods in many research fields. All data science approaches require professional data engineering components. At the moment, computer science experts are needed for solving these data engineering tasks. Simultaneously, scientists from many fields (like natural sciences, medicine, environmental sciences, and engineering) want to analyse their data autonomously. The arising task for data engineering is the development of tools that can support an automated data curation and are utilisable for domain experts. In this article, we will introduce four generations of data engineering approaches classifying the data engineering technologies of the past and presence. We will show which data engineering tools are needed for the scientific landscape of the next decade.
Alternative Links zum Volltext
Beteiligte Einrichtungen
Details
| Dokumentenart | Artikel | ||||
| Titel eines Journals oder einer Zeitschrift | Datenbank-Spektrum | ||||
| Verlag: | Springer Nature | ||||
|---|---|---|---|---|---|
| Band: | 22 | ||||
| Nummer des Zeitschriftenheftes oder des Kapitels: | 1 | ||||
| Seitenbereich: | S. 59-66 | ||||
| Datum | 2022 | ||||
| Institutionen | Informatik und Data Science > Allgemeine Informatik > Data Engineering (Prof. Dr.-Ing. Meike Klettke) | ||||
| Identifikationsnummer |
| ||||
| Stichwörter / Keywords | Data cleaning · Data integration · Data engineering pipelines · Data curation | ||||
| Dewey-Dezimal-Klassifikation | 000 Informatik, Informationswissenschaft, allgemeine Werke > 004 Informatik | ||||
| Status | Veröffentlicht | ||||
| Begutachtet | Ja, diese Version wurde begutachtet | ||||
| An der Universität Regensburg entstanden | Nein | ||||
| URN der UB Regensburg | urn:nbn:de:bvb:355-epub-772821 | ||||
| Dokumenten-ID | 77282 |
Downloadstatistik
Downloadstatistik