Architectural Design Decisions for Self-Serve Data Platforms in Data Meshes

Autor: van Eijk, Tom, Kumara, Indika, Di Nucci, Dario, Tamburri, Damian Andrew, Heuvel, Willem-Jan van den
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: Data mesh is an emerging decentralized approach to managing and generating value from analytical enterprise data at scale. It shifts the ownership of the data to the business domains closest to the data, promotes sharing and managing data as autonomous products, and uses a federated and automated data governance model. The data mesh relies on a managed data platform that offers services to domain and governance teams to build, share, and manage data products efficiently. However, designing and implementing a self-serve data platform is challenging, and the platform engineers and architects must understand and choose the appropriate design options to ensure the platform will enhance the experience of domain and governance teams. For these reasons, this paper proposes a catalog of architectural design decisions and their corresponding decision options by systematically reviewing 43 industrial gray literature articles on self-serve data platforms in data mesh. Moreover, we used semi-structured interviews with six data engineering experts with data mesh experience to validate, refine, and extend the findings from the literature. Such a catalog of design decisions and options drawn from the state of practice shall aid practitioners in building data meshes while providing a baseline for further research on data mesh architectures.
Comment: 21st IEEE International Conference on Software Architecture (ICSA 2024), 13 pages
Databáze: arXiv