Big Data Pipelines on the Computing Continuum: Ecosystem and Use Cases Overview (bibtex)
@InProceedings{Roman2021, author = {Dumitru Roman and Nikolay Nikolov and Ahmet Soylu and Brian Elvesaeter and Hui Song and Radu Prodan and Dragi Kimovski and Andrea Marrella and Francesco Leotta and Mihhail Matskin and Giannis Ledakis and Konstantinos Theodosiou and Anthony Simonet-Boulogne and Fernando Perales and Evgeny Kharlamov and Alexandre Ulisses and Arnor Solberg and Raffaele Ceccarelli}, booktitle = {2021 IEEE Symposium on Computers and Communications (ISCC)}, title = {{Big Data Pipelines on the Computing Continuum: Ecosystem and Use Cases Overview}}, year = {2021}, month = {sep}, pages = {1--4}, publisher = {IEEE}, abstract = {Organisations possess and continuously generate huge amounts of static and stream data, especially with the proliferation of Internet of Things technologies. Collected but unused data, i.e., Dark Data, mean loss in value creation potential. In this respect, the concept of Computing Continuum extends the traditional more centralised Cloud Computing paradigm with Fog and Edge Computing in order to ensure low latency pre-processing and filtering close to the data sources. However, there are still major challenges to be addressed, in particular related to management of various phases of Big Data processing on the Computing Continuum. In this paper, we set forth an ecosystem for Big Data pipelines in the Computing Continuum and introduce five relevant real-life example use cases in the context of the proposed ecosystem.}, doi = {10.1109/iscc53001.2021.9631410}, keywords = {Big Data, Computing Continuum, Dark Data, Data Pipelines, Cloud-Fog-Edge Computing}, url = {https://ieeexplore.ieee.org/document/9631410} }
Powered by bibtexbrowser (with ITEC extensions)