Published July 12, 2019 | Version v1
Preprint Open

Towards Specification of a Software Architecture for Cross-Sectoral Big Data Applications

  • 1. Telefonica Research
  • 2. Barcelona Supercomputing Center
  • 3. IBM
  • 4. Information Technology for Market Leadership, ITML
  • 5. Ecole des Ponts ParisTech
  • 6. University of Manchester
  • 7. Centro Ricerche FIAT
  • 8. University of Novi Sad Faculty of Sciences
  • 9. Foundation for Research and Technology Hellas, FORTH
  • 10. Aegis IT Research LTD
  • 11. CaixaBank
  • 12. ATOS
  • 13. Software AG

Description

The proliferation of Big Data applications puts pressure on improving and optimizing the handling of diverse datasets across different domains. Among several challenges, major difficulties arise in data-sensitive domains like banking, telecommunications, etc., where strict regulations make very difficult to upload and experiment with real data on external cloud resources. In addition, most Big Data research and development efforts aim to address the needs of IT experts, while Big Data analytics tools remain unavailable to non-expert users to a large extent. In this paper, we report on the work-in-progress carried out in the context of the H2020 project I-BiDaaS (Industrial-Driven Big Data as a Self-service Solution) which aims to address the above challenges. The project will design and develop a novel architecture stack that can be easily configured and adjusted to address crosssectoral needs, helping to resolve data privacy barriers in sensitive domains, and at the same time being usable by non-experts. This paper discusses and motivates the need for Big Data as a self-service, reviews the relevant literature, and identifies gaps with respect to the challenges described above. We then present the I-BiDaaS paradigm for Big Data as a self-service, position it in the context of existing references, and report on initial work towards the conceptual specification of the I-BiDaaS software architecture.

Notes

preprint of a concise paper accepted in the IEEE World Congress on Services (https://conferences.computer.org/services/2019/)

Files

IbidaasTowardsSpecArchit.pdf

Files (74.3 kB)

Name Size Download all
md5:1937ae7d69f79894cf241318b309435e
74.3 kB Preview Download

Additional details

Funding

I-BiDaaS – Industrial-Driven Big Data as a Self-Service Solution 780787
European Commission