Data as a Service (DaaS) offers an effective provisioning model able to exploit the advantages of cloud computing in terms of accessibility and scalability when data providers need to make their data available to different data consumers. Nevertheless, in settings where data are generated at the edge and they need to be propagated (e.g., Industry 4.0, Smart Cities), DaaS model suffers of some limitations: data transfer from the edge to the cloud - and viceversa - could require a significant time and privacy issues could hamper the possibility to move the data. Goal of this article is to propose a DaaS model based on the Fog Computing paradigm, which combines the advantages of both cloud and edge computing. The proposed solution implements an adaptive multi-agent system where each agent autonomously manages the placement of data in the most convenient location considering the quality of service requirements of the user that it is serving. To guarantee the collaboration of the agents without imposing a centralized control, a reinforcement learning algorithm will be enacted to balance between the local optimum for the single data consumers and the satisfaction of the global requirements of all consumers.

(2023). Efficient Data as a Service in Fog Computing: An Adaptive Multi-Agent Based Approach [journal article - articolo]. In IEEE TRANSACTIONS ON CLOUD COMPUTING. Retrieved from https://hdl.handle.net/10446/294368

Efficient Data as a Service in Fog Computing: An Adaptive Multi-Agent Based Approach

Salnitri, Mattia;
2023-01-01

Abstract

Data as a Service (DaaS) offers an effective provisioning model able to exploit the advantages of cloud computing in terms of accessibility and scalability when data providers need to make their data available to different data consumers. Nevertheless, in settings where data are generated at the edge and they need to be propagated (e.g., Industry 4.0, Smart Cities), DaaS model suffers of some limitations: data transfer from the edge to the cloud - and viceversa - could require a significant time and privacy issues could hamper the possibility to move the data. Goal of this article is to propose a DaaS model based on the Fog Computing paradigm, which combines the advantages of both cloud and edge computing. The proposed solution implements an adaptive multi-agent system where each agent autonomously manages the placement of data in the most convenient location considering the quality of service requirements of the user that it is serving. To guarantee the collaboration of the agents without imposing a centralized control, a reinforcement learning algorithm will be enacted to balance between the local optimum for the single data consumers and the satisfaction of the global requirements of all consumers.
mattia.salnitri@unibg.it
articolo
2023
Inglese
cartaceo
online
11
3
2646
2663
Settore IINF-05/A - Sistemi di elaborazione delle informazioni
adaptive information systems; Data as a Service; data management; distributed decision system; Fog computing
Mangiaracina, Giulia; Plebani, Pierluigi; Salnitri, Mattia; Vitali, Monica
info:eu-repo/semantics/article
open
(2023). Efficient Data as a Service in Fog Computing: An Adaptive Multi-Agent Based Approach [journal article - articolo]. In IEEE TRANSACTIONS ON CLOUD COMPUTING. Retrieved from https://hdl.handle.net/10446/294368
Non definito
4
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/294368
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