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MICHÁLEK, J. OUJEZSKÝ, V. HOLÍK, M. ŠKORPIL, V.
Original Title
A Proposal for a Federated Learning Protocol for Mobile and Management Systems
Type
journal article in Web of Science
Language
English
Original Abstract
In this research paper, we introduce a federated learning communication protocol tailored for emergency management applications. Our primary objective is to tackle the communication challenges that arise in such critical scenarios. In order to overcome the limitations associated with centralized server architectures, we present an innovative communication protocol. This protocol empowers the framework to effectively cooperate with multiple centralized servers, fostering efficient knowledge sharing and model training while ensuring the utmost data privacy and security. By harnessing this protocol, our framework elevates the performance and resilience of vital infrastructure systems operating on the Android platform, thereby facilitating real-time operational scenarios. This research makes a substantial contribution to the field of emergency management applications, as we offer a comprehensive solution that optimizes communication and enables seamless collaboration with numerous centralized servers.
Keywords
Android; communication protocol; federated learning; framework; machine learning; mobile
Authors
MICHÁLEK, J.; OUJEZSKÝ, V.; HOLÍK, M.; ŠKORPIL, V.
Released
21. 12. 2023
Publisher
MDPI
ISBN
2076-3417
Periodical
Applied Sciences - Basel
Year of study
14
Number
1
State
Swiss Confederation
Pages from
Pages to
Pages count
URL
https://www.mdpi.com/2076-3417/14/1/101
Full text in the Digital Library
http://hdl.handle.net/11012/245203
BibTex
@article{BUT186768, author="Jakub {Michálek} and Václav {Oujezský} and Martin {Holík} and Vladislav {Škorpil}", title="A Proposal for a Federated Learning Protocol for Mobile and Management Systems", journal="Applied Sciences - Basel", year="2023", volume="14", number="1", pages="1--14", doi="10.3390/app14010101", issn="2076-3417", url="https://www.mdpi.com/2076-3417/14/1/101" }