AI-enabled MUltimodal Semantic COMmunications and COMputing
Description of the granted funding
MUSE-COM2 aims to develop and validate a novel system for AI-empowered multimodal communications considering semantics of individual modalities jointly optimized with the processing of the modalities in multi-access/mobile edge computing (MEC) servers. Unlike conventional semantic and goal-oriented communications, the inclusion of information processing in MEC imposes new challenges related to the impact of information carried in individual modalities on the MEC processing outcome. The goal is to obtain a coherent framework jointly reducing the amount of information carried over the wireless links and subsequently processed in MEC; thus, saving not only radio and computing resources, but also energy while leading to the same outcome of the MEC processing.
Show moreStarting year
2024
End year
2026
Granted funding
Funder
Research Council of Finland
Funding instrument
International joint call
Other information
Funding decision number
359838
Fields of science
Electronic, automation and communications engineering, electronics
Research fields
Tietoliikennetekniikka
Identified topics
5G, 6G, wireless networks, wireless communication