Federated Semantic Communication for Cooperative Multi-Tasking

Betreuer: Ahmad Halimi Razlighi
Art der Arbeit: Projekt (MSc)
Ausgabe: 08/2025
Bearbeiter: Pallavi Dhingra
Status: in Arbeit
Kurzfassung:

This thesis focuses on extending Cooperative Multi-Task Semantic Communication (CMT-SemCom) into a federated learning (FL) paradigm to enable semantic multi-task learning across distributed space agents. The objective is to develop a unified framework where local models learn task-specific semantic representations and collaboratively update a shared global model without sharing raw data.

The project may also explore the semantic-aware clustering of tasks in the federated paradigm to examine the overall system performance.

Requirements:

  • Background in machine learning or deep learning

  • Experience with PyTorch

  • Interest in semantic communication, multi-task learning, and federated systems

  • Background in space engineering is a plus

Contact: halimi@ant.uni-bremen.de
Zuletzt aktualisiert am 30.10.2025 von A. Halimi Razlighi
AIT ieee GOC tzi ith Fachbereich 1
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