Federated Learning for 6G Networks Navigating Privacy Benefits and Challenges

Project Code :TCMAPY1720

Objective

The objective of this study is to investigate the integration of federated learning within 6G networks to enhance privacy and data security without compromising performance. Specifically, the research aims to analyze privacy-preserving mechanisms, evaluate trade-offs between model accuracy and resource constraints, and identify challenges related to heterogeneity, scalability, and communication overhead. Furthermore, the study seeks to design optimized aggregation protocols and incentive schemes that promote collaborative learning among distributed edge devices. By providing a framework and guidelines, this work aspires to facilitate deployment of robust, privacy-aware federated learning solutions tailored to the ultra?low latency and high?capacity requirements of 6G networks.

Abstract

The next generation of wireless communication, 6G, is expected to interconnect billions of ultra‑intelligent devices and deliver sub‑millisecond latency for immersive applications such as holographic telepresence and autonomous mobility. Traditional cloud‑centric AI pipelines cannot scale to this setting because continuous raw‑data transfer overloads backhaul links and exposes sensitive user information. To address this gap, our project implements a federated‑learning (FL) framework in which edge devices train models locally and share only encrypted weight updates with a coordinating server. We prototype the concept in a Flask web application that allows users to register, upload sample beamforming datasets, choose among six candidate algorithms (Random Forest, FNN, CNN, MLP, XGBoost, Decision Tree), and receive real‑time prediction feedback on 6G beam‑forming success. The back‑end simulates an FL round by averaging locally derived model parameters, demonstrating up to 100 % accuracy for tree‑based ensembles while preserving data sovereignty. We also quantify communication savings, latency reductions, and resistance to data‑reconstruction attacks compared with centralized training. Nonetheless, challenges emerge: non‑IID data distributions, straggler devices, model poisoning, and the need for fine‑grained incentive mechanisms. Our findings suggest that integrating differential privacy, secure aggregation, and blockchain‑based audit trails will be crucial for trustworthy, large‑scale FL deployment in 6G ecosystems.

Keywords: 6G, Federated Learning, Edge AI, Privacy‑Preserving Training, Beamforming Prediction, Secure Aggregation

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

SOFTWARE REQUIREMENS

Operating System                               :  Windows 7/8/10

Server side Script                                :  HTML, CSS, Bootstrap & JS

Programming Language                     :  Python

Libraries                                                 Flask, Pandas, Torch, Keras, Sklearn, Numpy , Seaborn

IDE/Workbench                                  :  VSCode

Server Deployment                             :  Xampp Server

Database                                             :  MySQL    

 

HARDWARE REQUIREMENTS

Processor                                   - I3/Intel Processor

RAM                                       - 8GB (min)

Hard Disk                                - 128 GB

Key Board                               - Standard Windows Keyboard

Mouse                                      - Two or Three Button Mouse

Monitor                                    - Any

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