MohammadShabazuddin/FedSecGuard-Federated_Learning_Techniques_for_Advanced_Malware_Detection
The project focuses on utilizing federated machine learning to enhance the detection of malware in Internet of Things (IoT) devices. The code includes experiments simulating various configurations where clients collaboratively train deep learning models for malware detection without sharing raw data.
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May 30, 2024
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