mounishvatti/FedCustom
This project implements hyper-tuned federated learning using the Flower framework, combining FedAvg, Logistic Regression, and a 2-layer CNN. It enables decentralized model training across devices, optimizing performance while ensuring data privacy and improving accuracy on both simple and complex tasks.
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Language
Jupyter Notebook
License
MIT
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Last pushed
May 22, 2024
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