monk1337/Aweome-Heathcare-Federated-Learning
A curated list of Federated Learning papers/articles and recent advancements.
This is a curated collection of resources for healthcare professionals interested in using federated learning to develop robust AI models while protecting patient privacy. It provides links to academic papers, code libraries, and tutorials. Healthcare researchers, data scientists, and clinical informaticians can use this to explore the latest advancements and applications of federated learning in their field.
100 stars.
Use this if you need to understand or implement machine learning models in healthcare using decentralized data, ensuring patient data privacy and compliance.
Not ideal if you are looking for a plug-and-play software tool or a general overview of machine learning outside of healthcare or federated learning.
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Last pushed
Feb 09, 2026
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