Federated Learning in Practice: How to Deploy AI While Respecting Data Privacy
Introduction to Federated Learning In the era of big data and artificial intelligence, the demand for privacy-preserving machine learning solutions is stronger than ever. Traditional AI models are typically trained on centralized datasets, which often requires collecting sensitive user data in one location. This approach raises significant privacy concerns, especially in sectors like healthcare, finance, […]
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