Federated Learning: Balancing Machine Learning With Confidentiality: Revision history

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26 May 2025

  • curprev 17:0917:09, 26 May 2025 Demi437633932297 talk contribs 2,993 bytes +2,993 Created page with "Distributed Learning: Enhancing AI Innovation with Security <br>Federated learning emerges as a innovative approach to training machine learning models without data. Unlike conventional methods that require pooling datasets into a single server, this decentralized framework allows systems to collaborate locally, sharing only model improvements rather than raw data. For industries like healthcare, finance, and smart devices, this technique addresses critical privacy con..."