What is federated learning, and how does it relate to Edge AI?
Answer Posted / Sandhya Sharma
Federated Learning is a machine learning approach that allows multiple entities to collaborate in updating a shared model while keeping their data local. It relates to Edge AI because both technologies aim to train models on decentralized data without the need for centralized servers. Federated Learning can be implemented on Edge devices, allowing for real-time updates and improvements to the model.
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