Federated Learning for Edge Devices
Federated Learning for Edge Devices keeps data on the device, reduces bandwidth, and builds better AI models across a fleet of devices. This guide explains the concepts, architecture, and real-world use cases.
Federated Learning for Edge Devices keeps data on the device, reduces bandwidth, and builds better AI models across a fleet of devices. This guide explains the concepts, architecture, and real-world use cases.
Secure Federated Learning protects data privacy by training AI models on local data and sharing only encrypted updates, while guarding against poisoning, inversion, and inference attacks.
A practical guide to building Federated Learning pipelines that keep data on the device, reduce bandwidth, and meet privacy regulations.