Federated learning with TensorFlow Federated (TF World '19)

TensorFlow Federated (TFF) is an open-source framework for machine learning and other computations on decentralized data. TFF has been developed to facilitate open research and experimentation with Federated Learning (FL), an approach to machine learning where a shared global model is trained across many participating clients that keep their training data locally. By eliminating the need to collect data at a central location, yet still enabling each participant to benefit from the collective knowledge of everything in the network, FL lets you build intelligent applications that leverage insights from data that might be too costly, sensitive, or impractical to collect.

In this session, we explain the key concepts behind FL and TFF, how to set up a FL experiment and run it in a simulator, what the code looks like and how to extend it, and we briefly discuss options for future deployment to real devices.

Presented by: Krzysztof Ostrowski

For more on TFF → https://goo.gle/2PtAp2f
For more on Federated Learning → https://goo.gle/2ruZJNo

#TFWorld All Sessions → https://goo.gle/TFWorld19
Subscribe to the TensorFlow channel → https://goo.gle/TensorFlow

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