Federated Learning and Analytics Research Using TensorFlow Federated

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Published on ● Video Link: https://www.youtube.com/watch?v=mzyeyH5R0ik



Duration: 3:14:31
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A Google TechTalk, presented by Google TFF Researchers, 2021/11/10
ABSTRACT: Sometimes centrally collecting data produced by edge devices, such as mobile phones, wearables, or cars, is infeasible or undesirable. With federated learning and analytics, clients collaboratively train a model or compute an analytic (a stastic) under the coordination of a server, while keeping the training data decentralized and mitigating privacy risks.

This workshop will present the latest and greatest research from Google in an easy to understand and use manner.

For more information about this workshop, please see: https://events.withgoogle.com/federated-learning-workshop-using-tensorflow-federated/#content




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