Federated learning

id: federated-learning-169-3783907
title: Federated learning
text: Federated learning is a sub-field of machine learning focusing on settings in which multiple entities collaboratively train a model while ensuring that their data remains decentralized. This stands in contrast to machine learning settings in which data is centrally stored. One of the primary defining characteristics of federated learning is data heterogeneity. Due to the decentralized nature of the clients' data, there is no guarantee that data samples held by each client are independently and i
brand slug: wiki
category slug: encyclopedia
description: Decentralized machine learning
original url: https://en.wikipedia.org/wiki/Federated_learning
date created: 2019-06-08T15:37:57Z
date modified: 2024-08-31T07:50:31Z
main entity: {"identifier":"Q50818671","url":"https://www.wikidata.org/entity/Q50818671"}
image: {"content_url":"https://upload.wikimedia.org/wikipedia/commons/1/11/Centralized_federated_learning_protocol.png","width":1716,"height":1196}
fields total: 13
integrity: 16

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