One of the key challenges of machine learning is the need for large amounts of data. Gathering training datasets for machine learning models poses privacy, security, and processing risks that organizations would rather avoid.
One technique that can help address some of these challenges is “federated learning.” By distributing the training of models across user devices, federated learning makes it possible to take advantage of machine learning while minimizing the need to collect user data.
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