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News/Accurate and Resource-Efficient Federated Continual Learning
arxiv
PublishedJune 11, 2026 at 4:00 AM

Accurate and Resource-Efficient Federated Continual Learning

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arXiv:2606.11480v1 Announce Type: new Abstract: Federated continual learning (FCL) must learn from distributed task streams under limited resources, such as communication, computation, memory, and label availability. Existing FCL methods often rely on repeated local optimization, replay, and full su

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