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A Computation and Communication Efficient Method for Distributed Nonconvex Problems in the Partial Participation Setting

2022-05-31NeurIPS 2023Unverified0· sign in to hype

Alexander Tyurin, Peter Richtárik

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Abstract

We present a new method that includes three key components of distributed optimization and federated learning: variance reduction of stochastic gradients, partial participation, and compressed communication. We prove that the new method has optimal oracle complexity and state-of-the-art communication complexity in the partial participation setting. Regardless of the communication compression feature, our method successfully combines variance reduction and partial participation: we get the optimal oracle complexity, never need the participation of all nodes, and do not require the bounded gradients (dissimilarity) assumption.

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