Delayed Algorithms for Distributed Stochastic Weakly Convex Optimization

Neural Information Processing Systems 

This paper studies delayed stochastic algorithms for weakly convex optimization in a distributed network with workers connected to a master node. Recently, Xu et al. 2022 showed that an inertial stochastic subgradient method converges at a rate of O(τ

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