The Min-Max Complexity of Distributed Stochastic Convex Optimization with Intermittent Communication

Abstract
We resolve the min-max complexity of distributed stochastic convex optimization (up to a log factor) in the intermittent communication setting, where machines work in parallel over the course of rounds of communication to optimize the objective, and during each round of communication, each machine may sequentially compute stochastic gradient estimates. We present a novel lower bound with a matching upper bound that establishes an optimal algorithm.
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