Communication Efficient Distributed Machine Learning with the Parameter Server Mu Li

Neural Information Processing Systems 

This paper describes a third-generation parameter server framework for distributed machine learning. This framework offers two relaxations to balance system performance and algorithm efficiency. We propose a new algorithm that takes advantage of this framework to solve non-convex non-smooth problems with convergence guarantees.

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