Skip to yearly menu bar Skip to main content


Poster

Communication Efficient Distributed Machine Learning with the Parameter Server

Mu Li · David G Andersen · Alexander Smola · Kai Yu

Level 2, room 210D

Abstract: 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. We present an in-depth analysis of two large scale machine learning problems ranging from $\ell_1$-regularized logistic regression on CPUs to reconstruction ICA on GPUs, using 636TB of real data with hundreds of billions of samples and dimensions. We demonstrate using these examples that the parameter server framework is an effective and straightforward way to scale machine learning to larger problems and systems than have been previously achieved.

Live content is unavailable. Log in and register to view live content