Communication/Computation Tradeoffs in Consensus-Based Distributed Optimization
Abstract
We study the scalability of consensus-based distributed optimization algorithms by considering two questions: How many processors should we use for a given problem, and how often should they communicate when communication is not free? Central to our analysis is a problem-specific value which quantifies the communication/computation tradeoff. We show that organizing the communication among nodes as a -regular expander graph (Reingold, Vadhan, and Wigderson, 2002) yields speedups, while when all pairs of nodes communicate (as in a complete graph), there is an optimal number of processors that depends on . Surprisingly, a speedup can be obtained, in terms of the time to reach a fixed level of accuracy, by communicating less and less frequently as the computation progresses. Experiments on a real cluster solving metric learning and non-smooth convex minimization tasks demonstrate strong agreement between theory and practice.
Cite
@article{arxiv.1209.1076,
title = {Communication/Computation Tradeoffs in Consensus-Based Distributed Optimization},
author = {Konstantinos I. Tsianos and Sean Lawlor and Michael G. Rabbat},
journal= {arXiv preprint arXiv:1209.1076},
year = {2012}
}
Comments
10 Pages, 3 Figures, Appearing at NIPS 2012