Fast and Heavy Disjoint Weighted Matchings for Demand-Aware Datacenter Topologies
January 17, 2022 Β· Declared Dead Β· π IEEE Conference on Computer Communications
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Authors
Kathrin Hanauer, Monika Henzinger, Stefan Schmid, Jonathan Trummer
arXiv ID
2201.06621
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.NI
Citations
15
Venue
IEEE Conference on Computer Communications
Last Checked
3 months ago
Abstract
Reconfigurable optical topologies promise to improve the performance in datacenters by dynamically optimizing the physical network in a demand-aware manner. State-of-the-art optical technologies allow to establish and update direct connectivity (in the form of edge-disjoint matchings) between top-of-rack switches within microseconds or less. However, to fully exploit temporal structure in the demand, such fine-grained reconfigurations also require fast algorithms for optimizing the interconnecting matchings. Motivated by the desire to offload a maximum amount of demand to the reconfigurable network, this paper initiates the study of fast algorithms to find k disjoint heavy matchings in graphs. We present and analyze six algorithms, based on iterative matchings, b-matching, edge coloring, and node-rankings. We show that the problem is generally NP-hard and study the achievable approximation ratios. An extensive empirical evaluation of our algorithms on both real-world and synthetic traces (88 in total), including traces collected in Facebook datacenters and in HPC clusters reveals that all our algorithms provide high-quality matchings, and also very fast ones come within 95% or more of the best solution. However, the running times differ significantly and what is the best algorithm depends on k and the acceptable runtime-quality tradeoff.
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