Self-Adjusting Ego-Trees Topology for Reconfigurable Datacenter Networks

State-of-the-art topologies for datacenters (DC) and high-performance computing (HPC) networks are demand-oblivious and static. Therefore, such network topologies are optimized for the worst-case traffic scenarios and can't take advantage of changing demand patterns when such exist. However, re...

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Veröffentlicht in:arXiv.org 2022-02
Hauptverfasser: Griner, Chen, Einziger, Gil, Chen, Avin
Format: Artikel
Sprache:eng
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Zusammenfassung:State-of-the-art topologies for datacenters (DC) and high-performance computing (HPC) networks are demand-oblivious and static. Therefore, such network topologies are optimized for the worst-case traffic scenarios and can't take advantage of changing demand patterns when such exist. However, recent optical switching technologies enable the concept of dynamically reconfiguring circuit-switched topologies in real-time. This capability opens the door for the design of self-adjusting networks: networks with demand-aware and dynamic topologies in which links between nodes can be established and re-adjusted online and respond to evolving traffic patterns. This paper studies a recently proposed model for optical leaf-spine reconfigurable networks. We present a novel algorithm, GreedyEgoTrees, that dynamically changes the network topology. The algorithm greedily builds ego trees for nodes in the network, where nodes cooperate to help each other, taking into account the global needs of the network. We show that GreedyEgoTrees has nice theoretical properties, outperforms other possible algorithms (like static expander and greedy dynamic matching) and can significantly improve the average path length for real DC and HPC traces.
ISSN:2331-8422