Chopin: Combining Distributed and Centralized Schedulers for Self-Adjusting Datacenter Networks

Chopin: Combining Distributed and Centralized Schedulers for Self-Adjusting Datacenter Networks

Abstract

The performance of distributed and data-centric applications often critically depends on the interconnecting network. Emerging reconfigurable datacenter networks (RDCNs) are a particularly innovative approach to improve datacenter throughput. Relying on a dynamic optical topology which can be adjusted towards the workload in a demand-aware manner, RDCNs allow to exploit temporal and spatial locality in the communication pattern, and to provide topological shortcuts for frequently communicating racks. The key challenge, however, concerns how to realize demand-awareness in RDCNs in a scalable fashion. This paper presents and evaluates Chopin, a hybrid scheduler for self-adjusting networks that provides demand-awareness at low overhead, by combining centralized and distributed approaches. Chopin allocates optical circuits to elephant flows, through its slower centralized scheduler, utilizing global information. Chopin’s distributed scheduler is orders of magnitude faster and can swiftly react to changes in the traffic and adjust the optical circuits accordingly, by using only local information and running at each rack separately.

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Authors
  • Rozen Schiff, Neta
  • Foerster, Klaus-Tycho
  • Schmid, Stefan
  • Hay, David
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Supplemental Material
Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Paper)
Event Title
25th International Conference on Principles of Distributed Systems (OPODIS)
Divisions
Communication Technologies
Subjects
Informatik Allgemeines
Event Location
Brussels
Event Type
Conference
Event Dates
13-15 December 2022
Date
2022
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