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Cerberus: The Power of Choices in Datacenter Topology Design

  • Chen Griner
  • , Johannes Zerwas
  • , Andreas Blenk
  • , Manya Ghobadi
  • , Stefan Schmid
  • , Chen Avin

    Research output: Contribution to journalArticlepeer-review

    1 Scopus citations

    Abstract

    The bandwidth and latency requirements of modern datacenter applications have led researchers to propose various topology designs using static, dynamic demand-oblivious (rotor), and/or dynamic demand-aware switches. However, given the diverse nature of datacenter traffic, there is little consensus about how these designs would fare against each other. In this work, we analyze the throughput of existing topology designs under different traffic patterns and study their unique advantages and potential costs in terms of bandwidth and latency "tax". To overcome the identified inefficiencies, we propose Cerberus, a unified, two-layer leaf-spine optical datacenter design with three topology types. Cerberus systematically matches different traffic patterns with their most suitable topology type: E.g., latency-sensitive flows are transmitted via a static topology, all-to-all traffic via a rotor topology, and elephant flows via a demand-aware topology. We show analytically and in simulations that Cerberus can improve throughput significantly compared to alternative approaches and operate datacenters at higher loads while being throughput-proportional.

    Original languageEnglish
    Pages (from-to)99-100
    Number of pages2
    JournalPerformance Evaluation Review
    Volume50
    Issue number1
    DOIs
    StatePublished - 1 Jun 2022

    Keywords

    • data centers
    • demand-aware
    • network design
    • optical networks
    • throughput

    ASJC Scopus subject areas

    • Software
    • Hardware and Architecture
    • Computer Networks and Communications

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