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Published June 8, 2020 | Published
Book Section - Chapter Open

Characterizing Policies with Optimal Response Time Tails under Heavy-Tailed Job Sizes

Abstract

We consider the tail behavior of the response time distribution in an M/G/1 queue with heavy-tailed job sizes, specifically those with intermediately regularly varying tails. In this setting, the response time tail of many individual policies has been characterized, and it is known that policies such as Shortest Remaining Processing Time (SRPT) and Foreground-Background (FB) have response time tails of the same order as the job size tail, and thus such policies are tail-optimal. Our goal in this work is to move beyond individual policies and characterize the set of policies that are tail-optimal. Toward that end, we use the recently introduced SOAP framework to derive sufficient conditions on the form of prioritization used by a scheduling policy that ensure the policy is tail-optimal. These conditions are general and lead to new results for important policies that have previously resisted analysis, including the Gittins policy, which minimizes mean response time among policies that do not have access to job size information. As a by-product of our analysis, we derive a general upper bound for fractional moments of M/G/1 busy periods, which is of independent interest.

Additional Information

© 2020 Copyright held by the owner/author(s). Ziv Scully was supported by an ARCS Foundation scholarship and the NSF Graduate Research Fellowship Program under Grant Nos. DGE-1745016 and DGE-125222. Lucas van Kreveld, Onno Boxma, and Jan-Pieter Dorsman were supported by the Netherlands Organisation for Scientific Research (NWO) through the Gravitation project NETWORKS, grant number 024.002.003. Adam Wierman was supported by NSF grant CNS-1518941.

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August 22, 2023
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