Not logged in.

Contribution Details

Type Conference or Workshop Paper
Scope Discipline-based scholarship
Published in Proceedings Yes
Title On the cluster admission problem for cloud computing
Organization Unit
Authors
  • Ludwig Dierks
  • Ian Kash
  • Sven Seuken
Presentation Type paper
Item Subtype Original Work
Refereed Yes
Status Published in final form
Language
  • English
ISBN 978-1-4503-6837-7
Event Title Proceedings of the 14th Workshop on the Economics of Networks, Systems and Computation (NetEcon 2019)
Event Type workshop
Event Location Phoenix, AZ, USA
Event Start Date June 28 - 2019
Event End Date June 28 - 2019
Place of Publication New York, NY, USA
Abstract Text Cloud computing providers must handle heterogeneous customer workloads for resources such as (virtual) CPU or GPU cores. This is particularly challenging if customers, who are already running a job on a cluster, scale their resource usage up and down over time. The provider therefore has to continuously decide whether she can add additional workloads to a given cluster or if doing so would impact existing workloads' ability to scale. Currently, this is often done using simple threshold policies to reserve large parts of each cluster, which leads to low average utilization of the cluster. In this paper, we propose more sophisticated policies for controlling admission to a cluster and demonstrate that they significantly increase cluster utilization. We first introduce the cluster admission problem and formalize it as a constrained Partially Observable Markov Decision Process (POMDP). As it is infeasible to solve the POMDP optimally, we then systematically design heuristic admission policies that estimate moments of each workload's distribution of future resource usage. Via simulations we show that our admission policies lead to a substantial improvement over the simple threshold policy. We then evaluate how much further this can be improved with learned or elicited prior information and how to incentivize users to provide this information.
Official URL https://dl.acm.org/citation.cfm?id=3340274
Export BibTeX
EP3 XML (ZORA)