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10.5555/645413.652152guideproceedingsArticle/Chapter ViewAbstractPublication PagesConference Proceedingsacm-pubtype
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Minimizing Congestion in General Networks

Published: 16 November 2002 Publication History

Abstract

A principle task in parallel and distributed systems is to reduce the communication load in the interconnection network, as this is usually the major bottleneck for the performance of distributed applications. In this paper we introduce a framework for solving on-line problems that aim to minimize the congestion (i.e. the maximum load of a network link) in general topology networks.We apply this framework to the problem of on-line routing of virtual circuits and to a dynamic data management problem. For both scenarios we achieve a competitive ratioof O(log3n) with respect to the congestion of the network links.Our on-line algorithm for the routing problem has the remarkable property that it is oblivious, i.e., the path chosen for a virtual circuit is independent of the current network load. Oblivious routing strategies can easily be implemented in distributed environments and have thereforebeen intensively studied for certain network topologies as e.g. meshes, tori and hypercubic networks. This is the first oblivious path selection algorithm that achieves a polylogarithmiccompetitive ratio in general networks.

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cover image Guide Proceedings
FOCS '02: Proceedings of the 43rd Symposium on Foundations of Computer Science
November 2002
569 pages
ISBN:0769518222

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IEEE Computer Society

United States

Publication History

Published: 16 November 2002

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