Improved Analysis of Deterministic Load-Balancing Schemes

Author:

Berenbrink Petra1,Klasing Ralf2,Kosowski Adrian3,Mallmann-Trenn Frederik4,Uznański Przemysław5

Affiliation:

1. Hamburg University, Hamburg

2. CNRS—LaBRI—Université de Bordeaux, Talence cedex, France

3. Inria—IRIF—Paris Diderot University, Paris Cedex, France

4. MIT, Cambridge, MA

5. ETH Zürich, Zürich, Switzerland

Abstract

We consider the problem of deterministic load balancing of tokens in the discrete model. A set of n processors is connected into a d -regular undirected network. In every timestep, each processor exchanges some of its tokens with each of its neighbors in the network. The goal is to minimize the discrepancy between the number of tokens on the most-loaded and the least-loaded processor as quickly as possible. In this work, we identify some natural conditions on deterministic load-balancing algorithms to improve upon the long-standing results of Rabani et al. (1998). Specifically, we introduce the notion of cumulatively fair load-balancing algorithms where in any interval of consecutive timesteps, the total number of tokens sent out over an edge by a node is the same (up to constants) for all adjacent edges. We prove that algorithms that are cumulatively fair and where every node retains a sufficient part of its load in each step, achieve a discrepancy of O ( d min { √ log n /μ,√ n }) in time O ( T ), where μ is the spectral gap of the transition matrix of the graph. We also show that, in general, neither of these assumptions may be omitted without increasing discrepancy. We then show, by a combinatorial potential reduction argument, that any cumulatively fair scheme satisfying some additional assumptions achieves a discrepancy of O ( d ) almost as quickly as the continuous diffusion process. This positive result applies to some of the simplest and most natural discrete load balancing schemes.

Funder

cluster SysNum

project ANR DESCARTES

Publisher

Association for Computing Machinery (ACM)

Subject

Mathematics (miscellaneous)

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Local Deal-Agreement Algorithms for Load Balancing in Dynamic General Graphs;Theory of Computing Systems;2022-11-29

2. On the Price of Locality in Static Fast Rerouting;2022 52nd Annual IEEE/IFIP International Conference on Dependable Systems and Networks (DSN);2022-06

3. A survey of size counting in population protocols;Theoretical Computer Science;2021-11

4. PackStealLB: A scalable distributed load balancer based on work stealing and workload discretization;Journal of Parallel and Distributed Computing;2021-04

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