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HARD: Hybrid Adaptive Resource Discovery for Jungle Computing

journal contribution
posted on 2023-07-26, 14:55 authored by Javad Zarrin, Rui L. Aguiar, João Paulo Barraca
In recent years, Jungle Computing has emerged as a distributed computing paradigm based on simultaneous combination of various hierarchical and distributed computing environments which are composed by large number of heterogeneous resources. In such a computing environment, the resources and the underlying computation and communication infrastructures are highly-hierarchical and heterogeneous. This creates a lot of difficulty and complexity for finding the proper resources in a precise way in order to run a particular job on the system efficiently. This paper proposes Hybrid Adaptive Resource Discovery (HARD), a novel efficient and highly scalable resource-discovery approach which is built upon a virtual hierarchical overlay based on self-organization and self-adaptation of processing resources in the system, where the computing resources are organized into distributed hierarchies according to a proposed hierarchical multi-layered resource description model. The proposed approach supports distributed query processing within and across hierarchical layers by deploying various distributed resource discovery services and functionalities in the system which are implemented using different adapted algorithms and mechanisms in each level of hierarchy. The proposed approach addresses the requirements for resource discovery in Jungle Computing environments such as high-hierarchy, high-heterogeneity, high-scalability and dynamicity. Simulation results show significant scalability and efficiency of the proposed approach over highly heterogeneous, hierarchical and dynamic computing environments.

History

Refereed

  • Yes

Volume

90

Page range

42-73

Publication title

Journal of Network and Computer Applications

ISSN

1084-8045

Publisher

Elsevier

Language

  • other

Legacy posted date

2020-03-10

Legacy Faculty/School/Department

ARCHIVED Faculty of Science & Technology (until September 2018)

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