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June 5, 2026
Neural Network Maps as a Method for Constructing Mathematical Models
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A two-phase heuristic algorithm for power-aware offline scheduling in IaaS clouds

Journal of Parallel and Distributed Computing. 2023. Vol. 178. P. 1–10.
Ignatov A., Maslova I., Posypkin M., Yang W., Wu J.

The paper aims at mitigating hot-spots during Offline Scheduling in IaaS (Infrastructure-as-a-Service) cloud systems. Unlike previous studies, the research focuses on identifying and resolving hot-spots not at servers, but at server racks. A two-phase algorithm for performing power-aware offline scheduling is proposed. The first phase aims at identifying and mitigating hot-spots at racks, while the second phase performs VM consolidation, i.e. minimization of the number of occupied servers while maintaining a feasible VM mapping and low migration costs. The proposed algorithm takes into account the dynamic nature of VM's resource consumption: it does not only resolve detected hot-spots, but also tries to avoid hot-spots in a reasonable future time period. The algorithm was tested with the data from a real IaaS cloud with different sets of algorithm's parameters. Experimental evaluation showed that the statistical estimates of the future VM's resource consumption provide the most reliable mapping, which is a result of minimization of the number of new hot-spot occurrences.

Research target: Computer Science
Language: English
DOI
Text on another site
Keywords: IaaSOffline SchedulingPower-aware offline schedulingCloud power constraints
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