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Obtaining Dynamic Scheduling Policies with Simulation and Machine Learning

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Autor(es):
Carastan-Santos, Danilo ; de Camargo, Raphael Y. ; Assoc Comp Machinery
Número total de Autores: 3
Tipo de documento: Artigo Científico
Fonte: SC'17: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE FOR HIGH PERFORMANCE COMPUTING, NETWORKING, STORAGE AND ANALYSIS; v. N/A, p. 13-pg., 2017-01-01.
Resumo

Dynamic scheduling of tasks in large-scale HPC platforms is normally accomplished using ad-hoc heuristics, based on task characteristics, combined with some backfilling strategy. Defining heuristics that work efficiently in different scenarios is a difficult task, specially when considering the large variety of task types and platform architectures. In this work, we present a methodology based on simulation and machine learning to obtain dynamic scheduling policies. Using simulations and a workload generation model, we can determine the characteristics of tasks that lead to a reduction in the mean slowdown of tasks in an execution queue. Modeling these characteristics using a nonlinear function and applying this function to select the next task to execute in a queue improved the mean task slowdown in synthetic workloads. When applied to real workload traces from highly different machines, these functions still resulted in performance improvements, attesting the generalization capability of the obtained heuristics. (AU)

Processo FAPESP: 13/26644-1 - Modelos de programação e algoritmos para a execução eficiente de aplicações paralelas em aglomerados heterogêneos
Beneficiário:Raphael Yokoingawa de Camargo
Modalidade de apoio: Auxílio à Pesquisa - Regular