A Cost-Optimized Data Parallel Task Scheduling with Deadline Constraints in Cloud

Artículos y libros

Tipo de documento: Artículo

Fecha de publicación: Junio 2022

URI: https://repositorio.uneatlantico.es/id/eprint/3009

DOI: http://doi.org/10.3390/electronics11132022

Resumen:

Large-scale distributed systems have the advantages of high processing speeds and large communication bandwidths over the network. The processing of huge real-world data within a time constraint becomes tricky, due to the complexity of data parallel task scheduling in a time constrained environment. This paper proposes data parallel task scheduling in cloud to address the minimization of cost and time constraints. By running concurrent executions of tasks on multi-core cloud resources, the number of parallel executions could be increased correspondingly, thereby, finishing the task within the deadline is possible. A mathematical model is developed here to minimize the operational cost of data parallel tasks by feasibly assigning a load to each virtual machine in the cloud data center. This work experiments with a machine learning model that is replicated on the multi-core cloud heterogeneous resources to execute different input data concurrently to accomplish distributive learning. The outcome of concurrent execution of data-intensive tasks on different parts of the input dataset gives better solutions in terms of processing the task by the deadline at optimized cost.

[img]
Vista Previa
Texto
electronics-11-02022-v2 (1).pdf
Available under License Creative Commons Attribution.

Descargar (1MB) | Vista Previa

Acciones (logins necesarios)

Ver Objeto Ver Objeto