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Deep learning and optimization enabled multi-objective for task scheduling in cloud computing.
Komarasamy, Dinesh; Ramaganthan, Siva Malar; Kandaswamy, Dharani Molapalayam; Mony, Gokuldhev.
Afiliación
  • Komarasamy D; Department of Computer Science and Engineering, Kongu Engineering College, Erode, India.
  • Ramaganthan SM; Department of Computer Science, College of Engineering and Computer Science, Jazan University, Ministry of Higher Education, Jazan, Kingdom of Saudi Arabia.
  • Kandaswamy DM; Department of Computer Science and Engineering, Sathyabama Institute of Science and Technology, Chennai, India.
  • Mony G; Department of Computer Science and Engineering, Vel Tech Rangarajan Dr. Sagunthala R & D Institute of Science and Technology, Chennai, India.
Network ; : 1-30, 2024 Aug 20.
Article en En | MEDLINE | ID: mdl-39163538
ABSTRACT
In cloud computing (CC), task scheduling allocates the task to best suitable resource for execution. This article proposes a model for task scheduling utilizing the multi-objective optimization and deep learning (DL) model. Initially, the multi-objective task scheduling is carried out by the incoming user utilizing the proposed hybrid fractional flamingo beetle optimization (FFBO) which is formed by integrating dung beetle optimization (DBO), flamingo search algorithm (FSA) and fractional calculus (FC). Here, the fitness function depends on reliability, cost, predicted energy, and makespan, the predicted energy is forecasted by a deep residual network (DRN). Thereafter, task scheduling is accomplished based on DL using the proposed deep feedforward neural network fused long short-term memory (DFNN-LSTM), which is the combination of DFNN and LSTM. Moreover, when scheduling the workflow, the task parameters and the virtual machine's (VM) live parameters are taken into consideration. Task parameters are earliest finish time (EFT), earliest start time (EST), task length, task priority, and actual task running time, whereas VM parameters include memory utilization, bandwidth utilization, capacity, and central processing unit (CPU). The proposed model DFNN-LSTM+FFBO has achieved superior makespan, energy, and resource utilization of 0.188, 0.950J, and 0.238, respectively.
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Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Network Asunto de la revista: NEUROLOGIA Año: 2024 Tipo del documento: Article

Texto completo: 1 Base de datos: MEDLINE Idioma: En Revista: Network Asunto de la revista: NEUROLOGIA Año: 2024 Tipo del documento: Article