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深度学习与优化实现云计算任务调度的多目标优化。

Deep learning and optimization enabled multi-objective for task scheduling in cloud computing.

作者信息

Komarasamy Dinesh, Ramaganthan Siva Malar, Kandaswamy Dharani Molapalayam, Mony Gokuldhev

机构信息

Department of Computer Science and Engineering, Kongu Engineering College, Erode, India.

Department of Computer Science, College of Engineering and Computer Science, Jazan University, Ministry of Higher Education, Jazan, Kingdom of Saudi Arabia.

出版信息

Network. 2025 Feb;36(1):79-108. doi: 10.1080/0954898X.2024.2391395. Epub 2024 Aug 20.

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.

摘要

在云计算(CC)中,任务调度将任务分配到最合适的资源上进行执行。本文提出了一种利用多目标优化和深度学习(DL)模型的任务调度模型。首先,由传入用户使用所提出的混合分数火烈鸟蜣螂优化算法(FFBO)进行多目标任务调度,该算法是通过整合蜣螂优化算法(DBO)、火烈鸟搜索算法(FSA)和分数阶微积分(FC)形成的。这里,适应度函数取决于可靠性、成本、预测能量和完工时间,预测能量由深度残差网络(DRN)进行预测。此后,使用所提出的深度前馈神经网络融合长短期记忆(DFNN-LSTM)基于深度学习完成任务调度,DFNN-LSTM是DFNN和LSTM的组合。此外,在调度工作流时,会考虑任务参数和虚拟机(VM)的实时参数。任务参数包括最早完成时间(EFT)、最早开始时间(EST)、任务长度、任务优先级和实际任务运行时间,而VM参数包括内存利用率、带宽利用率、容量和中央处理器(CPU)。所提出的模型DFNN-LSTM+FFBO分别实现了0.188、0.950焦耳和0.238的卓越完工时间、能量和资源利用率。

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