多云计算中的整合资源管理:基于 DRL 的多目标优化方法

Ramanpreet Kaur, Divya Anand, Upinder Kaur, Sahil Verma
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摘要

简介:多数据中心架构是满足现代应用和服务日益增长的需求的一项重要发展,目前正在对其进行研究。本研究提供了一个工具集,用于创建和管理虚拟化云环境中的虚拟机(VM)和物理主机(PM),以及模拟基于真实世界云使用趋势的各种场景。目标:提出一种在异构环境中使用增强授粉算法的优化资源管理模型。方法:Q-learning 与花粉授粉的结合提高了资源分配和作业调度的标准。这些先进方法的结合使我们的解决方案能够快速处理复杂的动态调度设置,从而适用于广泛的实际应用。该算法通过使用 Q 值来驱动授粉过程,从而找到最有前途的方案,提高了发现最优解决方案的效率和效力。在模拟现实世界场景的各种数据集上进行的大量模拟测试一致证明了所建议的方法具有更高的性能。结果:最后,在 AWS 云上进行了实施;建议的方法通过提高能效、减少二氧化碳排放量和降低多云环境下的成本,表现出了卓越的性能 结论:建议工作的综合结果和评估证明了其在实现预期目标方面的有效性。通过在代表各种现实世界场景的不同数据集上进行广泛实验,所提出的工作始终优于现有的最先进算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrative Resource Management in Multi Cloud Computing: A DRL Based Approach for multi-objective Optimization
INTRODUCTION: The multi-data canter architecture is being investigated as a significant development in meeting the increasing demands of modern applications and services. The study provides a toolset for creating and managing virtual machines (VMs) and physical hosts (PMs) in a virtualized cloud environment, as well as for simulating various scenarios based on real-world cloud usage trends. OBJECTIVES: To propose an optimized resource management model using the Enhanced Flower Pollination algorithm in a heterogeneous environment. METHODS: The combination of Q-learning with flower pollination raises the bar in resource allocation and job scheduling. The combination of these advanced methodologies enables our solution to handle complicated and dynamic scheduling settings quickly, making it suited for a wide range of practical applications. The algorithm finds the most promising option by using Q-values to drive the pollination process, enhancing efficiency and efficacy in discovering optimal solutions. An extensive testing using simulation on various datasets simulating real-world scenarios consistently demonstrates the suggested method's higher performance. RESULTS: In the end, the implementation is done on AWS clouds; the proposed methodology shows the excellent performance by improving energy efficiency, Co2 Reduction and cost having multi-cloud environment   CONCLUSION: The comprehensive results and evaluations of the proposed work demonstrate its effectiveness in achieving the desired goals. Through extensive experimentation on diverse datasets representing various real-world scenarios, the proposed work consistently outperforms existing state-of-the-art algorithms.
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