{"title":"基于分层自关联多项式Reg网的棘叶网络任务感知流调度","authors":"Vinu Josephraj, Wilfred Franklin Sundara Raj","doi":"10.1002/cpe.70167","DOIUrl":null,"url":null,"abstract":"<div>\n \n <p>Cloud computing has become crucial to modern infrastructure, which enables data-intensive applications to thrive in scalable environments. The backbone of cloud computing is the massive data center (DC) servers. The DC networks have unique traffic demands for different tasks, which need to be considered for efficient network traffic (NT) management and enhancing Quality of Service (QoS). Existing solutions fail to consider these unique traffic demands, which result in suboptimal performance in large-scale, data-sensitive environments. To overcome these challenges, a novel Traffic-aware FLow reconfiguration in spine lEaf (TAFLE) system has been proposed in this paper. The proposed model addresses the inefficiencies of QoS-based network traffic allocation by considering the task-level requirements of data-sensitive applications. The proposed solution combines a Deep Packet Analytics (DPA) engine and the Hierarchical Auto-Associative Polynomial Reg Net (HAP-Reg Net) model for reconfiguring the flow based on QoS classes and predicted traffic volumes. Several criteria have been used to evaluate the proposed TAFLE model, such as the f1-score, accuracy, precision, recall, Mean Absolute Percentage Error (MAPE), and Mean Absolute Error (MAE). Experimental findings show that the system significantly improves prediction accuracy and resource allocation, which leads to better overall performance. Experimental results demonstrate that the existing techniques, such as CNN, LSTM, and GRU models, achieve 96.12%, 96.08%, and 95.65% accuracy, while the novel HAP-Reg Net model achieves 96.49% accuracy. Additionally, the proposed TAFLE model has a greater accuracy of 99.2% than previous methods like VAMBIG, AMFQ, and D-LSLP, which have 95.51%, 97.35%, and 98.89% accuracy, respectively.</p>\n </div>","PeriodicalId":55214,"journal":{"name":"Concurrency and Computation-Practice & Experience","volume":"37 21-22","pages":""},"PeriodicalIF":1.5000,"publicationDate":"2025-08-04","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"TAFLE: Task-Aware Flow Scheduling in Spine-Leaf Network via Hierarchical Auto-Associative Polynomial Reg Net\",\"authors\":\"Vinu Josephraj, Wilfred Franklin Sundara Raj\",\"doi\":\"10.1002/cpe.70167\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div>\\n \\n <p>Cloud computing has become crucial to modern infrastructure, which enables data-intensive applications to thrive in scalable environments. The backbone of cloud computing is the massive data center (DC) servers. 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Several criteria have been used to evaluate the proposed TAFLE model, such as the f1-score, accuracy, precision, recall, Mean Absolute Percentage Error (MAPE), and Mean Absolute Error (MAE). Experimental findings show that the system significantly improves prediction accuracy and resource allocation, which leads to better overall performance. Experimental results demonstrate that the existing techniques, such as CNN, LSTM, and GRU models, achieve 96.12%, 96.08%, and 95.65% accuracy, while the novel HAP-Reg Net model achieves 96.49% accuracy. 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引用次数: 0
摘要
云计算已经成为现代基础设施的关键,它使数据密集型应用程序能够在可伸缩的环境中茁壮成长。云计算的骨干是大型数据中心(DC)服务器。数据中心网络对不同的任务有不同的流量需求,为了有效地进行网络流量管理和提高服务质量,需要考虑这些需求。现有的解决方案没有考虑到这些独特的流量需求,这导致在大规模、数据敏感的环境中性能不佳。为了克服这些挑战,本文提出了一种新的spine lEaf (TAFLE)系统交通感知流重构方法。该模型通过考虑数据敏感应用程序的任务级需求,解决了基于qos的网络流量分配效率低下的问题。提出的解决方案结合了深度包分析(DPA)引擎和分层自关联多项式Reg Net (HAP-Reg Net)模型,用于基于QoS类和预测流量重新配置流。几个标准被用来评估提出的TAFLE模型,如f1分,准确度,精密度,召回率,平均绝对百分比误差(MAPE)和平均绝对误差(MAE)。实验结果表明,该系统显著提高了预测精度和资源分配,从而提高了整体性能。实验结果表明,现有的CNN、LSTM和GRU模型的准确率分别为96.12%、96.08%和95.65%,而新的HAP-Reg Net模型的准确率为96.49%。此外,与VAMBIG、AMFQ和D-LSLP的准确率分别为95.51%、97.35%和98.89%相比,TAFLE模型的准确率达到了99.2%。
TAFLE: Task-Aware Flow Scheduling in Spine-Leaf Network via Hierarchical Auto-Associative Polynomial Reg Net
Cloud computing has become crucial to modern infrastructure, which enables data-intensive applications to thrive in scalable environments. The backbone of cloud computing is the massive data center (DC) servers. The DC networks have unique traffic demands for different tasks, which need to be considered for efficient network traffic (NT) management and enhancing Quality of Service (QoS). Existing solutions fail to consider these unique traffic demands, which result in suboptimal performance in large-scale, data-sensitive environments. To overcome these challenges, a novel Traffic-aware FLow reconfiguration in spine lEaf (TAFLE) system has been proposed in this paper. The proposed model addresses the inefficiencies of QoS-based network traffic allocation by considering the task-level requirements of data-sensitive applications. The proposed solution combines a Deep Packet Analytics (DPA) engine and the Hierarchical Auto-Associative Polynomial Reg Net (HAP-Reg Net) model for reconfiguring the flow based on QoS classes and predicted traffic volumes. Several criteria have been used to evaluate the proposed TAFLE model, such as the f1-score, accuracy, precision, recall, Mean Absolute Percentage Error (MAPE), and Mean Absolute Error (MAE). Experimental findings show that the system significantly improves prediction accuracy and resource allocation, which leads to better overall performance. Experimental results demonstrate that the existing techniques, such as CNN, LSTM, and GRU models, achieve 96.12%, 96.08%, and 95.65% accuracy, while the novel HAP-Reg Net model achieves 96.49% accuracy. Additionally, the proposed TAFLE model has a greater accuracy of 99.2% than previous methods like VAMBIG, AMFQ, and D-LSLP, which have 95.51%, 97.35%, and 98.89% accuracy, respectively.
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