Load Balancing in DCN Servers Through Software Defined Network Machine Learning

被引:0
作者
Beissenova, Gulbakhram [1 ,2 ]
Zhidebayeva, Aziza [2 ]
Kopzhassarova, Zhadyra [1 ]
Kozhabekova, Pernekul [1 ]
Myrzakhmetova, Bayan [3 ]
Kerimbekov, Mukhtar [2 ]
Ussipbekova, Dinara [4 ]
Yeshenkozhaev, Nabi [4 ]
机构
[1] M Auezov South Kazakhstan Univ, Shymkent, Kazakhstan
[2] Univ Friendship Peoples Academician A Kuatbekov, Shymkent, Kazakhstan
[3] South Kazakhstan Pedag Univ, Shymkent, Kazakhstan
[4] Kazakh Natl Med Univ, Alma Ata, Kazakhstan
关键词
Software defined network; DCN; machine learning; deep learning; server; load balancing; software;
D O I
10.14569/IJACSA.2024.0150254
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
In this research paper, we delve into the innovative realm of optimizing load balancing in Data Center Networks (DCNs) by leveraging the capabilities of Software-Defined Networking (SDN) and machine learning algorithms. Traditional DCN architectures face significant challenges in handling unpredictable traffic patterns, leading to bottlenecks, network congestion, and suboptimal utilization of resources. Our study proposes a novel framework that integrates the flexibility and programmability of SDN with the predictive and analytical prowess of machine learning. We employed a multi-layered methodology, initially constructing a virtualized environment to simulate real-world DCN traffic scenarios, followed by the implementation of SDN controllers to instill adaptiveness and programmability. Subsequently, we integrated machine learning models, training them on a substantial dataset encompassing diverse traffic patterns and network conditions. The crux of our approach was the application of these trained models to anticipate network congestion and dynamically adjust traffic flows, ensuring efficient load distribution among servers. A comparative analysis was conducted against prevailing load balancing methods, revealing our model's superiority in terms of latency reduction, enhanced throughput, and improved resource allocation. Furthermore, our research illuminates the potential for machine learning's self-learning mechanism to foresee and adapt to future network states or exigencies, marking a significant advancement from reactive to proactive network management. This convergence of SDN and machine learning, as demonstrated, ushers in a new era of intelligent, scalable, and highly reliable DCNs, demanding further exploration and investment for future-ready data centers.
引用
收藏
页码:509 / 519
页数:11
相关论文
共 63 条
[1]  
Abadi O. M. H., 2023, Academic Journal of Research and Scientific Publishing|, V4
[2]  
Abdollahi S., Concurrency and Computation: Practice and Experience
[3]   RETRACTED: An Investigation in Analyzing the Food Quality Well-Being for Lung Cancer Using Blockchain through CNN (Retracted Article) [J].
Aboamer, Mohamed Abdelkader ;
Sikkandar, Mohamed Yacin ;
Gupta, Sachin ;
Vives, Luis ;
Joshi, Kapil ;
Omarov, Batyrkhan ;
Singh, Sitesh Kumar .
JOURNAL OF FOOD QUALITY, 2022, 2022
[4]  
Ahmed M., 2021, TechRxiv Prepr
[5]   A resource allocation deep active learning based on load balancer for network intrusion detection in SDN sensors [J].
Ahmed, Usman ;
Lin, Jerry Chun-Wei ;
Srivastava, Gautam .
COMPUTER COMMUNICATIONS, 2022, 184 :56-63
[6]   Deep Active Learning Intrusion Detection and Load Balancing in Software-Defined Vehicular Networks [J].
Ahmed, Usman ;
Lin, Jerry Chun-Wei ;
Srivastava, Gautam ;
Yun, Unil ;
Singh, Amit Kumar .
IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2023, 24 (01) :953-961
[7]   A Reinforcement Learning-Based Routing for Real-Time Multimedia Traffic Transmission over Software-Defined Networking [J].
Al Jameel, Mohammed ;
Kanakis, Triantafyllos ;
Turner, Scott ;
Al-Sherbaz, Ali ;
Bhaya, Wesam S. .
ELECTRONICS, 2022, 11 (15)
[8]   SDN-Based Routing Framework for Elephant and Mice Flows Using Unsupervised Machine Learning [J].
Al-Saadi, Muna ;
Khan, Asiya ;
Kelefouras, Vasilios ;
Walker, David J. ;
Al-Saadi, Bushra .
NETWORK, 2023, 3 (01) :218-238
[9]   Efficient bandwidth allocation in SDN-based peer-to-peer data streaming using machine learning algorithm [J].
Aldabbas, Hamza .
JOURNAL OF SUPERCOMPUTING, 2023, 79 (06) :6802-6824
[10]   ESCALB: An effective slave controller allocation-based load balancing scheme for multi-domain SDN-enabled-IoT networks [J].
Ali, Jehad ;
Jhaveri, Rutvij H. ;
Alswailim, Mohannad ;
Roh, Byeong-hee .
JOURNAL OF KING SAUD UNIVERSITY-COMPUTER AND INFORMATION SCIENCES, 2023, 35 (06)