Design of the Data Center Network Architecture under the Background of Cloud Computing: A Review
DOI:
https://doi.org/10.53469/wjimt.2024.07(04).07Keywords:
Cloud computing, Data center, Network architectureAbstract
This article explores the importance and challenges of data center network architecture design in the context of cloud computing. The traditional data center network architecture has some limitations in meeting the needs of cloud computing, such as network topology bottlenecks and inefficient resource utilization. Moreover, data security and privacy issues, as well as performance and low latency requirements, have become more critical. To address these challenges, new data center network architecture design principles have been proposed, including the application of software-defined networking (SDN), hyperconverged infrastructure, and the integration of security and privacy.
References
Xu, Y., Lin, Y.-S., Zhou, X., & Shan, X. (2024). Utilizing emotion recognition technology to enhance user experience in real-time. Computing and Artificial Intelligence, 2(1), 1388. https://doi.org/10.59400/cai.v2i1.1388
Ji, H., Xu, X., Su, G., Wang, J., & Wang, Y. (2024). Utilizing Machine Learning for Precise Audience Targeting in Data Science and Targeted Advertising. Academic Journal of Science and Technology, 9(2), 215-220.
Ma, Y., Shen, Z., & Shen, J. (2024). Cloud Computing and Hyperscale Data Centers: A Comparative Study of Usage Patterns. Journal of Theory and Practice of Engineering Science, 4(06), 11-19.
Ren, Z. (2024). VGCN: An Enhanced Graph Convolutional Network Model for Text Classification. Journal of Industrial Engineering and Applied Science, 2(4), 110-115.
Jadeja, Y., & Modi, K. (2012, March). Cloud computing-concepts, architecture and challenges. In 2012 international conference on computing, electronics and electrical technologies (ICCEET) (pp. 877-880). IEEE.
Adami, D., Martini, B., Sgambelluri, A., Donatini, L., Gharbaoui, M., Castoldi, P., & Giordano, S. (2017). An SDN orchestrator for cloud data center: System design and experimental evaluation. Transactions on Emerging Telecommunications Technologies, 28(11), e3172.
Xu, J., Jiang, Y., Yuan, B., Li, S., & Song, T. (2023, November). Automated Scoring of Clinical Patient Notes using Advanced NLP and Pseudo Labeling. In 2023 5th International Conference on Artificial Intelligence and Computer Applications (ICAICA) (pp. 384-388). IEEE.
Yao, J., & Yuan, B. (2024). Research on the Application and Optimization Strategies of Deep Learning in Large Language Models. Journal of Theory and Practice of Engineering Science, 4(05), 88-94.
Yuan, B. (2024). Design of an Intelligent Dialogue System Based on Natural Language Processing. Journal of Theory and Practice of Engineering Science, 4(01), 72-78.
Yao, J., & Yuan, B. (2024). Optimization Strategies for Deep Learning Models in Natural Language Processing. Journal of Theory and Practice of Engineering Science, 4(05), 80-87.
Yuan, B., Song, T., & Yao, J. (2024, January). Identification of important nodes in the information propagation network based on the artificial intelligence method. In 2024 4th International Conference on Consumer Electronics and Computer Engineering (ICCECE) (pp. 11-14). IEEE.
Cai, L., Xing, C., & Deng, Y. (2021). Research on digital urban architecture design based on cloud computing data center. Environmental Technology & Innovation, 22, 101543.
Wang, Z. (2024, August). CausalBench: A Comprehensive Benchmark for Evaluating Causal Reasoning Capabilities of Large Language Models. In Proceedings of the 10th SIGHAN Workshop on Chinese Language Processing (SIGHAN-10) (pp. 143-151).
Lin, Z., Wang, Z., Zhu, Y., Li, Z., & Qin, H. (2024). Text Sentiment Detection and Classification Based on Integrated Learning Algorithm. Applied Science and Engineering Journal for Advanced Research, 3(3), 27-33.
Lee, G. (2014). Cloud networking: Understanding cloud-based data center networks. Morgan Kaufmann.
Qi, H., Shiraz, M., Gani, A., Whaiduzzaman, M., & Khan, S. (2014). Sierpinski triangle based data center architecture in cloud computing. The Journal of Supercomputing, 69, 887-907.
Qi, H., Shiraz, M., Liu, J. Y., Gani, A., Abdul Rahman, Z., & Altameem, T. A. (2014). Data center network architecture in cloud computing: review, taxonomy, and open research issues. Journal of Zhejiang University SCIENCE C, 15, 776-793.
Cao, Y., Cao, P., Chen, H., Kochendorfer, K. M., Trotter, A. B., Galanter, W. L., ... & Iyer, R. K. (2022). Predicting ICU admissions for hospitalized COVID-19 patients with a factor graph-based model. In Multimodal AI in healthcare: A paradigm shift in health intelligence (pp. 245-256). Cham: Springer International Publishing.
Yuan, B., & Song, T. (2023, November). Structural Resilience and Connectivity of the IPv6 Internet: An AS-level Topology Examination. In Proceedings of the 4th International Conference on Artificial Intelligence and Computer Engineering (pp. 853-856).
Ye, K., Huang, D., Jiang, X., Chen, H., & Wu, S. (2010, December). Virtual machine based energy-efficient data center architecture for cloud computing: a performance perspective. In 2010 IEEE/ACM Int'l Conference on Green Computing and Communications & Int'l Conference on Cyber, Physical and Social Computing (pp. 171-178). IEEE.
Pengwei, Z., & Qiang, L. (2021). Design of Data Center Network Architecture for Cloud Computing in Forestry Information. Forest Chemicals Review, 52-62.
Xu, X., Yuan, B., Song, T., & Li, S. (2023, November). Curriculum recommendations using transformer base model with infonce loss and language switching method. In 2023 5th International Conference on Artificial Intelligence and Computer Applications (ICAICA) (pp. 389-393). IEEE.
Chen, M., Jin, H., Wen, Y., & Leung, V. C. (2013). Enabling technologies for future data center networking: a primer. Ieee Network, 27(4), 8-15.
Lyu, H., Wang, Z., & Babakhani, A. (2020). A UHF/UWB hybrid RFID tag with a 51-m energy-harvesting sensitivity for remote vital-sign monitoring. IEEE transactions on microwave theory and techniques, 68(11), 4886-4895.