Global Multidisciplinary Journal

Open Access Peer Review International
Open Access

Graph-Driven Dynamic Pricing and Intelligent Resource Orchestration in Cloud And 5G Ecosystems: A Cost-Optimized, Secure, And Value-Aligned Framework for Private Cloud Transformation

4 Department of Computer Science and Digital Systems, University of Lyon, France

Abstract

The convergence of cloud computing, 5G mobile networks, distributed storage architectures, and artificial intelligence has introduced unprecedented operational complexity into modern digital infrastructures. Private cloud providers, in particular, face escalating pressures to optimize cost structures, enhance scalability, secure distributed workflows, and implement dynamic pricing strategies capable of responding to volatile demand and heterogeneous workloads. This research develops a comprehensive, theoretically grounded framework for graph-driven dynamic pricing and intelligent resource orchestration within cloud and 5G ecosystems. Drawing strictly from established scholarship in caching-as-a-service, shortest path optimization, fuzzy multi-criteria decision-making, big data ingestion, storage tier optimization, blockchain security, microservices migration, DevOps integration, MLOps governance, and AI alignment debates, this article constructs an integrative architecture for cost-optimized and value-aligned cloud transformation. The study synthesizes algorithmic advances in sparse network optimization, graph-based cost modeling, and storage-as-a-service classification with contemporary concerns regarding AI scalability, alignment, and epistemic limits. A descriptive systems methodology is employed to integrate graph-theoretic routing strategies, fuzzy decision frameworks for service selection, rule-based storage optimization, secure blockchain governance, and MLOps-driven deployment pipelines. Results demonstrate that dynamic pricing engines embedded within graph-based cloud infrastructures can reduce transmission costs, optimize storage tiers, enhance data ingestion efficiency, and maintain enterprise security while remaining responsive to ethical and governance constraints. The discussion critically examines systemic risks, alignment challenges, and the philosophical implications of increasingly autonomous optimization systems. The research concludes that private cloud providers can reinvigorate competitiveness by adopting graph-driven economic orchestration models that unify cost efficiency, security, scalability, and human value alignment.

 

Keywords

References

📄 Ghoreishi, S.E., Karamshuk, D., Friderikos, V., Sastry, N., Dohler, M., Aghvami, A.H. (2019). A cost-driven approach to caching-as-a-service in cloud-based 5G mobile networks. IEEE Transactions on Mobile Computing, 19(5), 997–1009. https://doi.org/10.1109/TMC.2019.2904061
📄 Goldberg, A., Radzik, T. (1993). A heuristic improvement of the Bellman-Ford algorithm. Stanford University Technical Report.
📄 Ilieva, G., Yankova, T., Hadjieva, V., et al. (2020). Cloud service selection as a fuzzy multi-criteria problem. TEM Journal, 9(2), 484. https://doi.org/10.18421/TEM92-09
📄 Irfan, M., George, J.P. (2022). A systematic review of challenges, tools, and myths of big data ingestion. In Proceedings of IDSCS 2022, 481–494. https://doi.org/10.1007/978-981-19-2211-4_43
📄 Johnson, D.B. (1977). Efficient algorithms for shortest paths in sparse networks. Journal of the ACM, 24(1), 1–13. https://doi.org/10.1145/321992.321993
📄 Karatas, G. (2024). Data lake: What it is, benefits & challenges in 2024.
📄 Khan, A.Q., Nikolov, N., Matskin, M., Prodan, R., Bussler, C., Roman, D., Soylu, A. (2023a). Towards cloud storage tier optimization with rule-based classification. ESOCC 2023, 205–216. https://doi.org/10.1007/978-3-031-46235-1_13
📄 Khan, A.Q., Nikolov, N., Matskin, M., Prodan, R., Bussler, C., Roman, D., Soylu, A. (2023b). Towards graph-based cloud cost modelling and optimisation. COMPSAC 2023, 1337–1342. https://doi.org/10.1109/COMPSAC57700.2023.00203
📄 Khan, A.Q., Nikolov, N., Matskin, M., Prodan, R., Song, H., Roman, D., Soylu, A. (2022). Smart data placement for big data pipelines: An approach based on the storage-as-a-service model. UCC 2022, 317–320. https://doi.org/10.1109/UCC56403.2022.00056
📄 Ramalingam, B., Tirupati, K.K., Ganipaneni, S., Shrivastav, A., Vashishtha, S., Jain, S. (2020). Digital transformation in PLM: Best practices for manufacturing organizations. International Research Journal of Modernization in Engineering, Technology and Science, 2(11), 872–884.
📄 Tirupathi, R., Joshi, A., Mallela, I.R., Singh, S.P., Jain, S., Goel, O. (2020). Utilizing blockchain for enhanced security in SAP procurement processes. International Research Journal of Modernization in Engineering, Technology and Science, 2(12), 1058.
📄 Dharuman, N.P., Antara, F., Gangu, K., Agarwal, R., Jain, S., Vashishtha, S. DevOps and continuous delivery in cloud based CDN architectures. International Research Journal of Modernization in Engineering, Technology and Science, 2(10), 1083.
📄 Viswanatha Prasad, R., Khan, I., Vadlamani, S., Kumar, L., Goel, P., Singh, S.P. Blockchain applications in enterprise security and scalability. International Journal of General Engineering and Technology, 9(1), 213–234.
📄 Prasad, R.V., Mohan, P., Kumar, P., Singh, N., Goel, P., Goel, O. Microservices transition best practices for breaking down monolithic architectures. International Journal of Applied Mathematics & Statistical Sciences, 9(4), 57–78.
📄 Prasad, R.V., Kumar, A., Dandu, M.M.K., Goel, P., Jain, A., Shrivastav, A. Performance benefits of data warehouses and BI tools in modern enterprises. International Journal of Research and Analytical Reviews, 7(1), 464.
📄 Akisetty, V., Satya, A., Dave, A., Arulkumaran, R., Goel, O., Kumar, L., Jain, A. Implementing MLOps for scalable AI deployments: Best practices and challenges. International Journal of General Engineering and Technology, 9(1), 9–30.
📄 Roose, K. (2025). Powerful AI is coming-we’re not ready. New York Times.
📄 Hsu, J. (2025). AI scientists are sceptical that modern models will lead to AGI. New Scientist.
📄 Zeff, M. (2025). The AI leaders bringing the AGI debate down to Earth. TechCrunch.
📄 Levin, M., Dennett, D.C. (2020). Cognition all the way down. Aeon.
📄 Levin, M., Resnik, D.D. (2025). Technological approach to mind everywhere: A framework for conceptualizing goal-directedness in biology and other domains. OSF Preprints.
📄 Mitchell, M. (2022). What does it mean to align AI with human values? Quanta Magazine.
📄 Giere, R.N., Bickle, J., Mauldin, R.F. (2006). Understanding scientific reasoning. Thomson/Wadsworth.
📄 Brijesh Tripathi. (2025). Dynamic Pricing in the Cloud Era: How Agentic AI Can Reinvigorate Private Cloud Providers. Utilitas Mathematica, 122(2), 1385–1394. Retrieved from https://utilitasmathematica.com/index.php/Index/article/view/2866

How to Cite

Dr. Emilia Laurent. (2025). Graph-Driven Dynamic Pricing and Intelligent Resource Orchestration in Cloud And 5G Ecosystems: A Cost-Optimized, Secure, And Value-Aligned Framework for Private Cloud Transformation. Global Multidisciplinary Journal, 4(12), 140-145. https://www.grpublishing.org/journals/index.php/gmj/article/view/347

Most read articles by the same author(s)

<< < 5 6 7 8 9 10 11 12 13 14 > >> 

Similar Articles

1-10 of 87

You may also start an advanced similarity search for this article.