Open Access

AI-Driven Cloud-Native Intelligence for Cost-Efficient, Secure, and Domain-Specific Decision Systems: An Integrative Research Study Across Hybrid Cloud Optimization, Healthcare Analytics, Edge-IoT, and E-Learning

4 School of Computing and Digital Systems, University of Leeds, United Kingdom

Abstract

This article develops a publication-ready integrative research study based strictly on the supplied references and examines the emergence of artificial intelligence as a unifying operational layer across cloud optimization, healthcare analytics, edge-IoT systems, cybersecurity, and e-learning prediction. Although the references span multiple application areas, they converge around a common research problem: how intelligent methods can improve cost efficiency, scalability, resilience, security, and decision quality in cloud-centered digital infrastructures. Recent work on cloud computing emphasizes machine learning-based cloud cost optimization, hybrid and multi-cloud scalability, predictive analytics for cloud transformation, cloud migration for compliance and efficiency, and AI-enabled automation of cost management functions such as reporting, alerting, and recommendation generation (Gandhi & Jain, 2025; George, 2022; Somanathan, 2024; Jakku, 2025). Parallel studies show that the same intelligent foundations are increasingly being deployed in domain-sensitive systems, including lung cancer analytics, stroke classification, breast cancer and diabetes prediction, atrial fibrillation detection, voice pathology monitoring, student performance prediction, handwriting recognition, and edge-IoT resource allocation (Allam et al., 2023; Shariff et al., 2025; Karthika et al., 2025; Tirumanadham et al., 2024; Shreedhar et al., 2025).

Using a qualitative integrative methodology, this article synthesizes conceptual and application-level insights from the supplied literature. Four principal findings emerge. First, AI in cloud ecosystems is shifting from auxiliary analytics to active operational governance. Second, cost optimization and performance enhancement are increasingly achieved through predictive, automated, and resource-aware decision frameworks rather than static provisioning rules. Third, the application references demonstrate that cloud intelligence is gaining value not merely through generic scalability, but through domain-specific adaptation in healthcare, education, security, and edge systems. Fourth, the literature suggests that future cloud-native intelligence must combine optimization, explainability, cybersecurity awareness, and federated or distributed design to remain trustworthy at scale. The article concludes that the next phase of cloud computing research will be defined by how effectively AI moves from isolated algorithmic success toward integrated, resilient, and context-sensitive digital ecosystems.

Keywords

References

Akinbolaji, T. J. (2024). Novel strategies for cost optimization and performance.
Akinbolaji, T. J. (2024). Novel strategies for cost optimization and performance enhancement in cloud-based systems. International Journal of Modern Science and Research Technology.
Allam, B., Ramesh, N., & Tirumanadham, N. S. K. M. K. (2023). ELM-based stroke classification using wavelet and empirical mode decomposition techniques. Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization, 11(7). https://doi.org/10.1080/21681163.2023.2250872
Anbalagan, K. (2024). AI in cloud computing: Enhancing services and performance. International Journal of Computer Engineering and Technology, 15(4), 622–635.
George, J. (2022). Optimizing hybrid and multi-cloud architectures for real-time data streaming and analytics: Strategies for scalability and integration. World Journal of Advanced Engineering Technology and Sciences, 7(1), 10–30574.
Gandhi, H., & Jain, A. (2025). Cloud cost optimization strategies using machine learning algorithms.
Immanuel, T. B., Muthukumar, P., Suganyadevi, M. V., Padmasuresh, L., Babu, T. S., & Mahmud, D. P. (2025). Detection of plastic waste in ocean using machine learning based Bi-LSTM with triplet attention mechanism. In 2025 8th International Conference on Circuit, Power & Computing Technologies (ICCPCT) (pp. 89–94). IEEE. https://doi.org/10.1109/ICCPCT65132.2025.11176784
Jakku, P. C. (2025, March 29). AI-enabled cloud cost management platforms: Automating cost reports, alerts, and optimization recommendations.
Karthika, R. A., A, R., Muthukumar, P., & John, S. P. (2024). Real-time detection of physical altercations using AI frameworks. In 2024 International Conference on Advancement in Renewable Energy and Intelligent Systems (AREIS) (pp. 1–6). IEEE. https://doi.org/10.1109/AREIS62559.2024.10893639
Karthika, R. A., Rohini, A., Muthukumar, P., Mahmud, P., & Babu, T. S. (2025). A resource efficient machine learning pipeline to detect atrial fibrillation. In 2025 8th International Conference on Circuit, Power & Computing Technologies (ICCPCT) (pp. 95–100). IEEE. https://doi.org/10.1109/ICCPCT65132.2025.11176455
Kodete, C. S., Kandunuri, R., Konda, S., Sripada, L., Tirumanadham, N. S. K. M. K., & Shariff, V. (2025). Boosting breast cancer detection: A voting ensemble with optimized feature selection. AIP Conference Proceedings, 3298, 020030. https://doi.org/10.1063/5.0279361
Kodete, C. S., Vijaya Saradhi, D., Krishna Suri, V., Bharat Siva Varma, P., Tirumanadham, N. S. K. M. K., & Shariff, V. (2024). Boosting lung cancer prediction accuracy through advanced data processing and machine learning models. In 2024 4th International Conference on Sustainable Expert Systems (ICSES) (pp. 1107–1114). IEEE. https://doi.org/10.1109/ICSES63445.2024.10763338
Kumar, T. N. S. K. M., Jaladhi, U., Rudraraju, S. K. C., Shariff, V., Reddy, V. R., & Vardhini, P. A. H. (2022). A comparison between shortest path algorithms using runtime analysis and negative edges in computer networks. In 2022 International Mobile and Embedded Technology Conference (MECON) (pp. 348–351). IEEE. https://doi.org/10.1109/MECON53876.2022.9752035
Kumar, R., Thakur, N., Saeed, A., & Jaiswal, C. (2024). Enhancing data analytics using AI-driven approaches in cloud computing environments. Software Engineering, 11(2), 11–18.
Muthukumar, P., A, P., Karthika, R. A., Eswaramoorthy, K., Rani, V. U., & K, R. V. (2024). Handwritten text recognition from image using LSTM integrated with pixel shifting optimization algorithm. In 2024 International Conference on Advancement in Renewable Energy and Intelligent Systems (AREIS) (pp. 1–6). IEEE. https://doi.org/10.1109/AREIS62559.2024.10893651
Naidu, U. G., J, T., M, V. T. R. P. K., Shaik, R., Penubaka, K. K. R., & R, M. D. (2025). Optimizing multi-hop wireless networks: Cross-layer approaches for secure and efficient IoT communication. In 2025 7th International Conference on Inventive Material Science and Applications (ICIMA) (pp. 865–869). IEEE. https://doi.org/10.1109/ICIMA64861.2025.11074046
Olaoye, G. (2025). The impact of AI on cloud cost optimization and resource management. SSRN.
Rakshana, M., Umamaheswari, S., & Muthukumar, P. (2025). The impact of artificial intelligence on engineering applications. In 2025 8th International Conference on Circuit, Power & Computing Technologies (ICCPCT) (pp. 2040–2044). IEEE. https://doi.org/10.1109/ICCPCT65132.2025.11176549
Ramamoorthi, V. (2025). Advances in AI and ML for cloud computing: A review of algorithms, challenges, and innovations. International Journal of Scientific Research in Science and Technology, 12(5), 60–73.
S, S., Kodete, C. S., Velidi, S., Bhyrapuneni, S., Satukumati, S. B., & Shariff, V. (2024). Revolutionizing healthcare: A comprehensive framework for personalized IoT and cloud computing-driven healthcare services with smart biometric identity management. Journal of Intelligent Systems and Internet of Things, 13(1), 31–45. https://doi.org/10.54216/jisiot.130103
Selvam, M., & Kishan, B. S. (2025). AI-powered cloud computing for performance optimization and scalability in distributed systems. In Proceedings of the 2025 International Conference on Computing for Sustainability and Intelligent Future (COMP-SIF) (pp. 1–6).
Shaik, R., Mandala, S. K., Aluri, Y. K., Kumar, V. P., Supriya, P. L., & Gurrapu, N. (2025). Wireless energy harvesting and spectrum sharing in cognitive radio networks. In 2025 6th International Conference on Mobile Computing and Sustainable Informatics (ICMCSI) (pp. 67–72). IEEE. https://doi.org/10.1109/ICMCSI64620.2025.10883498
Shariff, V., Paritala, C., & Ankala, K. M. (2025). Federated tree-based ensembles with SHAP explainability and integrated feature selection for secure lung cancer health analytics. Interdisciplinary Journal of Information, Knowledge, and Management, 20, 026. https://doi.org/10.28945/5613
Shreedhar, B., Sasikala, C., Ram Pavan Kumar, V. T., Shaik, R., Muqthadar Ali, S., & Balagoni, Y. (2025). Intelligent resource allocation for Edge-IoT: Enhancing QoE with deep reinforcement learning. In 2025 International Conference on Multi-Agent Systems for Collaborative Intelligence (ICMSCI) (pp. 473–479). IEEE. https://doi.org/10.1109/ICMSCI62561.2025.10894101
Somanathan, S. (2024). AI-powered decision-making in cloud transformation: Enhancing scalability and resilience through predictive analytics. Nanotechnology Perceptions, 20(Suppl. 1).
Swamy, B. N., Alluri, L., Gorintla, S., Kumar, N. V. S. P., Avani, V. S., & Shariff, V. (2025). A smart and secure cloud framework for automated healthcare monitoring through voice pathology detection. Journal of Theoretical and Applied Information Technology, 103(17), 6930–6944.
Talati, D. (2025). Scalable AI and data processing strategies for hybrid cloud environments.
Thati, Balamuralikrishna, Koppolu, Ravi Kiran, Kumar, D. Lokesh Sai, Nagamani, Tenali, Muthukumar, P., & Lalitha, S. (2025). An empirical investigation on the origins and effects of cybersecurity culture in IT organizations. Journal of Cybersecurity & Information Management, 16(1), 68. https://doi.org/10.54216/JCIM.160106
Thummala, V. R., & Singh, P. (2024). Developing cloud migration strategies for cost-efficiency and compliance. International Journal of Multidisciplinary Innovation and Research Methodology. ISSN 2960-2068.
Thuraka, B., Pasupuleti, V., Kodete, C. S., Chigurupati, R. S., Tirumanadham, N. S. K. M. K., & Shariff, V. (2024). Enhancing diabetes prediction using hybrid feature selection and ensemble learning with AdaBoost. In 2024 8th International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud) (pp. 1132–1139). IEEE. https://doi.org/10.1109/I-SMAC61858.2024.10714776
Tirumanadham, N. K. M. K., S, T., & G, V. (2025). Accurate and explainable AI in student performance prediction using e-learning classification. In 2025 International Conference on Next Generation Information System Engineering (NGISE) (pp. 1–7). IEEE. https://doi.org/10.1109/NGISE64126.2025.11085384
Tirumanadham, N. K. M. K., S, T., & G, V. (2025). Enhancing student performance prediction using e-learning through multimodal data integration and machine learning techniques. In 2025 4th International Conference on Sentiment Analysis and Deep Learning (ICSADL) (pp. 933–940). IEEE. https://doi.org/10.1109/ICSADL65848.2025.10933211
Tirumanadham, N. S. K. M. K., S, T., & M, S. (2024). Improving predictive performance in e-learning through hybrid 2-tier feature selection and hyper parameter-optimized 3-tier ensemble modeling. International Journal of Information Technology, 16(8), 5429–5456. https://doi.org/10.1007/s41870-024-02038-y
Tirumanadham, N. S. K. M. K., et al. (2025). Boosting student performance prediction in e-learning: A hybrid feature selection and multi-tier ensemble modelling framework with federated learning. Journal of Theoretical and Applied Information Technology, 103(5).
Ullah, A. (2025). AI driven optimization of resource allocation and cost efficiency in cloud computing environments.
Vahiduddin, S., Chiranjeevi, P., & Krishna Mohan, A. (2023). An analysis on advances in lung cancer diagnosis with medical imaging and deep learning techniques: Challenges and opportunities. Journal of Theoretical and Applied Information Technology, 101(17).
Vasuki Shariff, V., Paritala, C., & Ankala, K. M. (2025). Federated tree-based ensembles with SHAP explainability and integrated feature selection for secure lung cancer health analytics. Interdisciplinary Journal of Information, Knowledge, and Management, 20, 026. https://doi.org/10.28945/5613

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