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
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.
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