Intelligent Data Analytics on Cloud Infrastructure:Real-Time Insights and Managed Service Models

Volume: 12 | Issue: 1 | Year 2026 | Subscription
International Journal of Distributed Computing and Technology
Received Date: 01/06/2026
Acceptance Date: 01/12/2026
Published On: 2026-02-02
First Page: 36
Last Page: 46

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By: Shamsher Singh.

System Administrator, Department of Computer Science, S.R.P.A. Adarsh Bhartiya College, Pathankot, Punjab, India

Abstract

This paper examines the integration of advanced data analytics and machine learning within modern cloud infrastructure, highlighting how organizations can transform large volumes of unstructured data into actionable business insights that drive competitive advantage. Cloud platforms leverage scalability and elasticity to efficiently process and analyze massive datasets in real time, allowing enterprises to identify hidden patterns, detect operational anomalies early, and generate accurate forecasts of future outcomes. A key factor enabling this transformation is the widespread adoption of managed cloud service models – Infrastructure as a Service (IaaS), Platform as a Service (PaaS), and Software  as a Service (SaaS) – which provide access to enterprise-grade analytics tools without the high capital and operational costs of on-premises systems. These services facilitate rapid deployment, testing, and operationalization of predictive and prescriptive models across organizational units. The combination of cloud-native architectures, containerized workflow management, and API-first platform design has reshaped how organizations extract value from data. Modern analytics techniques, including supervised learning for prediction, unsupervised clustering for pattern discovery, ensemble models for improved accuracy, and deep neural networks for complex data patterns, are increasingly applied across industries. Applications range from fraud detection in finance, customer behavior analysis and segmentation, supply chain optimization, and personalized e-commerce recommendations, to healthcare analytics, risk management in financial services, and IoT data processing. Despite these advances, organizations face ongoing challenges in scaling cloud-based analytics. These include maintaining data governance and quality, ensuring regulatory compliance with privacy frameworks, implementing privacy-preserving analytics, and optimizing costs in distributed cloud environments. Emerging technologies, such as serverless analytics, federated machine learning, real-time data streaming, and GPU-accelerated computation, are expanding the frontiers of what cloud analytics can achieve. By combining intelligent data analytics with cloud infrastructure, organizations can operationalize data-driven decision-making at scale, accelerate innovation, and respond more effectively to market dynamics. Cloud-enabled analytics not only improves operational efficiency but also empowers organizations to anticipate trends, optimize strategies, and maintain a competitive edge in increasingly data-driven industries.

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Citation:

How to cite this article: Shamsher Singh Intelligent Data Analytics on Cloud Infrastructure:Real-Time Insights and Managed Service Models. International Journal of Distributed Computing and Technology. 2026; 12(1): 36-46p.

How to cite this URL: Shamsher Singh, Intelligent Data Analytics on Cloud Infrastructure:Real-Time Insights and Managed Service Models. International Journal of Distributed Computing and Technology. 2026; 12(1): 36-46p. Available from:https://journalspub.com/publication/ijdct/article=26290

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