Today, businesses are experiencing an unprecedented demand to manage high-velocity data streams from a multitude of sources while still maintaining low-latency decision-making capabilities. In this paper, we propose an AI-driven framework that leverages Microsoft's cloud, Microsoft Azure, along with machine learning methods, to make data processing intelligent and real-time. Specifically, we are proposing a system that utilizes Microsoft Azure and Microsoft machine learning services, so it can readily process huge amounts of data from various sources in real time, without requiring batch processing. Our approach uses Azure Stream Analytics and machine learning services to auto-filter, aggregate, and analyze multiple sources of huge volumes of data, and embedded machine learning algorithms were able to detect anomalies, discover patterns, and forecast trends directly in-stream, and act immediately, without waiting for batch processing to finish. The speeds experienced by Azure cloud, along with the functionality of the original data, introduced marked improvements in the operational efficiencies in critical business areas such as healthcare patient monitoring, financial markets surveillance, and industrial IoT applications. In healthcare implementations, enabled auto-monitoring of patient vital signs via wearables and automated alert generation during emergencies. The financial market applications enabled anomaly detection and disclosure in real-time through anomaly detection on trading patterns in real-time, rather than after-the-fact. The intelligent automation systems developed with this framework achieved a huge reduction in human involvement to generate in-stream intelligence and enhanced accuracy in fast-paced environments. The results demonstrate large reductions in latency over traditional methods of processing, at a portion of the costs to organizations, and we have returned the organizations around them speeds to make decisions rapidly and accordingly to a changing environment. Our cloud-native framework offers real-time analytical capabilities that are scalable, affordable, and can be applied universally, and has changed the landscape of decision speed and agility in organizations and contexts even outside the aforementioned industry applications.
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Sudeep Annappa Shanubhog
European Modern Studies Journal
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Sudeep Annappa Shanubhog (Mon,) studied this question.
www.synapsesocial.com/papers/68c183f89b7b07f3a060fc06 — DOI: https://doi.org/10.59573/emsj.9(4).2025.108
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