As enterprises expand their cloud strategies, multi-cloud and hybrid-cloud architectures have become critical for data engineering and analytics. This paper presents Azure-based methodologies for enabling federated data processing across AWS, GCP, and on-premise infrastructures. We explore how Azure Synapse Analytics, Azure Arc, and Data Factory facilitate cross-cloud data pipelines, ensuring performance, security, and compliance. Case studies from Manufacturing, Gaming, and Dairy industries illustrate real-world challenges and solutions in multi-cloud data engineering. The proposed federated data processing approach minimizes data movement while maximizing analytical capabilities and reducing operational overhead by 37%. Implementation results demonstrate significant improvements in predictive maintenance (74% reduction in downtime), fraud detection (28% reduction in losses), and demand forecasting (18% improvement in accuracy) across the studied industries.
Urvangkumar Kothari - (Wed,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: