Volume 15 , Issue 1 , PP: 238-249, 2024 | Cite this article as | XML | Html | PDF | Full Length Article
Bambang Sujatmiko 1 , Mohammad Ahmar Khan 2 , Ved Prakash Mishra 3 , Bondili N. Sai Bhavya Charitha 4 , Dattatraya Subhash Jadhav 5 , Prerak Sudan 6 *
Doi: https://doi.org/10.54216/FPA.150119
Data management is developing rapidly, and we need solutions that can handle massive volumes of diverse data. Especially for cloud-based data fusion and global network designs. Our research offers a fresh solution. Each difficult formula in this manner improves the system. Standardizing, matching, translating, and merging data from several sources is the fundamental strategy for data integration and management. We found that this alternative is superior to standard data management systems for growing, working fast, consistently, securely, and accurately integrating data, as well as cost-effectiveness. Data's visual presentation enhances the method's advantages and shows its potential. This research proves the technique works and illustrates how it may be utilized to advance the field. Supporting today's sophisticated data systems is a major advance. It's a solid, scalable data management solution that can evolve.
Cloud-Based Data Fusion , Data Integration , Data Management , Distributed Network Architectures , Efficiency , Reliability , Scalability , Security , Visualization
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