Carnegie Mellon University, USA.
World Journal of Advanced Research and Reviews, 2025, 26(02), 4469-4476
Article DOI: 10.30574/wjarr.2025.26.2.2114
Received on 20 April 2025; revised on 28 May 2025; accepted on 31 May 2025
Edge computing and data minimization present a synergistic framework for addressing key challenges in cloud-native AI systems. This integration enables processing near data sources, reducing latency while enhancing privacy and bandwidth utilization. The framework categorizes integration patterns across hierarchical, mesh-based, hybrid, and distributed collaborative architectures, exploring potential implementations in domains such as healthcare, manufacturing, and smart cities. Despite theoretical advantages, practical implementation faces several challenges, including neural network optimization for resource-constrained environments, balancing data minimization with model accuracy requirements, managing architectural complexity in distributed systems, and addressing standardization gaps in emerging protocols. Potential benefits include bandwidth optimization through local preprocessing, enhanced privacy protection through localized data processing, latency reduction for time-sensitive applications, and improved energy efficiency from decreased data transmission requirements. Future developments in this field will likely be shaped by specialized hardware accelerators, federated learning approaches, standardization efforts for interoperability, and adaptive workload distribution strategies, with significant implications for organizational data governance and regulatory compliance.
Edge computing; Data minimization; Cloud-native AI; Federated learning; Real-time processing
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Chaitra Vatsavayi. Edge computing and data minimization: A synergistic approach for cloud-native AI. World Journal of Advanced Research and Reviews, 2025, 26(2), 4469-4476. Article DOI: https://doi.org/10.30574/wjarr.2025.26.2.2114