Edge-Cloud AI for Dynamic Pricing in Automotive Aftermarkets: A Federated Reinforcement Learning Approach for Multi-Tier Ecosystems
World Journal of Advanced Engineering Technology and Sciences, 2025, 15(03), 126–135
Article DOI: 10.30574/wjaets.2025.15.3.0909
Received on 22 April 2025; revised on 30 May 2025; accepted on 02 June 2025
Edge-Cloud AI for Dynamic Pricing in Automotive Aftermarkets presents a novel federated reinforcement learning framework that addresses the unique challenges of pricing optimization in fragmented supply chains. The architecture enables collaborative intelligence across manufacturers, distributors, and retailers without centralizing sensitive data, preserving privacy through differential privacy guarantees while maintaining high pricing accuracy. A modified multi-agent deep deterministic policy gradient algorithm reduces training variance compared to standard federated approaches, while a cloud-based meta-optimizer resolves cross-tier supply-demand mismatches. The system was evaluated in both simulated environments with thousands of SKUs and real industry deployments, demonstrating faster convergence than centralized reinforcement learning despite data fragmentation, robust regulatory compliance, and significant profit margin improvements. The architecture's selective parameter update mechanism substantially reduces cloud computing costs and communication overhead while maintaining model performance, establishing a new standard for privacy-preserving collaborative intelligence in multi-tier retail ecosystems.
Federated Reinforcement Learning; Differential Privacy; Dynamic Pricing; Automotive Aftermarkets; Edge-Cloud Architecture
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Shiva Kumar Bhuram. Edge-Cloud AI for Dynamic Pricing in Automotive Aftermarkets: A Federated Reinforcement Learning Approach for Multi-Tier Ecosystems. World Journal of Advanced Engineering Technology and Sciences, 2025, 15(03), 126–135. Article DOI: https://doi.org/10.30574/wjaets.2025.15.3.0909.