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Transformer-Based Scalable Multi-Agent Reinforcement Learning for Joint Resource Optimization in Cloud–Edge–End Video Streaming Systems

Abstract

Cloud-edge-end (CEE) collaboration has demonstrated significant potential in video streaming analysis. However, dynamic wireless environments, lack of incentive mechanisms, and constrained resources (e.g., transmission power, bandwidth, and computing resources) remain the primary bottlenecks for achieving efficient CEE-based video processing. To address these challenges, this paper focuses on a multi-user CEE scenario with dynamic wireless channels and investigates the joint optimization of adaptive incentives, cooperative offloading, and resource allocation. We propose a novel framework, called JROC, to motivate edge devices (EDs) to participate in collaborative computation within CEE, thereby enhancing system utility. Specifically, JROC encompasses a smart contract-based adaptive incentive mechanism and an Adaptive Transformer-based multi-agent reinforcement Learning Algorithm (ATLA). The incentive mechanism leverages blockchain to ensure trustworthy and automated incentive distribution, while ATLA captures long-term dependencies and global state features among agents to guide video tasks in dynamic environments through adaptive compression, cooperative offloading, and resource allocation. Moreover, we discuss key steps for deploying the proposed algorithm in a real CEE prototype, including lightweight actor inference at the terminal side and training at the edge. Experimental results based on a real-world operator dataset show that, compared to existing methods, JROC achieves higher long-term system utility while maintaining favorable scalability, thereby validating its effectiveness in resource-constrained and under-incentivized CEE video streaming scenarios.

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