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Title Optimizing Lightweight Neural Networks For Efficient Mobile Edge Computing
ID_Doc 40838
Authors Liu L.; Xu Z.
Year 2025
Published Scientific Reports, 15, 1
DOI http://dx.doi.org/10.1038/s41598-025-04652-7
Abstract In the era of rapid technological advancement, Mobile Edge Computing (MEC) has become essential for supporting latency-sensitive applications such as internet of things, autonomous driving, and smart cities. However, efficient resource allocation remains a challenge due to the dynamic nature of MEC environments. The primary difficulties stem from fluctuating workloads, varying network conditions, and heterogeneous computational capabilities, which make real-time task offloading and resource management complex. Traditional centralized approaches suffer from high computational overhead and poor scalability, while conventional machine learning-based methods often require extensive labeled data and fail to adapt quickly in dynamic settings. To address these issues, this study proposes an advanced Multi-Agent Reinforcement Learning (MARL) framework combined with a lightweight neural network, LtNet, to optimize task offloading and resource management in MEC. MARL enables decentralized decision-making, allowing each device to learn optimal offloading strategies and adapt dynamically. Compared to prior single-agent or heuristic methods, our approach improves scalability and efficiency while reducing computational complexity. LtNet further enhances performance using H-Swish activation and selective Squeeze-and-Excitation modules, ensuring lower computational overhead. Experimental results demonstrate that the proposed methods achieve a 12–22% reduction in task completion time, a 5–8% decrease in energy consumption, and consistently high resource utilization, making them highly effective in managing dynamic MEC environments. © The Author(s) 2025.
Author Keywords Internet of things; Mobile edge computing; Neural networks; Reinforcement learning; Resource allocation


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