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    <title>Edge-Computing on Tenu Tech Brief</title>
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      <title>A Risk-Aware UAV-Edge Service Framework for Wildfire Monitoring and Emergency Response</title>
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      <description>• Integrated UAV‑edge framework co‑optimizes route, fleet size, and edge service for wildfire monitoring. • Fire‑history‑weighted clustering prioritizes high‑risk zones, improving</description>
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      <title>Carbon-aware decentralized dynamic task offloading in MIMO-MEC networks via multi-agent reinforcement learning</title>
      <link>https://cluster-site.onrender.com/posts/carbon-aware-decentralized-dynamic-task-offloading-in-mimo-mec-networks-via-multi-agent-reinforcement-learning/</link>
      <pubDate>Tue, 24 Feb 2026 05:00:00 +0000</pubDate>
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      <description>• CADDTO-PPO introduces carbon‑aware decentralized task offloading for MIMO‑MEC networks in. • Uses multi‑agent proximal policy optimization to jointly minimize carbon emissions,</description>
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      <title>EMS-FL: Federated Tuning of Mixture-of-Experts in Satellite-Terrestrial Networks via Expert-Driven Model Splitting</title>
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      <description>• Combines Mixture‑of‑Experts (MoE) with satellite‑terrestrial networks (STN) to overcome data scarcity and compute limits in federated learning. • Introduces EMS‑FL, an expert‑dri</description>
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      <title>Federated Learning-Assisted Optimization of Mobile Transmission with Digital Twins</title>
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      <guid>https://cluster-site.onrender.com/posts/federated-learning-assisted-optimization-of-mobile-transmission-with-digital-twins/</guid>
      <description>• Federated learning framework enables mobile transmission scheduling while preserving device privacy. • Three energy‑constrained problems tackled: minimize transmission time, fixe</description>
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