AI RESEARCH
$E^3$-Agent: An Executable and Evolving Agent for Resource Management of Edge Generative Inference
arXiv CS.LG
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ArXi:2605.27428v1 Announce Type: new Edge deployments of generative inference increasingly face two practical realities: per-device per-model performance is often unknown at deployment time, and it is non-stationary due to user-driven semantic events, background load, and device churn. Consequently, a resource manager that is tuned offline under a fixed regime can become brittle and expensive to maintain. This paper presents $E^3$-Agent, an executable and evolving agent for edge artificial intelligence generated content (AIGC) resource management.