background
logo
ArxivPaperAI

Emergency Computing: An Adaptive Collaborative Inference Method Based on Hierarchical Reinforcement Learning

Author:
Weiqi Fu, Lianming Xu, Xin Wu, Li Wang, Aiguo Fei
Keyword:
Computer Science, Artificial Intelligence, Artificial Intelligence (cs.AI), Networking and Internet Architecture (cs.NI)
journal:
--
date:
2024-02-03 00:00:00
Abstract
In achieving effective emergency response, the timely acquisition of environmental information, seamless command data transmission, and prompt decision-making are crucial. This necessitates the establishment of a resilient emergency communication dedicated network, capable of providing communication and sensing services even in the absence of basic infrastructure. In this paper, we propose an Emergency Network with Sensing, Communication, Computation, Caching, and Intelligence (E-SC3I). The framework incorporates mechanisms for emergency computing, caching, integrated communication and sensing, and intelligence empowerment. E-SC3I ensures rapid access to a large user base, reliable data transmission over unstable links, and dynamic network deployment in a changing environment. However, these advantages come at the cost of significant computation overhead. Therefore, we specifically concentrate on emergency computing and propose an adaptive collaborative inference method (ACIM) based on hierarchical reinforcement learning. Experimental results demonstrate our method's ability to achieve rapid inference of AI models with constrained computational and communication resources.
PDF: Emergency Computing: An Adaptive Collaborative Inference Method Based on Hierarchical Reinforcement Learning.pdf
Empowered by ChatGPT