Gong Bo,Zeng Ying,Zhu Shu,et al.Architecture scheme for edge AI agents based on cloud gateway[J].Telecommunications Science,2026,42(05):212-221.DOI: 10.11959/j.issn.1000-0801.DXKX250650.
Architecture scheme for edge AI agents based on cloud gateway
The edge AI agent based on the cloud gateway is an intelligent program or system which integrates edge computing and artificial intelligence technologies. This agent is deployed on edge devices and edge cloud gateways. It possesses the capability of identifying applications based on the cloud gateway
supports adaptive edge strategies
offers high scalability
and has broad application prospects. At the same time
it also can impose certain requirements on its architecture. The architectural solution of the edge AI agent based on the cloud gateway was primarily analyzed
which could be deployed and implemented on a carrier network to realize the adaptive and scalable advantages of the edge AI agent
serving as a reference for providing intelligent agent services in the deployment of next-generation metropolitan area networks.
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