Machine Learning in Mobile Edge Computing In recent years,mobile edge computing has attracted a considerable amount of attention from both academia and industry through its many advantages(such as low latency,computation efficiency and privacy)caused by its local model of providing storage and computation resources.In addition,machine learning has become the dominant approach in applications such as industry,healthcare,smart home,and transportation.All of these applications heavily rely on technologies that can be deployed at the network edge.Therefore,it is essential to combine machine learning with mobile edge computing to further promote the proliferation of intelligent edges.In general,machine learning relies on powerful computation and storage resources for superior performance,while mobile edge computing typically provides limited computation resources locally.
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