DATA PROCESSING ALGORITHMS AND CONTROLLER PROGRAMS BASED ON EDGE INTELLIGENCE
Keywords:
Keywords: Edge Intelligence, Data Processing Algorithms, Federated Learning, Edge Controller Program, Internet of Things, Distributed ComputingAbstract
Abstract: The rapid growth of the Internet of Things (IoT) and distributed computing has led to the emergence of Edge Intelligence (EI), a paradigm that integrates artificial intelligence with edge computing infrastructure. Unlike traditional cloud-centric models, EI enables data to be processed closer to the source, reducing latency, bandwidth consumption, and reliance on centralized systems. This paper examines core data processing algorithms tailored for edge environments and discusses the design considerations of controller programs that orchestrate such systems.
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