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What are the physical components that make up an AI system? 


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An AI system consists of various physical components. These components include electronic devices such as input/output interfaces, control units, and conversion units . Neuromorphic systems, which are a type of AI system, have basic elements like neurons and synapses . Additionally, an AI control system comprises a sensor, a data processing module, a cloud server, a mobile terminal, a signal conversion module, and an instruction sending module . Cyber-Physical Systems, another type of AI system, involve physical components with heavy demands on workflow management . Comirit Objects, a project in AI research, encourages the general public to contribute by building simple 3D models of everyday objects via an interactive web-site . These physical components play crucial roles in the functioning of AI systems.

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The paper does not explicitly mention the physical components that make up an AI system. The paper focuses on the collection of physical knowledge and its application in intelligent systems.
The paper does not explicitly mention the physical components that make up an AI system. The paper discusses the Cyber-Physical System approach towards Artificial General Intelligence and focuses on the factored version of the event-learning framework ELF (fELF) and its interplay with robust controllers (RCs).
The physical components of the AI system mentioned in the paper include a first electronic device, an input/output interface, a control unit, and a first conversion unit.
The physical components of the AI control system mentioned in the paper include a sensor, a data processing module, a cloud server, a mobile terminal, a signal conversion module, and an instruction sending module.
The paper discusses that the basic physical components of a neuromorphic system, which can be used as the basis for AI technologies, are neurons and synapses.

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