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arxiv: 2509.10481 · v2 · pith:KTAIWR73new · submitted 2025-08-29 · 💻 cs.NI · cs.RO· cs.SY· eess.SP· eess.SY

Synergetic Empowerment: Wireless Communications Meets Embodied Intelligence

classification 💻 cs.NI cs.ROcs.SYeess.SPeess.SY
keywords communicationintelligencewirelessembodiedempowermentsynergeticagentagents
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Wireless communication is evolving into an agent era, where large-scale agents with inherent embodied intelligence are not just users but active participants. The perfect combination of wireless communication and embodied intelligence can achieve a synergetic empowerment and greatly facilitate the development of agent communication. An overview of this synergetic empowerment is presented, framing it as a co-evolutionary process that transforms wireless communication from a simple utility into the digital nervous system of a collective intelligence, while simultaneously elevating isolated agents into a unified superorganism with emergent capabilities far exceeding individual contributions. Moreover, we elaborate how embodied intelligence and wireless communication mutually benefit each other through the lens of the perception-cognition-execution (PCE) loop, revealing a fundamental duality where each PCE stage both challenges network capacity and creates unprecedented opportunities for system-wide optimization. Furthermore, critical open issues and future research directions are identified.

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Cited by 1 Pith paper

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