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Generative Communications (GenCom) proposed as 6G paradigm using large AI models

A new arXiv paper introduces Generative Communications (GenCom), a paradigm for 6G networks where large AI models drive semantic understanding, reasoning, and content generation. Instead of transmitting exact bits, transmitters send minimal sufficient information for receivers to generate the intended content, reshaping communication paradigms.

0 engagement·1 source·Fri, Jul 10, 2026, 08:17 AM
The paper, titled 'Generative Communications: Overview, Technologies, and Trends,' published on arXiv on 2026-07-10, proposes GenCom as a novel paradigm for 6G. It leverages large AI models (LAMs) to embed semantic understanding, reasoning, and content generation into the communication process. Unlike traditional systems focused on accurate bit transmission, GenCom aims to convey only minimal yet sufficient information, with receivers generating the final content. This approach could significantly reduce bandwidth requirements and enable new applications.

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Generative Communications (GenCom)(concept)6G(concept)Large AI Models (LAMs)(concept)

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