Generative Semantic Communication: Architectures, Technologies, and Applications
Jinke Ren, Yaping Sun, Hongyang Du, Weiwen Yuan, Chongjie Wang, Xianda, Wang, Yingbin Zhou, Ziwei Zhu, Fangxin Wang, Shuguang Cui

TL;DR
This paper explores the integration of generative AI models into semantic communication systems, proposing a novel LLM-based generative SemCom architecture that significantly reduces communication overhead and improves retrieval accuracy.
Contribution
It introduces a new generative SemCom system using large language models, shifting the paradigm from information recovery to content generation, and provides practical guidelines for future wireless networks.
Findings
99.98% reduction in communication overhead
53% improvement in retrieval accuracy
Demonstrated effectiveness in point-to-point video retrieval
Abstract
This paper delves into the applications of generative artificial intelligence (GAI) in semantic communication (SemCom) and presents a thorough study. Three popular SemCom systems enabled by classical GAI models are first introduced, including variational autoencoders, generative adversarial networks, and diffusion models. For each system, the fundamental concept of the GAI model, the corresponding SemCom architecture, and the associated literature review of recent efforts are elucidated. Then, a novel generative SemCom system is proposed by incorporating the cutting-edge GAI technology-large language models (LLMs). This system features two LLM-based AI agents at both the transmitter and receiver, serving as "brains" to enable powerful information understanding and content regeneration capabilities, respectively. This innovative design allows the receiver to directly generate the desired…
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Taxonomy
TopicsCognitive Computing and Networks · Semantic Web and Ontologies
MethodsSparse Evolutionary Training · Diffusion
