A semantic communication-based workload-adjustable transceiver for wireless AI-generated content (AIGC) delivery
- URL: http://arxiv.org/abs/2503.18874v1
- Date: Mon, 24 Mar 2025 16:49:06 GMT
- Title: A semantic communication-based workload-adjustable transceiver for wireless AI-generated content (AIGC) delivery
- Authors: Runze Cheng, Yao Sun, Lan Zhang, Lei Feng, Lei Zhang, Muhammad Ali Imran,
- Abstract summary: We propose a Resource-aware wOrkload-adjUstable TransceivEr (ROUTE) for AIGC delivery in dynamic wireless networks.<n>Specifically, to relieve the communication resource bottleneck, SemCom is utilized to prioritize semantic information of the generated content.
- Score: 18.321324259528264
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the significant advances in generative AI (GAI) and the proliferation of mobile devices, providing high-quality AI-generated content (AIGC) services via wireless networks is becoming the future direction. However, the primary challenges of AIGC service delivery in wireless networks lie in unstable channels, limited bandwidth resources, and unevenly distributed computational resources. In this paper, we employ semantic communication (SemCom) in diffusion-based GAI models to propose a Resource-aware wOrkload-adjUstable TransceivEr (ROUTE) for AIGC delivery in dynamic wireless networks. Specifically, to relieve the communication resource bottleneck, SemCom is utilized to prioritize semantic information of the generated content. Then, to improve computational resource utilization in both edge and local and reduce AIGC semantic distortion in transmission, modified diffusion-based models are applied to adjust the computing workload and semantic density in cooperative content generation. Simulations verify the superiority of our proposed ROUTE in terms of latency and content quality compared to conventional AIGC approaches.
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