Keskeiset käsitteet
모바일 엣지 네트워크에서의 효율적인 훈련을 위한 온디맨드 양자화 방법 소개
Tilastot
"Numerical results show that our proposed method significantly reduces system energy consumption and transmitted model size compared to both baseline federated diffusion and fixed quantized federated diffusion methods while effectively maintaining reasonable quality and diversity of generated data."
"The computation time for training diffusion model is expressed by T cmp k = IkDkC fk."
"The energy consumption of client k is estimated by Ecmp k = τkfk 2IkDkC."
Lainaukset
"We propose an on-demand quantized energy-efficient federated diffusion approach for mobile edge networks."
"Our main contributions can be summarized as follows: We design a new and environmentally friendly federated generative diffusion framework that utilizes a dynamic method for parameter quantization and training in mobile edge networks."