A Diffusion-based DRL Flow Scheduling for AIGC Services in Edge Network

Huachen Jiang,
Zhe Wang,
Xuening Shang,
Zhiwen Yu,
Deyun Gao,

Abstract


With the convergence of computing and networking, Artificial Intelligence Generated Content (AIGC) services are increasingly deployed at the network edge to support low-latency and bandwidth-intensive applications. However, constrained edge bandwidth and dynamically varying traffic demands present significant challenges for efficient flow scheduling. To address these issues, this paper proposes a diffusion-based deep reinforcement learning (DRL) scheduling framework that jointly accounts for flow latency sensitivity and bandwidth constraints. By leveraging the generative exploration capability of the diffusion model into the policy optimization process, the proposed method enhances exploration efficiency and mitigates the risk of convergence to local optima. Extensive experiments demonstrate that the proposed approach significantly reduces average flow latency and improves flow completion rates compared with baseline algorithms, validating its effectiveness for adaptive and intelligent flow scheduling in edge AIGC environments.

Keywords


Artificial Intelligence Generated Content, Flow scheduling, Diffusion model, Deep reinforcement learning

Citation Format:
Huachen Jiang, Zhe Wang, Xuening Shang, Zhiwen Yu, Deyun Gao, "A Diffusion-based DRL Flow Scheduling for AIGC Services in Edge Network," Journal of Internet Technology, vol. 27, no. 3 , pp. 337-345, May. 2026.

Refbacks

  • There are currently no refbacks.





Published by Executive Committee, Taiwan Academic Network, Ministry of Education, Taipei, Taiwan, R.O.C
JIT Editorial Office, Office of Library and Information Services, National Dong Hwa University
No. 1, Sec. 2, Da Hsueh Rd., Shoufeng, Hualien 974301, Taiwan, R.O.C.
Tel: +886-3-931-7314  E-mail: jit.editorial@gmail.com