Energy-Optimized Scheduling for AIoT Workloads Using TOPSIS
Energy-Optimized Scheduling for AIoT Workloads Using TOPSIS
AIoT workloads demand energy-efficient orchestration across cloud-edge infrastructures, but Kubernetes' default scheduler lacks multi-criteria optimization for heterogeneous environments. This paper presents GreenPod, a TOPSIS-based scheduler optimizing pod placement based on execution time, energy consumption, processing core, memory availability, and resource balance. Tested on a heterogeneous Google Kubernetes cluster, GreenPod improves energy efficiency by up to 39.1% over the default Kubernetes (K8s) scheduler, particularly with energy-centric weighting schemes. Medium complexity workloads showed the highest energy savings, despite slight scheduling latency. GreenPod effectively balances sustainability and performance for AIoT applications.
Preethika Pradeep、Eyhab Al-Masri
自动化技术、自动化技术设备计算技术、计算机技术
Preethika Pradeep,Eyhab Al-Masri.Energy-Optimized Scheduling for AIoT Workloads Using TOPSIS[EB/OL].(2025-06-05)[2025-06-19].https://arxiv.org/abs/2506.04902.点此复制
评论