[2603.20711] RoboECC: Multi-Factor-Aware Edge-Cloud Collaborative Deployment for VLA Models
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Abstract page for arXiv paper 2603.20711: RoboECC: Multi-Factor-Aware Edge-Cloud Collaborative Deployment for VLA Models
Computer Science > Distributed, Parallel, and Cluster Computing arXiv:2603.20711 (cs) [Submitted on 21 Mar 2026] Title:RoboECC: Multi-Factor-Aware Edge-Cloud Collaborative Deployment for VLA Models Authors:Zihao Zheng, Hangyu Cao, Jiayu Chen, Sicheng Tian, Chenyue Li, Maoliang Li, Xinhao Sun, Guojie Luo, Xiang Chen View a PDF of the paper titled RoboECC: Multi-Factor-Aware Edge-Cloud Collaborative Deployment for VLA Models, by Zihao Zheng and 8 other authors View PDF HTML (experimental) Abstract:Vision-Language-Action (VLA) models are mainstream in embodied intelligence but face high inference costs. Edge-Cloud Collaborative (ECC) deployment offers an effective fix by easing edge-device computing pressure to meet real-time needs. However, existing ECC frameworks are suboptimal for VLA models due to two challenges: (1) Diverse model structures hinder optimal ECC segmentation point identification; (2) Even if the optimal split point is determined, changes in network bandwidth can cause performance drift. To address these issues, we propose a novel ECC deployment framework for various VLA models, termed RoboECC. Specifically, we propose a model-hardware co-aware segmentation strategy to help find the optimal segmentation point for various VLA models. Moreover, we propose a network-aware deployment adjustment approach to adapt to the network fluctuations for maintaining optimal performance. Experiments demonstrate that RoboECC achieves a speedup of up to 3.28x with only 2.55x~...