EcoAgent: An Efficient Device-Cloud Collaborative Multi-Agent Framework for Mobile Automation
Yi, Biao, Hu, Xavier, Chen, Yurun, Zhang, Shengyu, Yang, Hongxia, Wu, Fan
–arXiv.org Artificial Intelligence
To tackle increasingly complex tasks, recent research on mobile agents has shifted towards multi-agent collaboration. Current mobile multi-agent systems are primarily deployed in the cloud, leading to high latency and operational costs. A straightforward idea is to deploy a device-cloud collaborative multi-agent system, which is nontrivial, as directly extending existing systems introduces new challenges: (1) reliance on cloud-side verification requires uploading mobile screenshots, compromising user privacy; and (2) open-loop cooperation lacking device-to-cloud feedback, under-utilizing device resources and increasing latency. To overcome these limitations, we propose EcoAgent, a closed-loop device-cloud collaborative multi-agent framework designed for privacy-aware, efficient, and responsive mobile automation. EcoAgent integrates a novel reasoning approach, Dual-ReACT, into the cloud-based Planning Agent, fully exploiting cloud reasoning to compensate for limited on-device capacity, thereby enabling device-side verification and lightweight feedback. Furthermore, the device-based Observation Agent leverages a Pre-understanding Module to summarize screen content into concise textual descriptions, significantly reducing token usage and device-cloud communication overhead while preserving privacy. Experiments on Android-World demonstrate that EcoAgent matches the task success rates of fully cloud-based agents, while reducing resource consumption and response latency.
arXiv.org Artificial Intelligence
Nov-18-2025
- Genre:
- Research Report > New Finding (0.34)
- Workflow (1.00)
- Industry:
- Information Technology (1.00)
- Technology: