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Hauptverfasser: Zhang, YueMing, Xu, Shuai, Li, Zhengxiong, Zhong, Fangtian, Yang, Xiaokun, Xu, Hailu
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2603.20233
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author Zhang, YueMing
Xu, Shuai
Li, Zhengxiong
Zhong, Fangtian
Yang, Xiaokun
Xu, Hailu
author_facet Zhang, YueMing
Xu, Shuai
Li, Zhengxiong
Zhong, Fangtian
Yang, Xiaokun
Xu, Hailu
contents Federated robotic task execution systems require bridging natural language instructions to distributed robot control while efficiently managing computational resources across heterogeneous edge devices without centralized coordination. Existing approaches face three limitations: rigid hand-coded planners requiring extensive domain engineering, centralized coordination that contradicts federated collaboration as robots scale, and static resource allocation failing to share containers across robots when workloads shift dynamically. We present SwiftBot, a federated task execution platform that integrates LLM-based task decomposition with intelligent container orchestration over a DHT overlay, enabling robots to collaboratively execute tasks without centralized control. SwiftBot achieves 94.3% decomposition accuracy across diverse tasks, reduces task startup latency by 1.5-5.4x and average training latency by 1.4-2.5x, and improves tail latency by 1.2-4.7x under high load through federated warm container migration. Evaluation on multimedia tasks validates that co-designing semantic understanding and federated resource management enables both flexibility and efficiency for robotic task control.
format Preprint
id arxiv_https___arxiv_org_abs_2603_20233
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SwiftBot: A Decentralized Platform for LLM-Powered Federated Robotic Task Execution
Zhang, YueMing
Xu, Shuai
Li, Zhengxiong
Zhong, Fangtian
Yang, Xiaokun
Xu, Hailu
Robotics
Federated robotic task execution systems require bridging natural language instructions to distributed robot control while efficiently managing computational resources across heterogeneous edge devices without centralized coordination. Existing approaches face three limitations: rigid hand-coded planners requiring extensive domain engineering, centralized coordination that contradicts federated collaboration as robots scale, and static resource allocation failing to share containers across robots when workloads shift dynamically. We present SwiftBot, a federated task execution platform that integrates LLM-based task decomposition with intelligent container orchestration over a DHT overlay, enabling robots to collaboratively execute tasks without centralized control. SwiftBot achieves 94.3% decomposition accuracy across diverse tasks, reduces task startup latency by 1.5-5.4x and average training latency by 1.4-2.5x, and improves tail latency by 1.2-4.7x under high load through federated warm container migration. Evaluation on multimedia tasks validates that co-designing semantic understanding and federated resource management enables both flexibility and efficiency for robotic task control.
title SwiftBot: A Decentralized Platform for LLM-Powered Federated Robotic Task Execution
topic Robotics
url https://arxiv.org/abs/2603.20233