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UniCon: A Unified System for Efficient Robot Learning Transfers

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Deploying learning-based controllers across heterogeneous robots is challenging due to platform differences, inconsistent interfaces, and inefficient middleware. To address these issues, we present UniCon, a lightweight framework that standardizes states, control flow, and instrumentation across platforms. It decomposes workflows into execution graphs with reusable components, separating system states from control logic to enable plug-and-play deployment across various robot morphologies. Unlike traditional middleware, it prioritizes efficiency through batched, vectorized data flow, minimizing communication overhead and improving inference latency. This modular, data-oriented approach enables seamless sim-to-real transfer with minimal re-engineering. We demonstrate that UniCon reduces code redundancy when transferring workflows and achieves higher inference efficiency compared to ROS-based systems. Deployed on over 12 robot models from 7 manufacturers, it has been successfully integrated into ongoing research projects, proving its effectiveness in real-world scenarios.

Yunfeng Lin, Li Xu, Yong Yu, Jiangmiao Pang, Weinan Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Framework Operation LatencyUnitree H1 Robot Hardware Benchmarking 1.0
Send Latency (ms)1.90e+4
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