Bridging the Resource Gap: Deploying Advanced Imitation Learning Models onto Affordable Embedded Platforms
Ge, Haizhou, Wang, Ruixiang, Xu, Zhu-ang, Zhu, Hongrui, Deng, Ruichen, Dong, Yuhang, Pang, Zeyu, Zhou, Guyue, Zhang, Junyu, Shi, Lu
–arXiv.org Artificial Intelligence
Advanced imitation learning with structures like the transformer is increasingly demonstrating its advantages in robotics. However, deploying these large-scale models on embedded platforms remains a major challenge. In this paper, we propose a pipeline that facilitates the migration of advanced imitation learning algorithms to edge devices. The process is achieved via an efficient model compression method and a practical asynchronous parallel method Temporal Ensemble with Dropped Actions (TEDA) that enhances the smoothness of operations. To show the efficiency of the proposed pipeline, large-scale imitation learning models are trained on a server and deployed on an edge device to complete various manipulation tasks.
arXiv.org Artificial Intelligence
Nov-18-2024