Texonom
Texonom
/
Engineering
Engineering
/Data Engineering/Artificial Intelligence/Machine Learning/Reinforcement Learning/Language Model RL/
BodyTransformer
Search

BodyTransformer

Creator
Creator
Seonglae Cho
Created
Created
2025 Jan 19 17:58
Editor
Editor
Seonglae Cho
Edited
Edited
2025 Jan 19 18:8
Refs
Refs
IsaacGym
BodyTransformer
carlosferrazza • Updated 2025 Jan 8 0:50
notion image
 
 
 
 
BoT
In recent years, the transformer architecture has become the de facto standard for machine learning algorithms applied to natural language processing and computer vision. Despite notable evidence of successful deployment of this architecture in the context of robot learning, we claim that vanilla transformers do not fully exploit the structure of the robot learning problem. Therefore, we propose Body Transformer (BoT), an architecture that leverages the robot embodiment by providing an inductive bias that guides the learning process. We represent the robot body as a graph of sensors and actuators, and rely on masked attention to pool information throughout the architecture. The resulting architecture outperforms the vanilla transformer, as well as the classical multilayer perceptron, in terms of task completion, scaling properties, and computational efficiency when representing either imitation or reinforcement learning policies.
https://sferrazza.cc/bot_site/
openreview.net
https://openreview.net/pdf/3a536f0b2d899536f4948c0cb43072f15cc663fe.pdf
 
 

Recommendations

Texonom
Texonom
/
Engineering
Engineering
/Data Engineering/Artificial Intelligence/Machine Learning/Reinforcement Learning/Language Model RL/
BodyTransformer
Copyright Seonglae Cho