A pytorch library that implements differentiable and learnable robot models, which allows users to learn parameters of analytical robot models, and/or propagate gradients through analytical robot computations such as forward kinematics.
Project description
differentiable robot model
Differentiable and learnable robot model. Our differentiable robot model implements computations such as
forward kinematics and inverse dynamics, in a fully differentiable way. We also allow to specify
parameters (kinematics or dynamics parameters), which can then be identified from data (see examples folder).
Currently, our code should work with any kinematic chain (eg any 7-DOF manipulator should work). It's been tested and evaluated particularly for the Kuka iiwa.
Setup
conda create -n robot_model python=3.7
conda activate robot_model
python setup.py develop
Note that the data files might not be found if the setup is not run with develop
(Fixme)
Examples
2 examples scripts show the learning of kinematics parameters
python examples/learn_kinematics_of_iiwa.py
and the learning of dynamics parameters
python examples/learn_dynamics_of_iiwa.py
L4DC paper and experiments
the notebook experiments/l4dc-sim-experiments
shows a set of experiments that are similar to what we presented
in our L4DC paper
@InProceedings{pmlr-v120-sutanto20a,
title = {Encoding Physical Constraints in Differentiable Newton-Euler Algorithm},
author = {Sutanto, Giovanni and Wang, Austin and Lin, Yixin and Mukadam, Mustafa and Sukhatme, Gaurav and Rai, Akshara and Meier, Franziska},
pages = {804--813},
year = {2020},
editor = {Alexandre M. Bayen and Ali Jadbabaie and George Pappas and Pablo A. Parrilo and Benjamin Recht and Claire Tomlin and Melanie Zeilinger},
volume = {120},
series = {Proceedings of Machine Learning Research},
address = {The Cloud}, month = {10--11 Jun},
publisher = {PMLR}, pdf = {http://proceedings.mlr.press/v120/sutanto20a/sutanto20a.pdf},
url = {http://proceedings.mlr.press/v120/sutanto20a.html},
}
Testing
running pytest
in the top-level folder will run our differentiable robot model tests,
which compare computations against pybullet.
License
differentiable-robot-model
is released under the MIT license. See LICENSE for additional details about it.
See also our Terms of Use and Privacy Policy.
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