Modeling motor control typically requires stitching together multiple neural and biomechanical modeling frameworks.
So, we created MotorNet — a toolbox to study neural architectures/learning, muscle dynamics, delays, noise, and tasks, all under one roof!
MotorNet is an open-source python toolbox built on Tensorflow that makes training neural networks to control realistic biomechanical models fast and accessible to non-experts, enabling teams to focus on concepts and ideas over implementation.
https://oliviercodol.github.io/MotorNet/build/html/index.html
New, complex tasks can be implemented, trained, and visualized quickly, speeding up the research cycle and providing tools that can be used by other researchers in the community
Thanks to all our fantastic contributors and mentors who supported this work at every stage!
Olivier Codol is the first author (not on mastodon), and thanks to Mehrdad Kashefi, @andpru and @paulgribble
Finally, MotorNet provides a framework that can easily be expanded to more complex control scenarios. The only limit is your imagination!