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Model-based Contact-rich Manipulation Planning

Deepnote

This repo provides implementation of model-based planners for contact-rich manipulation. The attached Deepnote project includes two notebooks, illustrating two planning algorithms on the Allegro hand dexterous manipulation example:

  • A trajectory optimizer using iterative MPC (iMPC),
  • A sampling-based planner capable of handling contact dynamics constraints.

Details of the planning algorithms can be found in

Our quasidynamic simulator can be found on the tro2023 branch of the quasistatic_simulator repo:

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