AA 174B / AA 274B / CS 237B / EE 260B Principles of Robot Autonomy II

Winter 2023

Stanford University

This course provides a deeper understanding of robot autonomy principles, focusing on learning new skills and physical interaction with the environment and humans. It requires familiarity with programming, ROS, and basic robot autonomy techniques.

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Overview

This course teaches advanced principles for endowing mobile autonomous robots with capabilities to autonomously learn new skills and to physically interact with the environment and with humans. Concepts that will be covered in the course are: Reinforcement Learning (RL) and its relationship to optimal control, contact and dynamics models for prehensile and non-prehensile robot manipulation, as well as imitation learning and human intent inference. Students will learn the theoretical foundations for these concepts.

Prerequisites

  • Familiarity with ROS and basic techniques for robot autonomy (e.g., AA274A or equivalent).
  • Familiarity with programming (e.g., CS 106A or equivalent) and Python.
  • College calculus, linear algebra (e.g., CME 100 or equivalent).
  • Basic probability and statistics (e.g., CME 106 or equivalent).

Learning objectives

With this course, students will obtain a fundamental understanding of advanced principles of robot autonomy, including robot learning, physical interaction with the environment, and interaction with humans.

Textbooks and other notes

There is no required textbook.

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Courseware availability

Lecture slides and notes available at home

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Homework available at Homework

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Covered concepts