CS 4756

CS 4756

Course information provided by the Courses of Study 2023-2024.

Advances in machine learning have proved critical for robots that continually interact with humans and their environments. Robots must solve the problem of both perception and decision making, i.e., sense the world using different modalities and act in the world by reasoning over decisions and their consequences. Learning plays a key role in how we model both sensing and acting. This course covers various modern robot learning concepts and how to apply them to solve real-world problems.

When Offered Spring.

Prerequisites/Corequisites Prerequisite: MATH 1920 or MATH 2220, MATH 2940, CS 1110, and CS 4780 or permission of instructor.

Outcomes
  • Learning perception models using probabilistic inference and 2D/3D deep learning.
  • Imitation and interactive no-regret learning that handle distribution shifts, exploration/exploitation.
  • Practical reinforcement learning leveraging both model predictive control and model-free methods.
  • Open challenges in visuomotor skill learning, forecasting and offline reinforcement learning.

View Enrollment Information

Syllabi: none
  •   Regular Academic Session.  Choose one lecture and one project. Combined with: CS 5756

  • 4 Credits GradeNoAud

  •  9843 CS 4756   LEC 001

    • TR Olin Hall 165
    • Jan 22 - May 7, 2024
    • Choudhury, S

  • Instruction Mode: In Person
    Enrollment is restricted to CS students only. All others must add themselves to the waitlist during add/drop in January.

  • 19487 CS 4756   PRJ 601

    • TBA
    • Jan 22 - May 7, 2024
    • Choudhury, S

  • Instruction Mode: In Person