Courses, tutorials, lectures
- Probabilistic Machine Learning (28 lectures, ~1h30m):
- course on the probabilistic ("Bayesian") paradigm for machine learning
- Robotics from UPenn (167 lectures; 1-15 minutes):
- series on general concepts of robotics from University of Pennsylvania
- Missing Semester (11 lectures; ~1h):
- series on what they did not teach you in the lectures (shell, vim, debugging, profiling, git, and others)
- Robotic Systems (draft):
- work in progess on book on robotic systems from Kris Hauser from University of Illinois at Urbana-Champaing
- KSP MFF CUNI: Programatorske kucharky (CZ):
- 18 well-written manuals on introduction to algorithmization
- available also in single pdf file
- Machine Learning cheat sheet (90 pages):
- work in progress