This shows you the differences between two versions of the page.
Both sides previous revision Previous revision Next revision | Previous revision Next revision Both sides next revision | ||
start [2017/02/09 14:46] anderson [February] |
start [2017/08/23 08:59] anderson |
||
---|---|---|---|
Line 1: | Line 1: | ||
====== Schedule ====== | ====== Schedule ====== | ||
+ | |||
+ | ===== Announcements ===== | ||
+ | |||
+ | |||
+ | Lecture videos are available from the Canvas site (in the menu on the left) by selecting [[https:// | ||
/* | /* | ||
- | Follow | + | are available at this [[https:// |
- | 115b6-e68b-4318-89ff-d1ecf025c0b9|lecture videos]]. | + | |
*/ | */ | ||
- | ===== Announcements ===== | ||
- | **February 6**: Assignment A2 has been update. | ||
- | **February 6**: Assignment A1 grades are on Canvas. | + | ===== August ===== |
- | Lecture videos are available at this [[https://echo.colostate.edu/ | + | |< 100% 10% 20% 30% 20% 20% >| |
+ | ^ Week ^ Topic ^ Material | ||
+ | | Week 1:\\ Aug 21 - Aug 25 | What is AI? Promises and fears.\\ Python review.\\ Problem-Solving Agents. | ||
+ | | Week 2:\\ Aug 28 - Sept 1 | Problem-solving search and how to measure performance.\\ Iterative deepening and other uninformed search methods. | ||
- | ===== January | + | ===== September |
|< 100% 10% 20% 30% 20% 20% >| | |< 100% 10% 20% 30% 20% 20% >| | ||
^ Week ^ Topic ^ Material | ^ Week ^ Topic ^ Material | ||
- | | Week 1:\\ Jan 17 - Jan 20 | + | | Week 3:\\ Sept 4 - Sept 8 |
- | | Week 2:\\ Jan 23 - Jan 27 | + | | Week 4:\\ Sept 11 - Sept 15 | A* optimality, admissible heuristics, effective branching factor.\\ Local search and optimization. | | Chapter 4 | |
+ | | Week 5:\\ Sept 18 - Sept 22 | Adversarial search. Minimax. Alpha-beta pruning. Negamax, with pruning. | ||
+ | | Week 6:\\ Sept 25 - Sept 29 | Stochastic games. Expectimax. | | Sections 5.5 - 5.6 | | ||
+ | ===== October ===== | ||
- | ===== February | + | |< 100% 10% 20% 30% 20% 20% >| |
+ | ^ Week ^ Topic ^ Material | ||
+ | | Week 7:\\ Oct 2 - Oct 6 | | ||
+ | | Week 8:\\ Oct 9 - Oct 13 | | ||
+ | | Week 9:\\ Oct 16 - Oct 20 | | ||
+ | | Week 10:\\ Oct 23 - Oct 27 | Introduction to Reinforcement Learning. | ||
+ | |||
+ | ===== November | ||
|< 100% 10% 20% 30% 20% 20% >| | |< 100% 10% 20% 30% 20% 20% >| | ||
^ Week ^ Topic ^ Material | ^ Week ^ Topic ^ Material | ||
- | | Week 3:\\ Jan 30 - Feb 3 | Probabilistic Linear Regression. Ridge regression. Data partitioning. On-line, incremental regression. | + | | Week 11:\\ Oct 30 - Nov 3 |
- | | Week 4:\\ Feb 6 - Feb 10 | Regression with fixed nonlinearities. Nonlinear regression with neural networks.\\ Feb 10: Guest Speaker [[https:// | + | | Week 12:\\ Nov 6 - Nov 10 |
- | | Week 5:\\ Feb 13 - Feb 17 | | | + | | Week 13:\\ Nov 13 - Nov 17 |
- | | Week 6:\\ Feb 20 - Feb 24 | | + | | Nov 20 - Nov 24 |
- | | Week 7:\\ Feb 27 - Mar 3 | | + | | Week 14:\\ Nov 27 - Dec 1 |
+ | |||
+ | ===== December ===== | ||
+ | |||
+ | |< 100% 10% 20% 30% 20% 20% >| | ||
+ | ^ Week ^ Topic ^ Material | ||
+ | | Week 15:\\ Dec 4 - Dec 8 | ||
+ | | Finals | ||