SCCI Digital Library and Forum

MIT

S# Lecture Course Institute Instructor Discipline
401
6. Dynamic Optimality II (M-I-T)
Advanced Data Structures (M-I-T) MIT Erik Demaine Applied Sciences
402
7. Memory Hierarchy Models (M-I-T)
Advanced Data Structures (M-I-T) MIT Erik Demaine Applied Sciences
403
8. Cache-Oblivious Structures I (M-I-T)
Advanced Data Structures (M-I-T) MIT Erik Demaine Applied Sciences
404
9. Cache-Oblivious Structures II (M-I-T)
Advanced Data Structures (M-I-T) MIT Erik Demaine Applied Sciences
405
1. Introduction and Scope (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
406
10. Introduction to Learning, Nearest Neighbors (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
407
11. Learning: Identification Trees, Disorder (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
408
12a: Neural Nets (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
409
12b: Deep Neural Nets (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
410
13. Learning: Genetic Algorithms (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
411
14. Learning: Sparse Spaces, Phonology (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
412
15. Learning: Near Misses, Felicity Conditions (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
413
16. Learning: Support Vector Machines (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
414
17. Learning: Boosting (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
415
18. Representations: Classes, Trajectories, Transitions (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
416
19. Architectures: GPS, SOAR, Subsumption, Society of Mind (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
417
2. Reasoning: Goal Trees and Problem Solving (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
418
21. Probabilistic Inference I (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
419
22. Probabilistic Inference II (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
420
23. Model Merging, Cross-Modal Coupling, Course Summary (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
421
3. Reasoning: Goal Trees and Rule-Based Expert Systems (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
422
4. Search: Depth-First, Hill Climbing, Beam (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
423
5. Search: Optimal, Branch and Bound, A* (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
424
6. Search: Games, Minimax, and Alpha-Beta (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences
425
7. Constraints: Interpreting Line Drawings (M-I-T)
Artificaial Intelligence (M-I-T) MIT Prof. Mark Seifter Applied Sciences