🗺️ Methods of AI — Master Index (MOC)

The one note to start from. Every topic → which file holds the deep content, its Lernzettel, its quiz, and the loose atomic notes. Plus an algorithm locator at the bottom: “where do I find AC-3 / A* / Bellman?” answered once and for all.

⚠️ Naming gotcha: the comprehensive Local-Search note is called Search Algorithms, not “Local Search”. And AC-3 lives in the CSP note, not in Search Algorithms — it’s a constraint algorithm, not a search algorithm.


Topic map (Session → files)

Cross-topic resources:


🔎 Algorithm locator — “where do I find …?”

Algorithm / conceptLives inLecture?
BFS, DFS, Uniform Cost, A*Uninformed Search (dedicated note, with definitions + comparison) — also referenced from Search Algorithms❌ prerequisite, not a MoAI session
Hill Climbing (all variants), Simulated Annealing, Beam Search, Genetic AlgorithmSearch Algorithms✅ Session 02
Node Consistency, AC-1, AC-3, PC-2, k-consistencyConstraint Satisfaction Problems✅ Session 03
Forward Checking, MAC, Backtracking, MRV / LCV / Degree, Min-ConflictsConstraint Satisfaction Problems✅ Session 03
RCC-8, Allen’s relationsConstraint Satisfaction Problems + knowledge-representation_30-04-26⚠️ KR, not Session 03
STRIPS, PDDL, frame/qualification/ramification problemplanning-i_30-04-26, STRIPS✅ Session 04
MDP, Bellman equation, Value / Policy Iterationplanning-ii_30-04-26✅ Session 05
TBox/ABox, ALC, OWL, Tableauxknowledge-representation_30-04-26✅ Session 06–07
Fuzzy logic, t-/s-norms, Dempster-Shafervagueness-uncertainty_30-04-26✅ Session 08
Decision Trees, Random Forest, bagging, Information Gainml-i-ii_30-04-26, quiz_decision-trees_18-05-26✅ Session 09–10
SVM, kernel trick, KKT, Perceptronsvm_30-04-26, Support Vector Machines✅ Session 11
Hopfield, MLP, ReLU, backprop, Autoencoderneural-networks-deep-learning_30-04-26✅ Session 12
Transformers, self-attention, BERT/GPTneural-networks-deep-learning_30-04-26, Transformers✅ Session 13

See also

Tags: methods-of-ai moc ai-generated
Superlink: Methods of AI Lecture