-
About The Course 0
No items in this section -
Description 1
This course enables learning on different graph traversal techniques (BFS & DFS)
along with enhanced search algorithms like A* algorithm. Genetic algorithms are discussed along with Min-Max algorithms.
Expert systems and ANN are also discussed in detail along with Fuzzy logic in SC.
Along with a pdf with important notes and explanations
Modules Covered:
Introduction to AI / SC
Problem solving algorithms
Knowledge, Reasoning and Planning.
Fuzzy Logic.
Artificial Neural Network.
Expert System.-
How to Pass AISC 18 minLecture2.1
-
-
How to Pass AISC 1
-
How to Pass AISC 18 minLecture3.1
-
-
Introduction to Artificial Intelligence(AI) and Soft Computing 5
-
Agent and Peas Description 07 minLecture4.1
-
Types of Agent 08 minLecture4.2
-
Learning Agent 08 minLecture4.3
-
Learning and Types of Learning 06 minLecture4.4
-
Soft computing vs Hard computing and Supervised learning vs Unsupervised Learning 10 minLecture4.5
-
-
Problem Solving 10
-
BFS ( Breadth First Search ) Algorithm with solved Example 05 minLecture5.1
-
DFS ( Depth First Search ) Algorithm with solved Example 03 minLecture5.2
-
IDFS ( Iterative Depth First Search ) Algorithm with solved Example 03 minLecture5.3
-
GBFS Solved Example 07 minLecture5.4
-
A Star solved Example 13 minLecture5.5
-
Hill Climbing 04 minLecture5.6
-
Min Max Solved Example 06 minLecture5.7
-
Alpha-Beta Pruning Solved Example 13 minLecture5.8
-
Genetic Algorithm 05 minLecture5.9
-
Genetic Algorithm Max one Problem Solved Example 08 minLecture5.10
-
-
Fuzzy Logic 6
-
Introduction to Fuzzy Logic 04 minLecture6.1
-
Fuzzification and De-Fuzzification 06 minLecture6.2
-
Properties and Operation of Crisp and Fuzzy Sets 05 minLecture6.3
-
Crisp and Fuzzy Sets and Relations 11 minLecture6.4
-
Fuzzy Membership Function 08 minLecture6.5
-
Mamdani Fuzzy Model (Fuzzy Controller) with Solved Example 33 minLecture6.6
-
-
Knowledge, Reasoning and Planning 6
-
Propositional Logic (PL) Introduction 07 minLecture7.1
-
PL to CNF conversion With Solved Example 09 minLecture7.2
-
First-Order Logic (FOL) Solved Example 05 minLecture7.3
-
Resolution Tree Sum Part #1 08 minLecture7.4
-
Resolution Tree Sum Part #2 14 minLecture7.5
-
Partial Order Planning with Example 11 minLecture7.6
-
-
Artificial Neural Network 7
-
Introduction to ANN and structure of ANN 06 minLecture8.1
-
Mc-Culloch-Pitts Neural Model 03 minLecture8.2
-
Neural Network Architecture 05 minLecture8.3
-
Perceptron Learning (with solved example) 11 minLecture8.4
-
Activation functions in ANN (Discrete and Continuous) 04 minLecture8.5
-
Backpropagation Network (with solved example) 19 minLecture8.6
-
Self Organizing Maps and KSOMs 10 minLecture8.7
-
-
Expert System 4
-
Introduction to Hybrid System 04 minLecture9.1
-
Neuro-Fuzzy System (Co-Operative and General NFS) 08 minLecture9.2
-
Fuzzy Inference System 07 minLecture9.3
-
Expert System 10 minLecture9.4
-
-
Notes 6
-
INTRODUCTION TO ARTIFICIAL INTELLIGENCE(AI) AND SOFT COMPUTINGLecture10.1
-
PROBLEM SOLVINGLecture10.2
-
KNOWLEDGE, REASONING AND PLANNINGLecture10.3
-
FUZZY LOGICLecture10.4
-
ARTIFICIAL NEURAL NETWORKLecture10.5
-
EXPERT SYSTEMLecture10.6
-
-
Extra Notes 9
-
Introduction to Artificial Intelligence and Soft Computing (Module 1 Notes)Lecture11.1
-
Artificial Intelligence Notes #1Lecture11.2
-
Artificial Intelligence Notes #2Lecture11.3
-
Soft Computing Module 4Lecture11.4
-
Soft Computing Module 5Lecture11.5
-
Soft Computing Handmade NotesLecture11.6
-
Artificial Intelligence and Soft Computing Complete Notes ( Toppers Solution )Lecture11.7
-
Mobile Communication and Computing Notes ( Toppers Solution )Lecture11.8
-
Digital Signal Processing Handmade NotesLecture11.9
-
This content is protected, please login and enroll course to view this content!

