CMSACOR13T: Artificial Intelligence Theory: 60 Lectures 1. Introduction (06 Lectures) Introduction to Artificial Intelligence, Background and Applications, Turing Test and Rational Agent approaches to AI, Introduction to Intelligent Agents, their structure, behavior and environment.
2. Problem Solving and Searching Techniques (20 Lectures) Problem Characteristics, Production Systems, Control Strategies, Breadth First Search, Depth First Search, Hill climbing and its Variations, Heuristics Search Techniques: Best First Search, A* algorithm, Constraint Satisfaction Problem, Means-End Analysis, Introduction to Game Playing, Min-Max and Alpha-Beta pruning algorithms.
3. Knowledge Representation (20 Lectures) Introduction to First Order Predicate Logic, Resolution Principle, Unification, Semantic Nets, Conceptual Dependencies, Frames, and Scripts, Production Rules, Conceptual Graphs. Programming in Logic (PROLOG)
4. Dealing with Uncertainty and Inconsistencies (08 Lectures) Truth Maintenance System, Default Reasoning, Probabilistic Reasoning, Bayesian Probabilistic Inference, Possible World Representations.
5. Understanding Natural Languages (06 Lectures) Parsing Techniques, Context-Free and Transformational Grammars, Recursive and Augmented Transition Nets.
2. Problem Solving and Searching Techniques (20 Lectures) Problem Characteristics, Production Systems, Control Strategies, Breadth First Search, Depth First Search, Hill climbing and its Variations, Heuristics Search Techniques: Best First Search, A* algorithm, Constraint Satisfaction Problem, Means-End Analysis, Introduction to Game Playing, Min-Max and Alpha-Beta pruning algorithms.
3. Knowledge Representation (20 Lectures) Introduction to First Order Predicate Logic, Resolution Principle, Unification, Semantic Nets, Conceptual Dependencies, Frames, and Scripts, Production Rules, Conceptual Graphs. Programming in Logic (PROLOG)
4. Dealing with Uncertainty and Inconsistencies (08 Lectures) Truth Maintenance System, Default Reasoning, Probabilistic Reasoning, Bayesian Probabilistic Inference, Possible World Representations.
5. Understanding Natural Languages (06 Lectures) Parsing Techniques, Context-Free and Transformational Grammars, Recursive and Augmented Transition Nets.
No comments:
Post a Comment