Course Information
- Available
- *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Course Overview
Learn the Foundations and become an AI expert
Introduction to Artificial Intelligence- The fundamental concepts, principles and practices.: Intelligent Agents – Agents and environments – PEAS Performance Parameters, Environment, Actuators, Sensors. Good behavior – The nature of environments – The structure of agents - Problem-Solving agents – How to define a problem? Problem Definition – State Space, Initial State, Goal State, Goal Test, Transition Model, Actions, Sensors. Acting under uncertainty – The 8-Puzzle problem , The 8-Queens problem. The Wumpus World problem-Partially Observable Space - Inference using full joint distributions; –Independence; Bayes’ rule and its use; –The Wumpus world revisited. Searching Techniques: Tree Search Algorithm and Graph Search Algorithm, Redundant path, Loopy Path - Problem-Solving Agents, Well-defined problems and solutions, Formulating problems, Real-world problems. Uninformed Search Strategies, Breadth-first search, Start from Initial State, Choose the data structures Frontier and Explored set. Uniform-cost search with Priority Queue with the cost function, Depth-first search, Last In First Out Queue - Depth-limited search, Iterative deepening depth-first search, Bidirectional search, Informed (Heuristic) Search Strategies, Greedy best-first search, A* search: Minimizing the total estimated solution cost, Heuristic Functions. The effect of heuristic accuracy on performance. Beyond Classical Search, Local Search Algorithms, Hill Climbing Algorithm, Stochastic Hill Climbing Algorithm. Optimization Problems, Local Search in Continuous Spaces, Local Beam Search, Genetic Algorithm, Example of Gentic Algorithm for 8-Queens problem.
Course Content
- 10 section(s)
- 45 lecture(s)
- Section 1 Introduction to Artificial Intelligence
- Section 2 Introduction - Intelligent Agents
- Section 3 Structure of an Intelligent Agents
- Section 4 Problem Solving Agents
- Section 5 Agents acting under uncertainity - Bayes Theorem
- Section 6 Uninformed Intelligent Search Strategies - Breadth First Search
- Section 7 Uninformed Search Techniques - Uniform Cost Search
- Section 8 Uninformed Search Strategies - Depth First Search
- Section 9 Informed Search Strategies - Heuristic Functions
- Section 10 Local Search Strategies
What You’ll Learn
- Artificial Intelligence Concepts, Principles a nd practices
- Introduction: Intelligent Agents – Agents and environments - Good behaviour – The nature of Agents - Intelligent Agents, Problem Solving Agents,
- Acting under uncertainty – Inference using full joint distributions
- –Independence
- Bayes’ rule and its use
- –The Wumpus world revisited
- Searching Techniques: Problem-Solving Agents, Well-defined problems and solutions, Formulating problems, Real- world problems.
- Uninformed Search Strategies, Breadth-first search, Uniform-cost search, Depth-first search, Depth-limited search, Iterative deepening depth-first search,
- Bidirectional search, Informed (Heuristic) Search Strategies, Greedy best-first search, A* search: Minimizing the total estimated solution cost,
- Heuristic Functions. The effect of heuristic accuracy on performance. Beyond Classical Search, Local Search Algorithms and Optimization Problems,
- Genetic Algorithms and its applications
Skills covered in this course
Reviews
-
HHARSHA B (RA2432014010130)
very helpful course
-
NNizamudheen S
Very nice
-
ppavi
super
-
SSrimahalakshmi B
Nice session