Artificial Intelligence
Sua compra será finalizada na AMAZON.
This unique free application is useful for all students of Artificial Intelligence across the world. It covers 142 topics of Artificial Intelligence in detail. These 142 topics are divided in 5 units. Each topic is around 600 words and is complete with diagrams, equations and other forms of graphical representations along with simple text explaining the concept in detail. The USP of this application is "ultra-portability". Students can access the content on-the-go from any where they like. Bas
Descrição do Produto
- This unique free application is useful for all students of Artificial Intelligence across the world. It covers 142 topics of Artificial Intelligence in detail. These 142 topics are divided in 5 units.
- Each topic is around 600 words and is complete with diagrams, equations and other forms of graphical representations along with simple text explaining the concept in detail.
- The USP of this application is "ultra-portability". Students can access the content on-the-go from any where they like.
- Basically, each topic is like a detailed flash card and will make the lives of students simpler and easier.
- Some of topics Covered in this application are:
- 1. Turing test
- 2. Introduction to Artificial Intelligence
- 3. History of AI
- 4. The AI Cycle
- 5. Knowledge Representation
- 6. Typical AI problems
- 7. Limits of AI
- 8. Introduction to Agents
- 9. Agent Performance
- 10. Intelligent Agents
- 11. Structure Of Intelligent Agents
- 12. Types of agent program
- 13. Goal based Agents
- 14. Utility-based agents
- 15. Agents and environments
- 16. Agent architectures
- 17. Search for Solutions
- 18. State Spaces
- 19. Graph Searching
- 20. A Generic Searching Algorithm
- 21. Uninformed Search Strategies
- 22. Breadth-First Search
- 23. Heuristic Search
- 24. AâË— Search
- 25. Search Tree
- 26. Depth first Search
- 27. Properties of Depth First Search
- 28. Bi-directional search
- 29. Search Graphs
- 30. Informed Search Strategies
- 31. Methods of Informed Search
- 32. Greedy Search
- 33. Proof of Admissibility of A*
- 34. Properties of Heuristics
- 35. Iterative-Deepening A*
- 36. Other Memory limited heuristic search
- 37. N-Queens eample
- 38. Adversarial Search
- 39. Genetic Algorithms
- 40. Games
- 41. Optimal decisions in Games
- 42. minimax algorithm
- 43. Alpha Beta Pruning
- 44. Backtracking
- 45. Consistency Driven Techniques
- 46. Path Consistency (K-Consistency)
- 47. Look Ahead
- 48. Propositional Logic
- 49. Syntax of Propositional Calculus
- 50. Knowledge Representation and Reasoning
- 51. Propositional Logic Inference
- 52. Propositional Definite Clauses
- 53. Knowledge-Level Debugging
- 54. Rules of Inference
- 55. Soundness and Completeness
- 56. First Order Logic
- 57. Unification
- 58. Semantics
- 59. Herbrand Universe
- 60. Soundness, Completeness, Consistency, Satisfiability
- 61. Resolution
- 62. Herbrand Revisited
- 63. Proof as Search
- 64. Some Proof Strategies
- 65. Non-Monotonic Reasoning
- 66. Truth Maintenance Systems
- 67. Rule Based Systems
- 68. Pure Prolog
- 69. Forward chaining
- 70. backward Chaining
- 71. Choice between forward and backward chaining
- 72. AND/OR Trees
- 73. Hidden Markov Model
- 74. Bayesian networks
- 75. Learning Issues
- 76. Supervised Learning
- 77. Decision Trees
- 78. Knowledge Representation Formalisms
- 79. Semantic Networks
- 80. Inference in a Semantic Net
- 81. Extending Semantic Nets
- 82. Frames
- 83. Slots as Objects
- 84. Interpreting frames
- 85. Introduction to Planning
- 86. Problem Solving vs. Planning
- 87. Logic Based Planning
- 88. Planning Systems
- 89. Planning as Search
- 90. Situation-Space Planning Algorithms
- 91. Partial-Order Planning
- 92. Plan-Space Planning Algorithms
- 93. Interleaving vs. Non-Interleaving of Sub-Plan Steps
- 94. Simple Sock/Shoe Example
- 95. Probabilistic Reasoning
- 96. Review of Probability Theory
- 97. Semantics of Bayesian Networks
- 98. Introduction to Learning
- 99. Taxonomy of Learning Systems
- 100. Mathematical formulation of the inductive learning problem
- 101. Concept Learning
- 102. Concept Learning as Search
- 103. Algorithm to Find a Maximally-Specific Hypothesis
- 104. Candidate Elimination Algorithm
- 105. The Candidate-Elimination Algorithm
- 106. Decision Tree Construction
- 107. Splitting Functions
- 108. Decision Tree Pruning
- 109. Neural Networks
- 110. Artificial Neural Networks
- 111. Perceptron
- 112. Perceptron Learning
- 113. Multi-Layer Perceptrons
- 114. Back-Propagation Algorithm
- 115. Statistical learning