| Week  - 1 | History and Definition of AI, Foundations of Intelligent Behavior, Agent Types (Simple, Model-Based, Goal-Based, Utility-Based), Agent Environments and Their Properties. | 
                                                        
                                | Week  - 2 | Problem Formulation, Search Trees and Graphs, Breadth-First Search, Depth-First Search, Iterative Deepening Search. | 
                                                        
                                | Week  - 3 | Informed (Heuristic) Search Strategies, Greedy Best-First Search, A* Algorithm, Properties of Heuristic Functions (Admissibility, Consistency). | 
                                                        
                                | Week  - 4 | Definition and Formulation of Constraint Satisfaction Problems, Backtracking Algorithm, Inference (Forward Checking, ARC Consistency), Problem Structure Analysis. | 
                                                        
                                | Week  - 5 | Game Theory and the Minimax Algorithm, Alpha-Beta Pruning, Decision-Making Under Uncertainty, Basic Concepts of Probability Theory, Bayes' Rule. | 
                                                        
                                | Week  - 6 | Architecture of Expert Systems (Knowledge Base, Inference Engine), Rule-Based Systems, Logic (Logical Inference, First-Order Logic), Semantic Networks and Frames. | 
                                                        
                                | Week  - 7 | Machine Learning Paradigms, Types of Learning, Model Evaluation Metrics (Accuracy, Precision, Recall, F1-Score), Train/Test/Validation Data Split, Cross-Validation. | 
                                                        
                                | Week  - 8 | Linear Regression, Multiple Linear Regression, Polynomial Regression, Overfitting and Model Complexity, Regularization (Ridge, Lasso). | 
                                                        
                                | Week  - 9 | Logistic Regression, Decision Trees, Support Vector Machines (SVM), Naive Bayes Classifier. | 
                                                        
                                | Week  - 10 | Introduction to Cluster Analysis, K-Means Algorithm, Hierarchical Clustering, Density-Based Clustering (DBSCAN), Cluster Validity Metrics. | 
                                                        
                                | Week  - 11 | The Curse of Dimensionality, Principal Component Analysis (PCA), Association Rule Learning, Apriori Algorithm, Concepts of Confidence and Support. | 
                                                        
                                | Week  - 12 | Fundamentals of Reinforcement Learning (Agent, Environment, Reward), Markov Decision Processes, Introduction to Artificial Neural Networks, Single-Layer Perceptron, Activation Functions. | 
                                                        
                                | Week  - 13 | Multi-Layer Perceptrons, Backpropagation Algorithm, Overview of Deep Learning, A Brief Look at Image Processing and CNNs, A Brief Look at Natural Language Processing and RNNs. | 
                                                        
                                | Week  - 14 | AI in Robotics: Perception, Planning, Control. AI Ethics: Bias and Fairness, Transparency and Explainability, Privacy, The Future of Work, Social Impact and Responsibilities. |