Course | Learning Outcomes (at course level) | Learning and teaching strategies | Assessment Strategies | ||
Course Code | Course Title | ||||
24CBCA 403 |
Artificial Intelligence (Theory)
| CO211.Identify the scope of AI techniques in different application domains. CO212. Investigate AI search techniques, game-playing strategies, and knowledge representation. CO213.Apply supervised, unsupervised, and reinforcement learning in real-world scenarios. CO214. Identify real-world applications of AI across various industries. CO215. Analyse the ethical, social, and economic implications of AI. CO216. Contribute effectively in course- specific interaction. | Approach in teaching: Interactive Lectures, Discussion, Reading assignments, Demonstration.
Learning activities for the students: Self learning assignments, Seminar presentation. | Class test, Semester end examinations, Quiz, Assignments, Presentation. |
Introduction to Artificial Intelligence
Foundation and scope of Artificial Intelligence (AI), Historical overview and key milestones, AI vs. Human intelligence, Generic Applications of AI, General problem solving, production system and control strategy, Water Jug Problem.
Essentials of AI
Role and significance of searching in AI, State space search in AI, Blind/Uninformed Search: BFS and DFS, Concept of heuristic search technique: Generate and Test, BFS, Introduction to Game Playing: Tic-tac-toe, Knowledge representation techniques (Semantic Nets, Scripts) and inference mechanism.
AI Subfields and Technologies
Basics of Machine learning: Supervised, unsupervised, and reinforcement learning, Neural networks and Deep learning, Natural language processing (Syntactic and Semantic) and Computer vision.
Applications of AI
Introduction to Expert Systems, AI in healthcare: Diagnosis, treatment, and medical imaging, AI in finance: Fraud detection, algorithmic trading, and risk assessment, AI in transportation: Autonomous vehicles and traffic optimization, Generative AI: AI in customer service and catboats, AI in education: Personalized learning and intelligent tutoring systems.
Ethical and Social Implications of AI
Ethical guidelines and responsible AI practices, Privacy and data protection concerns, Impact of AI on employment and the workforce, AI and Innovation, Emerging trends and future directions in AI, AI and creativity: Artistic applications.
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