Semester | Subjects |
---|---|
1 | Introduction to Programming, Mathematics for Computer Science, Introduction to Artificial Intelligence, English Communication Skills |
2 | Data Structures and Algorithms, Database Management Systems, Object-Oriented Programming, Principles of Machine Learning |
3 | Operating Systems, Computer Networks, Advanced Mathematics for AI, Machine Learning Algorithms |
4 | Web Technologies, Deep Learning Fundamentals, Natural Language Processing, AI & ML Project Management |
5 | Big Data Analytics, Robotics and Perception, Reinforcement Learning, Elective (Choose one from specialized topics in AI/ML) |
6 | Capstone Project in AI/ML, Industry Internship, Electives (Advanced topics in AI/ML), Seminar on Emerging Technologies in AI/ML |
Module | Topics |
---|---|
Introduction to AL & ML | History of AI, Basics of Machine Learning, Difference between AI, ML, and Deep Learning |
Data Preprocessing | Data Cleaning, Data Transformation, Feature Scaling, Handling Missing Data |
Supervised Learning | Linear Regression, Logistic Regression, Decision Trees, Support Vector Machines |
Unsupervised Learning | K-means Clustering, Hierarchical Clustering, PCA (Principal Component Analysis) |
Neural Networks and Deep Learning | Basics of Neural Networks, Deep Learning Frameworks, Convolutional Neural Networks, Recurrent Neural Networks |
Reinforcement Learning | Introduction to Reinforcement Learning, Q-Learning, Policy Gradient Methods |
Natural Language Processing | Text Preprocessing, Word Embeddings, Sentiment Analysis, Language Models |
AI Ethics and Future | AI in Society, Ethical Considerations, Future of AI and ML |