Week 1: Introduction to Generative AI
Lecture 1: Overview of AI and Machine Learning
- Definition and history of AI
- Fundamentals of AI and ML.
Lecture 2: Introduction to Generative AI
- Definition and significance
- Key applications in engineering
Week 2: Fundamentals of Generative Models
Lecture 3: Probabilistic Models
Lecture 4: Neural Networks and Deep Learning
- Basics of neural networks
- Introduction to deep learning
Week 3: Advanced Generative Models
Lecture 5: Transformer Models
- Architecture and working principles
- Applications in text generation
Lecture 6: Diffusion Models
- Basics and applications
- Comparison with other generative models
Week 4: Practical Applications in Engineering
Lecture 7: Generative AI in Design and Manufacturing
- Generative design in manufacturing
Lecture 8: Generative AI in Robotics and Automation
- Path planning and control
- Simulation and training of robots
Week 5: Ethical and Societal Implications
Lecture 9: Ethical Considerations
- Bias and fairness in generative models
Lecture 10: Societal Impact
- Future trends and opportunities
Week 6: Hands-on Projects and Case Studies
Lecture 11: Project Introduction and Guidelines
- Overview of project requirements
- Team formation and project planning
- Real-world applications of generative AI
- Success stories and lessons learned
Course Wrap-up and Future Directions
- Recap of key concepts and learnings
Future Directions in Generative AI
- Emerging trends and technologies
- Career opportunities in generative AI