Presentation | Discussion | Total. | |
---|---|---|---|
1. | 20% | 20% | 40% |
2. | 15% | 15% | 30% |
3. | 15% | 15% | 30% |
Total. | 50% | 50% | - |
Class schedule | HW assignments (Including preparation and review of the class.) | Amount of Time Required | |
---|---|---|---|
1. | -Introduction to Machine Learning (I) [COIL Class] Dr Le Minh Huy (Phenikaa University) -Group discussion based on assigned topics (students from Phenikaa University also join remotely) |
Investigate the basic concept of ML including neural networks, gradient descent, forward and backward propagation. | 190minutes |
2. | Introduction to Machine Learning (II) [COIL Class] Dr Le Minh Huy (Phenikaa University) -Group discussion based on assigned topics (students from Phenikaa University also join remotely) |
Investigate the basic concept of ML including neural networks, gradient descent, forward and backward propagation. | 190minutes |
3. | - Fundamental Generative Models (I) -Group discussion based on assigned topics |
Investigate the basic models including RNN, AutoEncoder, GAN etc. | 190minutes |
4. | - Fundamental Generative Models (II) -Group discussion based on assigned topics |
Investigate the basic models including RNN, AutoEncoder, GAN, etc. | 190minutes |
5. | Advanced generative models (I) | Investigate the recent advanced models: transformer, diffusion. | 190minutes |
6. | Advanced generative models (II) | Investigate the recent advanced models: transformer, diffusion. | 190minutes |
7. | Mid-term Presentation | Prepare for group presentation | 190minutes |
8. | The AI Alignment problem - an overview (I) | Introduce the basis of LLM, prompting engineering, AI Alignment | 190minutes |
9. | - The AI Alignment problem - an overview (II) - Group discussion based on assigned topics |
Investigate the basic concepts of Artificial General Intelligence (AGI) and the AI Alignment problem - Outer & inner alignment problems: reward misspecification & instrumental convergence, deception, mesa-optimizer, goal misgeneralization etc. - Technical alignment: RLHF, Constitutional AI, debate, etc. |
190minutes |
10. | - Guest lecture: "Domain Specific Evaluations Guiding App Development" (Dr. Stefania Druga, former Google DeepMind Researcher - 11:45-12:30) |
Investigate the basic concepts of Artificial General Intelligence (AGI) and the AI Alignment problem - Outer & inner alignment problems: reward misspecification & instrumental convergence, deception, mesa-optimizer, goal misgeneralization etc. - Technical alignment: RLHF, Constitutional AI, debate, etc. |
190minutes |
11. | - Guest Lecture: "Introduction to AI Governance" Harold Godsoe (AI Risk Counsel at Kojima Law Office) |
Investigate the key components of AI Governance frameworks (e.g., ethics, accountability, transparency) | 190minutes |
12. | Group discussion on AI Governance topics and prepare for final presentation. | Investigate the key components of AI Governance frameworks (e.g., ethics, accountability, transparency) | 190minutes |
13. | Final Presentation (I) | Summarize what you have learnt, how you can use the acquired knowledge for your future, and so on. Working with your group to write a paper-like report and prepare the final presentation for your group. | 190minutes |
14. | Final Presentation (II) | Summarize what you have learnt, how you can use the acquired knowledge for your future, and so on. Working with your group to write a paper-like report and prepare the final presentation for your group. | 190minutes |
Total. | - | - | 2660minutes |
ways of feedback | specific contents about "Other" |
---|---|
Feedback in the class |
Work experience | Work experience and relevance to the course content if applicable |
---|---|
N/A | N/A |